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29
Dockerfiles/1.0.10/Dockerfile
Normal file
29
Dockerfiles/1.0.10/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.10"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.10" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.15/Dockerfile
Normal file
29
Dockerfiles/1.0.15/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.15"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.15" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.17/Dockerfile
Normal file
29
Dockerfiles/1.0.17/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.17"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.17" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.18/Dockerfile
Normal file
29
Dockerfiles/1.0.18/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.18"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.18" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.2/Dockerfile
Normal file
29
Dockerfiles/1.0.2/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.2"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.2" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.21/Dockerfile
Normal file
29
Dockerfiles/1.0.21/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.21"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.21" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.23/Dockerfile
Normal file
29
Dockerfiles/1.0.23/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.23"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.23" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.30/Dockerfile
Normal file
29
Dockerfiles/1.0.30/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.30"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.30" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.33/Dockerfile
Normal file
29
Dockerfiles/1.0.33/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.33"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.33" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.41/Dockerfile
Normal file
29
Dockerfiles/1.0.41/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.41"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.41" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.43/Dockerfile
Normal file
29
Dockerfiles/1.0.43/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.43"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.43" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.6/Dockerfile
Normal file
29
Dockerfiles/1.0.6/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.6"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.6" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
29
Dockerfiles/1.0.8/Dockerfile
Normal file
29
Dockerfiles/1.0.8/Dockerfile
Normal file
@@ -0,0 +1,29 @@
|
||||
FROM continuumio/miniconda:4.5.11
|
||||
|
||||
# install git
|
||||
RUN apt-get update && apt-get upgrade -y && apt-get install -y git
|
||||
|
||||
# create a new conda environment named azureml
|
||||
RUN conda create -n azureml -y -q Python=3.6
|
||||
|
||||
# install additional packages used by sample notebooks. this is optional
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && conda install -y tqdm cython matplotlib scikit-learn"]
|
||||
|
||||
# install azurmel-sdk components
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && pip install azureml-sdk[notebooks]==1.0.8"]
|
||||
|
||||
# clone Azure ML GitHub sample notebooks
|
||||
RUN cd /home && git clone -b "azureml-sdk-1.0.8" --single-branch https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# generate jupyter configuration file
|
||||
RUN ["/bin/bash", "-c", "source activate azureml && mkdir ~/.jupyter && cd ~/.jupyter && jupyter notebook --generate-config"]
|
||||
|
||||
# set an emtpy token for Jupyter to remove authentication.
|
||||
# this is NOT recommended for production environment
|
||||
RUN echo "c.NotebookApp.token = ''" >> ~/.jupyter/jupyter_notebook_config.py
|
||||
|
||||
# open up port 8887 on the container
|
||||
EXPOSE 8887
|
||||
|
||||
# start Jupyter notebook server on port 8887 when the container starts
|
||||
CMD /bin/bash -c "cd /home/MachineLearningNotebooks && source activate azureml && jupyter notebook --port 8887 --no-browser --ip 0.0.0.0 --allow-root"
|
||||
@@ -1,3 +1,4 @@
|
||||
|
||||
This software is made available to you on the condition that you agree to
|
||||
[your agreement][1] governing your use of Azure.
|
||||
If you do not have an existing agreement governing your use of Azure, you agree that
|
||||
129
NBSETUP.md
129
NBSETUP.md
@@ -1,34 +1,95 @@
|
||||
# Notebook setup
|
||||
|
||||
---
|
||||
|
||||
To run the notebooks in this repository use one of these methods:
|
||||
|
||||
## Use Azure Notebooks - Jupyter based notebooks in the Azure cloud
|
||||
|
||||
1. [](https://aka.ms/aml-clone-azure-notebooks)
|
||||
[Import sample notebooks ](https://aka.ms/aml-clone-azure-notebooks) into Azure Notebooks
|
||||
1. Follow the instructions in the [Configuration](configuration.ipynb) notebook to create and connect to a workspace
|
||||
1. Open one of the sample notebooks
|
||||
|
||||
**Make sure the Azure Notebook kernel is set to `Python 3.6`** when you open a notebook
|
||||
|
||||

|
||||
|
||||
## **Use your own notebook server**
|
||||
|
||||
Video walkthrough:
|
||||
|
||||
[](https://youtu.be/VIsXeTuW3FU)
|
||||
|
||||
1. Setup a Jupyter Notebook server and [install the Azure Machine Learning SDK](https://docs.microsoft.com/en-us/azure/machine-learning/service/quickstart-create-workspace-with-python)
|
||||
1. Clone [this repository](https://aka.ms/aml-notebooks)
|
||||
1. You may need to install other packages for specific notebook
|
||||
- For example, to run the Azure Machine Learning Data Prep notebooks, install the extra dataprep SDK:
|
||||
```bash
|
||||
pip install azureml-dataprep
|
||||
```
|
||||
|
||||
1. Start your notebook server
|
||||
1. Follow the instructions in the [Configuration](configuration.ipynb) notebook to create and connect to a workspace
|
||||
1. Open one of the sample notebooks
|
||||
# Set up your notebook environment for Azure Machine Learning
|
||||
|
||||
To run the notebooks in this repository use one of following options.
|
||||
|
||||
## **Option 1: Use Azure Notebooks**
|
||||
Azure Notebooks is a hosted Jupyter-based notebook service in the Azure cloud. Azure Machine Learning Python SDK is already pre-installed in the Azure Notebooks `Python 3.6` kernel.
|
||||
|
||||
1. [](https://aka.ms/aml-clone-azure-notebooks)
|
||||
[Import sample notebooks ](https://aka.ms/aml-clone-azure-notebooks) into Azure Notebooks
|
||||
1. Follow the instructions in the [Configuration](configuration.ipynb) notebook to create and connect to a workspace
|
||||
1. Open one of the sample notebooks
|
||||
|
||||
**Make sure the Azure Notebook kernel is set to `Python 3.6`** when you open a notebook by choosing Kernel > Change Kernel > Python 3.6 from the menus.
|
||||
|
||||
## **Option 2: Use your own notebook server**
|
||||
|
||||
### Quick installation
|
||||
We recommend you create a Python virtual environment ([Miniconda](https://conda.io/miniconda.html) preferred but [virtualenv](https://virtualenv.pypa.io/en/latest/) works too) and install the SDK in it.
|
||||
```sh
|
||||
# install just the base SDK
|
||||
pip install azureml-sdk
|
||||
|
||||
# clone the sample repoistory
|
||||
git clone https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# below steps are optional
|
||||
# install the base SDK, Jupyter notebook server and tensorboard
|
||||
pip install azureml-sdk[notebooks,tensorboard]
|
||||
|
||||
# install model explainability component
|
||||
pip install azureml-sdk[explain]
|
||||
|
||||
# install automated ml components
|
||||
pip install azureml-sdk[automl]
|
||||
|
||||
# install experimental features (not ready for production use)
|
||||
pip install azureml-sdk[contrib]
|
||||
```
|
||||
|
||||
Note the _extras_ (the keywords inside the square brackets) can be combined. For example:
|
||||
```sh
|
||||
# install base SDK, Jupyter notebook and automated ml components
|
||||
pip install azureml-sdk[notebooks,automl]
|
||||
```
|
||||
|
||||
### Full instructions
|
||||
[Install the Azure Machine Learning SDK](https://docs.microsoft.com/en-us/azure/machine-learning/service/quickstart-create-workspace-with-python)
|
||||
|
||||
Please make sure you start with the [Configuration](configuration.ipynb) notebook to create and connect to a workspace.
|
||||
|
||||
|
||||
### Video walkthrough:
|
||||
|
||||
[!VIDEO https://youtu.be/VIsXeTuW3FU]
|
||||
|
||||
## **Option 3: Use Docker**
|
||||
|
||||
You need to have Docker engine installed locally and running. Open a command line window and type the following command.
|
||||
|
||||
__Note:__ We use version `1.0.10` below as an exmaple, but you can replace that with any available version number you like.
|
||||
|
||||
```sh
|
||||
# clone the sample repoistory
|
||||
git clone https://github.com/Azure/MachineLearningNotebooks.git
|
||||
|
||||
# change current directory to the folder
|
||||
# where Dockerfile of the specific SDK version is located.
|
||||
cd MachineLearningNotebooks/Dockerfiles/1.0.10
|
||||
|
||||
# build a Docker image with the a name (azuremlsdk for example)
|
||||
# and a version number tag (1.0.10 for example).
|
||||
# this can take several minutes depending on your computer speed and network bandwidth.
|
||||
docker build . -t azuremlsdk:1.0.10
|
||||
|
||||
# launch the built Docker container which also automatically starts
|
||||
# a Jupyter server instance listening on port 8887 of the host machine
|
||||
docker run -it -p 8887:8887 azuremlsdk:1.0.10
|
||||
```
|
||||
|
||||
Now you can point your browser to http://localhost:8887. We recommend that you start from the `configuration.ipynb` notebook at the root directory.
|
||||
|
||||
If you need additional Azure ML SDK components, you can either modify the Docker files before you build the Docker images to add additional steps, or install them through command line in the live container after you build the Docker image. For example:
|
||||
|
||||
```sh
|
||||
# install the core SDK and automated ml components
|
||||
pip install azureml-sdk[automl]
|
||||
|
||||
# install the core SDK and model explainability component
|
||||
pip install azureml-sdk[explain]
|
||||
|
||||
# install the core SDK and experimental components
|
||||
pip install azureml-sdk[contrib]
|
||||
```
|
||||
Drag and Drop
|
||||
The image will be downloaded by Fatkun
|
||||
108
README.md
108
README.md
@@ -1,40 +1,68 @@
|
||||
# Azure Machine Learning service sample notebooks
|
||||
|
||||
---
|
||||
|
||||
This repository contains example notebooks demonstrating the [Azure Machine Learning](https://azure.microsoft.com/en-us/services/machine-learning-service/) Python SDK
|
||||
which allows you to build, train, deploy and manage machine learning solutions using Azure. The AML SDK
|
||||
allows you the choice of using local or cloud compute resources, while managing
|
||||
and maintaining the complete data science workflow from the cloud.
|
||||
|
||||
* Read [instructions on setting up notebooks](./NBSETUP.md) to run these notebooks.
|
||||
|
||||
* Find quickstarts, end-to-end tutorials, and how-tos on the [official documentation site for Azure Machine Learning service](https://docs.microsoft.com/en-us/azure/machine-learning/service/).
|
||||
|
||||
## Getting Started
|
||||
|
||||
These examples will provide you with an effective way to get started using AML. Once you're familiar with
|
||||
some of the capabilities, explore the repository for specific topics.
|
||||
|
||||
- [Configuration](./configuration.ipynb) configures your notebook library to easily connect to an
|
||||
Azure Machine Learning workspace, and sets up your workspace to be used by many of the other examples. You should
|
||||
always run this first when setting up a notebook library on a new machine or in a new environment
|
||||
- [Train in notebook](./how-to-use-azureml/training/train-within-notebook) shows how to create a model directly in a notebook while recording
|
||||
metrics and deploy that model to a test service
|
||||
- [Train on remote](./how-to-use-azureml/training/train-on-remote-vm) takes the previous example and shows how to create the model on a cloud compute target
|
||||
- [Production deploy to AKS](./how-to-use-azureml/deployment/production-deploy-to-aks) shows how to create a production grade inferencing webservice
|
||||
|
||||
## Tutorials
|
||||
|
||||
The [Tutorials](./tutorials) folder contains notebooks for the tutorials described in the [Azure Machine Learning documentation](https://aka.ms/aml-docs)
|
||||
|
||||
## How to use AML
|
||||
|
||||
The [How to use AML](./how-to-use-azureml) folder contains specific examples demonstrating the features of the Azure Machine Learning SDK
|
||||
|
||||
- [Training](./how-to-use-azureml/training) - Examples of how to build models using Azure ML's logging and execution capabilities on local and remote compute targets.
|
||||
- [Training with Deep Learning](./how-to-use-azureml/training-with-deep-learning) - Examples demonstrating how to build deep learning models using estimators and parameter sweeps
|
||||
- [Automated Machine Learning](./how-to-use-azureml/automated-machine-learning) - Examples using Automated Machine Learning to automatically generate optimal machine learning pipelines and models
|
||||
- [Machine Learning Pipelines](./how-to-use-azureml/machine-learning-pipelines) - Examples showing how to create and use reusable pipelines for training and batch scoring
|
||||
- [Deployment](./how-to-use-azureml/deployment) - Examples showing how to deploy and manage machine learning models and solutions
|
||||
- [Azure Databricks](./how-to-use-azureml/azure-databricks) - Examples showing how to use Azure ML with Azure Databricks
|
||||
# Azure Machine Learning service example notebooks
|
||||
|
||||
This repository contains example notebooks demonstrating the [Azure Machine Learning](https://azure.microsoft.com/en-us/services/machine-learning-service/) Python SDK which allows you to build, train, deploy and manage machine learning solutions using Azure. The AML SDK allows you the choice of using local or cloud compute resources, while managing and maintaining the complete data science workflow from the cloud.
|
||||
|
||||

|
||||
|
||||
## Quick installation
|
||||
```sh
|
||||
pip install azureml-sdk
|
||||
```
|
||||
Read more detailed instructions on [how to set up your environment](./NBSETUP.md) using Azure Notebook service, your own Jupyter notebook server, or Docker.
|
||||
|
||||
## How to navigate and use the example notebooks?
|
||||
If you are using an Azure Machine Learning Notebook VM, you are all set. Otherwise, you should always run the [Configuration](./configuration.ipynb) notebook first when setting up a notebook library on a new machine or in a new environment. It configures your notebook library to connect to an Azure Machine Learning workspace, and sets up your workspace and compute to be used by many of the other examples.
|
||||
|
||||
If you want to...
|
||||
|
||||
* ...try out and explore Azure ML, start with image classification tutorials: [Part 1 (Training)](./tutorials/img-classification-part1-training.ipynb) and [Part 2 (Deployment)](./tutorials/img-classification-part2-deploy.ipynb).
|
||||
* ...prepare your data and do automated machine learning, start with regression tutorials: [Part 1 (Data Prep)](./tutorials/regression-part1-data-prep.ipynb) and [Part 2 (Automated ML)](./tutorials/regression-part2-automated-ml.ipynb).
|
||||
* ...learn about experimentation and tracking run history, first [train within Notebook](./how-to-use-azureml/training/train-within-notebook/train-within-notebook.ipynb), then try [training on remote VM](./how-to-use-azureml/training/train-on-remote-vm/train-on-remote-vm.ipynb) and [using logging APIs](./how-to-use-azureml/training/logging-api/logging-api.ipynb).
|
||||
* ...train deep learning models at scale, first learn about [Machine Learning Compute](./how-to-use-azureml/training/train-on-amlcompute/train-on-amlcompute.ipynb), and then try [distributed hyperparameter tuning](./how-to-use-azureml/training-with-deep-learning/train-hyperparameter-tune-deploy-with-pytorch/train-hyperparameter-tune-deploy-with-pytorch.ipynb) and [distributed training](./how-to-use-azureml/training-with-deep-learning/distributed-pytorch-with-horovod/distributed-pytorch-with-horovod.ipynb).
|
||||
* ...deploy models as a realtime scoring service, first learn the basics by [training within Notebook and deploying to Azure Container Instance](./how-to-use-azureml/training/train-within-notebook/train-within-notebook.ipynb), then learn how to [register and manage models, and create Docker images](./how-to-use-azureml/deployment/register-model-create-image-deploy-service/register-model-create-image-deploy-service.ipynb), and [production deploy models on Azure Kubernetes Cluster](./how-to-use-azureml/deployment/production-deploy-to-aks/production-deploy-to-aks.ipynb).
|
||||
* ...deploy models as a batch scoring service, first [train a model within Notebook](./how-to-use-azureml/training/train-within-notebook/train-within-notebook.ipynb), learn how to [register and manage models](./how-to-use-azureml/deployment/register-model-create-image-deploy-service/register-model-create-image-deploy-service.ipynb), then [create Machine Learning Compute for scoring compute](./how-to-use-azureml/training/train-on-amlcompute/train-on-amlcompute.ipynb), and [use Machine Learning Pipelines to deploy your model](https://aka.ms/pl-batch-scoring).
|
||||
* ...monitor your deployed models, learn about using [App Insights](./how-to-use-azureml/deployment/enable-app-insights-in-production-service/enable-app-insights-in-production-service.ipynb) and [model data collection](./how-to-use-azureml/deployment/enable-data-collection-for-models-in-aks/enable-data-collection-for-models-in-aks.ipynb).
|
||||
|
||||
## Tutorials
|
||||
|
||||
The [Tutorials](./tutorials) folder contains notebooks for the tutorials described in the [Azure Machine Learning documentation](https://aka.ms/aml-docs).
|
||||
|
||||
## How to use Azure ML
|
||||
|
||||
The [How to use Azure ML](./how-to-use-azureml) folder contains specific examples demonstrating the features of the Azure Machine Learning SDK
|
||||
|
||||
- [Training](./how-to-use-azureml/training) - Examples of how to build models using Azure ML's logging and execution capabilities on local and remote compute targets
|
||||
- [Training with Deep Learning](./how-to-use-azureml/training-with-deep-learning) - Examples demonstrating how to build deep learning models using estimators and parameter sweeps
|
||||
- [Manage Azure ML Service](./how-to-use-azureml/manage-azureml-service) - Examples how to perform tasks, such as authenticate against Azure ML service in different ways.
|
||||
- [Automated Machine Learning](./how-to-use-azureml/automated-machine-learning) - Examples using Automated Machine Learning to automatically generate optimal machine learning pipelines and models
|
||||
- [Machine Learning Pipelines](./how-to-use-azureml/machine-learning-pipelines) - Examples showing how to create and use reusable pipelines for training and batch scoring
|
||||
- [Deployment](./how-to-use-azureml/deployment) - Examples showing how to deploy and manage machine learning models and solutions
|
||||
- [Azure Databricks](./how-to-use-azureml/azure-databricks) - Examples showing how to use Azure ML with Azure Databricks
|
||||
|
||||
---
|
||||
## Documentation
|
||||
|
||||
* Quickstarts, end-to-end tutorials, and how-tos on the [official documentation site for Azure Machine Learning service](https://docs.microsoft.com/en-us/azure/machine-learning/service/).
|
||||
* [Python SDK reference](https://docs.microsoft.com/en-us/python/api/overview/azure/ml/intro?view=azure-ml-py)
|
||||
* Azure ML Data Prep SDK [overview](https://aka.ms/data-prep-sdk), [Python SDK reference](https://aka.ms/aml-data-prep-apiref), and [tutorials and how-tos](https://aka.ms/aml-data-prep-notebooks).
|
||||
|
||||
---
|
||||
|
||||
## Projects using Azure Machine Learning
|
||||
|
||||
Visit following repos to see projects contributed by Azure ML users:
|
||||
|
||||
- [Fine tune natural language processing models using Azure Machine Learning service](https://github.com/Microsoft/AzureML-BERT)
|
||||
- [Fashion MNIST with Azure ML SDK](https://github.com/amynic/azureml-sdk-fashion)
|
||||
|
||||
## Data/Telemetry
|
||||
This repository collects usage data and sends it to Mircosoft to help improve our products and services. Read Microsoft's [privacy statement to learn more](https://privacy.microsoft.com/en-US/privacystatement)
|
||||
|
||||
To opt out of tracking, please go to the raw markdown or .ipynb files and remove the following line of code:
|
||||
|
||||
```sh
|
||||
""
|
||||
```
|
||||
This URL will be slightly different depending on the file.
|
||||
|
||||

|
||||
|
||||
@@ -1,376 +1,383 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Configuration\n",
|
||||
"\n",
|
||||
"_**Setting up your Azure Machine Learning services workspace and configuring your notebook library**_\n",
|
||||
"\n",
|
||||
"---\n",
|
||||
"---\n",
|
||||
"\n",
|
||||
"## Table of Contents\n",
|
||||
"\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
" 1. What is an Azure Machine Learning workspace\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
" 1. Azure subscription\n",
|
||||
" 1. Azure ML SDK and other library installation\n",
|
||||
" 1. Azure Container Instance registration\n",
|
||||
"1. [Configure your Azure ML Workspace](#Configure%20your%20Azure%20ML%20workspace)\n",
|
||||
" 1. Workspace parameters\n",
|
||||
" 1. Access your workspace\n",
|
||||
" 1. Create a new workspace\n",
|
||||
" 1. Create compute resources\n",
|
||||
"1. [Next steps](#Next%20steps)\n",
|
||||
"\n",
|
||||
"---\n",
|
||||
"\n",
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"This notebook configures your library of notebooks to connect to an Azure Machine Learning (ML) workspace. In this case, a library contains all of the notebooks in the current folder and any nested folders. You can configure this notebook library to use an existing workspace or create a new workspace.\n",
|
||||
"\n",
|
||||
"Typically you will need to run this notebook only once per notebook library as all other notebooks will use connection information that is written here. If you want to redirect your notebook library to work with a different workspace, then you should re-run this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will\n",
|
||||
"* Learn about getting an Azure subscription\n",
|
||||
"* Specify your workspace parameters\n",
|
||||
"* Access or create your workspace\n",
|
||||
"* Add a default compute cluster for your workspace\n",
|
||||
"\n",
|
||||
"### What is an Azure Machine Learning workspace\n",
|
||||
"\n",
|
||||
"An Azure ML Workspace is an Azure resource that organizes and coordinates the actions of many other Azure resources to assist in executing and sharing machine learning workflows. In particular, an Azure ML Workspace coordinates storage, databases, and compute resources providing added functionality for machine learning experimentation, deployment, inferencing, and the monitoring of deployed models."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"This section describes activities required before you can access any Azure ML services functionality."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### 1. Azure Subscription\n",
|
||||
"\n",
|
||||
"In order to create an Azure ML Workspace, first you need access to an Azure subscription. An Azure subscription allows you to manage storage, compute, and other assets in the Azure cloud. You can [create a new subscription](https://azure.microsoft.com/en-us/free/) or access existing subscription information from the [Azure portal](https://portal.azure.com). Later in this notebook you will need information such as your subscription ID in order to create and access AML workspaces.\n",
|
||||
"\n",
|
||||
"### 2. Azure ML SDK and other library installation\n",
|
||||
"\n",
|
||||
"If you are running in your own environment, follow [SDK installation instructions](https://docs.microsoft.com/azure/machine-learning/service/how-to-configure-environment). If you are running in Azure Notebooks or another Microsoft managed environment, the SDK is already installed.\n",
|
||||
"\n",
|
||||
"Also install following libraries to your environment. Many of the example notebooks depend on them\n",
|
||||
"\n",
|
||||
"```\n",
|
||||
"(myenv) $ conda install -y matplotlib tqdm scikit-learn\n",
|
||||
"```\n",
|
||||
"\n",
|
||||
"Once installation is complete, the following cell checks the Azure ML SDK version:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {
|
||||
"tags": [
|
||||
"install"
|
||||
]
|
||||
},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"print(\"This notebook was created using version 1.0.6 of the Azure ML SDK\")\n",
|
||||
"print(\"You are currently using version\", azureml.core.VERSION, \"of the Azure ML SDK\")"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"If you are using an older version of the SDK then this notebook was created using, you should upgrade your SDK.\n",
|
||||
"\n",
|
||||
"### 3. Azure Container Instance registration\n",
|
||||
"Azure Machine Learning uses of [Azure Container Instance (ACI)](https://azure.microsoft.com/services/container-instances) to deploy dev/test web services. An Azure subscription needs to be registered to use ACI. If you or the subscription owner have not yet registered ACI on your subscription, you will need to use the [Azure CLI](https://docs.microsoft.com/en-us/cli/azure/install-azure-cli?view=azure-cli-latest) and execute the following commands. Note that if you ran through the AML [quickstart](https://docs.microsoft.com/en-us/azure/machine-learning/service/quickstart-get-started) you have already registered ACI. \n",
|
||||
"\n",
|
||||
"```shell\n",
|
||||
"# check to see if ACI is already registered\n",
|
||||
"(myenv) $ az provider show -n Microsoft.ContainerInstance -o table\n",
|
||||
"\n",
|
||||
"# if ACI is not registered, run this command.\n",
|
||||
"# note you need to be the subscription owner in order to execute this command successfully.\n",
|
||||
"(myenv) $ az provider register -n Microsoft.ContainerInstance\n",
|
||||
"```\n",
|
||||
"\n",
|
||||
"---"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Configure your Azure ML workspace\n",
|
||||
"\n",
|
||||
"### Workspace parameters\n",
|
||||
"\n",
|
||||
"To use an AML Workspace, you will need to import the Azure ML SDK and supply the following information:\n",
|
||||
"* Your subscription id\n",
|
||||
"* A resource group name\n",
|
||||
"* (optional) The region that will host your workspace\n",
|
||||
"* A name for your workspace\n",
|
||||
"\n",
|
||||
"You can get your subscription ID from the [Azure portal](https://portal.azure.com).\n",
|
||||
"\n",
|
||||
"You will also need access to a [_resource group_](https://docs.microsoft.com/en-us/azure/azure-resource-manager/resource-group-overview#resource-groups), which organizes Azure resources and provides a default region for the resources in a group. You can see what resource groups to which you have access, or create a new one in the [Azure portal](https://portal.azure.com). If you don't have a resource group, the create workspace command will create one for you using the name you provide.\n",
|
||||
"\n",
|
||||
"The region to host your workspace will be used if you are creating a new workspace. You do not need to specify this if you are using an existing workspace. You can find the list of supported regions [here](https://azure.microsoft.com/en-us/global-infrastructure/services/?products=machine-learning-service). You should pick a region that is close to your location or that contains your data.\n",
|
||||
"\n",
|
||||
"The name for your workspace is unique within the subscription and should be descriptive enough to discern among other AML Workspaces. The subscription may be used only by you, or it may be used by your department or your entire enterprise, so choose a name that makes sense for your situation.\n",
|
||||
"\n",
|
||||
"The following cell allows you to specify your workspace parameters. This cell uses the python method `os.getenv` to read values from environment variables which is useful for automation. If no environment variable exists, the parameters will be set to the specified default values. \n",
|
||||
"\n",
|
||||
"If you ran the Azure Machine Learning [quickstart](https://docs.microsoft.com/en-us/azure/machine-learning/service/quickstart-get-started) in Azure Notebooks, you already have a configured workspace! You can go to your Azure Machine Learning Getting Started library, view *config.json* file, and copy-paste the values for subscription ID, resource group and workspace name below.\n",
|
||||
"\n",
|
||||
"Replace the default values in the cell below with your workspace parameters"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import os\n",
|
||||
"\n",
|
||||
"subscription_id = os.getenv(\"SUBSCRIPTION_ID\", default=\"<my-subscription-id>\")\n",
|
||||
"resource_group = os.getenv(\"RESOURCE_GROUP\", default=\"<my-resource-group>\")\n",
|
||||
"workspace_name = os.getenv(\"WORKSPACE_NAME\", default=\"<my-workspace-name>\")\n",
|
||||
"workspace_region = os.getenv(\"WORKSPACE_REGION\", default=\"eastus2\")"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Access your workspace\n",
|
||||
"\n",
|
||||
"The following cell uses the Azure ML SDK to attempt to load the workspace specified by your parameters. If this cell succeeds, your notebook library will be configured to access the workspace from all notebooks using the `Workspace.from_config()` method. The cell can fail if the specified workspace doesn't exist or you don't have permissions to access it. "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"try:\n",
|
||||
" ws = Workspace(subscription_id = subscription_id, resource_group = resource_group, workspace_name = workspace_name)\n",
|
||||
" # write the details of the workspace to a configuration file to the notebook library\n",
|
||||
" ws.write_config()\n",
|
||||
" print(\"Workspace configuration succeeded. Skip the workspace creation steps below\")\n",
|
||||
"except:\n",
|
||||
" print(\"Workspace not accessible. Change your parameters or create a new workspace below\")"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a new workspace\n",
|
||||
"\n",
|
||||
"If you don't have an existing workspace and are the owner of the subscription or resource group, you can create a new workspace. If you don't have a resource group, the create workspace command will create one for you using the name you provide.\n",
|
||||
"\n",
|
||||
"**Note**: As with other Azure services, there are limits on certain resources (for example AmlCompute quota) associated with the Azure ML service. Please read [this article](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-quotas) on the default limits and how to request more quota.\n",
|
||||
"\n",
|
||||
"This cell will create an Azure ML workspace for you in a subscription provided you have the correct permissions.\n",
|
||||
"\n",
|
||||
"This will fail if:\n",
|
||||
"* You do not have permission to create a workspace in the resource group\n",
|
||||
"* You do not have permission to create a resource group if it's non-existing.\n",
|
||||
"* You are not a subscription owner or contributor and no Azure ML workspaces have ever been created in this subscription\n",
|
||||
"\n",
|
||||
"If workspace creation fails, please work with your IT admin to provide you with the appropriate permissions or to provision the required resources."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {
|
||||
"tags": [
|
||||
"create workspace"
|
||||
]
|
||||
},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"# Create the workspace using the specified parameters\n",
|
||||
"ws = Workspace.create(name = workspace_name,\n",
|
||||
" subscription_id = subscription_id,\n",
|
||||
" resource_group = resource_group, \n",
|
||||
" location = workspace_region,\n",
|
||||
" create_resource_group = True,\n",
|
||||
" exist_ok = True)\n",
|
||||
"ws.get_details()\n",
|
||||
"\n",
|
||||
"# write the details of the workspace to a configuration file to the notebook library\n",
|
||||
"ws.write_config()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create compute resources for your training experiments\n",
|
||||
"\n",
|
||||
"Many of the sample notebooks use Azure ML managed compute (AmlCompute) to train models using a dynamically scalable pool of compute. In this section you will create default compute clusters for use by the other notebooks and any other operations you choose.\n",
|
||||
"\n",
|
||||
"To create a cluster, you need to specify a compute configuration that specifies the type of machine to be used and the scalability behaviors. Then you choose a name for the cluster that is unique within the workspace that can be used to address the cluster later.\n",
|
||||
"\n",
|
||||
"The cluster parameters are:\n",
|
||||
"* vm_size - this describes the virtual machine type and size used in the cluster. All machines in the cluster are the same type. You can get the list of vm sizes available in your region by using the CLI command\n",
|
||||
"\n",
|
||||
"```shell\n",
|
||||
"az vm list-skus -o tsv\n",
|
||||
"```\n",
|
||||
"* min_nodes - this sets the minimum size of the cluster. If you set the minimum to 0 the cluster will shut down all nodes while note in use. Setting this number to a value higher than 0 will allow for faster start-up times, but you will also be billed when the cluster is not in use.\n",
|
||||
"* max_nodes - this sets the maximum size of the cluster. Setting this to a larger number allows for more concurrency and a greater distributed processing of scale-out jobs.\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"To create a **CPU** cluster now, run the cell below. The autoscale settings mean that the cluster will scale down to 0 nodes when inactive and up to 4 nodes when busy."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.compute import ComputeTarget, AmlCompute\n",
|
||||
"from azureml.core.compute_target import ComputeTargetException\n",
|
||||
"\n",
|
||||
"# Choose a name for your CPU cluster\n",
|
||||
"cpu_cluster_name = \"cpucluster\"\n",
|
||||
"\n",
|
||||
"# Verify that cluster does not exist already\n",
|
||||
"try:\n",
|
||||
" cpu_cluster = ComputeTarget(workspace=ws, name=cpu_cluster_name)\n",
|
||||
" print(\"Found existing cpucluster\")\n",
|
||||
"except ComputeTargetException:\n",
|
||||
" print(\"Creating new cpucluster\")\n",
|
||||
" \n",
|
||||
" # Specify the configuration for the new cluster\n",
|
||||
" compute_config = AmlCompute.provisioning_configuration(vm_size=\"STANDARD_D2_V2\",\n",
|
||||
" min_nodes=0,\n",
|
||||
" max_nodes=4)\n",
|
||||
"\n",
|
||||
" # Create the cluster with the specified name and configuration\n",
|
||||
" cpu_cluster = ComputeTarget.create(ws, cpu_cluster_name, compute_config)\n",
|
||||
" \n",
|
||||
" # Wait for the cluster to complete, show the output log\n",
|
||||
" cpu_cluster.wait_for_completion(show_output=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"To create a **GPU** cluster, run the cell below. Note that your subscription must have sufficient quota for GPU VMs or the command will fail. To increase quota, see [these instructions](https://docs.microsoft.com/en-us/azure/azure-supportability/resource-manager-core-quotas-request). "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.compute import ComputeTarget, AmlCompute\n",
|
||||
"from azureml.core.compute_target import ComputeTargetException\n",
|
||||
"\n",
|
||||
"# Choose a name for your GPU cluster\n",
|
||||
"gpu_cluster_name = \"gpucluster\"\n",
|
||||
"\n",
|
||||
"# Verify that cluster does not exist already\n",
|
||||
"try:\n",
|
||||
" gpu_cluster = ComputeTarget(workspace=ws, name=gpu_cluster_name)\n",
|
||||
" print(\"Found existing gpu cluster\")\n",
|
||||
"except ComputeTargetException:\n",
|
||||
" print(\"Creating new gpucluster\")\n",
|
||||
" \n",
|
||||
" # Specify the configuration for the new cluster\n",
|
||||
" compute_config = AmlCompute.provisioning_configuration(vm_size=\"STANDARD_NC6\",\n",
|
||||
" min_nodes=0,\n",
|
||||
" max_nodes=4)\n",
|
||||
" # Create the cluster with the specified name and configuration\n",
|
||||
" gpu_cluster = ComputeTarget.create(ws, gpu_cluster_name, compute_config)\n",
|
||||
"\n",
|
||||
" # Wait for the cluster to complete, show the output log\n",
|
||||
" gpu_cluster.wait_for_completion(show_output=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"---\n",
|
||||
"\n",
|
||||
"## Next steps\n",
|
||||
"\n",
|
||||
"In this notebook you configured this notebook library to connect easily to an Azure ML workspace. You can copy this notebook to your own libraries to connect them to you workspace, or use it to bootstrap new workspaces completely.\n",
|
||||
"\n",
|
||||
"If you came here from another notebook, you can return there and complete that exercise, or you can try out the [Tutorials](./tutorials) or jump into \"how-to\" notebooks and start creating and deploying models. A good place to start is the [train in notebook](./how-to-use-azureml/training/train-in-notebook) example that walks through a simplified but complete end to end machine learning process."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": []
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "roastala"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.5"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "roastala"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.5"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Configuration\n",
|
||||
"\n",
|
||||
"_**Setting up your Azure Machine Learning services workspace and configuring your notebook library**_\n",
|
||||
"\n",
|
||||
"---\n",
|
||||
"---\n",
|
||||
"\n",
|
||||
"## Table of Contents\n",
|
||||
"\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
" 1. What is an Azure Machine Learning workspace\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
" 1. Azure subscription\n",
|
||||
" 1. Azure ML SDK and other library installation\n",
|
||||
" 1. Azure Container Instance registration\n",
|
||||
"1. [Configure your Azure ML Workspace](#Configure%20your%20Azure%20ML%20workspace)\n",
|
||||
" 1. Workspace parameters\n",
|
||||
" 1. Access your workspace\n",
|
||||
" 1. Create a new workspace\n",
|
||||
" 1. Create compute resources\n",
|
||||
"1. [Next steps](#Next%20steps)\n",
|
||||
"\n",
|
||||
"---\n",
|
||||
"\n",
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"This notebook configures your library of notebooks to connect to an Azure Machine Learning (ML) workspace. In this case, a library contains all of the notebooks in the current folder and any nested folders. You can configure this notebook library to use an existing workspace or create a new workspace.\n",
|
||||
"\n",
|
||||
"Typically you will need to run this notebook only once per notebook library as all other notebooks will use connection information that is written here. If you want to redirect your notebook library to work with a different workspace, then you should re-run this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will\n",
|
||||
"* Learn about getting an Azure subscription\n",
|
||||
"* Specify your workspace parameters\n",
|
||||
"* Access or create your workspace\n",
|
||||
"* Add a default compute cluster for your workspace\n",
|
||||
"\n",
|
||||
"### What is an Azure Machine Learning workspace\n",
|
||||
"\n",
|
||||
"An Azure ML Workspace is an Azure resource that organizes and coordinates the actions of many other Azure resources to assist in executing and sharing machine learning workflows. In particular, an Azure ML Workspace coordinates storage, databases, and compute resources providing added functionality for machine learning experimentation, deployment, inference, and the monitoring of deployed models."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"This section describes activities required before you can access any Azure ML services functionality."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### 1. Azure Subscription\n",
|
||||
"\n",
|
||||
"In order to create an Azure ML Workspace, first you need access to an Azure subscription. An Azure subscription allows you to manage storage, compute, and other assets in the Azure cloud. You can [create a new subscription](https://azure.microsoft.com/en-us/free/) or access existing subscription information from the [Azure portal](https://portal.azure.com). Later in this notebook you will need information such as your subscription ID in order to create and access AML workspaces.\n",
|
||||
"\n",
|
||||
"### 2. Azure ML SDK and other library installation\n",
|
||||
"\n",
|
||||
"If you are running in your own environment, follow [SDK installation instructions](https://docs.microsoft.com/azure/machine-learning/service/how-to-configure-environment). If you are running in Azure Notebooks or another Microsoft managed environment, the SDK is already installed.\n",
|
||||
"\n",
|
||||
"Also install following libraries to your environment. Many of the example notebooks depend on them\n",
|
||||
"\n",
|
||||
"```\n",
|
||||
"(myenv) $ conda install -y matplotlib tqdm scikit-learn\n",
|
||||
"```\n",
|
||||
"\n",
|
||||
"Once installation is complete, the following cell checks the Azure ML SDK version:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {
|
||||
"tags": [
|
||||
"install"
|
||||
]
|
||||
},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"print(\"This notebook was created using version 1.0.48.post1 of the Azure ML SDK\")\n",
|
||||
"print(\"You are currently using version\", azureml.core.VERSION, \"of the Azure ML SDK\")"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"If you are using an older version of the SDK then this notebook was created using, you should upgrade your SDK.\n",
|
||||
"\n",
|
||||
"### 3. Azure Container Instance registration\n",
|
||||
"Azure Machine Learning uses of [Azure Container Instance (ACI)](https://azure.microsoft.com/services/container-instances) to deploy dev/test web services. An Azure subscription needs to be registered to use ACI. If you or the subscription owner have not yet registered ACI on your subscription, you will need to use the [Azure CLI](https://docs.microsoft.com/en-us/cli/azure/install-azure-cli?view=azure-cli-latest) and execute the following commands. Note that if you ran through the AML [quickstart](https://docs.microsoft.com/en-us/azure/machine-learning/service/quickstart-get-started) you have already registered ACI. \n",
|
||||
"\n",
|
||||
"```shell\n",
|
||||
"# check to see if ACI is already registered\n",
|
||||
"(myenv) $ az provider show -n Microsoft.ContainerInstance -o table\n",
|
||||
"\n",
|
||||
"# if ACI is not registered, run this command.\n",
|
||||
"# note you need to be the subscription owner in order to execute this command successfully.\n",
|
||||
"(myenv) $ az provider register -n Microsoft.ContainerInstance\n",
|
||||
"```\n",
|
||||
"\n",
|
||||
"---"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Configure your Azure ML workspace\n",
|
||||
"\n",
|
||||
"### Workspace parameters\n",
|
||||
"\n",
|
||||
"To use an AML Workspace, you will need to import the Azure ML SDK and supply the following information:\n",
|
||||
"* Your subscription id\n",
|
||||
"* A resource group name\n",
|
||||
"* (optional) The region that will host your workspace\n",
|
||||
"* A name for your workspace\n",
|
||||
"\n",
|
||||
"You can get your subscription ID from the [Azure portal](https://portal.azure.com).\n",
|
||||
"\n",
|
||||
"You will also need access to a [_resource group_](https://docs.microsoft.com/en-us/azure/azure-resource-manager/resource-group-overview#resource-groups), which organizes Azure resources and provides a default region for the resources in a group. You can see what resource groups to which you have access, or create a new one in the [Azure portal](https://portal.azure.com). If you don't have a resource group, the create workspace command will create one for you using the name you provide.\n",
|
||||
"\n",
|
||||
"The region to host your workspace will be used if you are creating a new workspace. You do not need to specify this if you are using an existing workspace. You can find the list of supported regions [here](https://azure.microsoft.com/en-us/global-infrastructure/services/?products=machine-learning-service). You should pick a region that is close to your location or that contains your data.\n",
|
||||
"\n",
|
||||
"The name for your workspace is unique within the subscription and should be descriptive enough to discern among other AML Workspaces. The subscription may be used only by you, or it may be used by your department or your entire enterprise, so choose a name that makes sense for your situation.\n",
|
||||
"\n",
|
||||
"The following cell allows you to specify your workspace parameters. This cell uses the python method `os.getenv` to read values from environment variables which is useful for automation. If no environment variable exists, the parameters will be set to the specified default values. \n",
|
||||
"\n",
|
||||
"If you ran the Azure Machine Learning [quickstart](https://docs.microsoft.com/en-us/azure/machine-learning/service/quickstart-get-started) in Azure Notebooks, you already have a configured workspace! You can go to your Azure Machine Learning Getting Started library, view *config.json* file, and copy-paste the values for subscription ID, resource group and workspace name below.\n",
|
||||
"\n",
|
||||
"Replace the default values in the cell below with your workspace parameters"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import os\n",
|
||||
"\n",
|
||||
"subscription_id = os.getenv(\"SUBSCRIPTION_ID\", default=\"<my-subscription-id>\")\n",
|
||||
"resource_group = os.getenv(\"RESOURCE_GROUP\", default=\"<my-resource-group>\")\n",
|
||||
"workspace_name = os.getenv(\"WORKSPACE_NAME\", default=\"<my-workspace-name>\")\n",
|
||||
"workspace_region = os.getenv(\"WORKSPACE_REGION\", default=\"eastus2\")"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Access your workspace\n",
|
||||
"\n",
|
||||
"The following cell uses the Azure ML SDK to attempt to load the workspace specified by your parameters. If this cell succeeds, your notebook library will be configured to access the workspace from all notebooks using the `Workspace.from_config()` method. The cell can fail if the specified workspace doesn't exist or you don't have permissions to access it. "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"try:\n",
|
||||
" ws = Workspace(subscription_id = subscription_id, resource_group = resource_group, workspace_name = workspace_name)\n",
|
||||
" # write the details of the workspace to a configuration file to the notebook library\n",
|
||||
" ws.write_config()\n",
|
||||
" print(\"Workspace configuration succeeded. Skip the workspace creation steps below\")\n",
|
||||
"except:\n",
|
||||
" print(\"Workspace not accessible. Change your parameters or create a new workspace below\")"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a new workspace\n",
|
||||
"\n",
|
||||
"If you don't have an existing workspace and are the owner of the subscription or resource group, you can create a new workspace. If you don't have a resource group, the create workspace command will create one for you using the name you provide.\n",
|
||||
"\n",
|
||||
"**Note**: As with other Azure services, there are limits on certain resources (for example AmlCompute quota) associated with the Azure ML service. Please read [this article](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-quotas) on the default limits and how to request more quota.\n",
|
||||
"\n",
|
||||
"This cell will create an Azure ML workspace for you in a subscription provided you have the correct permissions.\n",
|
||||
"\n",
|
||||
"This will fail if:\n",
|
||||
"* You do not have permission to create a workspace in the resource group\n",
|
||||
"* You do not have permission to create a resource group if it's non-existing.\n",
|
||||
"* You are not a subscription owner or contributor and no Azure ML workspaces have ever been created in this subscription\n",
|
||||
"\n",
|
||||
"If workspace creation fails, please work with your IT admin to provide you with the appropriate permissions or to provision the required resources."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {
|
||||
"tags": [
|
||||
"create workspace"
|
||||
]
|
||||
},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"# Create the workspace using the specified parameters\n",
|
||||
"ws = Workspace.create(name = workspace_name,\n",
|
||||
" subscription_id = subscription_id,\n",
|
||||
" resource_group = resource_group, \n",
|
||||
" location = workspace_region,\n",
|
||||
" create_resource_group = True,\n",
|
||||
" exist_ok = True)\n",
|
||||
"ws.get_details()\n",
|
||||
"\n",
|
||||
"# write the details of the workspace to a configuration file to the notebook library\n",
|
||||
"ws.write_config()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create compute resources for your training experiments\n",
|
||||
"\n",
|
||||
"Many of the sample notebooks use Azure ML managed compute (AmlCompute) to train models using a dynamically scalable pool of compute. In this section you will create default compute clusters for use by the other notebooks and any other operations you choose.\n",
|
||||
"\n",
|
||||
"To create a cluster, you need to specify a compute configuration that specifies the type of machine to be used and the scalability behaviors. Then you choose a name for the cluster that is unique within the workspace that can be used to address the cluster later.\n",
|
||||
"\n",
|
||||
"The cluster parameters are:\n",
|
||||
"* vm_size - this describes the virtual machine type and size used in the cluster. All machines in the cluster are the same type. You can get the list of vm sizes available in your region by using the CLI command\n",
|
||||
"\n",
|
||||
"```shell\n",
|
||||
"az vm list-skus -o tsv\n",
|
||||
"```\n",
|
||||
"* min_nodes - this sets the minimum size of the cluster. If you set the minimum to 0 the cluster will shut down all nodes while not in use. Setting this number to a value higher than 0 will allow for faster start-up times, but you will also be billed when the cluster is not in use.\n",
|
||||
"* max_nodes - this sets the maximum size of the cluster. Setting this to a larger number allows for more concurrency and a greater distributed processing of scale-out jobs.\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"To create a **CPU** cluster now, run the cell below. The autoscale settings mean that the cluster will scale down to 0 nodes when inactive and up to 4 nodes when busy."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.compute import ComputeTarget, AmlCompute\n",
|
||||
"from azureml.core.compute_target import ComputeTargetException\n",
|
||||
"\n",
|
||||
"# Choose a name for your CPU cluster\n",
|
||||
"cpu_cluster_name = \"cpu-cluster\"\n",
|
||||
"\n",
|
||||
"# Verify that cluster does not exist already\n",
|
||||
"try:\n",
|
||||
" cpu_cluster = ComputeTarget(workspace=ws, name=cpu_cluster_name)\n",
|
||||
" print(\"Found existing cpu-cluster\")\n",
|
||||
"except ComputeTargetException:\n",
|
||||
" print(\"Creating new cpu-cluster\")\n",
|
||||
" \n",
|
||||
" # Specify the configuration for the new cluster\n",
|
||||
" compute_config = AmlCompute.provisioning_configuration(vm_size=\"STANDARD_D2_V2\",\n",
|
||||
" min_nodes=0,\n",
|
||||
" max_nodes=4)\n",
|
||||
"\n",
|
||||
" # Create the cluster with the specified name and configuration\n",
|
||||
" cpu_cluster = ComputeTarget.create(ws, cpu_cluster_name, compute_config)\n",
|
||||
" \n",
|
||||
" # Wait for the cluster to complete, show the output log\n",
|
||||
" cpu_cluster.wait_for_completion(show_output=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"To create a **GPU** cluster, run the cell below. Note that your subscription must have sufficient quota for GPU VMs or the command will fail. To increase quota, see [these instructions](https://docs.microsoft.com/en-us/azure/azure-supportability/resource-manager-core-quotas-request). "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.compute import ComputeTarget, AmlCompute\n",
|
||||
"from azureml.core.compute_target import ComputeTargetException\n",
|
||||
"\n",
|
||||
"# Choose a name for your GPU cluster\n",
|
||||
"gpu_cluster_name = \"gpu-cluster\"\n",
|
||||
"\n",
|
||||
"# Verify that cluster does not exist already\n",
|
||||
"try:\n",
|
||||
" gpu_cluster = ComputeTarget(workspace=ws, name=gpu_cluster_name)\n",
|
||||
" print(\"Found existing gpu cluster\")\n",
|
||||
"except ComputeTargetException:\n",
|
||||
" print(\"Creating new gpu-cluster\")\n",
|
||||
" \n",
|
||||
" # Specify the configuration for the new cluster\n",
|
||||
" compute_config = AmlCompute.provisioning_configuration(vm_size=\"STANDARD_NC6\",\n",
|
||||
" min_nodes=0,\n",
|
||||
" max_nodes=4)\n",
|
||||
" # Create the cluster with the specified name and configuration\n",
|
||||
" gpu_cluster = ComputeTarget.create(ws, gpu_cluster_name, compute_config)\n",
|
||||
"\n",
|
||||
" # Wait for the cluster to complete, show the output log\n",
|
||||
" gpu_cluster.wait_for_completion(show_output=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"---\n",
|
||||
"\n",
|
||||
"## Next steps\n",
|
||||
"\n",
|
||||
"In this notebook you configured this notebook library to connect easily to an Azure ML workspace. You can copy this notebook to your own libraries to connect them to you workspace, or use it to bootstrap new workspaces completely.\n",
|
||||
"\n",
|
||||
"If you came here from another notebook, you can return there and complete that exercise, or you can try out the [Tutorials](./tutorials) or jump into \"how-to\" notebooks and start creating and deploying models. A good place to start is the [train within notebook](./how-to-use-azureml/training/train-within-notebook) example that walks through a simplified but complete end to end machine learning process."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
4
configuration.yml
Normal file
4
configuration.yml
Normal file
@@ -0,0 +1,4 @@
|
||||
name: configuration
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
559
contrib/RAPIDS/azure-ml-with-nvidia-rapids.ipynb
Normal file
559
contrib/RAPIDS/azure-ml-with-nvidia-rapids.ipynb
Normal file
@@ -0,0 +1,559 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "ksivas"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# NVIDIA RAPIDS in Azure Machine Learning"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"The [RAPIDS](https://www.developer.nvidia.com/rapids) suite of software libraries from NVIDIA enables the execution of end-to-end data science and analytics pipelines entirely on GPUs. In many machine learning projects, a significant portion of the model training time is spent in setting up the data; this stage of the process is known as Extraction, Transformation and Loading, or ETL. By using the DataFrame API for ETL\u00c3\u201a\u00c2\u00a0and GPU-capable ML algorithms in RAPIDS, data preparation and training models can be done in GPU-accelerated end-to-end pipelines without incurring serialization costs between the pipeline stages. This notebook demonstrates how to use NVIDIA RAPIDS to prepare data and train model\u00c2\u00a0in Azure.\n",
|
||||
" \n",
|
||||
"In this notebook, we will do the following:\n",
|
||||
" \n",
|
||||
"* Create an Azure Machine Learning Workspace\n",
|
||||
"* Create an AMLCompute target\n",
|
||||
"* Use a script to process our data and train a model\n",
|
||||
"* Obtain the data required to run this sample\n",
|
||||
"* Create an AML run configuration to launch a machine learning job\n",
|
||||
"* Run the script to prepare data for training and train the model\n",
|
||||
" \n",
|
||||
"Prerequisites:\n",
|
||||
"* An Azure subscription to create a Machine Learning Workspace\n",
|
||||
"* Familiarity with the Azure ML SDK (refer to [notebook samples](https://github.com/Azure/MachineLearningNotebooks))\n",
|
||||
"* A Jupyter notebook environment with Azure Machine Learning SDK installed. Refer to instructions to [setup the environment](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-environment#local)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Verify if Azure ML SDK is installed"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"print(\"SDK version:\", azureml.core.VERSION)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import os\n",
|
||||
"from azureml.core import Workspace, Experiment\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"from azureml.core.compute import AmlCompute, ComputeTarget\n",
|
||||
"from azureml.data.data_reference import DataReference\n",
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core import ScriptRunConfig\n",
|
||||
"from azureml.widgets import RunDetails"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create Azure ML Workspace"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"The following step is optional if you already have a workspace. If you want to use an existing workspace, then\n",
|
||||
"skip this workspace creation step and move on to the next step to load the workspace.\n",
|
||||
" \n",
|
||||
"<font color='red'>Important</font>: in the code cell below, be sure to set the correct values for the subscription_id, \n",
|
||||
"resource_group, workspace_name, region before executing this code cell."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"subscription_id = os.environ.get(\"SUBSCRIPTION_ID\", \"<subscription_id>\")\n",
|
||||
"resource_group = os.environ.get(\"RESOURCE_GROUP\", \"<resource_group>\")\n",
|
||||
"workspace_name = os.environ.get(\"WORKSPACE_NAME\", \"<workspace_name>\")\n",
|
||||
"workspace_region = os.environ.get(\"WORKSPACE_REGION\", \"<region>\")\n",
|
||||
"\n",
|
||||
"ws = Workspace.create(workspace_name, subscription_id=subscription_id, resource_group=resource_group, location=workspace_region)\n",
|
||||
"\n",
|
||||
"# write config to a local directory for future use\n",
|
||||
"ws.write_config()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Load existing Workspace"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"# if a locally-saved configuration file for the workspace is not available, use the following to load workspace\n",
|
||||
"# ws = Workspace(subscription_id=subscription_id, resource_group=resource_group, workspace_name=workspace_name)\n",
|
||||
"print('Workspace name: ' + ws.name, \n",
|
||||
" 'Azure region: ' + ws.location, \n",
|
||||
" 'Subscription id: ' + ws.subscription_id, \n",
|
||||
" 'Resource group: ' + ws.resource_group, sep = '\\n')\n",
|
||||
"\n",
|
||||
"scripts_folder = \"scripts_folder\"\n",
|
||||
"\n",
|
||||
"if not os.path.isdir(scripts_folder):\n",
|
||||
" os.mkdir(scripts_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create AML Compute Target"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Because NVIDIA RAPIDS requires P40 or V100 GPUs, the user needs to specify compute targets from one of [NC_v3](https://docs.microsoft.com/en-us/azure/virtual-machines/windows/sizes-gpu#ncv3-series), [NC_v2](https://docs.microsoft.com/en-us/azure/virtual-machines/windows/sizes-gpu#ncv2-series), [ND](https://docs.microsoft.com/en-us/azure/virtual-machines/windows/sizes-gpu#nd-series) or [ND_v2](https://docs.microsoft.com/en-us/azure/virtual-machines/windows/sizes-gpu#ndv2-series-preview) virtual machine types in Azure; these are the families of virtual machines in Azure that are provisioned with these GPUs.\n",
|
||||
" \n",
|
||||
"Pick one of the supported VM SKUs based on the number of GPUs you want to use for ETL and training in RAPIDS.\n",
|
||||
" \n",
|
||||
"The script in this notebook is implemented for single-machine scenarios. An example supporting multiple nodes will be published later."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"gpu_cluster_name = \"gpucluster\"\n",
|
||||
"\n",
|
||||
"if gpu_cluster_name in ws.compute_targets:\n",
|
||||
" gpu_cluster = ws.compute_targets[gpu_cluster_name]\n",
|
||||
" if gpu_cluster and type(gpu_cluster) is AmlCompute:\n",
|
||||
" print('found compute target. just use it. ' + gpu_cluster_name)\n",
|
||||
"else:\n",
|
||||
" print(\"creating new cluster\")\n",
|
||||
" # vm_size parameter below could be modified to one of the RAPIDS-supported VM types\n",
|
||||
" provisioning_config = AmlCompute.provisioning_configuration(vm_size = \"Standard_NC6s_v2\", min_nodes=1, max_nodes = 1)\n",
|
||||
"\n",
|
||||
" # create the cluster\n",
|
||||
" gpu_cluster = ComputeTarget.create(ws, gpu_cluster_name, provisioning_config)\n",
|
||||
" gpu_cluster.wait_for_completion(show_output=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Script to process data and train model"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"The _process_data.py_ script used in the step below is a slightly modified implementation of [RAPIDS E2E example](https://github.com/rapidsai/notebooks/blob/master/mortgage/E2E.ipynb)."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# copy process_data.py into the script folder\n",
|
||||
"import shutil\n",
|
||||
"shutil.copy('./process_data.py', os.path.join(scripts_folder, 'process_data.py'))\n",
|
||||
"\n",
|
||||
"with open(os.path.join(scripts_folder, './process_data.py'), 'r') as process_data_script:\n",
|
||||
" print(process_data_script.read())"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Data required to run this sample"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"This sample uses [Fannie Mae's Single-Family Loan Performance Data](http://www.fanniemae.com/portal/funding-the-market/data/loan-performance-data.html). Once you obtain access to the data, you will need to make this data available in an [Azure Machine Learning Datastore](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-access-data), for use in this sample. The following code shows how to do that."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Downloading Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"<font color='red'>Important</font>: Python package progressbar2 is necessary to run the following cell. If it is not available in your environment where this notebook is running, please install it."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import tarfile\n",
|
||||
"import hashlib\n",
|
||||
"from urllib.request import urlretrieve\n",
|
||||
"from progressbar import ProgressBar\n",
|
||||
"\n",
|
||||
"def validate_downloaded_data(path):\n",
|
||||
" if(os.path.isdir(path) and os.path.exists(path + '//names.csv')) :\n",
|
||||
" if(os.path.isdir(path + '//acq' ) and len(os.listdir(path + '//acq')) == 8):\n",
|
||||
" if(os.path.isdir(path + '//perf' ) and len(os.listdir(path + '//perf')) == 11):\n",
|
||||
" print(\"Data has been downloaded and decompressed at: {0}\".format(path))\n",
|
||||
" return True\n",
|
||||
" print(\"Data has not been downloaded and decompressed\")\n",
|
||||
" return False\n",
|
||||
"\n",
|
||||
"def show_progress(count, block_size, total_size):\n",
|
||||
" global pbar\n",
|
||||
" global processed\n",
|
||||
" \n",
|
||||
" if count == 0:\n",
|
||||
" pbar = ProgressBar(maxval=total_size)\n",
|
||||
" processed = 0\n",
|
||||
" \n",
|
||||
" processed += block_size\n",
|
||||
" processed = min(processed,total_size)\n",
|
||||
" pbar.update(processed)\n",
|
||||
"\n",
|
||||
" \n",
|
||||
"def download_file(fileroot):\n",
|
||||
" filename = fileroot + '.tgz'\n",
|
||||
" if(not os.path.exists(filename) or hashlib.md5(open(filename, 'rb').read()).hexdigest() != '82dd47135053303e9526c2d5c43befd5' ):\n",
|
||||
" url_format = 'http://rapidsai-data.s3-website.us-east-2.amazonaws.com/notebook-mortgage-data/{0}.tgz'\n",
|
||||
" url = url_format.format(fileroot)\n",
|
||||
" print(\"...Downloading file :{0}\".format(filename))\n",
|
||||
" urlretrieve(url, filename,show_progress)\n",
|
||||
" pbar.finish()\n",
|
||||
" print(\"...File :{0} finished downloading\".format(filename))\n",
|
||||
" else:\n",
|
||||
" print(\"...File :{0} has been downloaded already\".format(filename))\n",
|
||||
" return filename\n",
|
||||
"\n",
|
||||
"def decompress_file(filename,path):\n",
|
||||
" tar = tarfile.open(filename)\n",
|
||||
" print(\"...Getting information from {0} about files to decompress\".format(filename))\n",
|
||||
" members = tar.getmembers()\n",
|
||||
" numFiles = len(members)\n",
|
||||
" so_far = 0\n",
|
||||
" for member_info in members:\n",
|
||||
" tar.extract(member_info,path=path)\n",
|
||||
" show_progress(so_far, 1, numFiles)\n",
|
||||
" so_far += 1\n",
|
||||
" pbar.finish()\n",
|
||||
" print(\"...All {0} files have been decompressed\".format(numFiles))\n",
|
||||
" tar.close()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"fileroot = 'mortgage_2000-2001'\n",
|
||||
"path = '.\\\\{0}'.format(fileroot)\n",
|
||||
"pbar = None\n",
|
||||
"processed = 0\n",
|
||||
"\n",
|
||||
"if(not validate_downloaded_data(path)):\n",
|
||||
" print(\"Downloading and Decompressing Input Data\")\n",
|
||||
" filename = download_file(fileroot)\n",
|
||||
" decompress_file(filename,path)\n",
|
||||
" print(\"Input Data has been Downloaded and Decompressed\")"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Uploading Data to Workspace"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ds = ws.get_default_datastore()\n",
|
||||
"\n",
|
||||
"# download and uncompress data in a local directory before uploading to data store\n",
|
||||
"# directory specified in src_dir parameter below should have the acq, perf directories with data and names.csv file\n",
|
||||
"ds.upload(src_dir=path, target_path=fileroot, overwrite=True, show_progress=True)\n",
|
||||
"\n",
|
||||
"# data already uploaded to the datastore\n",
|
||||
"data_ref = DataReference(data_reference_name='data', datastore=ds, path_on_datastore=fileroot)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create AML run configuration to launch a machine learning job"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"RunConfiguration is used to submit jobs to Azure Machine Learning service. When creating RunConfiguration for a job, users can either \n",
|
||||
"1. specify a Docker image with prebuilt conda environment and use it without any modifications to run the job, or \n",
|
||||
"2. specify a Docker image as the base image and conda or pip packages as dependnecies to let AML build a new Docker image with a conda environment containing specified dependencies to use in the job\n",
|
||||
"\n",
|
||||
"The second option is the recommended option in AML. \n",
|
||||
"The following steps have code for both options. You can pick the one that is more appropriate for your requirements. "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Specify prebuilt conda environment"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"The following code shows how to use an existing image from [Docker Hub](https://hub.docker.com/r/rapidsai/rapidsai/) that has a prebuilt conda environment named 'rapids' when creating a RunConfiguration. Note that this conda environment does not include azureml-defaults package that is required for using AML functionality like metrics tracking, model management etc. This package is automatically installed when you use 'Specify package dependencies' option and that is why it is the recommended option to create RunConfiguraiton in AML."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"run_config = RunConfiguration()\n",
|
||||
"run_config.framework = 'python'\n",
|
||||
"run_config.environment.python.user_managed_dependencies = True\n",
|
||||
"run_config.environment.python.interpreter_path = '/conda/envs/rapids/bin/python'\n",
|
||||
"run_config.target = gpu_cluster_name\n",
|
||||
"run_config.environment.docker.enabled = True\n",
|
||||
"run_config.environment.docker.gpu_support = True\n",
|
||||
"run_config.environment.docker.base_image = \"rapidsai/rapidsai:cuda9.2-runtime-ubuntu18.04\"\n",
|
||||
"# run_config.environment.docker.base_image_registry.address = '<registry_url>' # not required if the base_image is in Docker hub\n",
|
||||
"# run_config.environment.docker.base_image_registry.username = '<user_name>' # needed only for private images\n",
|
||||
"# run_config.environment.docker.base_image_registry.password = '<password>' # needed only for private images\n",
|
||||
"run_config.environment.spark.precache_packages = False\n",
|
||||
"run_config.data_references={'data':data_ref.to_config()}"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Specify package dependencies"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"The following code shows how to list package dependencies in a conda environment definition file (rapids.yml) when creating a RunConfiguration"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# cd = CondaDependencies(conda_dependencies_file_path='rapids.yml')\n",
|
||||
"# run_config = RunConfiguration(conda_dependencies=cd)\n",
|
||||
"# run_config.framework = 'python'\n",
|
||||
"# run_config.target = gpu_cluster_name\n",
|
||||
"# run_config.environment.docker.enabled = True\n",
|
||||
"# run_config.environment.docker.gpu_support = True\n",
|
||||
"# run_config.environment.docker.base_image = \"<image>\"\n",
|
||||
"# run_config.environment.docker.base_image_registry.address = '<registry_url>' # not required if the base_image is in Docker hub\n",
|
||||
"# run_config.environment.docker.base_image_registry.username = '<user_name>' # needed only for private images\n",
|
||||
"# run_config.environment.docker.base_image_registry.password = '<password>' # needed only for private images\n",
|
||||
"# run_config.environment.spark.precache_packages = False\n",
|
||||
"# run_config.data_references={'data':data_ref.to_config()}"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Wrapper function to submit Azure Machine Learning experiment"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# parameter cpu_predictor indicates if training should be done on CPU. If set to true, GPUs are used *only* for ETL and *not* for training\n",
|
||||
"# parameter num_gpu indicates number of GPUs to use among the GPUs available in the VM for ETL and if cpu_predictor is false, for training as well \n",
|
||||
"def run_rapids_experiment(cpu_training, gpu_count, part_count):\n",
|
||||
" # any value between 1-4 is allowed here depending the type of VMs available in gpu_cluster\n",
|
||||
" if gpu_count not in [1, 2, 3, 4]:\n",
|
||||
" raise Exception('Value specified for the number of GPUs to use {0} is invalid'.format(gpu_count))\n",
|
||||
"\n",
|
||||
" # following data partition mapping is empirical (specific to GPUs used and current data partitioning scheme) and may need to be tweaked\n",
|
||||
" max_gpu_count_data_partition_mapping = {1: 3, 2: 4, 3: 6, 4: 8}\n",
|
||||
" \n",
|
||||
" if part_count > max_gpu_count_data_partition_mapping[gpu_count]:\n",
|
||||
" print(\"Too many partitions for the number of GPUs, exceeding memory threshold\")\n",
|
||||
" \n",
|
||||
" if part_count > 11:\n",
|
||||
" print(\"Warning: Maximum number of partitions available is 11\")\n",
|
||||
" part_count = 11\n",
|
||||
" \n",
|
||||
" end_year = 2000\n",
|
||||
" \n",
|
||||
" if part_count > 4:\n",
|
||||
" end_year = 2001 # use more data with more GPUs\n",
|
||||
"\n",
|
||||
" src = ScriptRunConfig(source_directory=scripts_folder, \n",
|
||||
" script='process_data.py', \n",
|
||||
" arguments = ['--num_gpu', gpu_count, '--data_dir', str(data_ref),\n",
|
||||
" '--part_count', part_count, '--end_year', end_year,\n",
|
||||
" '--cpu_predictor', cpu_training\n",
|
||||
" ],\n",
|
||||
" run_config=run_config\n",
|
||||
" )\n",
|
||||
"\n",
|
||||
" exp = Experiment(ws, 'rapidstest')\n",
|
||||
" run = exp.submit(config=src)\n",
|
||||
" RunDetails(run).show()\n",
|
||||
" return run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Submit experiment (ETL & training on GPU)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"cpu_predictor = False\n",
|
||||
"# the value for num_gpu should be less than or equal to the number of GPUs available in the VM\n",
|
||||
"num_gpu = 1\n",
|
||||
"data_part_count = 1\n",
|
||||
"# train using CPU, use GPU for both ETL and training\n",
|
||||
"run = run_rapids_experiment(cpu_predictor, num_gpu, data_part_count)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Submit experiment (ETL on GPU, training on CPU)\n",
|
||||
"\n",
|
||||
"To observe performance difference between GPU-accelerated RAPIDS based training with CPU-only training, set 'cpu_predictor' predictor to 'True' and rerun the experiment"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"cpu_predictor = True\n",
|
||||
"# the value for num_gpu should be less than or equal to the number of GPUs available in the VM\n",
|
||||
"num_gpu = 1\n",
|
||||
"data_part_count = 1\n",
|
||||
"# train using CPU, use GPU for ETL\n",
|
||||
"run = run_rapids_experiment(cpu_predictor, num_gpu, data_part_count)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Delete cluster"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# delete the cluster\n",
|
||||
"# gpu_cluster.delete()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
495
contrib/RAPIDS/process_data.py
Normal file
495
contrib/RAPIDS/process_data.py
Normal file
@@ -0,0 +1,495 @@
|
||||
import numpy as np
|
||||
import datetime
|
||||
import dask_xgboost as dxgb_gpu
|
||||
import dask
|
||||
import dask_cudf
|
||||
from dask_cuda import LocalCUDACluster
|
||||
from dask.delayed import delayed
|
||||
from dask.distributed import Client, wait
|
||||
import xgboost as xgb
|
||||
import cudf
|
||||
from cudf.dataframe import DataFrame
|
||||
from collections import OrderedDict
|
||||
import gc
|
||||
from glob import glob
|
||||
import os
|
||||
import argparse
|
||||
|
||||
def initialize_rmm_pool():
|
||||
from librmm_cffi import librmm_config as rmm_cfg
|
||||
|
||||
rmm_cfg.use_pool_allocator = True
|
||||
#rmm_cfg.initial_pool_size = 2<<30 # set to 2GiB. Default is 1/2 total GPU memory
|
||||
import cudf
|
||||
return cudf._gdf.rmm_initialize()
|
||||
|
||||
def initialize_rmm_no_pool():
|
||||
from librmm_cffi import librmm_config as rmm_cfg
|
||||
|
||||
rmm_cfg.use_pool_allocator = False
|
||||
import cudf
|
||||
return cudf._gdf.rmm_initialize()
|
||||
|
||||
def run_dask_task(func, **kwargs):
|
||||
task = func(**kwargs)
|
||||
return task
|
||||
|
||||
def process_quarter_gpu(client, col_names_path, acq_data_path, year=2000, quarter=1, perf_file=""):
|
||||
dask_client = client
|
||||
ml_arrays = run_dask_task(delayed(run_gpu_workflow),
|
||||
col_path=col_names_path,
|
||||
acq_path=acq_data_path,
|
||||
quarter=quarter,
|
||||
year=year,
|
||||
perf_file=perf_file)
|
||||
return dask_client.compute(ml_arrays,
|
||||
optimize_graph=False,
|
||||
fifo_timeout="0ms")
|
||||
|
||||
def null_workaround(df, **kwargs):
|
||||
for column, data_type in df.dtypes.items():
|
||||
if str(data_type) == "category":
|
||||
df[column] = df[column].astype('int32').fillna(-1)
|
||||
if str(data_type) in ['int8', 'int16', 'int32', 'int64', 'float32', 'float64']:
|
||||
df[column] = df[column].fillna(-1)
|
||||
return df
|
||||
|
||||
def run_gpu_workflow(col_path, acq_path, quarter=1, year=2000, perf_file="", **kwargs):
|
||||
names = gpu_load_names(col_path=col_path)
|
||||
acq_gdf = gpu_load_acquisition_csv(acquisition_path= acq_path + "/Acquisition_"
|
||||
+ str(year) + "Q" + str(quarter) + ".txt")
|
||||
acq_gdf = acq_gdf.merge(names, how='left', on=['seller_name'])
|
||||
acq_gdf.drop_column('seller_name')
|
||||
acq_gdf['seller_name'] = acq_gdf['new']
|
||||
acq_gdf.drop_column('new')
|
||||
perf_df_tmp = gpu_load_performance_csv(perf_file)
|
||||
gdf = perf_df_tmp
|
||||
everdf = create_ever_features(gdf)
|
||||
delinq_merge = create_delinq_features(gdf)
|
||||
everdf = join_ever_delinq_features(everdf, delinq_merge)
|
||||
del(delinq_merge)
|
||||
joined_df = create_joined_df(gdf, everdf)
|
||||
testdf = create_12_mon_features(joined_df)
|
||||
joined_df = combine_joined_12_mon(joined_df, testdf)
|
||||
del(testdf)
|
||||
perf_df = final_performance_delinquency(gdf, joined_df)
|
||||
del(gdf, joined_df)
|
||||
final_gdf = join_perf_acq_gdfs(perf_df, acq_gdf)
|
||||
del(perf_df)
|
||||
del(acq_gdf)
|
||||
final_gdf = last_mile_cleaning(final_gdf)
|
||||
return final_gdf
|
||||
|
||||
def gpu_load_performance_csv(performance_path, **kwargs):
|
||||
""" Loads performance data
|
||||
|
||||
Returns
|
||||
-------
|
||||
GPU DataFrame
|
||||
"""
|
||||
|
||||
cols = [
|
||||
"loan_id", "monthly_reporting_period", "servicer", "interest_rate", "current_actual_upb",
|
||||
"loan_age", "remaining_months_to_legal_maturity", "adj_remaining_months_to_maturity",
|
||||
"maturity_date", "msa", "current_loan_delinquency_status", "mod_flag", "zero_balance_code",
|
||||
"zero_balance_effective_date", "last_paid_installment_date", "foreclosed_after",
|
||||
"disposition_date", "foreclosure_costs", "prop_preservation_and_repair_costs",
|
||||
"asset_recovery_costs", "misc_holding_expenses", "holding_taxes", "net_sale_proceeds",
|
||||
"credit_enhancement_proceeds", "repurchase_make_whole_proceeds", "other_foreclosure_proceeds",
|
||||
"non_interest_bearing_upb", "principal_forgiveness_upb", "repurchase_make_whole_proceeds_flag",
|
||||
"foreclosure_principal_write_off_amount", "servicing_activity_indicator"
|
||||
]
|
||||
|
||||
dtypes = OrderedDict([
|
||||
("loan_id", "int64"),
|
||||
("monthly_reporting_period", "date"),
|
||||
("servicer", "category"),
|
||||
("interest_rate", "float64"),
|
||||
("current_actual_upb", "float64"),
|
||||
("loan_age", "float64"),
|
||||
("remaining_months_to_legal_maturity", "float64"),
|
||||
("adj_remaining_months_to_maturity", "float64"),
|
||||
("maturity_date", "date"),
|
||||
("msa", "float64"),
|
||||
("current_loan_delinquency_status", "int32"),
|
||||
("mod_flag", "category"),
|
||||
("zero_balance_code", "category"),
|
||||
("zero_balance_effective_date", "date"),
|
||||
("last_paid_installment_date", "date"),
|
||||
("foreclosed_after", "date"),
|
||||
("disposition_date", "date"),
|
||||
("foreclosure_costs", "float64"),
|
||||
("prop_preservation_and_repair_costs", "float64"),
|
||||
("asset_recovery_costs", "float64"),
|
||||
("misc_holding_expenses", "float64"),
|
||||
("holding_taxes", "float64"),
|
||||
("net_sale_proceeds", "float64"),
|
||||
("credit_enhancement_proceeds", "float64"),
|
||||
("repurchase_make_whole_proceeds", "float64"),
|
||||
("other_foreclosure_proceeds", "float64"),
|
||||
("non_interest_bearing_upb", "float64"),
|
||||
("principal_forgiveness_upb", "float64"),
|
||||
("repurchase_make_whole_proceeds_flag", "category"),
|
||||
("foreclosure_principal_write_off_amount", "float64"),
|
||||
("servicing_activity_indicator", "category")
|
||||
])
|
||||
|
||||
print(performance_path)
|
||||
|
||||
return cudf.read_csv(performance_path, names=cols, delimiter='|', dtype=list(dtypes.values()), skiprows=1)
|
||||
|
||||
def gpu_load_acquisition_csv(acquisition_path, **kwargs):
|
||||
""" Loads acquisition data
|
||||
|
||||
Returns
|
||||
-------
|
||||
GPU DataFrame
|
||||
"""
|
||||
|
||||
cols = [
|
||||
'loan_id', 'orig_channel', 'seller_name', 'orig_interest_rate', 'orig_upb', 'orig_loan_term',
|
||||
'orig_date', 'first_pay_date', 'orig_ltv', 'orig_cltv', 'num_borrowers', 'dti', 'borrower_credit_score',
|
||||
'first_home_buyer', 'loan_purpose', 'property_type', 'num_units', 'occupancy_status', 'property_state',
|
||||
'zip', 'mortgage_insurance_percent', 'product_type', 'coborrow_credit_score', 'mortgage_insurance_type',
|
||||
'relocation_mortgage_indicator'
|
||||
]
|
||||
|
||||
dtypes = OrderedDict([
|
||||
("loan_id", "int64"),
|
||||
("orig_channel", "category"),
|
||||
("seller_name", "category"),
|
||||
("orig_interest_rate", "float64"),
|
||||
("orig_upb", "int64"),
|
||||
("orig_loan_term", "int64"),
|
||||
("orig_date", "date"),
|
||||
("first_pay_date", "date"),
|
||||
("orig_ltv", "float64"),
|
||||
("orig_cltv", "float64"),
|
||||
("num_borrowers", "float64"),
|
||||
("dti", "float64"),
|
||||
("borrower_credit_score", "float64"),
|
||||
("first_home_buyer", "category"),
|
||||
("loan_purpose", "category"),
|
||||
("property_type", "category"),
|
||||
("num_units", "int64"),
|
||||
("occupancy_status", "category"),
|
||||
("property_state", "category"),
|
||||
("zip", "int64"),
|
||||
("mortgage_insurance_percent", "float64"),
|
||||
("product_type", "category"),
|
||||
("coborrow_credit_score", "float64"),
|
||||
("mortgage_insurance_type", "float64"),
|
||||
("relocation_mortgage_indicator", "category")
|
||||
])
|
||||
|
||||
print(acquisition_path)
|
||||
|
||||
return cudf.read_csv(acquisition_path, names=cols, delimiter='|', dtype=list(dtypes.values()), skiprows=1)
|
||||
|
||||
def gpu_load_names(col_path):
|
||||
""" Loads names used for renaming the banks
|
||||
|
||||
Returns
|
||||
-------
|
||||
GPU DataFrame
|
||||
"""
|
||||
|
||||
cols = [
|
||||
'seller_name', 'new'
|
||||
]
|
||||
|
||||
dtypes = OrderedDict([
|
||||
("seller_name", "category"),
|
||||
("new", "category"),
|
||||
])
|
||||
|
||||
return cudf.read_csv(col_path, names=cols, delimiter='|', dtype=list(dtypes.values()), skiprows=1)
|
||||
|
||||
def create_ever_features(gdf, **kwargs):
|
||||
everdf = gdf[['loan_id', 'current_loan_delinquency_status']]
|
||||
everdf = everdf.groupby('loan_id', method='hash').max()
|
||||
del(gdf)
|
||||
everdf['ever_30'] = (everdf['max_current_loan_delinquency_status'] >= 1).astype('int8')
|
||||
everdf['ever_90'] = (everdf['max_current_loan_delinquency_status'] >= 3).astype('int8')
|
||||
everdf['ever_180'] = (everdf['max_current_loan_delinquency_status'] >= 6).astype('int8')
|
||||
everdf.drop_column('max_current_loan_delinquency_status')
|
||||
return everdf
|
||||
|
||||
def create_delinq_features(gdf, **kwargs):
|
||||
delinq_gdf = gdf[['loan_id', 'monthly_reporting_period', 'current_loan_delinquency_status']]
|
||||
del(gdf)
|
||||
delinq_30 = delinq_gdf.query('current_loan_delinquency_status >= 1')[['loan_id', 'monthly_reporting_period']].groupby('loan_id', method='hash').min()
|
||||
delinq_30['delinquency_30'] = delinq_30['min_monthly_reporting_period']
|
||||
delinq_30.drop_column('min_monthly_reporting_period')
|
||||
delinq_90 = delinq_gdf.query('current_loan_delinquency_status >= 3')[['loan_id', 'monthly_reporting_period']].groupby('loan_id', method='hash').min()
|
||||
delinq_90['delinquency_90'] = delinq_90['min_monthly_reporting_period']
|
||||
delinq_90.drop_column('min_monthly_reporting_period')
|
||||
delinq_180 = delinq_gdf.query('current_loan_delinquency_status >= 6')[['loan_id', 'monthly_reporting_period']].groupby('loan_id', method='hash').min()
|
||||
delinq_180['delinquency_180'] = delinq_180['min_monthly_reporting_period']
|
||||
delinq_180.drop_column('min_monthly_reporting_period')
|
||||
del(delinq_gdf)
|
||||
delinq_merge = delinq_30.merge(delinq_90, how='left', on=['loan_id'], type='hash')
|
||||
delinq_merge['delinquency_90'] = delinq_merge['delinquency_90'].fillna(np.dtype('datetime64[ms]').type('1970-01-01').astype('datetime64[ms]'))
|
||||
delinq_merge = delinq_merge.merge(delinq_180, how='left', on=['loan_id'], type='hash')
|
||||
delinq_merge['delinquency_180'] = delinq_merge['delinquency_180'].fillna(np.dtype('datetime64[ms]').type('1970-01-01').astype('datetime64[ms]'))
|
||||
del(delinq_30)
|
||||
del(delinq_90)
|
||||
del(delinq_180)
|
||||
return delinq_merge
|
||||
|
||||
def join_ever_delinq_features(everdf_tmp, delinq_merge, **kwargs):
|
||||
everdf = everdf_tmp.merge(delinq_merge, on=['loan_id'], how='left', type='hash')
|
||||
del(everdf_tmp)
|
||||
del(delinq_merge)
|
||||
everdf['delinquency_30'] = everdf['delinquency_30'].fillna(np.dtype('datetime64[ms]').type('1970-01-01').astype('datetime64[ms]'))
|
||||
everdf['delinquency_90'] = everdf['delinquency_90'].fillna(np.dtype('datetime64[ms]').type('1970-01-01').astype('datetime64[ms]'))
|
||||
everdf['delinquency_180'] = everdf['delinquency_180'].fillna(np.dtype('datetime64[ms]').type('1970-01-01').astype('datetime64[ms]'))
|
||||
return everdf
|
||||
|
||||
def create_joined_df(gdf, everdf, **kwargs):
|
||||
test = gdf[['loan_id', 'monthly_reporting_period', 'current_loan_delinquency_status', 'current_actual_upb']]
|
||||
del(gdf)
|
||||
test['timestamp'] = test['monthly_reporting_period']
|
||||
test.drop_column('monthly_reporting_period')
|
||||
test['timestamp_month'] = test['timestamp'].dt.month
|
||||
test['timestamp_year'] = test['timestamp'].dt.year
|
||||
test['delinquency_12'] = test['current_loan_delinquency_status']
|
||||
test.drop_column('current_loan_delinquency_status')
|
||||
test['upb_12'] = test['current_actual_upb']
|
||||
test.drop_column('current_actual_upb')
|
||||
test['upb_12'] = test['upb_12'].fillna(999999999)
|
||||
test['delinquency_12'] = test['delinquency_12'].fillna(-1)
|
||||
|
||||
joined_df = test.merge(everdf, how='left', on=['loan_id'], type='hash')
|
||||
del(everdf)
|
||||
del(test)
|
||||
|
||||
joined_df['ever_30'] = joined_df['ever_30'].fillna(-1)
|
||||
joined_df['ever_90'] = joined_df['ever_90'].fillna(-1)
|
||||
joined_df['ever_180'] = joined_df['ever_180'].fillna(-1)
|
||||
joined_df['delinquency_30'] = joined_df['delinquency_30'].fillna(-1)
|
||||
joined_df['delinquency_90'] = joined_df['delinquency_90'].fillna(-1)
|
||||
joined_df['delinquency_180'] = joined_df['delinquency_180'].fillna(-1)
|
||||
|
||||
joined_df['timestamp_year'] = joined_df['timestamp_year'].astype('int32')
|
||||
joined_df['timestamp_month'] = joined_df['timestamp_month'].astype('int32')
|
||||
|
||||
return joined_df
|
||||
|
||||
def create_12_mon_features(joined_df, **kwargs):
|
||||
testdfs = []
|
||||
n_months = 12
|
||||
for y in range(1, n_months + 1):
|
||||
tmpdf = joined_df[['loan_id', 'timestamp_year', 'timestamp_month', 'delinquency_12', 'upb_12']]
|
||||
tmpdf['josh_months'] = tmpdf['timestamp_year'] * 12 + tmpdf['timestamp_month']
|
||||
tmpdf['josh_mody_n'] = ((tmpdf['josh_months'].astype('float64') - 24000 - y) / 12).floor()
|
||||
tmpdf = tmpdf.groupby(['loan_id', 'josh_mody_n'], method='hash').agg({'delinquency_12': 'max','upb_12': 'min'})
|
||||
tmpdf['delinquency_12'] = (tmpdf['max_delinquency_12']>3).astype('int32')
|
||||
tmpdf['delinquency_12'] +=(tmpdf['min_upb_12']==0).astype('int32')
|
||||
tmpdf.drop_column('max_delinquency_12')
|
||||
tmpdf['upb_12'] = tmpdf['min_upb_12']
|
||||
tmpdf.drop_column('min_upb_12')
|
||||
tmpdf['timestamp_year'] = (((tmpdf['josh_mody_n'] * n_months) + 24000 + (y - 1)) / 12).floor().astype('int16')
|
||||
tmpdf['timestamp_month'] = np.int8(y)
|
||||
tmpdf.drop_column('josh_mody_n')
|
||||
testdfs.append(tmpdf)
|
||||
del(tmpdf)
|
||||
del(joined_df)
|
||||
|
||||
return cudf.concat(testdfs)
|
||||
|
||||
def combine_joined_12_mon(joined_df, testdf, **kwargs):
|
||||
joined_df.drop_column('delinquency_12')
|
||||
joined_df.drop_column('upb_12')
|
||||
joined_df['timestamp_year'] = joined_df['timestamp_year'].astype('int16')
|
||||
joined_df['timestamp_month'] = joined_df['timestamp_month'].astype('int8')
|
||||
return joined_df.merge(testdf, how='left', on=['loan_id', 'timestamp_year', 'timestamp_month'], type='hash')
|
||||
|
||||
def final_performance_delinquency(gdf, joined_df, **kwargs):
|
||||
merged = null_workaround(gdf)
|
||||
joined_df = null_workaround(joined_df)
|
||||
merged['timestamp_month'] = merged['monthly_reporting_period'].dt.month
|
||||
merged['timestamp_month'] = merged['timestamp_month'].astype('int8')
|
||||
merged['timestamp_year'] = merged['monthly_reporting_period'].dt.year
|
||||
merged['timestamp_year'] = merged['timestamp_year'].astype('int16')
|
||||
merged = merged.merge(joined_df, how='left', on=['loan_id', 'timestamp_year', 'timestamp_month'], type='hash')
|
||||
merged.drop_column('timestamp_year')
|
||||
merged.drop_column('timestamp_month')
|
||||
return merged
|
||||
|
||||
def join_perf_acq_gdfs(perf, acq, **kwargs):
|
||||
perf = null_workaround(perf)
|
||||
acq = null_workaround(acq)
|
||||
return perf.merge(acq, how='left', on=['loan_id'], type='hash')
|
||||
|
||||
def last_mile_cleaning(df, **kwargs):
|
||||
drop_list = [
|
||||
'loan_id', 'orig_date', 'first_pay_date', 'seller_name',
|
||||
'monthly_reporting_period', 'last_paid_installment_date', 'maturity_date', 'ever_30', 'ever_90', 'ever_180',
|
||||
'delinquency_30', 'delinquency_90', 'delinquency_180', 'upb_12',
|
||||
'zero_balance_effective_date','foreclosed_after', 'disposition_date','timestamp'
|
||||
]
|
||||
for column in drop_list:
|
||||
df.drop_column(column)
|
||||
for col, dtype in df.dtypes.iteritems():
|
||||
if str(dtype)=='category':
|
||||
df[col] = df[col].cat.codes
|
||||
df[col] = df[col].astype('float32')
|
||||
df['delinquency_12'] = df['delinquency_12'] > 0
|
||||
df['delinquency_12'] = df['delinquency_12'].fillna(False).astype('int32')
|
||||
for column in df.columns:
|
||||
df[column] = df[column].fillna(-1)
|
||||
return df.to_arrow(preserve_index=False)
|
||||
|
||||
def main():
|
||||
#print('XGBOOST_BUILD_DOC is ' + os.environ['XGBOOST_BUILD_DOC'])
|
||||
parser = argparse.ArgumentParser("rapidssample")
|
||||
parser.add_argument("--data_dir", type=str, help="location of data")
|
||||
parser.add_argument("--num_gpu", type=int, help="Number of GPUs to use", default=1)
|
||||
parser.add_argument("--part_count", type=int, help="Number of data files to train against", default=2)
|
||||
parser.add_argument("--end_year", type=int, help="Year to end the data load", default=2000)
|
||||
parser.add_argument("--cpu_predictor", type=str, help="Flag to use CPU for prediction", default='False')
|
||||
parser.add_argument('-f', type=str, default='') # added for notebook execution scenarios
|
||||
args = parser.parse_args()
|
||||
data_dir = args.data_dir
|
||||
num_gpu = args.num_gpu
|
||||
part_count = args.part_count
|
||||
end_year = args.end_year
|
||||
cpu_predictor = args.cpu_predictor.lower() in ('yes', 'true', 't', 'y', '1')
|
||||
|
||||
if cpu_predictor:
|
||||
print('Training with CPUs require num gpu = 1')
|
||||
num_gpu = 1
|
||||
|
||||
print('data_dir = {0}'.format(data_dir))
|
||||
print('num_gpu = {0}'.format(num_gpu))
|
||||
print('part_count = {0}'.format(part_count))
|
||||
#part_count = part_count + 1 # adding one because the usage below is not inclusive
|
||||
print('end_year = {0}'.format(end_year))
|
||||
print('cpu_predictor = {0}'.format(cpu_predictor))
|
||||
|
||||
import subprocess
|
||||
|
||||
cmd = "hostname --all-ip-addresses"
|
||||
process = subprocess.Popen(cmd.split(), stdout=subprocess.PIPE)
|
||||
output, error = process.communicate()
|
||||
IPADDR = str(output.decode()).split()[0]
|
||||
|
||||
cluster = LocalCUDACluster(ip=IPADDR,n_workers=num_gpu)
|
||||
client = Client(cluster)
|
||||
client
|
||||
print(client.ncores())
|
||||
|
||||
# to download data for this notebook, visit https://rapidsai.github.io/demos/datasets/mortgage-data and update the following paths accordingly
|
||||
acq_data_path = "{0}/acq".format(data_dir) #"/rapids/data/mortgage/acq"
|
||||
perf_data_path = "{0}/perf".format(data_dir) #"/rapids/data/mortgage/perf"
|
||||
col_names_path = "{0}/names.csv".format(data_dir) # "/rapids/data/mortgage/names.csv"
|
||||
start_year = 2000
|
||||
#end_year = 2000 # end_year is inclusive -- converted to parameter
|
||||
#part_count = 2 # the number of data files to train against -- converted to parameter
|
||||
|
||||
client.run(initialize_rmm_pool)
|
||||
client
|
||||
print(client.ncores())
|
||||
# NOTE: The ETL calculates additional features which are then dropped before creating the XGBoost DMatrix.
|
||||
# This can be optimized to avoid calculating the dropped features.
|
||||
print("Reading ...")
|
||||
t1 = datetime.datetime.now()
|
||||
gpu_dfs = []
|
||||
gpu_time = 0
|
||||
quarter = 1
|
||||
year = start_year
|
||||
count = 0
|
||||
while year <= end_year:
|
||||
for file in glob(os.path.join(perf_data_path + "/Performance_" + str(year) + "Q" + str(quarter) + "*")):
|
||||
if count < part_count:
|
||||
gpu_dfs.append(process_quarter_gpu(client, col_names_path, acq_data_path, year=year, quarter=quarter, perf_file=file))
|
||||
count += 1
|
||||
print('file: {0}'.format(file))
|
||||
print('count: {0}'.format(count))
|
||||
quarter += 1
|
||||
if quarter == 5:
|
||||
year += 1
|
||||
quarter = 1
|
||||
|
||||
wait(gpu_dfs)
|
||||
t2 = datetime.datetime.now()
|
||||
print("Reading time ...")
|
||||
print(t2-t1)
|
||||
print('len(gpu_dfs) is {0}'.format(len(gpu_dfs)))
|
||||
|
||||
client.run(cudf._gdf.rmm_finalize)
|
||||
client.run(initialize_rmm_no_pool)
|
||||
client
|
||||
print(client.ncores())
|
||||
dxgb_gpu_params = {
|
||||
'nround': 100,
|
||||
'max_depth': 8,
|
||||
'max_leaves': 2**8,
|
||||
'alpha': 0.9,
|
||||
'eta': 0.1,
|
||||
'gamma': 0.1,
|
||||
'learning_rate': 0.1,
|
||||
'subsample': 1,
|
||||
'reg_lambda': 1,
|
||||
'scale_pos_weight': 2,
|
||||
'min_child_weight': 30,
|
||||
'tree_method': 'gpu_hist',
|
||||
'n_gpus': 1,
|
||||
'distributed_dask': True,
|
||||
'loss': 'ls',
|
||||
'objective': 'gpu:reg:linear',
|
||||
'max_features': 'auto',
|
||||
'criterion': 'friedman_mse',
|
||||
'grow_policy': 'lossguide',
|
||||
'verbose': True
|
||||
}
|
||||
|
||||
if cpu_predictor:
|
||||
print('Training using CPUs')
|
||||
dxgb_gpu_params['predictor'] = 'cpu_predictor'
|
||||
dxgb_gpu_params['tree_method'] = 'hist'
|
||||
dxgb_gpu_params['objective'] = 'reg:linear'
|
||||
|
||||
else:
|
||||
print('Training using GPUs')
|
||||
|
||||
print('Training parameters are {0}'.format(dxgb_gpu_params))
|
||||
|
||||
gpu_dfs = [delayed(DataFrame.from_arrow)(gpu_df) for gpu_df in gpu_dfs[:part_count]]
|
||||
gpu_dfs = [gpu_df for gpu_df in gpu_dfs]
|
||||
wait(gpu_dfs)
|
||||
|
||||
tmp_map = [(gpu_df, list(client.who_has(gpu_df).values())[0]) for gpu_df in gpu_dfs]
|
||||
new_map = {}
|
||||
for key, value in tmp_map:
|
||||
if value not in new_map:
|
||||
new_map[value] = [key]
|
||||
else:
|
||||
new_map[value].append(key)
|
||||
|
||||
del(tmp_map)
|
||||
gpu_dfs = []
|
||||
for list_delayed in new_map.values():
|
||||
gpu_dfs.append(delayed(cudf.concat)(list_delayed))
|
||||
|
||||
del(new_map)
|
||||
gpu_dfs = [(gpu_df[['delinquency_12']], gpu_df[delayed(list)(gpu_df.columns.difference(['delinquency_12']))]) for gpu_df in gpu_dfs]
|
||||
gpu_dfs = [(gpu_df[0].persist(), gpu_df[1].persist()) for gpu_df in gpu_dfs]
|
||||
|
||||
gpu_dfs = [dask.delayed(xgb.DMatrix)(gpu_df[1], gpu_df[0]) for gpu_df in gpu_dfs]
|
||||
gpu_dfs = [gpu_df.persist() for gpu_df in gpu_dfs]
|
||||
gc.collect()
|
||||
wait(gpu_dfs)
|
||||
|
||||
labels = None
|
||||
t1 = datetime.datetime.now()
|
||||
bst = dxgb_gpu.train(client, dxgb_gpu_params, gpu_dfs, labels, num_boost_round=dxgb_gpu_params['nround'])
|
||||
t2 = datetime.datetime.now()
|
||||
print("Training time ...")
|
||||
print(t2-t1)
|
||||
print('str(bst) is {0}'.format(str(bst)))
|
||||
print('Exiting script')
|
||||
|
||||
if __name__ == '__main__':
|
||||
main()
|
||||
723
contrib/datadrift/azure-ml-datadrift.ipynb
Normal file
723
contrib/datadrift/azure-ml-datadrift.ipynb
Normal file
@@ -0,0 +1,723 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "rafarmah"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Track Data Drift between Training and Inference Data in Production \n",
|
||||
"\n",
|
||||
"With this notebook, you will learn how to enable the DataDrift service to automatically track and determine whether your inference data is drifting from the data your model was initially trained on. The DataDrift service provides metrics and visualizations to help stakeholders identify which specific features cause the concept drift to occur.\n",
|
||||
"\n",
|
||||
"Please email driftfeedback@microsoft.com with any issues. A member from the DataDrift team will respond shortly. \n",
|
||||
"\n",
|
||||
"The DataDrift Public Preview API can be found [here](https://docs.microsoft.com/en-us/python/api/azureml-contrib-datadrift/?view=azure-ml-py). "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Prerequisites and Setup"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Install the DataDrift package\n",
|
||||
"\n",
|
||||
"Install the azureml-contrib-datadrift, azureml-opendatasets and lightgbm packages before running this notebook.\n",
|
||||
"```\n",
|
||||
"pip install azureml-contrib-datadrift\n",
|
||||
"pip install lightgbm\n",
|
||||
"```"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Import Dependencies"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import json\n",
|
||||
"import os\n",
|
||||
"import time\n",
|
||||
"from datetime import datetime, timedelta\n",
|
||||
"\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"import requests\n",
|
||||
"from azureml.contrib.datadrift import DataDriftDetector, AlertConfiguration\n",
|
||||
"from azureml.opendatasets import NoaaIsdWeather\n",
|
||||
"from azureml.core import Dataset, Workspace, Run\n",
|
||||
"from azureml.core.compute import AksCompute, ComputeTarget\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.image import ContainerImage\n",
|
||||
"from azureml.core.model import Model\n",
|
||||
"from azureml.core.webservice import Webservice, AksWebservice\n",
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"from sklearn.externals import joblib\n",
|
||||
"from sklearn.model_selection import train_test_split\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Set up Configuraton and Create Azure ML Workspace\n",
|
||||
"\n",
|
||||
"If you are using an Azure Machine Learning Notebook VM, you are all set. Otherwise, go through the [configuration notebook](../../../configuration.ipynb) first if you haven't already to establish your connection to the AzureML Workspace."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Please type in your initials/alias. The prefix is prepended to the names of resources created by this notebook. \n",
|
||||
"prefix = \"dd\"\n",
|
||||
"\n",
|
||||
"# NOTE: Please do not change the model_name, as it's required by the score.py file\n",
|
||||
"model_name = \"driftmodel\"\n",
|
||||
"image_name = \"{}driftimage\".format(prefix)\n",
|
||||
"service_name = \"{}driftservice\".format(prefix)\n",
|
||||
"\n",
|
||||
"# optionally, set email address to receive an email alert for DataDrift\n",
|
||||
"email_address = \"\""
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"print(ws.name, ws.resource_group, ws.location, ws.subscription_id, sep = '\\n')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Generate Train/Testing Data\n",
|
||||
"\n",
|
||||
"For this demo, we will use NOAA weather data from [Azure Open Datasets](https://azure.microsoft.com/services/open-datasets/). You may replace this step with your own dataset. "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"usaf_list = ['725724', '722149', '723090', '722159', '723910', '720279',\n",
|
||||
" '725513', '725254', '726430', '720381', '723074', '726682',\n",
|
||||
" '725486', '727883', '723177', '722075', '723086', '724053',\n",
|
||||
" '725070', '722073', '726060', '725224', '725260', '724520',\n",
|
||||
" '720305', '724020', '726510', '725126', '722523', '703333',\n",
|
||||
" '722249', '722728', '725483', '722972', '724975', '742079',\n",
|
||||
" '727468', '722193', '725624', '722030', '726380', '720309',\n",
|
||||
" '722071', '720326', '725415', '724504', '725665', '725424',\n",
|
||||
" '725066']\n",
|
||||
"\n",
|
||||
"columns = ['usaf', 'wban', 'datetime', 'latitude', 'longitude', 'elevation', 'windAngle', 'windSpeed', 'temperature', 'stationName', 'p_k']\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"def enrich_weather_noaa_data(noaa_df):\n",
|
||||
" hours_in_day = 23\n",
|
||||
" week_in_year = 52\n",
|
||||
" \n",
|
||||
" noaa_df[\"hour\"] = noaa_df[\"datetime\"].dt.hour\n",
|
||||
" noaa_df[\"weekofyear\"] = noaa_df[\"datetime\"].dt.week\n",
|
||||
" \n",
|
||||
" noaa_df[\"sine_weekofyear\"] = noaa_df['datetime'].transform(lambda x: np.sin((2*np.pi*x.dt.week-1)/week_in_year))\n",
|
||||
" noaa_df[\"cosine_weekofyear\"] = noaa_df['datetime'].transform(lambda x: np.cos((2*np.pi*x.dt.week-1)/week_in_year))\n",
|
||||
"\n",
|
||||
" noaa_df[\"sine_hourofday\"] = noaa_df['datetime'].transform(lambda x: np.sin(2*np.pi*x.dt.hour/hours_in_day))\n",
|
||||
" noaa_df[\"cosine_hourofday\"] = noaa_df['datetime'].transform(lambda x: np.cos(2*np.pi*x.dt.hour/hours_in_day))\n",
|
||||
" \n",
|
||||
" return noaa_df\n",
|
||||
"\n",
|
||||
"def add_window_col(input_df):\n",
|
||||
" shift_interval = pd.Timedelta('-7 days') # your X days interval\n",
|
||||
" df_shifted = input_df.copy()\n",
|
||||
" df_shifted['datetime'] = df_shifted['datetime'] - shift_interval\n",
|
||||
" df_shifted.drop(list(input_df.columns.difference(['datetime', 'usaf', 'wban', 'sine_hourofday', 'temperature'])), axis=1, inplace=True)\n",
|
||||
"\n",
|
||||
" # merge, keeping only observations where -1 lag is present\n",
|
||||
" df2 = pd.merge(input_df,\n",
|
||||
" df_shifted,\n",
|
||||
" on=['datetime', 'usaf', 'wban', 'sine_hourofday'],\n",
|
||||
" how='inner', # use 'left' to keep observations without lags\n",
|
||||
" suffixes=['', '-7'])\n",
|
||||
" return df2\n",
|
||||
"\n",
|
||||
"def get_noaa_data(start_time, end_time, cols, station_list):\n",
|
||||
" isd = NoaaIsdWeather(start_time, end_time, cols=cols)\n",
|
||||
" # Read into Pandas data frame.\n",
|
||||
" noaa_df = isd.to_pandas_dataframe()\n",
|
||||
" noaa_df = noaa_df.rename(columns={\"stationName\": \"station_name\"})\n",
|
||||
" \n",
|
||||
" df_filtered = noaa_df[noaa_df[\"usaf\"].isin(station_list)]\n",
|
||||
" df_filtered.reset_index(drop=True)\n",
|
||||
" \n",
|
||||
" # Enrich with time features\n",
|
||||
" df_enriched = enrich_weather_noaa_data(df_filtered)\n",
|
||||
" \n",
|
||||
" return df_enriched\n",
|
||||
"\n",
|
||||
"def get_featurized_noaa_df(start_time, end_time, cols, station_list):\n",
|
||||
" df_1 = get_noaa_data(start_time - timedelta(days=7), start_time - timedelta(seconds=1), cols, station_list)\n",
|
||||
" df_2 = get_noaa_data(start_time, end_time, cols, station_list)\n",
|
||||
" noaa_df = pd.concat([df_1, df_2])\n",
|
||||
" \n",
|
||||
" print(\"Adding window feature\")\n",
|
||||
" df_window = add_window_col(noaa_df)\n",
|
||||
" \n",
|
||||
" cat_columns = df_window.dtypes == object\n",
|
||||
" cat_columns = cat_columns[cat_columns == True]\n",
|
||||
" \n",
|
||||
" print(\"Encoding categorical columns\")\n",
|
||||
" df_encoded = pd.get_dummies(df_window, columns=cat_columns.keys().tolist())\n",
|
||||
" \n",
|
||||
" print(\"Dropping unnecessary columns\")\n",
|
||||
" df_featurized = df_encoded.drop(['windAngle', 'windSpeed', 'datetime', 'elevation'], axis=1).dropna().drop_duplicates()\n",
|
||||
" \n",
|
||||
" return df_featurized"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Train model on Jan 1 - 14, 2009 data\n",
|
||||
"df = get_featurized_noaa_df(datetime(2009, 1, 1), datetime(2009, 1, 14, 23, 59, 59), columns, usaf_list)\n",
|
||||
"df.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"label = \"temperature\"\n",
|
||||
"x_df = df.drop(label, axis=1)\n",
|
||||
"y_df = df[[label]]\n",
|
||||
"x_train, x_test, y_train, y_test = train_test_split(df, y_df, test_size=0.2, random_state=223)\n",
|
||||
"print(x_train.shape, x_test.shape, y_train.shape, y_test.shape)\n",
|
||||
"\n",
|
||||
"training_dir = 'outputs/training'\n",
|
||||
"training_file = \"training.csv\"\n",
|
||||
"\n",
|
||||
"# Generate training dataframe to register as Training Dataset\n",
|
||||
"os.makedirs(training_dir, exist_ok=True)\n",
|
||||
"training_df = pd.merge(x_train.drop(label, axis=1), y_train, left_index=True, right_index=True)\n",
|
||||
"training_df.to_csv(training_dir + \"/\" + training_file)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Create/Register Training Dataset"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"dataset_name = \"dataset\"\n",
|
||||
"name_suffix = datetime.utcnow().strftime(\"%Y-%m-%d-%H-%M-%S\")\n",
|
||||
"snapshot_name = \"snapshot-{}\".format(name_suffix)\n",
|
||||
"\n",
|
||||
"dstore = ws.get_default_datastore()\n",
|
||||
"dstore.upload(training_dir, \"data/training\", show_progress=True)\n",
|
||||
"dpath = dstore.path(\"data/training/training.csv\")\n",
|
||||
"trainingDataset = Dataset.auto_read_files(dpath, include_path=True)\n",
|
||||
"trainingDataset = trainingDataset.register(workspace=ws, name=dataset_name, description=\"dset\", exist_ok=True)\n",
|
||||
"\n",
|
||||
"datasets = [(Dataset.Scenario.TRAINING, trainingDataset)]\n",
|
||||
"print(\"dataset registration done.\\n\")\n",
|
||||
"datasets"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train and Save Model"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import lightgbm as lgb\n",
|
||||
"\n",
|
||||
"train = lgb.Dataset(data=x_train, \n",
|
||||
" label=y_train)\n",
|
||||
"\n",
|
||||
"test = lgb.Dataset(data=x_test, \n",
|
||||
" label=y_test,\n",
|
||||
" reference=train)\n",
|
||||
"\n",
|
||||
"params = {'learning_rate' : 0.1,\n",
|
||||
" 'boosting' : 'gbdt',\n",
|
||||
" 'metric' : 'rmse',\n",
|
||||
" 'feature_fraction' : 1,\n",
|
||||
" 'bagging_fraction' : 1,\n",
|
||||
" 'max_depth': 6,\n",
|
||||
" 'num_leaves' : 31,\n",
|
||||
" 'objective' : 'regression',\n",
|
||||
" 'bagging_freq' : 1,\n",
|
||||
" \"verbose\": -1,\n",
|
||||
" 'min_data_per_leaf': 100}\n",
|
||||
"\n",
|
||||
"model = lgb.train(params, \n",
|
||||
" num_boost_round=500,\n",
|
||||
" train_set=train,\n",
|
||||
" valid_sets=[train, test],\n",
|
||||
" verbose_eval=50,\n",
|
||||
" early_stopping_rounds=25)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"model_file = 'outputs/{}.pkl'.format(model_name)\n",
|
||||
"\n",
|
||||
"os.makedirs('outputs', exist_ok=True)\n",
|
||||
"joblib.dump(model, model_file)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Register Model"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"model = Model.register(model_path=model_file,\n",
|
||||
" model_name=model_name,\n",
|
||||
" workspace=ws,\n",
|
||||
" datasets=datasets)\n",
|
||||
"\n",
|
||||
"print(model_name, image_name, service_name, model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Deploy Model To AKS"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Prepare Environment"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"myenv = CondaDependencies.create(conda_packages=['numpy','scikit-learn', 'joblib', 'lightgbm', 'pandas'],\n",
|
||||
" pip_packages=['azureml-monitoring', 'azureml-sdk[automl]'])\n",
|
||||
"\n",
|
||||
"with open(\"myenv.yml\",\"w\") as f:\n",
|
||||
" f.write(myenv.serialize_to_string())"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Create Image"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Image creation may take up to 15 minutes.\n",
|
||||
"\n",
|
||||
"image_name = image_name + str(model.version)\n",
|
||||
"\n",
|
||||
"if not image_name in ws.images:\n",
|
||||
" # Use the score.py defined in this directory as the execution script\n",
|
||||
" # NOTE: The Model Data Collector must be enabled in the execution script for DataDrift to run correctly\n",
|
||||
" image_config = ContainerImage.image_configuration(execution_script=\"score.py\",\n",
|
||||
" runtime=\"python\",\n",
|
||||
" conda_file=\"myenv.yml\",\n",
|
||||
" description=\"Image with weather dataset model\")\n",
|
||||
" image = ContainerImage.create(name=image_name,\n",
|
||||
" models=[model],\n",
|
||||
" image_config=image_config,\n",
|
||||
" workspace=ws)\n",
|
||||
"\n",
|
||||
" image.wait_for_creation(show_output=True)\n",
|
||||
"else:\n",
|
||||
" image = ws.images[image_name]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Create Compute Target"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"aks_name = 'dd-demo-e2e'\n",
|
||||
"prov_config = AksCompute.provisioning_configuration()\n",
|
||||
"\n",
|
||||
"if not aks_name in ws.compute_targets:\n",
|
||||
" aks_target = ComputeTarget.create(workspace=ws,\n",
|
||||
" name=aks_name,\n",
|
||||
" provisioning_configuration=prov_config)\n",
|
||||
"\n",
|
||||
" aks_target.wait_for_completion(show_output=True)\n",
|
||||
" print(aks_target.provisioning_state)\n",
|
||||
" print(aks_target.provisioning_errors)\n",
|
||||
"else:\n",
|
||||
" aks_target=ws.compute_targets[aks_name]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Deploy Service"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"aks_service_name = service_name\n",
|
||||
"\n",
|
||||
"if not aks_service_name in ws.webservices:\n",
|
||||
" aks_config = AksWebservice.deploy_configuration(collect_model_data=True, enable_app_insights=True)\n",
|
||||
" aks_service = Webservice.deploy_from_image(workspace=ws,\n",
|
||||
" name=aks_service_name,\n",
|
||||
" image=image,\n",
|
||||
" deployment_config=aks_config,\n",
|
||||
" deployment_target=aks_target)\n",
|
||||
" aks_service.wait_for_deployment(show_output=True)\n",
|
||||
" print(aks_service.state)\n",
|
||||
"else:\n",
|
||||
" aks_service = ws.webservices[aks_service_name]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Run DataDrift Analysis"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Send Scoring Data to Service"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Download Scoring Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Score Model on March 15, 2016 data\n",
|
||||
"scoring_df = get_noaa_data(datetime(2016, 3, 15) - timedelta(days=7), datetime(2016, 3, 16), columns, usaf_list)\n",
|
||||
"# Add the window feature column\n",
|
||||
"scoring_df = add_window_col(scoring_df)\n",
|
||||
"\n",
|
||||
"# Drop features not used by the model\n",
|
||||
"print(\"Dropping unnecessary columns\")\n",
|
||||
"scoring_df = scoring_df.drop(['windAngle', 'windSpeed', 'datetime', 'elevation'], axis=1).dropna()\n",
|
||||
"scoring_df.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# One Hot Encode the scoring dataset to match the training dataset schema\n",
|
||||
"columns_dict = model.datasets[\"training\"][0].get_profile().columns\n",
|
||||
"extra_cols = ('Path', 'Column1')\n",
|
||||
"for k in extra_cols:\n",
|
||||
" columns_dict.pop(k, None)\n",
|
||||
"training_columns = list(columns_dict.keys())\n",
|
||||
"\n",
|
||||
"categorical_columns = scoring_df.dtypes == object\n",
|
||||
"categorical_columns = categorical_columns[categorical_columns == True]\n",
|
||||
"\n",
|
||||
"test_df = pd.get_dummies(scoring_df[categorical_columns.keys().tolist()])\n",
|
||||
"encoded_df = scoring_df.join(test_df)\n",
|
||||
"\n",
|
||||
"# Populate missing OHE columns with 0 values to match traning dataset schema\n",
|
||||
"difference = list(set(training_columns) - set(encoded_df.columns.tolist()))\n",
|
||||
"for col in difference:\n",
|
||||
" encoded_df[col] = 0\n",
|
||||
"encoded_df.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Serialize dataframe to list of row dictionaries\n",
|
||||
"encoded_dict = encoded_df.to_dict('records')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Submit Scoring Data to Service"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%%time\n",
|
||||
"\n",
|
||||
"# retreive the API keys. AML generates two keys.\n",
|
||||
"key1, key2 = aks_service.get_keys()\n",
|
||||
"\n",
|
||||
"total_count = len(scoring_df)\n",
|
||||
"i = 0\n",
|
||||
"load = []\n",
|
||||
"for row in encoded_dict:\n",
|
||||
" load.append(row)\n",
|
||||
" i = i + 1\n",
|
||||
" if i % 100 == 0:\n",
|
||||
" payload = json.dumps({\"data\": load})\n",
|
||||
" \n",
|
||||
" # construct raw HTTP request and send to the service\n",
|
||||
" payload_binary = bytes(payload,encoding = 'utf8')\n",
|
||||
" headers = {'Content-Type':'application/json', 'Authorization': 'Bearer ' + key1}\n",
|
||||
" resp = requests.post(aks_service.scoring_uri, payload_binary, headers=headers)\n",
|
||||
" \n",
|
||||
" print(\"prediction:\", resp.content, \"Progress: {}/{}\".format(i, total_count)) \n",
|
||||
"\n",
|
||||
" load = []\n",
|
||||
" time.sleep(3)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"We need to wait up to 10 minutes for the Model Data Collector to dump the model input and inference data to storage in the Workspace, where it's used by the DataDriftDetector job."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"time.sleep(600)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Configure DataDrift"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"services = [service_name]\n",
|
||||
"start = datetime.now() - timedelta(days=2)\n",
|
||||
"end = datetime(year=2020, month=1, day=22, hour=15, minute=16)\n",
|
||||
"feature_list = ['usaf', 'wban', 'latitude', 'longitude', 'station_name', 'p_k', 'sine_hourofday', 'cosine_hourofday', 'temperature-7']\n",
|
||||
"alert_config = AlertConfiguration([email_address]) if email_address else None\n",
|
||||
"\n",
|
||||
"# there will be an exception indicating using get() method if DataDrift object already exist\n",
|
||||
"try:\n",
|
||||
" datadrift = DataDriftDetector.create(ws, model.name, model.version, services, frequency=\"Day\", alert_config=alert_config)\n",
|
||||
"except KeyError:\n",
|
||||
" datadrift = DataDriftDetector.get(ws, model.name, model.version)\n",
|
||||
" \n",
|
||||
"print(\"Details of DataDrift Object:\\n{}\".format(datadrift))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Run an Adhoc DataDriftDetector Run"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"target_date = datetime.today()\n",
|
||||
"run = datadrift.run(target_date, services, feature_list=feature_list, create_compute_target=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"exp = Experiment(ws, datadrift._id)\n",
|
||||
"dd_run = Run(experiment=exp, run_id=run)\n",
|
||||
"RunDetails(dd_run).show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Get Drift Analysis Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(dd_run.get_children())\n",
|
||||
"for child in children:\n",
|
||||
" child.wait_for_completion()\n",
|
||||
"\n",
|
||||
"drift_metrics = datadrift.get_output(start_time=start, end_time=end)\n",
|
||||
"drift_metrics"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Show all drift figures, one per serivice.\n",
|
||||
"# If setting with_details is False (by default), only drift will be shown; if it's True, all details will be shown.\n",
|
||||
"\n",
|
||||
"drift_figures = datadrift.show(with_details=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Enable DataDrift Schedule"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"datadrift.enable_schedule()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
8
contrib/datadrift/azure-ml-datadrift.yml
Normal file
8
contrib/datadrift/azure-ml-datadrift.yml
Normal file
@@ -0,0 +1,8 @@
|
||||
name: azure-ml-datadrift
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-contrib-datadrift
|
||||
- azureml-opendatasets
|
||||
- lightgbm
|
||||
- azureml-widgets
|
||||
58
contrib/datadrift/score.py
Normal file
58
contrib/datadrift/score.py
Normal file
@@ -0,0 +1,58 @@
|
||||
import pickle
|
||||
import json
|
||||
import numpy
|
||||
import azureml.train.automl
|
||||
from sklearn.externals import joblib
|
||||
from sklearn.linear_model import Ridge
|
||||
from azureml.core.model import Model
|
||||
from azureml.core.run import Run
|
||||
from azureml.monitoring import ModelDataCollector
|
||||
import time
|
||||
import pandas as pd
|
||||
|
||||
|
||||
def init():
|
||||
global model, inputs_dc, prediction_dc, feature_names, categorical_features
|
||||
|
||||
print("Model is initialized" + time.strftime("%H:%M:%S"))
|
||||
model_path = Model.get_model_path(model_name="driftmodel")
|
||||
model = joblib.load(model_path)
|
||||
|
||||
feature_names = ["usaf", "wban", "latitude", "longitude", "station_name", "p_k",
|
||||
"sine_weekofyear", "cosine_weekofyear", "sine_hourofday", "cosine_hourofday",
|
||||
"temperature-7"]
|
||||
|
||||
categorical_features = ["usaf", "wban", "p_k", "station_name"]
|
||||
|
||||
inputs_dc = ModelDataCollector(model_name="driftmodel",
|
||||
identifier="inputs",
|
||||
feature_names=feature_names)
|
||||
|
||||
prediction_dc = ModelDataCollector("driftmodel",
|
||||
identifier="predictions",
|
||||
feature_names=["temperature"])
|
||||
|
||||
|
||||
def run(raw_data):
|
||||
global inputs_dc, prediction_dc
|
||||
|
||||
try:
|
||||
data = json.loads(raw_data)["data"]
|
||||
data = pd.DataFrame(data)
|
||||
|
||||
# Remove the categorical features as the model expects OHE values
|
||||
input_data = data.drop(categorical_features, axis=1)
|
||||
|
||||
result = model.predict(input_data)
|
||||
|
||||
# Collect the non-OHE dataframe
|
||||
collected_df = data[feature_names]
|
||||
|
||||
inputs_dc.collect(collected_df.values)
|
||||
prediction_dc.collect(result)
|
||||
return result.tolist()
|
||||
except Exception as e:
|
||||
error = str(e)
|
||||
|
||||
print(error + time.strftime("%H:%M:%S"))
|
||||
return error
|
||||
@@ -4,8 +4,9 @@ Learn how to use Azure Machine Learning services for experimentation and model m
|
||||
|
||||
As a pre-requisite, run the [configuration Notebook](../configuration.ipynb) notebook first to set up your Azure ML Workspace. Then, run the notebooks in following recommended order.
|
||||
|
||||
* [train-within-notebook](./training/train-within-notebook): Train a model hile tracking run history, and learn how to deploy the model as web service to Azure Container Instance.
|
||||
* [train-on-local](./training/train-on-local): Learn how to submit a run and use Azure ML managed run configuration.
|
||||
* [train-within-notebook](./training/train-within-notebook): Train a model hile tracking run history, and learn how to deploy the model as web service to Azure Container Instance.
|
||||
* [train-on-local](./training/train-on-local): Learn how to submit a run to local computer and use Azure ML managed run configuration.
|
||||
* [train-on-amlcompute](./training/train-on-amlcompute): Use a 1-n node Azure ML managed compute cluster for remote runs on Azure CPU or GPU infrastructure.
|
||||
* [train-on-remote-vm](./training/train-on-remote-vm): Use Data Science Virtual Machine as a target for remote runs.
|
||||
* [logging-api](./training/logging-api): Learn about the details of logging metrics to run history.
|
||||
* [register-model-create-image-deploy-service](./deployment/register-model-create-image-deploy-service): Learn about the details of model management.
|
||||
@@ -13,4 +14,4 @@ As a pre-requisite, run the [configuration Notebook](../configuration.ipynb) not
|
||||
* [enable-data-collection-for-models-in-aks](./deployment/enable-data-collection-for-models-in-aks) Learn about data collection APIs for deployed model.
|
||||
* [enable-app-insights-in-production-service](./deployment/enable-app-insights-in-production-service) Learn how to use App Insights with production web service.
|
||||
|
||||
Find quickstarts, end-to-end tutorials, and how-tos on the [official documentation site for Azure Machine Learning service](https://docs.microsoft.com/en-us/azure/machine-learning/service/).
|
||||
Find quickstarts, end-to-end tutorials, and how-tos on the [official documentation site for Azure Machine Learning service](https://docs.microsoft.com/en-us/azure/machine-learning/service/).
|
||||
|
||||
@@ -1,265 +1,290 @@
|
||||
# Table of Contents
|
||||
1. [Automated ML Introduction](#introduction)
|
||||
1. [Running samples in Azure Notebooks](#jupyter)
|
||||
1. [Running samples in Azure Databricks](#databricks)
|
||||
1. [Running samples in a Local Conda environment](#localconda)
|
||||
1. [Automated ML SDK Sample Notebooks](#samples)
|
||||
1. [Documentation](#documentation)
|
||||
1. [Running using python command](#pythoncommand)
|
||||
1. [Troubleshooting](#troubleshooting)
|
||||
|
||||
<a name="introduction"></a>
|
||||
# Automated ML introduction
|
||||
Automated machine learning (automated ML) builds high quality machine learning models for you by automating model and hyperparameter selection. Bring a labelled dataset that you want to build a model for, automated ML will give you a high quality machine learning model that you can use for predictions.
|
||||
|
||||
|
||||
If you are new to Data Science, AutoML will help you get jumpstarted by simplifying machine learning model building. It abstracts you from needing to perform model selection, hyperparameter selection and in one step creates a high quality trained model for you to use.
|
||||
|
||||
If you are an experienced data scientist, AutoML will help increase your productivity by intelligently performing the model and hyperparameter selection for your training and generates high quality models much quicker than manually specifying several combinations of the parameters and running training jobs. AutoML provides visibility and access to all the training jobs and the performance characteristics of the models to help you further tune the pipeline if you desire.
|
||||
|
||||
Below are the three execution environments supported by AutoML.
|
||||
|
||||
|
||||
<a name="jupyter"></a>
|
||||
## Running samples in Azure Notebooks - Jupyter based notebooks in the Azure cloud
|
||||
|
||||
1. [](https://aka.ms/aml-clone-azure-notebooks)
|
||||
[Import sample notebooks ](https://aka.ms/aml-clone-azure-notebooks) into Azure Notebooks.
|
||||
1. Follow the instructions in the [configuration](configuration.ipynb) notebook to create and connect to a workspace.
|
||||
1. Open one of the sample notebooks.
|
||||
|
||||
<a name="databricks"></a>
|
||||
## Running samples in Azure Databricks
|
||||
|
||||
**NOTE**: Please create your Azure Databricks cluster as v4.x (high concurrency preferred) with **Python 3** (dropdown).
|
||||
**NOTE**: You should at least have contributor access to your Azure subcription to run the notebook.
|
||||
- Please remove the previous SDK version if there is any and install the latest SDK by installing **azureml-sdk[automl_databricks]** as a PyPi library in Azure Databricks workspace.
|
||||
- You can find the detail Readme instructions at [GitHub](https://github.com/Azure/MachineLearningNotebooks/tree/master/how-to-use-azureml/azure-databricks).
|
||||
- Download the sample notebook AutoML_Databricks_local_06.ipynb from [GitHub](https://github.com/Azure/MachineLearningNotebooks/tree/master/how-to-use-azureml/azure-databricks) and import into the Azure databricks workspace.
|
||||
- Attach the notebook to the cluster.
|
||||
|
||||
<a name="localconda"></a>
|
||||
## Running samples in a Local Conda environment
|
||||
|
||||
To run these notebook on your own notebook server, use these installation instructions.
|
||||
|
||||
The instructions below will install everything you need and then start a Jupyter notebook. To start your Jupyter notebook manually, use:
|
||||
|
||||
```
|
||||
conda activate azure_automl
|
||||
jupyter notebook
|
||||
```
|
||||
|
||||
or on Mac:
|
||||
|
||||
```
|
||||
source activate azure_automl
|
||||
jupyter notebook
|
||||
```
|
||||
|
||||
|
||||
### 1. Install mini-conda from [here](https://conda.io/miniconda.html), choose 64-bit Python 3.7 or higher.
|
||||
- **Note**: if you already have conda installed, you can keep using it but it should be version 4.4.10 or later (as shown by: conda -V). If you have a previous version installed, you can update it using the command: conda update conda.
|
||||
There's no need to install mini-conda specifically.
|
||||
|
||||
### 2. Downloading the sample notebooks
|
||||
- Download the sample notebooks from [GitHub](https://github.com/Azure/MachineLearningNotebooks) as zip and extract the contents to a local directory. The AutoML sample notebooks are in the "automl" folder.
|
||||
|
||||
### 3. Setup a new conda environment
|
||||
The **automl/automl_setup** script creates a new conda environment, installs the necessary packages, configures the widget and starts a jupyter notebook.
|
||||
It takes the conda environment name as an optional parameter. The default conda environment name is azure_automl. The exact command depends on the operating system. See the specific sections below for Windows, Mac and Linux. It can take about 10 minutes to execute.
|
||||
## Windows
|
||||
Start an **Anaconda Prompt** window, cd to the **how-to-use-azureml/automated-machine-learning** folder where the sample notebooks were extracted and then run:
|
||||
```
|
||||
automl_setup
|
||||
```
|
||||
## Mac
|
||||
Install "Command line developer tools" if it is not already installed (you can use the command: `xcode-select --install`).
|
||||
|
||||
Start a Terminal windows, cd to the **how-to-use-azureml/automated-machine-learning** folder where the sample notebooks were extracted and then run:
|
||||
|
||||
```
|
||||
bash automl_setup_mac.sh
|
||||
```
|
||||
|
||||
## Linux
|
||||
cd to the **how-to-use-azureml/automated-machine-learning** folder where the sample notebooks were extracted and then run:
|
||||
|
||||
```
|
||||
bash automl_setup_linux.sh
|
||||
```
|
||||
|
||||
### 4. Running configuration.ipynb
|
||||
- Before running any samples you next need to run the configuration notebook. Click on configuration.ipynb notebook
|
||||
- Execute the cells in the notebook to Register Machine Learning Services Resource Provider and create a workspace. (*instructions in notebook*)
|
||||
|
||||
### 5. Running Samples
|
||||
- Please make sure you use the Python [conda env:azure_automl] kernel when trying the sample Notebooks.
|
||||
- Follow the instructions in the individual notebooks to explore various features in AutoML
|
||||
|
||||
<a name="samples"></a>
|
||||
# Automated ML SDK Sample Notebooks
|
||||
- [configuration.ipynb](configuration.ipynb)
|
||||
- Create new Azure ML Workspace
|
||||
- Save Workspace configuration file
|
||||
|
||||
- [auto-ml-classification.ipynb](classification/auto-ml-classification.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Simple example of using Auto ML for classification
|
||||
- Uses local compute for training
|
||||
|
||||
- [auto-ml-regression.ipynb](regression/auto-ml-regression.ipynb)
|
||||
- Dataset: scikit learn's [diabetes dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_diabetes.html)
|
||||
- Simple example of using Auto ML for regression
|
||||
- Uses local compute for training
|
||||
|
||||
- [auto-ml-remote-execution.ipynb](remote-execution/auto-ml-remote-execution.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Example of using Auto ML for classification using a remote linux DSVM for training
|
||||
- Parallel execution of iterations
|
||||
- Async tracking of progress
|
||||
- Cancelling individual iterations or entire run
|
||||
- Retrieving models for any iteration or logged metric
|
||||
- Specify automl settings as kwargs
|
||||
|
||||
- [auto-ml-remote-batchai.ipynb](remote-batchai/auto-ml-remote-batchai.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Example of using automated ML for classification using remote AmlCompute for training
|
||||
- Parallel execution of iterations
|
||||
- Async tracking of progress
|
||||
- Cancelling individual iterations or entire run
|
||||
- Retrieving models for any iteration or logged metric
|
||||
- Specify automl settings as kwargs
|
||||
|
||||
- [auto-ml-remote-attach.ipynb](remote-attach/auto-ml-remote-attach.ipynb)
|
||||
- Dataset: Scikit learn's [20newsgroup](http://scikit-learn.org/stable/datasets/twenty_newsgroups.html)
|
||||
- handling text data with preprocess flag
|
||||
- Reading data from a blob store for remote executions
|
||||
- using pandas dataframes for reading data
|
||||
|
||||
- [auto-ml-missing-data-blacklist-early-termination.ipynb](missing-data-blacklist-early-termination/auto-ml-missing-data-blacklist-early-termination.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Blacklist certain pipelines
|
||||
- Specify a target metrics to indicate stopping criteria
|
||||
- Handling Missing Data in the input
|
||||
|
||||
- [auto-ml-sparse-data-train-test-split.ipynb](sparse-data-train-test-split/auto-ml-sparse-data-train-test-split.ipynb)
|
||||
- Dataset: Scikit learn's [20newsgroup](http://scikit-learn.org/stable/datasets/twenty_newsgroups.html)
|
||||
- Handle sparse datasets
|
||||
- Specify custom train and validation set
|
||||
|
||||
- [auto-ml-exploring-previous-runs.ipynb](exploring-previous-runs/auto-ml-exploring-previous-runs.ipynb)
|
||||
- List all projects for the workspace
|
||||
- List all AutoML Runs for a given project
|
||||
- Get details for a AutoML Run. (Automl settings, run widget & all metrics)
|
||||
- Download fitted pipeline for any iteration
|
||||
|
||||
- [auto-ml-remote-execution-with-datastore.ipynb](remote-execution-with-datastore/auto-ml-remote-execution-with-datastore.ipynb)
|
||||
- Dataset: Scikit learn's [20newsgroup](http://scikit-learn.org/stable/datasets/twenty_newsgroups.html)
|
||||
- Download the data and store it in DataStore.
|
||||
|
||||
- [auto-ml-classification-with-deployment.ipynb](classification-with-deployment/auto-ml-classification-with-deployment.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Simple example of using Auto ML for classification
|
||||
- Registering the model
|
||||
- Creating Image and creating aci service
|
||||
- Testing the aci service
|
||||
|
||||
- [auto-ml-sample-weight.ipynb](sample-weight/auto-ml-sample-weight.ipynb)
|
||||
- How to specifying sample_weight
|
||||
- The difference that it makes to test results
|
||||
|
||||
- [auto-ml-dataprep.ipynb](dataprep/auto-ml-dataprep.ipynb)
|
||||
- Using DataPrep for reading data
|
||||
|
||||
- [auto-ml-dataprep-remote-execution.ipynb](dataprep-remote-execution/auto-ml-dataprep-remote-execution.ipynb)
|
||||
- Using DataPrep for reading data with remote execution
|
||||
|
||||
- [auto-ml-classification-local-azuredatabricks.ipynb](classification-local-azuredatabricks/auto-ml-classification-local-azuredatabricks.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](https://innovate.burningman.org/datasets-page/)
|
||||
- Example of using AutoML for classification using Azure Databricks as the platform for training
|
||||
|
||||
- [auto-ml-classification-with-whitelisting.ipynb](classification-with-whitelisting/auto-ml-classification-with-whitelisting.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Simple example of using Auto ML for classification with whitelisting tensorflow models.
|
||||
- Uses local compute for training
|
||||
|
||||
- [auto-ml-forecasting-energy-demand.ipynb](forecasting-energy-demand/auto-ml-forecasting-energy-demand.ipynb)
|
||||
- Dataset: [NYC energy demand data](forecasting-a/nyc_energy.csv)
|
||||
- Example of using AutoML for training a forecasting model
|
||||
|
||||
- [auto-ml-forecasting-orange-juice-sales.ipynb](forecasting-orange-juice-sales/auto-ml-forecasting-orange-juice-sales.ipynb)
|
||||
- Dataset: [Dominick's grocery sales of orange juice](forecasting-b/dominicks_OJ.csv)
|
||||
- Example of training an AutoML forecasting model on multiple time-series
|
||||
|
||||
<a name="documentation"></a>
|
||||
See [Configure automated machine learning experiments](https://docs.microsoft.com/azure/machine-learning/service/how-to-configure-auto-train) to learn how more about the the settings and features available for automated machine learning experiments.
|
||||
|
||||
<a name="pythoncommand"></a>
|
||||
# Running using python command
|
||||
Jupyter notebook provides a File / Download as / Python (.py) option for saving the notebook as a Python file.
|
||||
You can then run this file using the python command.
|
||||
However, on Windows the file needs to be modified before it can be run.
|
||||
The following condition must be added to the main code in the file:
|
||||
|
||||
if __name__ == "__main__":
|
||||
|
||||
The main code of the file must be indented so that it is under this condition.
|
||||
|
||||
<a name="troubleshooting"></a>
|
||||
# Troubleshooting
|
||||
## automl_setup fails
|
||||
1. On windows, make sure that you are running automl_setup from an Anconda Prompt window rather than a regular cmd window. You can launch the "Anaconda Prompt" window by hitting the Start button and typing "Anaconda Prompt". If you don't see the application "Anaconda Prompt", you might not have conda or mini conda installed. In that case, you can install it [here](https://conda.io/miniconda.html)
|
||||
2. Check that you have conda 64-bit installed rather than 32-bit. You can check this with the command `conda info`. The `platform` should be `win-64` for Windows or `osx-64` for Mac.
|
||||
3. Check that you have conda 4.4.10 or later. You can check the version with the command `conda -V`. If you have a previous version installed, you can update it using the command: `conda update conda`.
|
||||
4. Pass a new name as the first parameter to automl_setup so that it creates a new conda environment. You can view existing conda environments using `conda env list` and remove them with `conda env remove -n <environmentname>`.
|
||||
|
||||
## configuration.ipynb fails
|
||||
1) For local conda, make sure that you have susccessfully run automl_setup first.
|
||||
2) Check that the subscription_id is correct. You can find the subscription_id in the Azure Portal by selecting All Service and then Subscriptions. The characters "<" and ">" should not be included in the subscription_id value. For example, `subscription_id = "12345678-90ab-1234-5678-1234567890abcd"` has the valid format.
|
||||
3) Check that you have Contributor or Owner access to the Subscription.
|
||||
4) Check that the region is one of the supported regions: `eastus2`, `eastus`, `westcentralus`, `southeastasia`, `westeurope`, `australiaeast`, `westus2`, `southcentralus`
|
||||
5) Check that you have access to the region using the Azure Portal.
|
||||
|
||||
## workspace.from_config fails
|
||||
If the call `ws = Workspace.from_config()` fails:
|
||||
1) Make sure that you have run the `configuration.ipynb` notebook successfully.
|
||||
2) If you are running a notebook from a folder that is not under the folder where you ran `configuration.ipynb`, copy the folder aml_config and the file config.json that it contains to the new folder. Workspace.from_config reads the config.json for the notebook folder or it parent folder.
|
||||
3) If you are switching to a new subscription, resource group, workspace or region, make sure that you run the `configuration.ipynb` notebook again. Changing config.json directly will only work if the workspace already exists in the specified resource group under the specified subscription.
|
||||
4) If you want to change the region, please change the workspace, resource group or subscription. `Workspace.create` will not create or update a workspace if it already exists, even if the region specified is different.
|
||||
|
||||
## Sample notebook fails
|
||||
If a sample notebook fails with an error that property, method or library does not exist:
|
||||
1) Check that you have selected correct kernel in jupyter notebook. The kernel is displayed in the top right of the notebook page. It can be changed using the `Kernel | Change Kernel` menu option. For Azure Notebooks, it should be `Python 3.6`. For local conda environments, it should be the conda envioronment name that you specified in automl_setup. The default is azure_automl. Note that the kernel is saved as part of the notebook. So, if you switch to a new conda environment, you will have to select the new kernel in the notebook.
|
||||
2) Check that the notebook is for the SDK version that you are using. You can check the SDK version by executing `azureml.core.VERSION` in a jupyter notebook cell. You can download previous version of the sample notebooks from GitHub by clicking the `Branch` button, selecting the `Tags` tab and then selecting the version.
|
||||
|
||||
## Remote run: DsvmCompute.create fails
|
||||
There are several reasons why the DsvmCompute.create can fail. The reason is usually in the error message but you have to look at the end of the error message for the detailed reason. Some common reasons are:
|
||||
1) `Compute name is invalid, it should start with a letter, be between 2 and 16 character, and only include letters (a-zA-Z), numbers (0-9) and \'-\'.` Note that underscore is not allowed in the name.
|
||||
2) `The requested VM size xxxxx is not available in the current region.` You can select a different region or vm_size.
|
||||
|
||||
## Remote run: Unable to establish SSH connection
|
||||
AutoML uses the SSH protocol to communicate with remote DSVMs. This defaults to port 22. Possible causes for this error are:
|
||||
1) The DSVM is not ready for SSH connections. When DSVM creation completes, the DSVM might still not be ready to acceept SSH connections. The sample notebooks have a one minute delay to allow for this.
|
||||
2) Your Azure Subscription may restrict the IP address ranges that can access the DSVM on port 22. You can check this in the Azure Portal by selecting the Virtual Machine and then clicking Networking. The Virtual Machine name is the name that you provided in the notebook plus 10 alpha numeric characters to make the name unique. The Inbound Port Rules define what can access the VM on specific ports. Note that there is a priority priority order. So, a Deny entry with a low priority number will override a Allow entry with a higher priority number.
|
||||
|
||||
## Remote run: setup iteration fails
|
||||
This is often an issue with the `get_data` method.
|
||||
1) Check that the `get_data` method is valid by running it locally.
|
||||
2) Make sure that `get_data` isn't referring to any local files. `get_data` is executed on the remote DSVM. So, it doesn't have direct access to local data files. Instead you can store the data files with DataStore. See [auto-ml-remote-execution-with-datastore.ipynb](remote-execution-with-datastore/auto-ml-remote-execution-with-datastore.ipynb)
|
||||
3) You can get to the error log for the setup iteration by clicking the `Click here to see the run in Azure portal` link, click `Back to Experiment`, click on the highest run number and then click on Logs.
|
||||
|
||||
## Remote run: disk full
|
||||
AutoML creates files under /tmp/azureml_runs for each iteration that it runs. It creates a folder with the iteration id. For example: AutoML_9a038a18-77cc-48f1-80fb-65abdbc33abe_93. Under this, there is a azureml-logs folder, which contains logs. If you run too many iterations on the same DSVM, these files can fill the disk.
|
||||
You can delete the files under /tmp/azureml_runs or just delete the VM and create a new one.
|
||||
If your get_data downloads files, make sure the delete them or they can use disk space as well.
|
||||
When using DataStore, it is good to specify an absolute path for the files so that they are downloaded just once. If you specify a relative path, it will download a file for each iteration.
|
||||
|
||||
## Remote run: Iterations fail and the log contains "MemoryError"
|
||||
This can be caused by insufficient memory on the DSVM. AutoML loads all training data into memory. So, the available memory should be more than the training data size.
|
||||
If you are using a remote DSVM, memory is needed for each concurrent iteration. The max_concurrent_iterations setting specifies the maximum concurrent iterations. For example, if the training data size is 8Gb and max_concurrent_iterations is set to 10, the minimum memory required is at least 80Gb.
|
||||
To resolve this issue, allocate a DSVM with more memory or reduce the value specified for max_concurrent_iterations.
|
||||
|
||||
## Remote run: Iterations show as "Not Responding" in the RunDetails widget.
|
||||
This can be caused by too many concurrent iterations for a remote DSVM. Each concurrent iteration usually takes 100% of a core when it is running. Some iterations can use multiple cores. So, the max_concurrent_iterations setting should always be less than the number of cores of the DSVM.
|
||||
# Table of Contents
|
||||
1. [Automated ML Introduction](#introduction)
|
||||
1. [Setup using Azure Notebooks](#jupyter)
|
||||
1. [Setup using Azure Databricks](#databricks)
|
||||
1. [Setup using a Local Conda environment](#localconda)
|
||||
1. [Automated ML SDK Sample Notebooks](#samples)
|
||||
1. [Documentation](#documentation)
|
||||
1. [Running using python command](#pythoncommand)
|
||||
1. [Troubleshooting](#troubleshooting)
|
||||
|
||||
<a name="introduction"></a>
|
||||
# Automated ML introduction
|
||||
Automated machine learning (automated ML) builds high quality machine learning models for you by automating model and hyperparameter selection. Bring a labelled dataset that you want to build a model for, automated ML will give you a high quality machine learning model that you can use for predictions.
|
||||
|
||||
|
||||
If you are new to Data Science, automated ML will help you get jumpstarted by simplifying machine learning model building. It abstracts you from needing to perform model selection, hyperparameter selection and in one step creates a high quality trained model for you to use.
|
||||
|
||||
If you are an experienced data scientist, automated ML will help increase your productivity by intelligently performing the model and hyperparameter selection for your training and generates high quality models much quicker than manually specifying several combinations of the parameters and running training jobs. Automated ML provides visibility and access to all the training jobs and the performance characteristics of the models to help you further tune the pipeline if you desire.
|
||||
|
||||
Below are the three execution environments supported by automated ML.
|
||||
|
||||
|
||||
<a name="jupyter"></a>
|
||||
## Setup using Azure Notebooks - Jupyter based notebooks in the Azure cloud
|
||||
|
||||
1. [](https://aka.ms/aml-clone-azure-notebooks)
|
||||
[Import sample notebooks ](https://aka.ms/aml-clone-azure-notebooks) into Azure Notebooks.
|
||||
1. Follow the instructions in the [configuration](../../configuration.ipynb) notebook to create and connect to a workspace.
|
||||
1. Open one of the sample notebooks.
|
||||
|
||||
<a name="databricks"></a>
|
||||
## Setup using Azure Databricks
|
||||
|
||||
**NOTE**: Please create your Azure Databricks cluster as v4.x (high concurrency preferred) with **Python 3** (dropdown).
|
||||
**NOTE**: You should at least have contributor access to your Azure subcription to run the notebook.
|
||||
- Please remove the previous SDK version if there is any and install the latest SDK by installing **azureml-sdk[automl_databricks]** as a PyPi library in Azure Databricks workspace.
|
||||
- You can find the detail Readme instructions at [GitHub](https://github.com/Azure/MachineLearningNotebooks/tree/master/how-to-use-azureml/azure-databricks).
|
||||
- Download the sample notebook automl-databricks-local-01.ipynb from [GitHub](https://github.com/Azure/MachineLearningNotebooks/tree/master/how-to-use-azureml/azure-databricks) and import into the Azure databricks workspace.
|
||||
- Attach the notebook to the cluster.
|
||||
|
||||
<a name="localconda"></a>
|
||||
## Setup using a Local Conda environment
|
||||
|
||||
To run these notebook on your own notebook server, use these installation instructions.
|
||||
The instructions below will install everything you need and then start a Jupyter notebook.
|
||||
|
||||
### 1. Install mini-conda from [here](https://conda.io/miniconda.html), choose 64-bit Python 3.7 or higher.
|
||||
- **Note**: if you already have conda installed, you can keep using it but it should be version 4.4.10 or later (as shown by: conda -V). If you have a previous version installed, you can update it using the command: conda update conda.
|
||||
There's no need to install mini-conda specifically.
|
||||
|
||||
### 2. Downloading the sample notebooks
|
||||
- Download the sample notebooks from [GitHub](https://github.com/Azure/MachineLearningNotebooks) as zip and extract the contents to a local directory. The automated ML sample notebooks are in the "automated-machine-learning" folder.
|
||||
|
||||
### 3. Setup a new conda environment
|
||||
The **automl_setup** script creates a new conda environment, installs the necessary packages, configures the widget and starts a jupyter notebook. It takes the conda environment name as an optional parameter. The default conda environment name is azure_automl. The exact command depends on the operating system. See the specific sections below for Windows, Mac and Linux. It can take about 10 minutes to execute.
|
||||
|
||||
Packages installed by the **automl_setup** script:
|
||||
<ul><li>python</li><li>nb_conda</li><li>matplotlib</li><li>numpy</li><li>cython</li><li>urllib3</li><li>scipy</li><li>scikit-learn</li><li>pandas</li><li>tensorflow</li><li>py-xgboost</li><li>azureml-sdk</li><li>azureml-widgets</li><li>pandas-ml</li></ul>
|
||||
|
||||
For more details refer to the [automl_env.yml](./automl_env.yml)
|
||||
## Windows
|
||||
Start an **Anaconda Prompt** window, cd to the **how-to-use-azureml/automated-machine-learning** folder where the sample notebooks were extracted and then run:
|
||||
```
|
||||
automl_setup
|
||||
```
|
||||
## Mac
|
||||
Install "Command line developer tools" if it is not already installed (you can use the command: `xcode-select --install`).
|
||||
|
||||
Start a Terminal windows, cd to the **how-to-use-azureml/automated-machine-learning** folder where the sample notebooks were extracted and then run:
|
||||
|
||||
```
|
||||
bash automl_setup_mac.sh
|
||||
```
|
||||
|
||||
## Linux
|
||||
cd to the **how-to-use-azureml/automated-machine-learning** folder where the sample notebooks were extracted and then run:
|
||||
|
||||
```
|
||||
bash automl_setup_linux.sh
|
||||
```
|
||||
|
||||
### 4. Running configuration.ipynb
|
||||
- Before running any samples you next need to run the configuration notebook. Click on [configuration](../../configuration.ipynb) notebook
|
||||
- Execute the cells in the notebook to Register Machine Learning Services Resource Provider and create a workspace. (*instructions in notebook*)
|
||||
|
||||
### 5. Running Samples
|
||||
- Please make sure you use the Python [conda env:azure_automl] kernel when trying the sample Notebooks.
|
||||
- Follow the instructions in the individual notebooks to explore various features in automated ML.
|
||||
|
||||
### 6. Starting jupyter notebook manually
|
||||
To start your Jupyter notebook manually, use:
|
||||
|
||||
```
|
||||
conda activate azure_automl
|
||||
jupyter notebook
|
||||
```
|
||||
|
||||
or on Mac or Linux:
|
||||
|
||||
```
|
||||
source activate azure_automl
|
||||
jupyter notebook
|
||||
```
|
||||
|
||||
<a name="samples"></a>
|
||||
# Automated ML SDK Sample Notebooks
|
||||
|
||||
- [auto-ml-classification.ipynb](classification/auto-ml-classification.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Simple example of using automated ML for classification
|
||||
- Uses local compute for training
|
||||
|
||||
- [auto-ml-regression.ipynb](regression/auto-ml-regression.ipynb)
|
||||
- Dataset: scikit learn's [diabetes dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_diabetes.html)
|
||||
- Simple example of using automated ML for regression
|
||||
- Uses local compute for training
|
||||
|
||||
- [auto-ml-remote-amlcompute.ipynb](remote-amlcompute/auto-ml-remote-amlcompute.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Example of using automated ML for classification using remote AmlCompute for training
|
||||
- Parallel execution of iterations
|
||||
- Async tracking of progress
|
||||
- Cancelling individual iterations or entire run
|
||||
- Retrieving models for any iteration or logged metric
|
||||
- Specify automated ML settings as kwargs
|
||||
|
||||
- [auto-ml-missing-data-blacklist-early-termination.ipynb](missing-data-blacklist-early-termination/auto-ml-missing-data-blacklist-early-termination.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Blacklist certain pipelines
|
||||
- Specify a target metrics to indicate stopping criteria
|
||||
- Handling Missing Data in the input
|
||||
|
||||
- [auto-ml-sparse-data-train-test-split.ipynb](sparse-data-train-test-split/auto-ml-sparse-data-train-test-split.ipynb)
|
||||
- Dataset: Scikit learn's [20newsgroup](http://scikit-learn.org/stable/datasets/twenty_newsgroups.html)
|
||||
- Handle sparse datasets
|
||||
- Specify custom train and validation set
|
||||
|
||||
- [auto-ml-exploring-previous-runs.ipynb](exploring-previous-runs/auto-ml-exploring-previous-runs.ipynb)
|
||||
- List all projects for the workspace
|
||||
- List all automated ML Runs for a given project
|
||||
- Get details for a automated ML Run. (automated ML settings, run widget & all metrics)
|
||||
- Download fitted pipeline for any iteration
|
||||
|
||||
- [auto-ml-classification-with-deployment.ipynb](classification-with-deployment/auto-ml-classification-with-deployment.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Simple example of using automated ML for classification
|
||||
- Registering the model
|
||||
- Creating Image and creating aci service
|
||||
- Testing the aci service
|
||||
|
||||
- [auto-ml-sample-weight.ipynb](sample-weight/auto-ml-sample-weight.ipynb)
|
||||
- How to specifying sample_weight
|
||||
- The difference that it makes to test results
|
||||
|
||||
- [auto-ml-subsampling-local.ipynb](subsampling/auto-ml-subsampling-local.ipynb)
|
||||
- How to enable subsampling
|
||||
|
||||
- [auto-ml-dataprep.ipynb](dataprep/auto-ml-dataprep.ipynb)
|
||||
- Using DataPrep for reading data
|
||||
|
||||
- [auto-ml-dataprep-remote-execution.ipynb](dataprep-remote-execution/auto-ml-dataprep-remote-execution.ipynb)
|
||||
- Using DataPrep for reading data with remote execution
|
||||
|
||||
- [auto-ml-classification-with-whitelisting.ipynb](classification-with-whitelisting/auto-ml-classification-with-whitelisting.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Simple example of using automated ML for classification with whitelisting tensorflow models.
|
||||
- Uses local compute for training
|
||||
|
||||
- [auto-ml-forecasting-energy-demand.ipynb](forecasting-energy-demand/auto-ml-forecasting-energy-demand.ipynb)
|
||||
- Dataset: [NYC energy demand data](forecasting-a/nyc_energy.csv)
|
||||
- Example of using automated ML for training a forecasting model
|
||||
|
||||
- [auto-ml-forecasting-orange-juice-sales.ipynb](forecasting-orange-juice-sales/auto-ml-forecasting-orange-juice-sales.ipynb)
|
||||
- Dataset: [Dominick's grocery sales of orange juice](forecasting-b/dominicks_OJ.csv)
|
||||
- Example of training an automated ML forecasting model on multiple time-series
|
||||
|
||||
- [auto-ml-classification-with-onnx.ipynb](classification-with-onnx/auto-ml-classification-with-onnx.ipynb)
|
||||
- Dataset: scikit learn's [digit dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html#sklearn.datasets.load_digits)
|
||||
- Simple example of using automated ML for classification with ONNX models
|
||||
- Uses local compute for training
|
||||
|
||||
- [auto-ml-bank-marketing-subscribers-with-deployment.ipynb](bank-marketing-subscribers-with-deployment/auto-ml-bank-marketing-with-deployment.ipynb)
|
||||
- Dataset: UCI's [bank marketing dataset](https://www.kaggle.com/janiobachmann/bank-marketing-dataset)
|
||||
- Simple example of using automated ML for classification to predict term deposit subscriptions for a bank
|
||||
- Uses azure compute for training
|
||||
|
||||
- [auto-ml-creditcard-with-deployment.ipynb](credit-card-fraud-detection-with-deployment/auto-ml-creditcard-with-deployment.ipynb)
|
||||
- Dataset: Kaggle's [credit card fraud detection dataset](https://www.kaggle.com/mlg-ulb/creditcardfraud)
|
||||
- Simple example of using automated ML for classification to fraudulent credit card transactions
|
||||
- Uses azure compute for training
|
||||
|
||||
- [auto-ml-hardware-performance-with-deployment.ipynb](hardware-performance-prediction-with-deployment/auto-ml-hardware-performance-with-deployment.ipynb)
|
||||
- Dataset: UCI's [computer hardware dataset](https://archive.ics.uci.edu/ml/datasets/Computer+Hardware)
|
||||
- Simple example of using automated ML for regression to predict the performance of certain combinations of hardware components
|
||||
- Uses azure compute for training
|
||||
|
||||
- [auto-ml-concrete-strength-with-deployment.ipynb](predicting-concrete-strength-with-deployment/auto-ml-concrete-strength-with-deployment.ipynb)
|
||||
- Dataset: UCI's [concrete compressive strength dataset](https://www.kaggle.com/pavanraj159/concrete-compressive-strength-data-set)
|
||||
- Simple example of using automated ML for regression to predict the strength predict the compressive strength of concrete based off of different ingredient combinations and quantities of those ingredients
|
||||
- Uses azure compute for training
|
||||
|
||||
<a name="documentation"></a>
|
||||
See [Configure automated machine learning experiments](https://docs.microsoft.com/azure/machine-learning/service/how-to-configure-auto-train) to learn how more about the the settings and features available for automated machine learning experiments.
|
||||
|
||||
<a name="pythoncommand"></a>
|
||||
# Running using python command
|
||||
Jupyter notebook provides a File / Download as / Python (.py) option for saving the notebook as a Python file.
|
||||
You can then run this file using the python command.
|
||||
However, on Windows the file needs to be modified before it can be run.
|
||||
The following condition must be added to the main code in the file:
|
||||
|
||||
if __name__ == "__main__":
|
||||
|
||||
The main code of the file must be indented so that it is under this condition.
|
||||
|
||||
<a name="troubleshooting"></a>
|
||||
# Troubleshooting
|
||||
## automl_setup fails
|
||||
1. On Windows, make sure that you are running automl_setup from an Anconda Prompt window rather than a regular cmd window. You can launch the "Anaconda Prompt" window by hitting the Start button and typing "Anaconda Prompt". If you don't see the application "Anaconda Prompt", you might not have conda or mini conda installed. In that case, you can install it [here](https://conda.io/miniconda.html)
|
||||
2. Check that you have conda 64-bit installed rather than 32-bit. You can check this with the command `conda info`. The `platform` should be `win-64` for Windows or `osx-64` for Mac.
|
||||
3. Check that you have conda 4.4.10 or later. You can check the version with the command `conda -V`. If you have a previous version installed, you can update it using the command: `conda update conda`.
|
||||
4. On Linux, if the error is `gcc: error trying to exec 'cc1plus': execvp: No such file or directory`, install build essentials using the command `sudo apt-get install build-essential`.
|
||||
5. Pass a new name as the first parameter to automl_setup so that it creates a new conda environment. You can view existing conda environments using `conda env list` and remove them with `conda env remove -n <environmentname>`.
|
||||
|
||||
## automl_setup_linux.sh fails
|
||||
If automl_setup_linux.sh fails on Ubuntu Linux with the error: `unable to execute 'gcc': No such file or directory`
|
||||
1. Make sure that outbound ports 53 and 80 are enabled. On an Azure VM, you can do this from the Azure Portal by selecting the VM and clicking on Networking.
|
||||
2. Run the command: `sudo apt-get update`
|
||||
3. Run the command: `sudo apt-get install build-essential --fix-missing`
|
||||
4. Run `automl_setup_linux.sh` again.
|
||||
|
||||
## configuration.ipynb fails
|
||||
1) For local conda, make sure that you have susccessfully run automl_setup first.
|
||||
2) Check that the subscription_id is correct. You can find the subscription_id in the Azure Portal by selecting All Service and then Subscriptions. The characters "<" and ">" should not be included in the subscription_id value. For example, `subscription_id = "12345678-90ab-1234-5678-1234567890abcd"` has the valid format.
|
||||
3) Check that you have Contributor or Owner access to the Subscription.
|
||||
4) Check that the region is one of the supported regions: `eastus2`, `eastus`, `westcentralus`, `southeastasia`, `westeurope`, `australiaeast`, `westus2`, `southcentralus`
|
||||
5) Check that you have access to the region using the Azure Portal.
|
||||
|
||||
## workspace.from_config fails
|
||||
If the call `ws = Workspace.from_config()` fails:
|
||||
1) Make sure that you have run the `configuration.ipynb` notebook successfully.
|
||||
2) If you are running a notebook from a folder that is not under the folder where you ran `configuration.ipynb`, copy the folder aml_config and the file config.json that it contains to the new folder. Workspace.from_config reads the config.json for the notebook folder or it parent folder.
|
||||
3) If you are switching to a new subscription, resource group, workspace or region, make sure that you run the `configuration.ipynb` notebook again. Changing config.json directly will only work if the workspace already exists in the specified resource group under the specified subscription.
|
||||
4) If you want to change the region, please change the workspace, resource group or subscription. `Workspace.create` will not create or update a workspace if it already exists, even if the region specified is different.
|
||||
|
||||
## Sample notebook fails
|
||||
If a sample notebook fails with an error that property, method or library does not exist:
|
||||
1) Check that you have selected correct kernel in jupyter notebook. The kernel is displayed in the top right of the notebook page. It can be changed using the `Kernel | Change Kernel` menu option. For Azure Notebooks, it should be `Python 3.6`. For local conda environments, it should be the conda envioronment name that you specified in automl_setup. The default is azure_automl. Note that the kernel is saved as part of the notebook. So, if you switch to a new conda environment, you will have to select the new kernel in the notebook.
|
||||
2) Check that the notebook is for the SDK version that you are using. You can check the SDK version by executing `azureml.core.VERSION` in a jupyter notebook cell. You can download previous version of the sample notebooks from GitHub by clicking the `Branch` button, selecting the `Tags` tab and then selecting the version.
|
||||
|
||||
## Numpy import fails on Windows
|
||||
Some Windows environments see an error loading numpy with the latest Python version 3.6.8. If you see this issue, try with Python version 3.6.7.
|
||||
|
||||
## Numpy import fails
|
||||
Check the tensorflow version in the automated ml conda environment. Supported versions are < 1.13. Uninstall tensorflow from the environment if version is >= 1.13
|
||||
You may check the version of tensorflow and uninstall as follows
|
||||
1) start a command shell, activate conda environment where automated ml packages are installed
|
||||
2) enter `pip freeze` and look for `tensorflow` , if found, the version listed should be < 1.13
|
||||
3) If the listed version is a not a supported version, `pip uninstall tensorflow` in the command shell and enter y for confirmation.
|
||||
|
||||
## Remote run: DsvmCompute.create fails
|
||||
There are several reasons why the DsvmCompute.create can fail. The reason is usually in the error message but you have to look at the end of the error message for the detailed reason. Some common reasons are:
|
||||
1) `Compute name is invalid, it should start with a letter, be between 2 and 16 character, and only include letters (a-zA-Z), numbers (0-9) and \'-\'.` Note that underscore is not allowed in the name.
|
||||
2) `The requested VM size xxxxx is not available in the current region.` You can select a different region or vm_size.
|
||||
|
||||
## Remote run: Unable to establish SSH connection
|
||||
Automated ML uses the SSH protocol to communicate with remote DSVMs. This defaults to port 22. Possible causes for this error are:
|
||||
1) The DSVM is not ready for SSH connections. When DSVM creation completes, the DSVM might still not be ready to acceept SSH connections. The sample notebooks have a one minute delay to allow for this.
|
||||
2) Your Azure Subscription may restrict the IP address ranges that can access the DSVM on port 22. You can check this in the Azure Portal by selecting the Virtual Machine and then clicking Networking. The Virtual Machine name is the name that you provided in the notebook plus 10 alpha numeric characters to make the name unique. The Inbound Port Rules define what can access the VM on specific ports. Note that there is a priority priority order. So, a Deny entry with a low priority number will override a Allow entry with a higher priority number.
|
||||
|
||||
## Remote run: setup iteration fails
|
||||
This is often an issue with the `get_data` method.
|
||||
1) Check that the `get_data` method is valid by running it locally.
|
||||
2) Make sure that `get_data` isn't referring to any local files. `get_data` is executed on the remote DSVM. So, it doesn't have direct access to local data files. Instead you can store the data files with DataStore. See [auto-ml-remote-execution-with-datastore.ipynb](remote-execution-with-datastore/auto-ml-remote-execution-with-datastore.ipynb)
|
||||
3) You can get to the error log for the setup iteration by clicking the `Click here to see the run in Azure portal` link, click `Back to Experiment`, click on the highest run number and then click on Logs.
|
||||
|
||||
## Remote run: disk full
|
||||
Automated ML creates files under /tmp/azureml_runs for each iteration that it runs. It creates a folder with the iteration id. For example: AutoML_9a038a18-77cc-48f1-80fb-65abdbc33abe_93. Under this, there is a azureml-logs folder, which contains logs. If you run too many iterations on the same DSVM, these files can fill the disk.
|
||||
You can delete the files under /tmp/azureml_runs or just delete the VM and create a new one.
|
||||
If your get_data downloads files, make sure the delete them or they can use disk space as well.
|
||||
When using DataStore, it is good to specify an absolute path for the files so that they are downloaded just once. If you specify a relative path, it will download a file for each iteration.
|
||||
|
||||
## Remote run: Iterations fail and the log contains "MemoryError"
|
||||
This can be caused by insufficient memory on the DSVM. Automated ML loads all training data into memory. So, the available memory should be more than the training data size.
|
||||
If you are using a remote DSVM, memory is needed for each concurrent iteration. The max_concurrent_iterations setting specifies the maximum concurrent iterations. For example, if the training data size is 8Gb and max_concurrent_iterations is set to 10, the minimum memory required is at least 80Gb.
|
||||
To resolve this issue, allocate a DSVM with more memory or reduce the value specified for max_concurrent_iterations.
|
||||
|
||||
## Remote run: Iterations show as "Not Responding" in the RunDetails widget.
|
||||
This can be caused by too many concurrent iterations for a remote DSVM. Each concurrent iteration usually takes 100% of a core when it is running. Some iterations can use multiple cores. So, the max_concurrent_iterations setting should always be less than the number of cores of the DSVM.
|
||||
To resolve this issue, try reducing the value specified for the max_concurrent_iterations setting.
|
||||
@@ -1,32 +1,22 @@
|
||||
name: azure_automl
|
||||
dependencies:
|
||||
# The python interpreter version.
|
||||
# Currently Azure ML only supports 3.5.2 and later.
|
||||
- python=3.6
|
||||
- nb_conda
|
||||
- matplotlib==2.1.0
|
||||
- numpy>=1.11.0,<1.15.0
|
||||
- cython
|
||||
- urllib3<1.24
|
||||
- scipy>=1.0.0,<=1.1.0
|
||||
- scikit-learn>=0.18.0,<=0.19.1
|
||||
- pandas>=0.22.0,<0.23.0
|
||||
- tensorflow>=1.12.0
|
||||
|
||||
# Required for azuremlftk
|
||||
- dill
|
||||
- pyodbc
|
||||
- statsmodels
|
||||
- numexpr
|
||||
- keras
|
||||
- distributed>=1.21.5,<1.24
|
||||
|
||||
- pip:
|
||||
|
||||
# Required for azuremlftk
|
||||
- https://azuremlpackages.blob.core.windows.net/forecasting/azuremlftk-0.1.18323.5a1-py3-none-any.whl
|
||||
|
||||
# Required packages for AzureML execution, history, and data preparation.
|
||||
- azureml-sdk[automl,notebooks,explain]
|
||||
- pandas_ml
|
||||
|
||||
name: azure_automl
|
||||
dependencies:
|
||||
# The python interpreter version.
|
||||
# Currently Azure ML only supports 3.5.2 and later.
|
||||
- pip
|
||||
- python>=3.5.2,<3.6.8
|
||||
- nb_conda
|
||||
- matplotlib==2.1.0
|
||||
- numpy>=1.11.0,<=1.16.2
|
||||
- cython
|
||||
- urllib3<1.24
|
||||
- scipy>=1.0.0,<=1.1.0
|
||||
- scikit-learn>=0.19.0,<=0.20.3
|
||||
- pandas>=0.22.0,<=0.23.4
|
||||
- py-xgboost<=0.80
|
||||
|
||||
- pip:
|
||||
# Required packages for AzureML execution, history, and data preparation.
|
||||
- azureml-sdk[automl,explain]
|
||||
- azureml-widgets
|
||||
- pandas_ml
|
||||
|
||||
|
||||
@@ -1,33 +0,0 @@
|
||||
name: azure_automl
|
||||
dependencies:
|
||||
# The python interpreter version.
|
||||
# Currently Azure ML only supports 3.5.2 and later.
|
||||
- python=3.6
|
||||
- nb_conda
|
||||
- matplotlib==2.1.0
|
||||
- numpy>=1.15.3
|
||||
- cython
|
||||
- urllib3<1.24
|
||||
- scipy>=1.0.0,<=1.1.0
|
||||
- scikit-learn>=0.18.0,<=0.19.1
|
||||
- pandas>=0.22.0,<0.23.0
|
||||
- tensorflow>=1.12.0
|
||||
|
||||
# Required for azuremlftk
|
||||
- dill
|
||||
- pyodbc
|
||||
- statsmodels
|
||||
- numexpr
|
||||
- keras
|
||||
- distributed>=1.21.5,<1.24
|
||||
|
||||
- pip:
|
||||
|
||||
# Required for azuremlftk
|
||||
- https://azuremlpackages.blob.core.windows.net/forecasting/azuremlftk-0.1.18323.5a1-py3-none-any.whl
|
||||
|
||||
# Required packages for AzureML execution, history, and data preparation.
|
||||
- azureml-sdk[automl,notebooks,explain]
|
||||
- pandas_ml
|
||||
|
||||
|
||||
@@ -1,44 +1,62 @@
|
||||
@echo off
|
||||
set conda_env_name=%1
|
||||
set automl_env_file=%2
|
||||
set PIP_NO_WARN_SCRIPT_LOCATION=0
|
||||
|
||||
IF "%conda_env_name%"=="" SET conda_env_name="azure_automl"
|
||||
IF "%automl_env_file%"=="" SET automl_env_file="automl_env.yml"
|
||||
|
||||
IF NOT EXIST %automl_env_file% GOTO YmlMissing
|
||||
|
||||
call conda activate %conda_env_name% 2>nul:
|
||||
|
||||
if not errorlevel 1 (
|
||||
echo Upgrading azureml-sdk[automl,notebooks,explain] in existing conda environment %conda_env_name%
|
||||
call pip install --upgrade azureml-sdk[automl,notebooks,explain]
|
||||
if errorlevel 1 goto ErrorExit
|
||||
) else (
|
||||
call conda env create -f %automl_env_file% -n %conda_env_name%
|
||||
)
|
||||
|
||||
call conda activate %conda_env_name% 2>nul:
|
||||
if errorlevel 1 goto ErrorExit
|
||||
|
||||
call python -m ipykernel install --user --name %conda_env_name% --display-name "Python (%conda_env_name%)"
|
||||
|
||||
echo.
|
||||
echo.
|
||||
echo ***************************************
|
||||
echo * AutoML setup completed successfully *
|
||||
echo ***************************************
|
||||
echo.
|
||||
echo Starting jupyter notebook - please run the configuration notebook
|
||||
echo.
|
||||
jupyter notebook --log-level=50 --notebook-dir='..\..'
|
||||
|
||||
goto End
|
||||
|
||||
:YmlMissing
|
||||
echo File %automl_env_file% not found.
|
||||
|
||||
:ErrorExit
|
||||
echo Install failed
|
||||
|
||||
@echo off
|
||||
set conda_env_name=%1
|
||||
set automl_env_file=%2
|
||||
set options=%3
|
||||
set PIP_NO_WARN_SCRIPT_LOCATION=0
|
||||
|
||||
IF "%conda_env_name%"=="" SET conda_env_name="azure_automl"
|
||||
IF "%automl_env_file%"=="" SET automl_env_file="automl_env.yml"
|
||||
|
||||
IF NOT EXIST %automl_env_file% GOTO YmlMissing
|
||||
|
||||
IF "%CONDA_EXE%"=="" GOTO CondaMissing
|
||||
|
||||
call conda activate %conda_env_name% 2>nul:
|
||||
|
||||
if not errorlevel 1 (
|
||||
echo Upgrading azureml-sdk[automl,notebooks,explain] in existing conda environment %conda_env_name%
|
||||
call pip install --upgrade azureml-sdk[automl,notebooks,explain]
|
||||
if errorlevel 1 goto ErrorExit
|
||||
) else (
|
||||
call conda env create -f %automl_env_file% -n %conda_env_name%
|
||||
)
|
||||
|
||||
call conda activate %conda_env_name% 2>nul:
|
||||
if errorlevel 1 goto ErrorExit
|
||||
|
||||
call python -m ipykernel install --user --name %conda_env_name% --display-name "Python (%conda_env_name%)"
|
||||
|
||||
REM azureml.widgets is now installed as part of the pip install under the conda env.
|
||||
REM Removing the old user install so that the notebooks will use the latest widget.
|
||||
call jupyter nbextension uninstall --user --py azureml.widgets
|
||||
|
||||
echo.
|
||||
echo.
|
||||
echo ***************************************
|
||||
echo * AutoML setup completed successfully *
|
||||
echo ***************************************
|
||||
IF NOT "%options%"=="nolaunch" (
|
||||
echo.
|
||||
echo Starting jupyter notebook - please run the configuration notebook
|
||||
echo.
|
||||
jupyter notebook --log-level=50 --notebook-dir='..\..'
|
||||
)
|
||||
|
||||
goto End
|
||||
|
||||
:CondaMissing
|
||||
echo Please run this script from an Anaconda Prompt window.
|
||||
echo You can start an Anaconda Prompt window by
|
||||
echo typing Anaconda Prompt on the Start menu.
|
||||
echo If you don't see the Anaconda Prompt app, install Miniconda.
|
||||
echo If you are running an older version of Miniconda or Anaconda,
|
||||
echo you can upgrade using the command: conda update conda
|
||||
goto End
|
||||
|
||||
:YmlMissing
|
||||
echo File %automl_env_file% not found.
|
||||
|
||||
:ErrorExit
|
||||
echo Install failed
|
||||
|
||||
:End
|
||||
@@ -1,46 +1,52 @@
|
||||
#!/bin/bash
|
||||
|
||||
CONDA_ENV_NAME=$1
|
||||
AUTOML_ENV_FILE=$2
|
||||
PIP_NO_WARN_SCRIPT_LOCATION=0
|
||||
|
||||
if [ "$CONDA_ENV_NAME" == "" ]
|
||||
then
|
||||
CONDA_ENV_NAME="azure_automl"
|
||||
fi
|
||||
|
||||
if [ "$AUTOML_ENV_FILE" == "" ]
|
||||
then
|
||||
AUTOML_ENV_FILE="automl_env.yml"
|
||||
fi
|
||||
|
||||
if [ ! -f $AUTOML_ENV_FILE ]; then
|
||||
echo "File $AUTOML_ENV_FILE not found"
|
||||
exit 1
|
||||
fi
|
||||
|
||||
if source activate $CONDA_ENV_NAME 2> /dev/null
|
||||
then
|
||||
echo "Upgrading azureml-sdk[automl,notebooks,explain] in existing conda environment" $CONDA_ENV_NAME
|
||||
pip install --upgrade azureml-sdk[automl,notebooks,explain]
|
||||
else
|
||||
conda env create -f $AUTOML_ENV_FILE -n $CONDA_ENV_NAME &&
|
||||
source activate $CONDA_ENV_NAME &&
|
||||
python -m ipykernel install --user --name $CONDA_ENV_NAME --display-name "Python ($CONDA_ENV_NAME)" &&
|
||||
echo "" &&
|
||||
echo "" &&
|
||||
echo "***************************************" &&
|
||||
echo "* AutoML setup completed successfully *" &&
|
||||
echo "***************************************" &&
|
||||
echo "" &&
|
||||
echo "Starting jupyter notebook - please run the configuration notebook" &&
|
||||
echo "" &&
|
||||
jupyter notebook --log-level=50 --notebook-dir '../..'
|
||||
fi
|
||||
|
||||
if [ $? -gt 0 ]
|
||||
then
|
||||
echo "Installation failed"
|
||||
fi
|
||||
|
||||
|
||||
#!/bin/bash
|
||||
|
||||
CONDA_ENV_NAME=$1
|
||||
AUTOML_ENV_FILE=$2
|
||||
OPTIONS=$3
|
||||
PIP_NO_WARN_SCRIPT_LOCATION=0
|
||||
|
||||
if [ "$CONDA_ENV_NAME" == "" ]
|
||||
then
|
||||
CONDA_ENV_NAME="azure_automl"
|
||||
fi
|
||||
|
||||
if [ "$AUTOML_ENV_FILE" == "" ]
|
||||
then
|
||||
AUTOML_ENV_FILE="automl_env.yml"
|
||||
fi
|
||||
|
||||
if [ ! -f $AUTOML_ENV_FILE ]; then
|
||||
echo "File $AUTOML_ENV_FILE not found"
|
||||
exit 1
|
||||
fi
|
||||
|
||||
if source activate $CONDA_ENV_NAME 2> /dev/null
|
||||
then
|
||||
echo "Upgrading azureml-sdk[automl,notebooks,explain] in existing conda environment" $CONDA_ENV_NAME
|
||||
pip install --upgrade azureml-sdk[automl,notebooks,explain] &&
|
||||
jupyter nbextension uninstall --user --py azureml.widgets
|
||||
else
|
||||
conda env create -f $AUTOML_ENV_FILE -n $CONDA_ENV_NAME &&
|
||||
source activate $CONDA_ENV_NAME &&
|
||||
python -m ipykernel install --user --name $CONDA_ENV_NAME --display-name "Python ($CONDA_ENV_NAME)" &&
|
||||
jupyter nbextension uninstall --user --py azureml.widgets &&
|
||||
echo "" &&
|
||||
echo "" &&
|
||||
echo "***************************************" &&
|
||||
echo "* AutoML setup completed successfully *" &&
|
||||
echo "***************************************" &&
|
||||
if [ "$OPTIONS" != "nolaunch" ]
|
||||
then
|
||||
echo "" &&
|
||||
echo "Starting jupyter notebook - please run the configuration notebook" &&
|
||||
echo "" &&
|
||||
jupyter notebook --log-level=50 --notebook-dir '../..'
|
||||
fi
|
||||
fi
|
||||
|
||||
if [ $? -gt 0 ]
|
||||
then
|
||||
echo "Installation failed"
|
||||
fi
|
||||
|
||||
|
||||
|
||||
@@ -1,49 +1,54 @@
|
||||
#!/bin/bash
|
||||
|
||||
CONDA_ENV_NAME=$1
|
||||
AUTOML_ENV_FILE=$2
|
||||
PIP_NO_WARN_SCRIPT_LOCATION=0
|
||||
|
||||
if [ "$CONDA_ENV_NAME" == "" ]
|
||||
then
|
||||
CONDA_ENV_NAME="azure_automl"
|
||||
fi
|
||||
|
||||
if [ "$AUTOML_ENV_FILE" == "" ]
|
||||
then
|
||||
AUTOML_ENV_FILE="automl_env_mac.yml"
|
||||
fi
|
||||
|
||||
if [ ! -f $AUTOML_ENV_FILE ]; then
|
||||
echo "File $AUTOML_ENV_FILE not found"
|
||||
exit 1
|
||||
fi
|
||||
|
||||
if source activate $CONDA_ENV_NAME 2> /dev/null
|
||||
then
|
||||
echo "Upgrading azureml-sdk[automl,notebooks,explain] in existing conda environment" $CONDA_ENV_NAME
|
||||
pip install --upgrade azureml-sdk[automl,notebooks,explain]
|
||||
else
|
||||
conda env create -f $AUTOML_ENV_FILE -n $CONDA_ENV_NAME &&
|
||||
source activate $CONDA_ENV_NAME &&
|
||||
conda install lightgbm -c conda-forge -y &&
|
||||
python -m ipykernel install --user --name $CONDA_ENV_NAME --display-name "Python ($CONDA_ENV_NAME)" &&
|
||||
pip install numpy==1.15.3
|
||||
echo "" &&
|
||||
echo "" &&
|
||||
echo "***************************************" &&
|
||||
echo "* AutoML setup completed successfully *" &&
|
||||
echo "***************************************" &&
|
||||
echo "" &&
|
||||
echo "Starting jupyter notebook - please run the configuration notebook" &&
|
||||
echo "" &&
|
||||
jupyter notebook --log-level=50 --notebook-dir '../..'
|
||||
fi
|
||||
|
||||
if [ $? -gt 0 ]
|
||||
then
|
||||
echo "Installation failed"
|
||||
fi
|
||||
|
||||
|
||||
|
||||
#!/bin/bash
|
||||
|
||||
CONDA_ENV_NAME=$1
|
||||
AUTOML_ENV_FILE=$2
|
||||
OPTIONS=$3
|
||||
PIP_NO_WARN_SCRIPT_LOCATION=0
|
||||
|
||||
if [ "$CONDA_ENV_NAME" == "" ]
|
||||
then
|
||||
CONDA_ENV_NAME="azure_automl"
|
||||
fi
|
||||
|
||||
if [ "$AUTOML_ENV_FILE" == "" ]
|
||||
then
|
||||
AUTOML_ENV_FILE="automl_env_mac.yml"
|
||||
fi
|
||||
|
||||
if [ ! -f $AUTOML_ENV_FILE ]; then
|
||||
echo "File $AUTOML_ENV_FILE not found"
|
||||
exit 1
|
||||
fi
|
||||
|
||||
if source activate $CONDA_ENV_NAME 2> /dev/null
|
||||
then
|
||||
echo "Upgrading azureml-sdk[automl,notebooks,explain] in existing conda environment" $CONDA_ENV_NAME
|
||||
pip install --upgrade azureml-sdk[automl,notebooks,explain] &&
|
||||
jupyter nbextension uninstall --user --py azureml.widgets
|
||||
else
|
||||
conda env create -f $AUTOML_ENV_FILE -n $CONDA_ENV_NAME &&
|
||||
source activate $CONDA_ENV_NAME &&
|
||||
conda install lightgbm -c conda-forge -y &&
|
||||
python -m ipykernel install --user --name $CONDA_ENV_NAME --display-name "Python ($CONDA_ENV_NAME)" &&
|
||||
jupyter nbextension uninstall --user --py azureml.widgets &&
|
||||
echo "" &&
|
||||
echo "" &&
|
||||
echo "***************************************" &&
|
||||
echo "* AutoML setup completed successfully *" &&
|
||||
echo "***************************************" &&
|
||||
if [ "$OPTIONS" != "nolaunch" ]
|
||||
then
|
||||
echo "" &&
|
||||
echo "Starting jupyter notebook - please run the configuration notebook" &&
|
||||
echo "" &&
|
||||
jupyter notebook --log-level=50 --notebook-dir '../..'
|
||||
fi
|
||||
fi
|
||||
|
||||
if [ $? -gt 0 ]
|
||||
then
|
||||
echo "Installation failed"
|
||||
fi
|
||||
|
||||
|
||||
|
||||
|
||||
@@ -0,0 +1,729 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "v-rasav"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.7"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Classification with Deployment using a Bank Marketing Dataset**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Deploy](#Deploy)\n",
|
||||
"1. [Test](#Test)\n",
|
||||
"1. [Acknowledgements](#Acknowledgements)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"In this example we use the UCI Bank Marketing dataset to showcase how you can use AutoML for a classification problem and deploy it to an Azure Container Instance (ACI). The classification goal is to predict if the client will subscribe to a term deposit with the bank.\n",
|
||||
"\n",
|
||||
"If you are using an Azure Machine Learning Notebook VM, you are all set. Otherwise, go through the [configuration](../../../configuration.ipynb) notebook first if you haven't already to establish your connection to the AzureML Workspace. \n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an experiment using an existing workspace.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Register the model.\n",
|
||||
"6. Create a container image.\n",
|
||||
"7. Create an Azure Container Instance (ACI) service.\n",
|
||||
"8. Test the ACI service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import json\n",
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"import os\n",
|
||||
"from sklearn import datasets\n",
|
||||
"import azureml.dataprep as dprep\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# choose a name for experiment\n",
|
||||
"experiment_name = 'automl-classification-bmarketing'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-classification-bankmarketing'\n",
|
||||
"\n",
|
||||
"experiment=Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Create or Attach existing AmlCompute\n",
|
||||
"You will need to create a compute target for your AutoML run. In this tutorial, you create AmlCompute as your training compute resource.\n",
|
||||
"#### Creation of AmlCompute takes approximately 5 minutes. \n",
|
||||
"If the AmlCompute with that name is already in your workspace this code will skip the creation process.\n",
|
||||
"As with other Azure services, there are limits on certain resources (e.g. AmlCompute) associated with the Azure Machine Learning service. Please read this article on the default limits and how to request more quota."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.compute import AmlCompute\n",
|
||||
"from azureml.core.compute import ComputeTarget\n",
|
||||
"\n",
|
||||
"# Choose a name for your cluster.\n",
|
||||
"amlcompute_cluster_name = \"automlcl\"\n",
|
||||
"\n",
|
||||
"found = False\n",
|
||||
"# Check if this compute target already exists in the workspace.\n",
|
||||
"cts = ws.compute_targets\n",
|
||||
"if amlcompute_cluster_name in cts and cts[amlcompute_cluster_name].type == 'AmlCompute':\n",
|
||||
" found = True\n",
|
||||
" print('Found existing compute target.')\n",
|
||||
" compute_target = cts[amlcompute_cluster_name]\n",
|
||||
" \n",
|
||||
"if not found:\n",
|
||||
" print('Creating a new compute target...')\n",
|
||||
" provisioning_config = AmlCompute.provisioning_configuration(vm_size = \"STANDARD_D2_V2\", # for GPU, use \"STANDARD_NC6\"\n",
|
||||
" #vm_priority = 'lowpriority', # optional\n",
|
||||
" max_nodes = 6)\n",
|
||||
"\n",
|
||||
" # Create the cluster.\n",
|
||||
" compute_target = ComputeTarget.create(ws, amlcompute_cluster_name, provisioning_config)\n",
|
||||
" \n",
|
||||
" # Can poll for a minimum number of nodes and for a specific timeout.\n",
|
||||
" # If no min_node_count is provided, it will use the scale settings for the cluster.\n",
|
||||
" compute_target.wait_for_completion(show_output = True, min_node_count = None, timeout_in_minutes = 20)\n",
|
||||
" \n",
|
||||
" # For a more detailed view of current AmlCompute status, use get_status()."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Data\n",
|
||||
"\n",
|
||||
"Here load the data in the get_data() script to be utilized in azure compute. To do this first load all the necessary libraries and dependencies to set up paths for the data and to create the conda_Run_config."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"if not os.path.isdir('data'):\n",
|
||||
" os.mkdir('data')\n",
|
||||
" \n",
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to AmlCompute\n",
|
||||
"conda_run_config.target = compute_target\n",
|
||||
"conda_run_config.environment.docker.enabled = True\n",
|
||||
"conda_run_config.environment.docker.base_image = azureml.core.runconfig.DEFAULT_CPU_IMAGE\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy','py-xgboost<=0.80'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Load Data\n",
|
||||
"\n",
|
||||
"Here we create the script to be run in azure comput for loading the data, we load the bank marketing dataset into X_train and y_train. Next X_train and y_train is returned for training the model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"data = \"https://automlsamplenotebookdata.blob.core.windows.net/automl-sample-notebook-data/bankmarketing_train.csv\"\n",
|
||||
"dflow = dprep.auto_read_file(data)\n",
|
||||
"dflow.get_profile()\n",
|
||||
"X_train = dflow.drop_columns(columns=['y'])\n",
|
||||
"y_train = dflow.keep_columns(columns=['y'], validate_column_exists=True)\n",
|
||||
"dflow.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate a AutoMLConfig object. This defines the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|\n",
|
||||
"\n",
|
||||
"**_You can find more information about primary metrics_** [here](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#primary-metric)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 5,\n",
|
||||
" \"iterations\": 10,\n",
|
||||
" \"n_cross_validations\": 2,\n",
|
||||
" \"primary_metric\": 'AUC_weighted',\n",
|
||||
" \"preprocess\": True,\n",
|
||||
" \"max_concurrent_iterations\": 5,\n",
|
||||
" \"verbosity\": logging.INFO,\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" path = project_folder,\n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" X = X_train,\n",
|
||||
" y = y_train,\n",
|
||||
" **automl_settings\n",
|
||||
" )"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Deploy\n",
|
||||
"\n",
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method on `automl_classifier` returns the best run and the fitted model for the last invocation. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Register the Fitted Model for Deployment\n",
|
||||
"If neither `metric` nor `iteration` are specified in the `register_model` call, the iteration with the best primary metric is registered."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"description = 'AutoML Model trained on bank marketing data to predict if a client will subscribe to a term deposit'\n",
|
||||
"tags = None\n",
|
||||
"model = remote_run.register_model(description = description, tags = tags)\n",
|
||||
"\n",
|
||||
"print(remote_run.model_id) # This will be written to the script file later in the notebook."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create Scoring Script\n",
|
||||
"The scoring script is required to generate the image for deployment. It contains the code to do the predictions on input data."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%%writefile score.py\n",
|
||||
"import pickle\n",
|
||||
"import json\n",
|
||||
"import numpy\n",
|
||||
"import azureml.train.automl\n",
|
||||
"from sklearn.externals import joblib\n",
|
||||
"from azureml.core.model import Model\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"def init():\n",
|
||||
" global model\n",
|
||||
" model_path = Model.get_model_path(model_name = '<<modelid>>') # this name is model.id of model that we want to deploy\n",
|
||||
" # deserialize the model file back into a sklearn model\n",
|
||||
" model = joblib.load(model_path)\n",
|
||||
"\n",
|
||||
"def run(rawdata):\n",
|
||||
" try:\n",
|
||||
" data = json.loads(rawdata)['data']\n",
|
||||
" data = numpy.array(data)\n",
|
||||
" result = model.predict(data)\n",
|
||||
" except Exception as e:\n",
|
||||
" result = str(e)\n",
|
||||
" return json.dumps({\"error\": result})\n",
|
||||
" return json.dumps({\"result\":result.tolist()})"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a YAML File for the Environment"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"To ensure the fit results are consistent with the training results, the SDK dependency versions need to be the same as the environment that trains the model. Details about retrieving the versions can be found in notebook [12.auto-ml-retrieve-the-training-sdk-versions](12.auto-ml-retrieve-the-training-sdk-versions.ipynb)."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"dependencies = remote_run.get_run_sdk_dependencies(iteration = 1)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"for p in ['azureml-train-automl', 'azureml-sdk', 'azureml-core']:\n",
|
||||
" print('{}\\t{}'.format(p, dependencies[p]))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"myenv = CondaDependencies.create(conda_packages=['numpy','scikit-learn','py-xgboost<=0.80'],\n",
|
||||
" pip_packages=['azureml-sdk[automl]'])\n",
|
||||
"\n",
|
||||
"conda_env_file_name = 'myenv.yml'\n",
|
||||
"myenv.save_to_file('.', conda_env_file_name)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Substitute the actual version number in the environment file.\n",
|
||||
"# This is not strictly needed in this notebook because the model should have been generated using the current SDK version.\n",
|
||||
"# However, we include this in case this code is used on an experiment from a previous SDK version.\n",
|
||||
"\n",
|
||||
"with open(conda_env_file_name, 'r') as cefr:\n",
|
||||
" content = cefr.read()\n",
|
||||
"\n",
|
||||
"with open(conda_env_file_name, 'w') as cefw:\n",
|
||||
" cefw.write(content.replace(azureml.core.VERSION, dependencies['azureml-sdk']))\n",
|
||||
"\n",
|
||||
"# Substitute the actual model id in the script file.\n",
|
||||
"\n",
|
||||
"script_file_name = 'score.py'\n",
|
||||
"\n",
|
||||
"with open(script_file_name, 'r') as cefr:\n",
|
||||
" content = cefr.read()\n",
|
||||
"\n",
|
||||
"with open(script_file_name, 'w') as cefw:\n",
|
||||
" cefw.write(content.replace('<<modelid>>', remote_run.model_id))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a Container Image\n",
|
||||
"\n",
|
||||
"Next use Azure Container Instances for deploying models as a web service for quickly deploying and validating your model\n",
|
||||
"or when testing a model that is under development."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.image import Image, ContainerImage\n",
|
||||
"\n",
|
||||
"image_config = ContainerImage.image_configuration(runtime= \"python\",\n",
|
||||
" execution_script = script_file_name,\n",
|
||||
" conda_file = conda_env_file_name,\n",
|
||||
" tags = {'area': \"bmData\", 'type': \"automl_classification\"},\n",
|
||||
" description = \"Image for automl classification sample\")\n",
|
||||
"\n",
|
||||
"image = Image.create(name = \"automlsampleimage\",\n",
|
||||
" # this is the model object \n",
|
||||
" models = [model],\n",
|
||||
" image_config = image_config, \n",
|
||||
" workspace = ws)\n",
|
||||
"\n",
|
||||
"image.wait_for_creation(show_output = True)\n",
|
||||
"\n",
|
||||
"if image.creation_state == 'Failed':\n",
|
||||
" print(\"Image build log at: \" + image.image_build_log_uri)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Deploy the Image as a Web Service on Azure Container Instance\n",
|
||||
"\n",
|
||||
"Deploy an image that contains the model and other assets needed by the service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import AciWebservice\n",
|
||||
"\n",
|
||||
"aciconfig = AciWebservice.deploy_configuration(cpu_cores = 1, \n",
|
||||
" memory_gb = 1, \n",
|
||||
" tags = {'area': \"bmData\", 'type': \"automl_classification\"}, \n",
|
||||
" description = 'sample service for Automl Classification')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import Webservice\n",
|
||||
"\n",
|
||||
"aci_service_name = 'automl-sample-bankmarketing'\n",
|
||||
"print(aci_service_name)\n",
|
||||
"aci_service = Webservice.deploy_from_image(deployment_config = aciconfig,\n",
|
||||
" image = image,\n",
|
||||
" name = aci_service_name,\n",
|
||||
" workspace = ws)\n",
|
||||
"aci_service.wait_for_deployment(True)\n",
|
||||
"print(aci_service.state)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Delete a Web Service\n",
|
||||
"\n",
|
||||
"Deletes the specified web service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#aci_service.delete()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Get Logs from a Deployed Web Service\n",
|
||||
"\n",
|
||||
"Gets logs from a deployed web service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#aci_service.get_logs()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"Now that the model is trained split our data in the same way the data was split for training (The difference here is the data is being split locally) and then run the test data through the trained model to get the predicted values."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Load the bank marketing datasets.\n",
|
||||
"from sklearn.datasets import load_diabetes\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"from numpy import array"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"data = \"https://automlsamplenotebookdata.blob.core.windows.net/automl-sample-notebook-data/bankmarketing_validate.csv\"\n",
|
||||
"dflow = dprep.auto_read_file(data)\n",
|
||||
"dflow.get_profile()\n",
|
||||
"X_test = dflow.drop_columns(columns=['y'])\n",
|
||||
"y_test = dflow.keep_columns(columns=['y'], validate_column_exists=True)\n",
|
||||
"dflow.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"X_test = X_test.to_pandas_dataframe()\n",
|
||||
"y_test = y_test.to_pandas_dataframe()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"y_pred = fitted_model.predict(X_test)\n",
|
||||
"actual = array(y_test)\n",
|
||||
"actual = actual[:,0]\n",
|
||||
"print(y_pred.shape, \" \", actual.shape)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Calculate metrics for the prediction\n",
|
||||
"\n",
|
||||
"Now visualize the data on a scatter plot to show what our truth (actual) values are compared to the predicted values \n",
|
||||
"from the trained model that was returned."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%matplotlib notebook\n",
|
||||
"test_pred = plt.scatter(actual, y_pred, color='b')\n",
|
||||
"test_test = plt.scatter(actual, actual, color='g')\n",
|
||||
"plt.legend((test_pred, test_test), ('prediction', 'truth'), loc='upper left', fontsize=8)\n",
|
||||
"plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Acknowledgements"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"This Bank Marketing dataset is made available under the Creative Commons (CCO: Public Domain) License: https://creativecommons.org/publicdomain/zero/1.0/. Any rights in individual contents of the database are licensed under the Database Contents License: https://creativecommons.org/publicdomain/zero/1.0/ and is available at: https://www.kaggle.com/janiobachmann/bank-marketing-dataset .\n",
|
||||
"\n",
|
||||
"_**Acknowledgements**_\n",
|
||||
"This data set is originally available within the UCI Machine Learning Database: https://archive.ics.uci.edu/ml/datasets/bank+marketing\n",
|
||||
"\n",
|
||||
"[Moro et al., 2014] S. Moro, P. Cortez and P. Rita. A Data-Driven Approach to Predict the Success of Bank Telemarketing. Decision Support Systems, Elsevier, 62:22-31, June 2014"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-classification-bank-marketing
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -0,0 +1,712 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "v-rasav"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.7"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Classification with Deployment using Credit Card Dataset**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Deploy](#Deploy)\n",
|
||||
"1. [Test](#Test)\n",
|
||||
"1. [Acknowledgements](#Acknowledgements)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"In this example we use the associated credit card dataset to showcase how you can use AutoML for a simple classification problem and deploy it to an Azure Container Instance (ACI). The classification goal is to predict if a creditcard transaction is or is not considered a fraudulent charge.\n",
|
||||
"\n",
|
||||
"If you are using an Azure Machine Learning Notebook VM, you are all set. Otherwise, go through the [configuration](../../../configuration.ipynb) notebook first if you haven't already to establish your connection to the AzureML Workspace. \n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an experiment using an existing workspace.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Register the model.\n",
|
||||
"6. Create a container image.\n",
|
||||
"7. Create an Azure Container Instance (ACI) service.\n",
|
||||
"8. Test the ACI service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import pandas as pd\n",
|
||||
"import os\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"import azureml.dataprep as dprep\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# choose a name for experiment\n",
|
||||
"experiment_name = 'automl-classification-ccard'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-classification-creditcard'\n",
|
||||
"\n",
|
||||
"experiment=Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Create or Attach existing AmlCompute\n",
|
||||
"You will need to create a compute target for your AutoML run. In this tutorial, you create AmlCompute as your training compute resource.\n",
|
||||
"#### Creation of AmlCompute takes approximately 5 minutes. \n",
|
||||
"If the AmlCompute with that name is already in your workspace this code will skip the creation process.\n",
|
||||
"As with other Azure services, there are limits on certain resources (e.g. AmlCompute) associated with the Azure Machine Learning service. Please read this article on the default limits and how to request more quota."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.compute import AmlCompute\n",
|
||||
"from azureml.core.compute import ComputeTarget\n",
|
||||
"\n",
|
||||
"# Choose a name for your cluster.\n",
|
||||
"amlcompute_cluster_name = \"automlcl\"\n",
|
||||
"\n",
|
||||
"found = False\n",
|
||||
"# Check if this compute target already exists in the workspace.\n",
|
||||
"cts = ws.compute_targets\n",
|
||||
"if amlcompute_cluster_name in cts and cts[amlcompute_cluster_name].type == 'AmlCompute':\n",
|
||||
" found = True\n",
|
||||
" print('Found existing compute target.')\n",
|
||||
" compute_target = cts[amlcompute_cluster_name]\n",
|
||||
" \n",
|
||||
"if not found:\n",
|
||||
" print('Creating a new compute target...')\n",
|
||||
" provisioning_config = AmlCompute.provisioning_configuration(vm_size = \"STANDARD_D2_V2\", # for GPU, use \"STANDARD_NC6\"\n",
|
||||
" #vm_priority = 'lowpriority', # optional\n",
|
||||
" max_nodes = 6)\n",
|
||||
"\n",
|
||||
" # Create the cluster.\n",
|
||||
" compute_target = ComputeTarget.create(ws, amlcompute_cluster_name, provisioning_config)\n",
|
||||
" \n",
|
||||
" # Can poll for a minimum number of nodes and for a specific timeout.\n",
|
||||
" # If no min_node_count is provided, it will use the scale settings for the cluster.\n",
|
||||
" compute_target.wait_for_completion(show_output = True, min_node_count = None, timeout_in_minutes = 20)\n",
|
||||
" \n",
|
||||
" # For a more detailed view of current AmlCompute status, use get_status()."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Data\n",
|
||||
"\n",
|
||||
"Here load the data in the get_data script to be utilized in azure compute. To do this, first load all the necessary libraries and dependencies to set up paths for the data and to create the conda_run_config."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"if not os.path.isdir('data'):\n",
|
||||
" os.mkdir('data')\n",
|
||||
" \n",
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to AmlCompute\n",
|
||||
"conda_run_config.target = compute_target\n",
|
||||
"conda_run_config.environment.docker.enabled = True\n",
|
||||
"conda_run_config.environment.docker.base_image = azureml.core.runconfig.DEFAULT_CPU_IMAGE\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy','py-xgboost<=0.80'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Load Data\n",
|
||||
"\n",
|
||||
"Here create the script to be run in azure compute for loading the data, load the credit card dataset into cards and store the Class column (y) in the y variable and store the remaining data in the x variable. Next split the data using train_test_split and return X_train and y_train for training the model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"data = \"https://automlsamplenotebookdata.blob.core.windows.net/automl-sample-notebook-data/creditcard.csv\"\n",
|
||||
"dflow = dprep.auto_read_file(data)\n",
|
||||
"dflow.get_profile()\n",
|
||||
"X = dflow.drop_columns(columns=['Class'])\n",
|
||||
"y = dflow.keep_columns(columns=['Class'], validate_column_exists=True)\n",
|
||||
"X_train, X_test = X.random_split(percentage=0.8, seed=223)\n",
|
||||
"y_train, y_test = y.random_split(percentage=0.8, seed=223)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate a AutoMLConfig object. This defines the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|\n",
|
||||
"\n",
|
||||
"**_You can find more information about primary metrics_** [here](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#primary-metric)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"##### If you would like to see even better results increase \"iteration_time_out minutes\" to 10+ mins and increase \"iterations\" to a minimum of 30"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 5,\n",
|
||||
" \"iterations\": 10,\n",
|
||||
" \"n_cross_validations\": 2,\n",
|
||||
" \"primary_metric\": 'average_precision_score_weighted',\n",
|
||||
" \"preprocess\": True,\n",
|
||||
" \"max_concurrent_iterations\": 5,\n",
|
||||
" \"verbosity\": logging.INFO,\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors_20190417.log',\n",
|
||||
" path = project_folder,\n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" X = X_train,\n",
|
||||
" y = y_train,\n",
|
||||
" **automl_settings\n",
|
||||
" )"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Deploy\n",
|
||||
"\n",
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method on `automl_classifier` returns the best run and the fitted model for the last invocation. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Register the Fitted Model for Deployment\n",
|
||||
"If neither `metric` nor `iteration` are specified in the `register_model` call, the iteration with the best primary metric is registered."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"model = remote_run.register_model(description = description, tags = tags)\n",
|
||||
"\n",
|
||||
"print(remote_run.model_id) # This will be written to the script file later in the notebook."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create Scoring Script\n",
|
||||
"The scoring script is required to generate the image for deployment. It contains the code to do the predictions on input data."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%%writefile score.py\n",
|
||||
"import pickle\n",
|
||||
"import json\n",
|
||||
"import numpy\n",
|
||||
"import azureml.train.automl\n",
|
||||
"from sklearn.externals import joblib\n",
|
||||
"from azureml.core.model import Model\n",
|
||||
"\n",
|
||||
"def init():\n",
|
||||
" global model\n",
|
||||
" model_path = Model.get_model_path(model_name = '<<modelid>>') # this name is model.id of model that we want to deploy\n",
|
||||
" # deserialize the model file back into a sklearn model\n",
|
||||
" model = joblib.load(model_path)\n",
|
||||
"\n",
|
||||
"def run(rawdata):\n",
|
||||
" try:\n",
|
||||
" data = json.loads(rawdata)['data']\n",
|
||||
" data = numpy.array(data)\n",
|
||||
" result = model.predict(data)\n",
|
||||
" except Exception as e:\n",
|
||||
" result = str(e)\n",
|
||||
" return json.dumps({\"error\": result})\n",
|
||||
" return json.dumps({\"result\":result.tolist()})"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a YAML File for the Environment"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"To ensure the fit results are consistent with the training results, the SDK dependency versions need to be the same as the environment that trains the model. Details about retrieving the versions can be found in notebook [12.auto-ml-retrieve-the-training-sdk-versions](12.auto-ml-retrieve-the-training-sdk-versions.ipynb)."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"dependencies = remote_run.get_run_sdk_dependencies(iteration = 1)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"for p in ['azureml-train-automl', 'azureml-sdk', 'azureml-core']:\n",
|
||||
" print('{}\\t{}'.format(p, dependencies[p]))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"myenv = CondaDependencies.create(conda_packages=['numpy','scikit-learn','py-xgboost<=0.80'],\n",
|
||||
" pip_packages=['azureml-sdk[automl]'])\n",
|
||||
"\n",
|
||||
"conda_env_file_name = 'myenv.yml'\n",
|
||||
"myenv.save_to_file('.', conda_env_file_name)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Substitute the actual version number in the environment file.\n",
|
||||
"# This is not strictly needed in this notebook because the model should have been generated using the current SDK version.\n",
|
||||
"# However, we include this in case this code is used on an experiment from a previous SDK version.\n",
|
||||
"\n",
|
||||
"with open(conda_env_file_name, 'r') as cefr:\n",
|
||||
" content = cefr.read()\n",
|
||||
"\n",
|
||||
"with open(conda_env_file_name, 'w') as cefw:\n",
|
||||
" cefw.write(content.replace(azureml.core.VERSION, dependencies['azureml-sdk']))\n",
|
||||
"\n",
|
||||
"# Substitute the actual model id in the script file.\n",
|
||||
"\n",
|
||||
"script_file_name = 'score.py'\n",
|
||||
"\n",
|
||||
"with open(script_file_name, 'r') as cefr:\n",
|
||||
" content = cefr.read()\n",
|
||||
"\n",
|
||||
"with open(script_file_name, 'w') as cefw:\n",
|
||||
" cefw.write(content.replace('<<modelid>>', remote_run.model_id))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a Container Image\n",
|
||||
"\n",
|
||||
"Next use Azure Container Instances for deploying models as a web service for quickly deploying and validating your model\n",
|
||||
"or when testing a model that is under development."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.image import Image, ContainerImage\n",
|
||||
"\n",
|
||||
"image_config = ContainerImage.image_configuration(runtime= \"python\",\n",
|
||||
" execution_script = script_file_name,\n",
|
||||
" conda_file = conda_env_file_name,\n",
|
||||
" tags = {'area': \"cards\", 'type': \"automl_classification\"},\n",
|
||||
" description = \"Image for automl classification sample\")\n",
|
||||
"\n",
|
||||
"image = Image.create(name = \"automlsampleimage\",\n",
|
||||
" # this is the model object \n",
|
||||
" models = [model],\n",
|
||||
" image_config = image_config, \n",
|
||||
" workspace = ws)\n",
|
||||
"\n",
|
||||
"image.wait_for_creation(show_output = True)\n",
|
||||
"\n",
|
||||
"if image.creation_state == 'Failed':\n",
|
||||
" print(\"Image build log at: \" + image.image_build_log_uri)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Deploy the Image as a Web Service on Azure Container Instance\n",
|
||||
"\n",
|
||||
"Deploy an image that contains the model and other assets needed by the service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import AciWebservice\n",
|
||||
"\n",
|
||||
"aciconfig = AciWebservice.deploy_configuration(cpu_cores = 1, \n",
|
||||
" memory_gb = 1, \n",
|
||||
" tags = {'area': \"cards\", 'type': \"automl_classification\"}, \n",
|
||||
" description = 'sample service for Automl Classification')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import Webservice\n",
|
||||
"\n",
|
||||
"aci_service_name = 'automl-sample-creditcard'\n",
|
||||
"print(aci_service_name)\n",
|
||||
"aci_service = Webservice.deploy_from_image(deployment_config = aciconfig,\n",
|
||||
" image = image,\n",
|
||||
" name = aci_service_name,\n",
|
||||
" workspace = ws)\n",
|
||||
"aci_service.wait_for_deployment(True)\n",
|
||||
"print(aci_service.state)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Delete a Web Service\n",
|
||||
"\n",
|
||||
"Deletes the specified web service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#aci_service.delete()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Get Logs from a Deployed Web Service\n",
|
||||
"\n",
|
||||
"Gets logs from a deployed web service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#aci_service.get_logs()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"Now that the model is trained, split the data in the same way the data was split for training (The difference here is the data is being split locally) and then run the test data through the trained model to get the predicted values."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#Randomly select and test\n",
|
||||
"X_test = X_test.to_pandas_dataframe()\n",
|
||||
"y_test = y_test.to_pandas_dataframe()\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"y_pred = fitted_model.predict(X_test)\n",
|
||||
"y_pred"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Calculate metrics for the prediction\n",
|
||||
"\n",
|
||||
"Now visualize the data on a scatter plot to show what our truth (actual) values are compared to the predicted values \n",
|
||||
"from the trained model that was returned."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#Randomly select and test\n",
|
||||
"# Plot outputs\n",
|
||||
"%matplotlib notebook\n",
|
||||
"test_pred = plt.scatter(y_test, y_pred, color='b')\n",
|
||||
"test_test = plt.scatter(y_test, y_test, color='g')\n",
|
||||
"plt.legend((test_pred, test_test), ('prediction', 'truth'), loc='upper left', fontsize=8)\n",
|
||||
"plt.show()\n",
|
||||
"\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Acknowledgements"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"This Credit Card fraud Detection dataset is made available under the Open Database License: http://opendatacommons.org/licenses/odbl/1.0/. Any rights in individual contents of the database are licensed under the Database Contents License: http://opendatacommons.org/licenses/dbcl/1.0/ and is available at: https://www.kaggle.com/mlg-ulb/creditcardfraud\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"The dataset has been collected and analysed during a research collaboration of Worldline and the Machine Learning Group (http://mlg.ulb.ac.be) of ULB (Universit\u00c3\u00a9 Libre de Bruxelles) on big data mining and fraud detection. More details on current and past projects on related topics are available on https://www.researchgate.net/project/Fraud-detection-5 and the page of the DefeatFraud project\n",
|
||||
"Please cite the following works: \n",
|
||||
"\u00e2\u20ac\u00a2\tAndrea Dal Pozzolo, Olivier Caelen, Reid A. Johnson and Gianluca Bontempi. Calibrating Probability with Undersampling for Unbalanced Classification. In Symposium on Computational Intelligence and Data Mining (CIDM), IEEE, 2015\n",
|
||||
"\u00e2\u20ac\u00a2\tDal Pozzolo, Andrea; Caelen, Olivier; Le Borgne, Yann-Ael; Waterschoot, Serge; Bontempi, Gianluca. Learned lessons in credit card fraud detection from a practitioner perspective, Expert systems with applications,41,10,4915-4928,2014, Pergamon\n",
|
||||
"\u00e2\u20ac\u00a2\tDal Pozzolo, Andrea; Boracchi, Giacomo; Caelen, Olivier; Alippi, Cesare; Bontempi, Gianluca. Credit card fraud detection: a realistic modeling and a novel learning strategy, IEEE transactions on neural networks and learning systems,29,8,3784-3797,2018,IEEE\n",
|
||||
"o\tDal Pozzolo, Andrea Adaptive Machine learning for credit card fraud detection ULB MLG PhD thesis (supervised by G. Bontempi)\n",
|
||||
"\u00e2\u20ac\u00a2\tCarcillo, Fabrizio; Dal Pozzolo, Andrea; Le Borgne, Yann-A\u00c3\u00abl; Caelen, Olivier; Mazzer, Yannis; Bontempi, Gianluca. Scarff: a scalable framework for streaming credit card fraud detection with Spark, Information fusion,41, 182-194,2018,Elsevier\n",
|
||||
"\u00e2\u20ac\u00a2\tCarcillo, Fabrizio; Le Borgne, Yann-A\u00c3\u00abl; Caelen, Olivier; Bontempi, Gianluca. Streaming active learning strategies for real-life credit card fraud detection: assessment and visualization, International Journal of Data Science and Analytics, 5,4,285-300,2018,Springer International Publishing"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-classification-credit-card-fraud
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
File diff suppressed because it is too large
Load Diff
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-classification-with-deployment
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -0,0 +1,381 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Classification with Local Compute**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n",
|
||||
"\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"Please find the ONNX related documentations [here](https://github.com/onnx/onnx).\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute with ONNX compatible config on.\n",
|
||||
"4. Explore the results and save the ONNX model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig, constants"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-classification-onnx'\n",
|
||||
"project_folder = './sample_projects/automl-classification-onnx'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"\n",
|
||||
"This uses scikit-learn's [load_iris](https://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_iris.html) method."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iris = datasets.load_iris()\n",
|
||||
"X_train, X_test, y_train, y_test = train_test_split(iris.data, \n",
|
||||
" iris.target, \n",
|
||||
" test_size=0.2, \n",
|
||||
" random_state=0)\n",
|
||||
"\n",
|
||||
"\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Ensure the x_train and x_test are pandas DataFrame."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Convert the X_train and X_test to pandas DataFrame and set column names,\n",
|
||||
"# This is needed for initializing the input variable names of ONNX model, \n",
|
||||
"# and the prediction with the ONNX model using the inference helper.\n",
|
||||
"X_train = pd.DataFrame(X_train, columns=['c1', 'c2', 'c3', 'c4'])\n",
|
||||
"X_test = pd.DataFrame(X_test, columns=['c1', 'c2', 'c3', 'c4'])"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train with enable ONNX compatible models config on\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"Set the parameter enable_onnx_compatible_models=True, if you also want to generate the ONNX compatible models. Please note, the forecasting task and TensorFlow models are not ONNX compatible yet.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**enable_onnx_compatible_models**|Enable the ONNX compatible models in the experiment.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Set the preprocess=True, currently the InferenceHelper only supports this mode."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 10,\n",
|
||||
" verbosity = logging.INFO, \n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" preprocess=True,\n",
|
||||
" enable_onnx_compatible_models=True,\n",
|
||||
" path = project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best ONNX Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*.\n",
|
||||
"\n",
|
||||
"Set the parameter return_onnx_model=True to retrieve the best ONNX model, instead of the Python model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, onnx_mdl = local_run.get_output(return_onnx_model=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Save the best ONNX model"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.automl.core.onnx_convert import OnnxConverter\n",
|
||||
"onnx_fl_path = \"./best_model.onnx\"\n",
|
||||
"OnnxConverter.save_onnx_model(onnx_mdl, onnx_fl_path)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Predict with the ONNX model, using onnxruntime package"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import sys\n",
|
||||
"import json\n",
|
||||
"from azureml.automl.core.onnx_convert import OnnxConvertConstants\n",
|
||||
"\n",
|
||||
"if sys.version_info < OnnxConvertConstants.OnnxIncompatiblePythonVersion:\n",
|
||||
" python_version_compatible = True\n",
|
||||
"else:\n",
|
||||
" python_version_compatible = False\n",
|
||||
"\n",
|
||||
"try:\n",
|
||||
" import onnxruntime\n",
|
||||
" from azureml.automl.core.onnx_convert import OnnxInferenceHelper \n",
|
||||
" onnxrt_present = True\n",
|
||||
"except ImportError:\n",
|
||||
" onnxrt_present = False\n",
|
||||
"\n",
|
||||
"def get_onnx_res(run):\n",
|
||||
" res_path = 'onnx_resource.json'\n",
|
||||
" run.download_file(name=constants.MODEL_RESOURCE_PATH_ONNX, output_file_path=res_path)\n",
|
||||
" with open(res_path) as f:\n",
|
||||
" onnx_res = json.load(f)\n",
|
||||
" return onnx_res\n",
|
||||
"\n",
|
||||
"if onnxrt_present and python_version_compatible: \n",
|
||||
" mdl_bytes = onnx_mdl.SerializeToString()\n",
|
||||
" onnx_res = get_onnx_res(best_run)\n",
|
||||
"\n",
|
||||
" onnxrt_helper = OnnxInferenceHelper(mdl_bytes, onnx_res)\n",
|
||||
" pred_onnx, pred_prob_onnx = onnxrt_helper.predict(X_test)\n",
|
||||
"\n",
|
||||
" print(pred_onnx)\n",
|
||||
" print(pred_prob_onnx)\n",
|
||||
"else:\n",
|
||||
" if not python_version_compatible:\n",
|
||||
" print('Please use Python version 3.6 or 3.7 to run the inference helper.') \n",
|
||||
" if not onnxrt_present:\n",
|
||||
" print('Please install the onnxruntime package to do the prediction with ONNX model.')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,9 @@
|
||||
name: auto-ml-classification-with-onnx
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
- onnxruntime
|
||||
@@ -1,403 +1,399 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Classification using whitelist models**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"This notebooks shows how can automl can be trained on a a selected list of models,see the readme.md for the models.\n",
|
||||
"This trains the model exclusively on tensorflow based models.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model on a whilelisted models using local compute. \n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Test the best fitted model."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-local-whitelist'\n",
|
||||
"project_folder = './sample_projects/automl-local-whitelist'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"\n",
|
||||
"This uses scikit-learn's [load_digits](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html) method."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"digits = datasets.load_digits()\n",
|
||||
"\n",
|
||||
"# Exclude the first 100 rows from training so that they can be used for test.\n",
|
||||
"X_train = digits.data[100:,:]\n",
|
||||
"y_train = digits.target[100:]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>balanced_accuracy</i><br><i>average_precision_score_weighted</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], [n_samples, n_classes]<br>Multi-class targets. An indicator matrix turns on multilabel classification. This should be an array of integers.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|\n",
|
||||
"|**whitelist_models**|List of models that AutoML should use. The possible values are listed [here](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#configure-your-experiment-settings).|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 10,\n",
|
||||
" n_cross_validations = 3,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" enable_tf=True,\n",
|
||||
" whitelist_models=[\"TensorFlowLinearClassifier\", \"TensorFlowDNN\"],\n",
|
||||
" path = project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `log_loss` value:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = local_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = local_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Testing Our Best Fitted Model\n",
|
||||
"We will try to predict 2 digits and see how our model works."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize = (3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Classification using whitelist models**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"This notebooks shows how can automl can be trained on a a selected list of models,see the readme.md for the models.\n",
|
||||
"This trains the model exclusively on tensorflow based models.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model on a whilelisted models using local compute. \n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Test the best fitted model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#Note: This notebook will install tensorflow if not already installed in the enviornment..\n",
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"import sys\n",
|
||||
"whitelist_models=[\"LightGBM\"]\n",
|
||||
"if \"3.7\" != sys.version[0:3]:\n",
|
||||
" try:\n",
|
||||
" import tensorflow as tf1\n",
|
||||
" except ImportError:\n",
|
||||
" from pip._internal import main\n",
|
||||
" main(['install', 'tensorflow>=1.10.0,<=1.12.0'])\n",
|
||||
" logging.getLogger().setLevel(logging.ERROR)\n",
|
||||
" whitelist_models=[\"TensorFlowLinearClassifier\", \"TensorFlowDNN\"]\n",
|
||||
"\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-local-whitelist'\n",
|
||||
"project_folder = './sample_projects/automl-local-whitelist'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"\n",
|
||||
"This uses scikit-learn's [load_digits](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html) method."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"\n",
|
||||
"# Exclude the first 100 rows from training so that they can be used for test.\n",
|
||||
"X_train = digits.data[100:,:]\n",
|
||||
"y_train = digits.target[100:]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>balanced_accuracy</i><br><i>average_precision_score_weighted</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|\n",
|
||||
"|**whitelist_models**|List of models that AutoML should use. The possible values are listed [here](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#configure-your-experiment-settings).|"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 10,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" enable_tf=True,\n",
|
||||
" whitelist_models=whitelist_models,\n",
|
||||
" path = project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `log_loss` value:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = local_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = local_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Testing Our Best Fitted Model\n",
|
||||
"We will try to predict 2 digits and see how our model works."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize = (3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-classification-with-whitelisting
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,418 +1,482 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Classification with Local Compute**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n",
|
||||
"\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Test the best fitted model."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-local-classification'\n",
|
||||
"project_folder = './sample_projects/automl-local-classification'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"\n",
|
||||
"This uses scikit-learn's [load_digits](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html) method."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"digits = datasets.load_digits()\n",
|
||||
"\n",
|
||||
"# Exclude the first 100 rows from training so that they can be used for test.\n",
|
||||
"X_train = digits.data[100:,:]\n",
|
||||
"y_train = digits.target[100:]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], [n_samples, n_classes]<br>Multi-class targets. An indicator matrix turns on multilabel classification. This should be an array of integers.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 25,\n",
|
||||
" n_cross_validations = 3,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" path = project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Optionally, you can continue an interrupted local run by calling `continue_experiment` without the `iterations` parameter, or run more iterations for a completed run by specifying the `iterations` parameter:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = local_run.continue_experiment(X = X_train, \n",
|
||||
" y = y_train, \n",
|
||||
" show_output = True,\n",
|
||||
" iterations = 5)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `log_loss` value:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = local_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = local_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test \n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Testing Our Best Fitted Model\n",
|
||||
"We will try to predict 2 digits and see how our model works."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize = (3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Classification with Local Compute**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n",
|
||||
"\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Test the best fitted model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Accessing the Azure ML workspace requires authentication with Azure.\n",
|
||||
"\n",
|
||||
"The default authentication is interactive authentication using the default tenant. Executing the `ws = Workspace.from_config()` line in the cell below will prompt for authentication the first time that it is run.\n",
|
||||
"\n",
|
||||
"If you have multiple Azure tenants, you can specify the tenant by replacing the `ws = Workspace.from_config()` line in the cell below with the following:\n",
|
||||
"\n",
|
||||
"```\n",
|
||||
"from azureml.core.authentication import InteractiveLoginAuthentication\n",
|
||||
"auth = InteractiveLoginAuthentication(tenant_id = 'mytenantid')\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"```\n",
|
||||
"\n",
|
||||
"If you need to run in an environment where interactive login is not possible, you can use Service Principal authentication by replacing the `ws = Workspace.from_config()` line in the cell below with the following:\n",
|
||||
"\n",
|
||||
"```\n",
|
||||
"from azureml.core.authentication import ServicePrincipalAuthentication\n",
|
||||
"auth = auth = ServicePrincipalAuthentication('mytenantid', 'myappid', 'mypassword')\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"```\n",
|
||||
"For more details, see [aka.ms/aml-notebook-auth](http://aka.ms/aml-notebook-auth)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-classification'\n",
|
||||
"project_folder = './sample_projects/automl-classification'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"\n",
|
||||
"This uses scikit-learn's [load_digits](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html) method."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"\n",
|
||||
"# Exclude the first 100 rows from training so that they can be used for test.\n",
|
||||
"X_train = digits.data[100:,:]\n",
|
||||
"y_train = digits.target[100:]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|\n",
|
||||
"\n",
|
||||
"Automated machine learning trains multiple machine learning pipelines. Each pipelines training is known as an iteration.\n",
|
||||
"* You can specify a maximum number of iterations using the `iterations` parameter.\n",
|
||||
"* You can specify a maximum time for the run using the `experiment_timeout_minutes` parameter.\n",
|
||||
"* If you specify neither the `iterations` nor the `experiment_timeout_minutes`, automated ML keeps running iterations while it continues to see improvements in the scores.\n",
|
||||
"\n",
|
||||
"The following example doesn't specify `iterations` or `experiment_timeout_minutes` and so runs until the scores stop improving.\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" n_cross_validations = 3)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Optionally, you can continue an interrupted local run by calling `continue_experiment` without the `iterations` parameter, or run more iterations for a completed run by specifying the `iterations` parameter:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = local_run.continue_experiment(X = X_train, \n",
|
||||
" y = y_train, \n",
|
||||
" show_output = True,\n",
|
||||
" iterations = 5)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Print the properties of the model\n",
|
||||
"The fitted_model is a python object and you can read the different properties of the object.\n",
|
||||
"The following shows printing hyperparameters for each step in the pipeline."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from pprint import pprint\n",
|
||||
"\n",
|
||||
"def print_model(model, prefix=\"\"):\n",
|
||||
" for step in model.steps:\n",
|
||||
" print(prefix + step[0])\n",
|
||||
" if hasattr(step[1], 'estimators') and hasattr(step[1], 'weights'):\n",
|
||||
" pprint({'estimators': list(e[0] for e in step[1].estimators), 'weights': step[1].weights})\n",
|
||||
" print()\n",
|
||||
" for estimator in step[1].estimators:\n",
|
||||
" print_model(estimator[1], estimator[0]+ ' - ')\n",
|
||||
" elif hasattr(step[1], '_base_learners') and hasattr(step[1], '_meta_learner'):\n",
|
||||
" print(\"\\nMeta Learner\")\n",
|
||||
" pprint(step[1]._meta_learner)\n",
|
||||
" print()\n",
|
||||
" for estimator in step[1]._base_learners:\n",
|
||||
" print_model(estimator[1], estimator[0]+ ' - ')\n",
|
||||
" else:\n",
|
||||
" pprint(step[1].get_params())\n",
|
||||
" print()\n",
|
||||
" \n",
|
||||
"print_model(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `log_loss` value:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = local_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"print_model(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = local_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"print_model(third_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test \n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Testing Our Best Fitted Model\n",
|
||||
"We will try to predict 2 digits and see how our model works."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize = (3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-classification
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,154 +0,0 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning Configuration\n",
|
||||
"\n",
|
||||
"In this example you will create an Azure Machine Learning `Workspace` object and initialize your notebook directory to easily reload this object from a configuration file. Typically you will only need to run this once per notebook directory, and all other notebooks in this directory or any sub-directories will automatically use the settings you indicate here.\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Check the Azure ML Core SDK Version to Validate Your Installation"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"print(\"SDK Version:\", azureml.core.VERSION)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Initialize an Azure ML Workspace\n",
|
||||
"### What is an Azure ML Workspace and Why Do I Need One?\n",
|
||||
"\n",
|
||||
"An Azure ML workspace is an Azure resource that organizes and coordinates the actions of many other Azure resources to assist in executing and sharing machine learning workflows. In particular, an Azure ML workspace coordinates storage, databases, and compute resources providing added functionality for machine learning experimentation, operationalization, and the monitoring of operationalized models.\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"### What do I Need?\n",
|
||||
"\n",
|
||||
"To create or access an Azure ML workspace, you will need to import the Azure ML library and specify following information:\n",
|
||||
"* A name for your workspace. You can choose one.\n",
|
||||
"* Your subscription id. Use the `id` value from the `az account show` command output above.\n",
|
||||
"* The resource group name. The resource group organizes Azure resources and provides a default region for the resources in the group. The resource group will be created if it doesn't exist. Resource groups can be created and viewed in the [Azure portal](https://portal.azure.com)\n",
|
||||
"* Supported regions include `eastus2`, `eastus`,`westcentralus`, `southeastasia`, `westeurope`, `australiaeast`, `westus2`, `southcentralus`."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"subscription_id = \"<subscription_id>\"\n",
|
||||
"resource_group = \"myrg\"\n",
|
||||
"workspace_name = \"myws\"\n",
|
||||
"workspace_region = \"eastus2\""
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Creating a Workspace\n",
|
||||
"If you already have access to an Azure ML workspace you want to use, you can skip this cell. Otherwise, this cell will create an Azure ML workspace for you in the specified subscription, provided you have the correct permissions for the given `subscription_id`.\n",
|
||||
"\n",
|
||||
"This will fail when:\n",
|
||||
"1. The workspace already exists.\n",
|
||||
"2. You do not have permission to create a workspace in the resource group.\n",
|
||||
"3. You are not a subscription owner or contributor and no Azure ML workspaces have ever been created in this subscription.\n",
|
||||
"\n",
|
||||
"If workspace creation fails for any reason other than already existing, please work with your IT administrator to provide you with the appropriate permissions or to provision the required resources.\n",
|
||||
"\n",
|
||||
"**Note:** Creation of a new workspace can take several minutes."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Import the Workspace class and check the Azure ML SDK version.\n",
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.create(name = workspace_name,\n",
|
||||
" subscription_id = subscription_id,\n",
|
||||
" resource_group = resource_group, \n",
|
||||
" location = workspace_region)\n",
|
||||
"ws.get_details()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Configuring Your Local Environment\n",
|
||||
"You can validate that you have access to the specified workspace and write a configuration file to the default configuration location, `./aml_config/config.json`."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace(workspace_name = workspace_name,\n",
|
||||
" subscription_id = subscription_id,\n",
|
||||
" resource_group = resource_group)\n",
|
||||
"\n",
|
||||
"# Persist the subscription id, resource group name, and workspace name in aml_config/config.json.\n",
|
||||
"ws.write_config()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
File diff suppressed because it is too large
Load Diff
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-dataprep-remote-execution
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,469 +1,417 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Prepare Data using `azureml.dataprep` for Local Execution**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we showcase how you can use the `azureml.dataprep` SDK to load and prepare data for AutoML. `azureml.dataprep` can also be used standalone; full documentation can be found [here](https://github.com/Microsoft/PendletonDocs).\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Define data loading and preparation steps in a `Dataflow` using `azureml.dataprep`.\n",
|
||||
"2. Pass the `Dataflow` to AutoML for a local run.\n",
|
||||
"3. Pass the `Dataflow` to AutoML for a remote run."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"Currently, Data Prep only supports __Ubuntu 16__ and __Red Hat Enterprise Linux 7__. We are working on supporting more linux distros."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"\n",
|
||||
"import pandas as pd\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"import azureml.dataprep as dprep\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
" \n",
|
||||
"# choose a name for experiment\n",
|
||||
"experiment_name = 'automl-dataprep-local'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-dataprep-local'\n",
|
||||
" \n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
" \n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# You can use `auto_read_file` which intelligently figures out delimiters and datatypes of a file.\n",
|
||||
"# The data referenced here was pulled from `sklearn.datasets.load_digits()`.\n",
|
||||
"simple_example_data_root = 'https://dprepdata.blob.core.windows.net/automl-notebook-data/'\n",
|
||||
"X = dprep.auto_read_file(simple_example_data_root + 'X.csv').skip(1) # Remove the header row.\n",
|
||||
"\n",
|
||||
"# You can also use `read_csv` and `to_*` transformations to read (with overridable delimiter)\n",
|
||||
"# and convert column types manually.\n",
|
||||
"# Here we read a comma delimited file and convert all columns to integers.\n",
|
||||
"y = dprep.read_csv(simple_example_data_root + 'y.csv').to_long(dprep.ColumnSelector(term='.*', use_regex = True))"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Review the Data Preparation Result\n",
|
||||
"\n",
|
||||
"You can peek the result of a Dataflow at any range using `skip(i)` and `head(j)`. Doing so evaluates only `j` records for all the steps in the Dataflow, which makes it fast even against large datasets."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"X.skip(1).head(5)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"This creates a general AutoML settings object applicable for both local and remote runs."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\" : 10,\n",
|
||||
" \"iterations\" : 2,\n",
|
||||
" \"primary_metric\" : 'AUC_weighted',\n",
|
||||
" \"preprocess\" : False,\n",
|
||||
" \"verbosity\" : logging.INFO,\n",
|
||||
" \"n_cross_validations\": 3\n",
|
||||
"}"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Pass Data with `Dataflow` Objects\n",
|
||||
"\n",
|
||||
"The `Dataflow` objects captured above can be passed to the `submit` method for a local run. AutoML will retrieve the results from the `Dataflow` for model training."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" X = X,\n",
|
||||
" y = y,\n",
|
||||
" **automl_settings)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
" \n",
|
||||
"import pandas as pd\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `log_loss` value:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = local_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the first iteration:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 0\n",
|
||||
"best_run, fitted_model = local_run.get_output(iteration = iteration)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Testing Our Best Fitted Model\n",
|
||||
"We will try to predict 2 digits and see how our model works."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#Randomly select digits and test\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import random\n",
|
||||
"import numpy as np\n",
|
||||
"\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize=(3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Appendix"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Capture the `Dataflow` Objects for Later Use in AutoML\n",
|
||||
"\n",
|
||||
"`Dataflow` objects are immutable and are composed of a list of data preparation steps. A `Dataflow` object can be branched at any point for further usage."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# sklearn.digits.data + target\n",
|
||||
"digits_complete = dprep.auto_read_file('https://dprepdata.blob.core.windows.net/automl-notebook-data/digits-complete.csv')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"`digits_complete` (sourced from `sklearn.datasets.load_digits()`) is forked into `dflow_X` to capture all the feature columns and `dflow_y` to capture the label column."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"digits_complete.to_pandas_dataframe().shape\n",
|
||||
"labels_column = 'Column64'\n",
|
||||
"dflow_X = digits_complete.drop_columns(columns = [labels_column])\n",
|
||||
"dflow_y = digits_complete.keep_columns(columns = [labels_column])"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.5"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.5"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Prepare Data using `azureml.dataprep` for Local Execution**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we showcase how you can use the `azureml.dataprep` SDK to load and prepare data for AutoML. `azureml.dataprep` can also be used standalone; full documentation can be found [here](https://github.com/Microsoft/PendletonDocs).\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Define data loading and preparation steps in a `Dataflow` using `azureml.dataprep`.\n",
|
||||
"2. Pass the `Dataflow` to AutoML for a local run.\n",
|
||||
"3. Pass the `Dataflow` to AutoML for a remote run."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"Currently, Data Prep only supports __Ubuntu 16__ and __Red Hat Enterprise Linux 7__. We are working on supporting more linux distros."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"import pandas as pd\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"import azureml.dataprep as dprep\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
" \n",
|
||||
"# choose a name for experiment\n",
|
||||
"experiment_name = 'automl-dataprep-local'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-dataprep-local'\n",
|
||||
" \n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
" \n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# You can use `auto_read_file` which intelligently figures out delimiters and datatypes of a file.\n",
|
||||
"# The data referenced here was a 1MB simple random sample of the Chicago Crime data into a local temporary directory.\n",
|
||||
"# You can also use `read_csv` and `to_*` transformations to read (with overridable delimiter)\n",
|
||||
"# and convert column types manually.\n",
|
||||
"example_data = 'https://dprepdata.blob.core.windows.net/demo/crime0-random.csv'\n",
|
||||
"dflow = dprep.auto_read_file(example_data).skip(1) # Remove the header row.\n",
|
||||
"dflow.get_profile()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# As `Primary Type` is our y data, we need to drop the values those are null in this column.\n",
|
||||
"dflow = dflow.drop_nulls('Primary Type')\n",
|
||||
"dflow.head(5)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Review the Data Preparation Result\n",
|
||||
"\n",
|
||||
"You can peek the result of a Dataflow at any range using `skip(i)` and `head(j)`. Doing so evaluates only `j` records for all the steps in the Dataflow, which makes it fast even against large datasets.\n",
|
||||
"\n",
|
||||
"`Dataflow` objects are immutable and are composed of a list of data preparation steps. A `Dataflow` object can be branched at any point for further usage."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"X = dflow.drop_columns(columns=['Primary Type', 'FBI Code'])\n",
|
||||
"y = dflow.keep_columns(columns=['Primary Type'], validate_column_exists=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"This creates a general AutoML settings object applicable for both local and remote runs."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\" : 10,\n",
|
||||
" \"iterations\" : 2,\n",
|
||||
" \"primary_metric\" : 'AUC_weighted',\n",
|
||||
" \"preprocess\" : True,\n",
|
||||
" \"verbosity\" : logging.INFO\n",
|
||||
"}"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Pass Data with `Dataflow` Objects\n",
|
||||
"\n",
|
||||
"The `Dataflow` objects captured above can be passed to the `submit` method for a local run. AutoML will retrieve the results from the `Dataflow` for model training."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" X = X,\n",
|
||||
" y = y,\n",
|
||||
" **automl_settings)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
" \n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `log_loss` value:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = local_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the first iteration:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 0\n",
|
||||
"best_run, fitted_model = local_run.get_output(iteration = iteration)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data\n",
|
||||
"For the test data, it should have the same preparation step as the train data. Otherwise it might get failed at the preprocessing step."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"dflow_test = dprep.auto_read_file(path='https://dprepdata.blob.core.windows.net/demo/crime0-test.csv').skip(1)\n",
|
||||
"dflow_test = dflow_test.drop_nulls('Primary Type')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Testing Our Best Fitted Model\n",
|
||||
"We will use confusion matrix to see how our model works."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from pandas_ml import ConfusionMatrix\n",
|
||||
"\n",
|
||||
"y_test = dflow_test.keep_columns(columns=['Primary Type']).to_pandas_dataframe()\n",
|
||||
"X_test = dflow_test.drop_columns(columns=['Primary Type', 'FBI Code']).to_pandas_dataframe()\n",
|
||||
"\n",
|
||||
"ypred = fitted_model.predict(X_test)\n",
|
||||
"\n",
|
||||
"cm = ConfusionMatrix(y_test['Primary Type'], ypred)\n",
|
||||
"\n",
|
||||
"print(cm)\n",
|
||||
"\n",
|
||||
"cm.plot()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-dataprep
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,370 +1,349 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Exploring Previous Runs**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Explore](#Explore)\n",
|
||||
"1. [Download](#Download)\n",
|
||||
"1. [Register](#Register)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we present some examples on navigating previously executed runs. We also show how you can download a fitted model for any previous run.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. List all experiments in a workspace.\n",
|
||||
"2. List all AutoML runs in an experiment.\n",
|
||||
"3. Get details for an AutoML run, including settings, run widget, and all metrics.\n",
|
||||
"4. Download a fitted pipeline for any iteration."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"import re\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.run import Run\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Explore"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### List Experiments"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"experiment_list = Experiment.list(workspace=ws)\n",
|
||||
"\n",
|
||||
"summary_df = pd.DataFrame(index = ['No of Runs'])\n",
|
||||
"for experiment in experiment_list:\n",
|
||||
" automl_runs = list(experiment.get_runs(type='automl'))\n",
|
||||
" summary_df[experiment.name] = [len(automl_runs)]\n",
|
||||
" \n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"summary_df.T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### List runs for an experiment\n",
|
||||
"Set `experiment_name` to any experiment name from the result of the Experiment.list cell to load the AutoML runs."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"experiment_name = 'automl-local-classification' # Replace this with any project name from previous cell.\n",
|
||||
"\n",
|
||||
"proj = ws.experiments[experiment_name]\n",
|
||||
"summary_df = pd.DataFrame(index = ['Type', 'Status', 'Primary Metric', 'Iterations', 'Compute', 'Name'])\n",
|
||||
"automl_runs = list(proj.get_runs(type='automl'))\n",
|
||||
"automl_runs_project = []\n",
|
||||
"for run in automl_runs:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" tags = run.get_tags()\n",
|
||||
" amlsettings = eval(properties['RawAMLSettingsString'])\n",
|
||||
" if 'iterations' in tags:\n",
|
||||
" iterations = tags['iterations']\n",
|
||||
" else:\n",
|
||||
" iterations = properties['num_iterations']\n",
|
||||
" summary_df[run.id] = [amlsettings['task_type'], run.get_details()['status'], properties['primary_metric'], iterations, properties['target'], amlsettings['name']]\n",
|
||||
" if run.get_details()['status'] == 'Completed':\n",
|
||||
" automl_runs_project.append(run.id)\n",
|
||||
" \n",
|
||||
"from IPython.display import HTML\n",
|
||||
"projname_html = HTML(\"<h3>{}</h3>\".format(proj.name))\n",
|
||||
"\n",
|
||||
"from IPython.display import display\n",
|
||||
"display(projname_html)\n",
|
||||
"display(summary_df.T)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Get details for a run\n",
|
||||
"\n",
|
||||
"Copy the project name and run id from the previous cell output to find more details on a particular run."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"run_id = automl_runs_project[0] # Replace with your own run_id from above run ids\n",
|
||||
"assert (run_id in summary_df.keys()), \"Run id not found! Please set run id to a value from above run ids\"\n",
|
||||
"\n",
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"ml_run = AutoMLRun(experiment = experiment, run_id = run_id)\n",
|
||||
"\n",
|
||||
"summary_df = pd.DataFrame(index = ['Type', 'Status', 'Primary Metric', 'Iterations', 'Compute', 'Name', 'Start Time', 'End Time'])\n",
|
||||
"properties = ml_run.get_properties()\n",
|
||||
"tags = ml_run.get_tags()\n",
|
||||
"status = ml_run.get_details()\n",
|
||||
"amlsettings = eval(properties['RawAMLSettingsString'])\n",
|
||||
"if 'iterations' in tags:\n",
|
||||
" iterations = tags['iterations']\n",
|
||||
"else:\n",
|
||||
" iterations = properties['num_iterations']\n",
|
||||
"start_time = None\n",
|
||||
"if 'startTimeUtc' in status:\n",
|
||||
" start_time = status['startTimeUtc']\n",
|
||||
"end_time = None\n",
|
||||
"if 'endTimeUtc' in status:\n",
|
||||
" end_time = status['endTimeUtc']\n",
|
||||
"summary_df[ml_run.id] = [amlsettings['task_type'], status['status'], properties['primary_metric'], iterations, properties['target'], amlsettings['name'], start_time, end_time]\n",
|
||||
"display(HTML('<h3>Runtime Details</h3>'))\n",
|
||||
"display(summary_df)\n",
|
||||
"\n",
|
||||
"#settings_df = pd.DataFrame(data = amlsettings, index = [''])\n",
|
||||
"display(HTML('<h3>AutoML Settings</h3>'))\n",
|
||||
"display(amlsettings)\n",
|
||||
"\n",
|
||||
"display(HTML('<h3>Iterations</h3>'))\n",
|
||||
"RunDetails(ml_run).show() \n",
|
||||
"\n",
|
||||
"children = list(ml_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"display(HTML('<h3>Metrics</h3>'))\n",
|
||||
"display(rundata)\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Download"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Download the Best Model for Any Given Metric"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"metric = 'AUC_weighted' # Replace with a metric name.\n",
|
||||
"best_run, fitted_model = ml_run.get_output(metric = metric)\n",
|
||||
"fitted_model"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Download the Model for Any Given Iteration"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 1 # Replace with an iteration number.\n",
|
||||
"best_run, fitted_model = ml_run.get_output(iteration = iteration)\n",
|
||||
"fitted_model"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Register"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Register fitted model for deployment\n",
|
||||
"If neither `metric` nor `iteration` are specified in the `register_model` call, the iteration with the best primary metric is registered."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"ml_run.register_model(description = description, tags = tags)\n",
|
||||
"ml_run.model_id # Use this id to deploy the model as a web service in Azure."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Register the Best Model for Any Given Metric"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"metric = 'AUC_weighted' # Replace with a metric name.\n",
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"ml_run.register_model(description = description, tags = tags, metric = metric)\n",
|
||||
"print(ml_run.model_id) # Use this id to deploy the model as a web service in Azure."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Register the Model for Any Given Iteration"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 1 # Replace with an iteration number.\n",
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"ml_run.register_model(description = description, tags = tags, iteration = iteration)\n",
|
||||
"print(ml_run.model_id) # Use this id to deploy the model as a web service in Azure."
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Exploring Previous Runs**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Explore](#Explore)\n",
|
||||
"1. [Download](#Download)\n",
|
||||
"1. [Register](#Register)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we present some examples on navigating previously executed runs. We also show how you can download a fitted model for any previous run.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. List all experiments in a workspace.\n",
|
||||
"2. List all AutoML runs in an experiment.\n",
|
||||
"3. Get details for an AutoML run, including settings, run widget, and all metrics.\n",
|
||||
"4. Download a fitted pipeline for any iteration."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import pandas as pd\n",
|
||||
"import json\n",
|
||||
"\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Explore"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### List Experiments"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"experiment_list = Experiment.list(workspace=ws)\n",
|
||||
"\n",
|
||||
"summary_df = pd.DataFrame(index = ['No of Runs'])\n",
|
||||
"for experiment in experiment_list:\n",
|
||||
" automl_runs = list(experiment.get_runs(type='automl'))\n",
|
||||
" summary_df[experiment.name] = [len(automl_runs)]\n",
|
||||
" \n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"summary_df.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### List runs for an experiment\n",
|
||||
"Set `experiment_name` to any experiment name from the result of the Experiment.list cell to load the AutoML runs."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"experiment_name = 'automl-local-classification' # Replace this with any project name from previous cell.\n",
|
||||
"\n",
|
||||
"proj = ws.experiments[experiment_name]\n",
|
||||
"summary_df = pd.DataFrame(index = ['Type', 'Status', 'Primary Metric', 'Iterations', 'Compute', 'Name'])\n",
|
||||
"automl_runs = list(proj.get_runs(type='automl'))\n",
|
||||
"automl_runs_project = []\n",
|
||||
"for run in automl_runs:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" tags = run.get_tags()\n",
|
||||
" amlsettings = json.loads(properties['AMLSettingsJsonString'])\n",
|
||||
" if 'iterations' in tags:\n",
|
||||
" iterations = tags['iterations']\n",
|
||||
" else:\n",
|
||||
" iterations = properties['num_iterations']\n",
|
||||
" summary_df[run.id] = [amlsettings['task_type'], run.get_details()['status'], properties['primary_metric'], iterations, properties['target'], amlsettings['name']]\n",
|
||||
" if run.get_details()['status'] == 'Completed':\n",
|
||||
" automl_runs_project.append(run.id)\n",
|
||||
" \n",
|
||||
"from IPython.display import HTML\n",
|
||||
"projname_html = HTML(\"<h3>{}</h3>\".format(proj.name))\n",
|
||||
"\n",
|
||||
"from IPython.display import display\n",
|
||||
"display(projname_html)\n",
|
||||
"display(summary_df.T)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Get details for a run\n",
|
||||
"\n",
|
||||
"Copy the project name and run id from the previous cell output to find more details on a particular run."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"run_id = automl_runs_project[0] # Replace with your own run_id from above run ids\n",
|
||||
"assert (run_id in summary_df.keys()), \"Run id not found! Please set run id to a value from above run ids\"\n",
|
||||
"\n",
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"ml_run = AutoMLRun(experiment = experiment, run_id = run_id)\n",
|
||||
"\n",
|
||||
"summary_df = pd.DataFrame(index = ['Type', 'Status', 'Primary Metric', 'Iterations', 'Compute', 'Name', 'Start Time', 'End Time'])\n",
|
||||
"properties = ml_run.get_properties()\n",
|
||||
"tags = ml_run.get_tags()\n",
|
||||
"status = ml_run.get_details()\n",
|
||||
"amlsettings = json.loads(properties['AMLSettingsJsonString'])\n",
|
||||
"if 'iterations' in tags:\n",
|
||||
" iterations = tags['iterations']\n",
|
||||
"else:\n",
|
||||
" iterations = properties['num_iterations']\n",
|
||||
"start_time = None\n",
|
||||
"if 'startTimeUtc' in status:\n",
|
||||
" start_time = status['startTimeUtc']\n",
|
||||
"end_time = None\n",
|
||||
"if 'endTimeUtc' in status:\n",
|
||||
" end_time = status['endTimeUtc']\n",
|
||||
"summary_df[ml_run.id] = [amlsettings['task_type'], status['status'], properties['primary_metric'], iterations, properties['target'], amlsettings['name'], start_time, end_time]\n",
|
||||
"display(HTML('<h3>Runtime Details</h3>'))\n",
|
||||
"display(summary_df)\n",
|
||||
"\n",
|
||||
"#settings_df = pd.DataFrame(data = amlsettings, index = [''])\n",
|
||||
"display(HTML('<h3>AutoML Settings</h3>'))\n",
|
||||
"display(amlsettings)\n",
|
||||
"\n",
|
||||
"display(HTML('<h3>Iterations</h3>'))\n",
|
||||
"RunDetails(ml_run).show() \n",
|
||||
"\n",
|
||||
"children = list(ml_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"display(HTML('<h3>Metrics</h3>'))\n",
|
||||
"display(rundata)\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Download"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Download the Best Model for Any Given Metric"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"metric = 'AUC_weighted' # Replace with a metric name.\n",
|
||||
"best_run, fitted_model = ml_run.get_output(metric = metric)\n",
|
||||
"fitted_model"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Download the Model for Any Given Iteration"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 1 # Replace with an iteration number.\n",
|
||||
"best_run, fitted_model = ml_run.get_output(iteration = iteration)\n",
|
||||
"fitted_model"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Register"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Register fitted model for deployment\n",
|
||||
"If neither `metric` nor `iteration` are specified in the `register_model` call, the iteration with the best primary metric is registered."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"ml_run.register_model(description = description, tags = tags)\n",
|
||||
"print(ml_run.model_id) # Use this id to deploy the model as a web service in Azure."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Register the Best Model for Any Given Metric"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"metric = 'AUC_weighted' # Replace with a metric name.\n",
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"ml_run.register_model(description = description, tags = tags, metric = metric)\n",
|
||||
"print(ml_run.model_id) # Use this id to deploy the model as a web service in Azure."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Register the Model for Any Given Iteration"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 1 # Replace with an iteration number.\n",
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"ml_run.register_model(description = description, tags = tags, iteration = iteration)\n",
|
||||
"print(ml_run.model_id) # Use this id to deploy the model as a web service in Azure."
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-exploring-previous-runs
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -0,0 +1,604 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "xiaga@microsoft.com, tosingli@microsoft.com, erwright@microsoft.com"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.8"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"**BikeShare Demand Forecasting**\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Evaluate](#Evaluate)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"This notebook demonstrates demand forecasting for a bike-sharing service using AutoML.\n",
|
||||
"\n",
|
||||
"AutoML highlights here include built-in holiday featurization, accessing engineered feature names, and working with the `forecast` function. Please also look at the additional forecasting notebooks, which document lagging, rolling windows, forecast quantiles, other ways to use the forecast function, and forecaster deployment.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"Notebook synopsis:\n",
|
||||
"1. Creating an Experiment in an existing Workspace\n",
|
||||
"2. Configuration and local run of AutoML for a time-series model with lag and holiday features \n",
|
||||
"3. Viewing the engineered names for featurized data and featurization summary for all raw features\n",
|
||||
"4. Evaluating the fitted model using a rolling test "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"import pandas as pd\n",
|
||||
"import numpy as np\n",
|
||||
"import logging\n",
|
||||
"import warnings\n",
|
||||
"\n",
|
||||
"from pandas.tseries.frequencies import to_offset\n",
|
||||
"\n",
|
||||
"# Squash warning messages for cleaner output in the notebook\n",
|
||||
"warnings.showwarning = lambda *args, **kwargs: None\n",
|
||||
"\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from sklearn.metrics import mean_absolute_error, mean_squared_error"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"As part of the setup you have already created a <b>Workspace</b>. To run AutoML, you also need to create an <b>Experiment</b>. An Experiment corresponds to a prediction problem you are trying to solve, while a Run corresponds to a specific approach to the problem."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# choose a name for the run history container in the workspace\n",
|
||||
"experiment_name = 'automl-bikeshareforecasting'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-local-bikeshareforecasting'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Run History Name'] = experiment_name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"Read bike share demand data from file, and preview data."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"data = pd.read_csv('bike-no.csv', parse_dates=['date'])\n",
|
||||
"data.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Let's set up what we know about the dataset. \n",
|
||||
"\n",
|
||||
"**Target column** is what we want to forecast.\n",
|
||||
"\n",
|
||||
"**Time column** is the time axis along which to predict.\n",
|
||||
"\n",
|
||||
"**Grain** is another word for an individual time series in your dataset. Grains are identified by values of the columns listed `grain_column_names`, for example \"store\" and \"item\" if your data has multiple time series of sales, one series for each combination of store and item sold.\n",
|
||||
"\n",
|
||||
"This dataset has only one time series. Please see the [orange juice notebook](https://github.com/Azure/MachineLearningNotebooks/tree/master/how-to-use-azureml/automated-machine-learning/forecasting-orange-juice-sales) for an example of a multi-time series dataset."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"target_column_name = 'cnt'\n",
|
||||
"time_column_name = 'date'\n",
|
||||
"grain_column_names = []"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Split the data\n",
|
||||
"\n",
|
||||
"The first split we make is into train and test sets. Note we are splitting on time."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"train = data[data[time_column_name] < '2012-09-01']\n",
|
||||
"test = data[data[time_column_name] >= '2012-09-01']\n",
|
||||
"\n",
|
||||
"X_train = train.copy()\n",
|
||||
"y_train = X_train.pop(target_column_name).values\n",
|
||||
"\n",
|
||||
"X_test = test.copy()\n",
|
||||
"y_test = X_test.pop(target_column_name).values\n",
|
||||
"\n",
|
||||
"print(X_train.shape)\n",
|
||||
"print(y_train.shape)\n",
|
||||
"print(X_test.shape)\n",
|
||||
"print(y_test.shape)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Setting forecaster maximum horizon \n",
|
||||
"\n",
|
||||
"The forecast horizon is the number of periods into the future that the model should predict. Here, we set the horizon to 14 periods (i.e. 14 days). Notice that this is much shorter than the number of days in the test set; we will need to use a rolling test to evaluate the performance on the whole test set. For more discussion of forecast horizons and guiding principles for setting them, please see the [energy demand notebook](https://github.com/Azure/MachineLearningNotebooks/tree/master/how-to-use-azureml/automated-machine-learning/forecasting-energy-demand). "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"max_horizon = 14"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate a AutoMLConfig object. This defines the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|forecasting|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize.<br> Forecasting supports the following primary metrics <br><i>spearman_correlation</i><br><i>normalized_root_mean_squared_error</i><br><i>r2_score</i><br><i>normalized_mean_absolute_error</i>\n",
|
||||
"|**iterations**|Number of iterations. In each iteration, Auto ML trains a specific pipeline on the given data|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], targets values.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**country_or_region**|The country/region used to generate holiday features. These should be ISO 3166 two-letter country/region codes (i.e. 'US', 'GB').|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder. "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" 'time_column_name': time_column_name,\n",
|
||||
" 'max_horizon': max_horizon,\n",
|
||||
" # knowing the country/region allows Automated ML to bring in holidays\n",
|
||||
" 'country_or_region': 'US',\n",
|
||||
" 'target_lags': 1,\n",
|
||||
" # these columns are a breakdown of the total and therefore a leak\n",
|
||||
" 'drop_column_names': ['casual', 'registered']\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task='forecasting', \n",
|
||||
" primary_metric='normalized_root_mean_squared_error',\n",
|
||||
" iterations=10,\n",
|
||||
" iteration_timeout_minutes=5,\n",
|
||||
" X=X_train,\n",
|
||||
" y=y_train,\n",
|
||||
" n_cross_validations=3, \n",
|
||||
" path=project_folder,\n",
|
||||
" verbosity=logging.INFO,\n",
|
||||
" **automl_settings)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"We will now run the experiment, starting with 10 iterations of model search. The experiment can be continued for more iterations if more accurate results are required. You will see the currently running iterations printing to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Displaying the run objects gives you links to the visual tools in the Azure Portal. Go try them!"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"Below we select the best pipeline from our iterations. The get_output method on automl_classifier returns the best run and the fitted model for the last fit invocation. There are overloads on get_output that allow you to retrieve the best run and fitted model for any logged metric or a particular iteration."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"fitted_model.steps"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### View the engineered names for featurized data\n",
|
||||
"\n",
|
||||
"You can accees the engineered feature names generated in time-series featurization. Note that a number of named holiday periods are represented. We recommend that you have at least one year of data when using this feature to ensure that all yearly holidays are captured in the training featurization."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"fitted_model.named_steps['timeseriestransformer'].get_engineered_feature_names()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### View the featurization summary\n",
|
||||
"\n",
|
||||
"You can also see what featurization steps were performed on different raw features in the user data. For each raw feature in the user data, the following information is displayed:\n",
|
||||
"\n",
|
||||
"- Raw feature name\n",
|
||||
"- Number of engineered features formed out of this raw feature\n",
|
||||
"- Type detected\n",
|
||||
"- If feature was dropped\n",
|
||||
"- List of feature transformations for the raw feature"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"fitted_model.named_steps['timeseriestransformer'].get_featurization_summary()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Evaluate"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"We now use the best fitted model from the AutoML Run to make forecasts for the test set. \n",
|
||||
"\n",
|
||||
"We always score on the original dataset whose schema matches the training set schema."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"X_test.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"We now define some functions for aligning output to input and for producing rolling forecasts over the full test set. As previously stated, the forecast horizon of 14 days is shorter than the length of the test set - which is about 120 days. To get predictions over the full test set, we iterate over the test set, making forecasts 14 days at a time and combining the results. We also make sure that each 14-day forecast uses up-to-date actuals - the current context - to construct lag features. \n",
|
||||
"\n",
|
||||
"It is a good practice to always align the output explicitly to the input, as the count and order of the rows may have changed during transformations that span multiple rows."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"def align_outputs(y_predicted, X_trans, X_test, y_test, predicted_column_name='predicted',\n",
|
||||
" horizon_colname='horizon_origin'):\n",
|
||||
" \"\"\"\n",
|
||||
" Demonstrates how to get the output aligned to the inputs\n",
|
||||
" using pandas indexes. Helps understand what happened if\n",
|
||||
" the output's shape differs from the input shape, or if\n",
|
||||
" the data got re-sorted by time and grain during forecasting.\n",
|
||||
" \n",
|
||||
" Typical causes of misalignment are:\n",
|
||||
" * we predicted some periods that were missing in actuals -> drop from eval\n",
|
||||
" * model was asked to predict past max_horizon -> increase max horizon\n",
|
||||
" * data at start of X_test was needed for lags -> provide previous periods\n",
|
||||
" \"\"\"\n",
|
||||
" df_fcst = pd.DataFrame({predicted_column_name : y_predicted,\n",
|
||||
" horizon_colname: X_trans[horizon_colname]})\n",
|
||||
" # y and X outputs are aligned by forecast() function contract\n",
|
||||
" df_fcst.index = X_trans.index\n",
|
||||
" \n",
|
||||
" # align original X_test to y_test \n",
|
||||
" X_test_full = X_test.copy()\n",
|
||||
" X_test_full[target_column_name] = y_test\n",
|
||||
"\n",
|
||||
" # X_test_full's index does not include origin, so reset for merge\n",
|
||||
" df_fcst.reset_index(inplace=True)\n",
|
||||
" X_test_full = X_test_full.reset_index().drop(columns='index')\n",
|
||||
" together = df_fcst.merge(X_test_full, how='right')\n",
|
||||
" \n",
|
||||
" # drop rows where prediction or actuals are nan \n",
|
||||
" # happens because of missing actuals \n",
|
||||
" # or at edges of time due to lags/rolling windows\n",
|
||||
" clean = together[together[[target_column_name, predicted_column_name]].notnull().all(axis=1)]\n",
|
||||
" return(clean)\n",
|
||||
"\n",
|
||||
"def do_rolling_forecast(fitted_model, X_test, y_test, max_horizon, freq='D'):\n",
|
||||
" \"\"\"\n",
|
||||
" Produce forecasts on a rolling origin over the given test set.\n",
|
||||
" \n",
|
||||
" Each iteration makes a forecast for the next 'max_horizon' periods \n",
|
||||
" with respect to the current origin, then advances the origin by the horizon time duration. \n",
|
||||
" The prediction context for each forecast is set so that the forecaster uses \n",
|
||||
" the actual target values prior to the current origin time for constructing lag features.\n",
|
||||
" \n",
|
||||
" This function returns a concatenated DataFrame of rolling forecasts.\n",
|
||||
" \"\"\"\n",
|
||||
" df_list = []\n",
|
||||
" origin_time = X_test[time_column_name].min()\n",
|
||||
" while origin_time <= X_test[time_column_name].max():\n",
|
||||
" # Set the horizon time - end date of the forecast\n",
|
||||
" horizon_time = origin_time + max_horizon * to_offset(freq)\n",
|
||||
" \n",
|
||||
" # Extract test data from an expanding window up-to the horizon \n",
|
||||
" expand_wind = (X_test[time_column_name] < horizon_time)\n",
|
||||
" X_test_expand = X_test[expand_wind]\n",
|
||||
" y_query_expand = np.zeros(len(X_test_expand)).astype(np.float)\n",
|
||||
" y_query_expand.fill(np.NaN)\n",
|
||||
" \n",
|
||||
" if origin_time != X_test[time_column_name].min():\n",
|
||||
" # Set the context by including actuals up-to the origin time\n",
|
||||
" test_context_expand_wind = (X_test[time_column_name] < origin_time)\n",
|
||||
" context_expand_wind = (X_test_expand[time_column_name] < origin_time)\n",
|
||||
" y_query_expand[context_expand_wind] = y_test[test_context_expand_wind]\n",
|
||||
" \n",
|
||||
" # Make a forecast out to the maximum horizon\n",
|
||||
" y_fcst, X_trans = fitted_model.forecast(X_test_expand, y_query_expand)\n",
|
||||
" \n",
|
||||
" # Align forecast with test set for dates within the current rolling window \n",
|
||||
" trans_tindex = X_trans.index.get_level_values(time_column_name)\n",
|
||||
" trans_roll_wind = (trans_tindex >= origin_time) & (trans_tindex < horizon_time)\n",
|
||||
" test_roll_wind = expand_wind & (X_test[time_column_name] >= origin_time)\n",
|
||||
" df_list.append(align_outputs(y_fcst[trans_roll_wind], X_trans[trans_roll_wind],\n",
|
||||
" X_test[test_roll_wind], y_test[test_roll_wind]))\n",
|
||||
" \n",
|
||||
" # Advance the origin time\n",
|
||||
" origin_time = horizon_time\n",
|
||||
" \n",
|
||||
" return pd.concat(df_list, ignore_index=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"df_all = do_rolling_forecast(fitted_model, X_test, y_test, max_horizon)\n",
|
||||
"df_all"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"We now calculate some error metrics for the forecasts and vizualize the predictions vs. the actuals."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"def APE(actual, pred):\n",
|
||||
" \"\"\"\n",
|
||||
" Calculate absolute percentage error.\n",
|
||||
" Returns a vector of APE values with same length as actual/pred.\n",
|
||||
" \"\"\"\n",
|
||||
" return 100*np.abs((actual - pred)/actual)\n",
|
||||
"\n",
|
||||
"def MAPE(actual, pred):\n",
|
||||
" \"\"\"\n",
|
||||
" Calculate mean absolute percentage error.\n",
|
||||
" Remove NA and values where actual is close to zero\n",
|
||||
" \"\"\"\n",
|
||||
" not_na = ~(np.isnan(actual) | np.isnan(pred))\n",
|
||||
" not_zero = ~np.isclose(actual, 0.0)\n",
|
||||
" actual_safe = actual[not_na & not_zero]\n",
|
||||
" pred_safe = pred[not_na & not_zero]\n",
|
||||
" return np.mean(APE(actual_safe, pred_safe))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"print(\"Simple forecasting model\")\n",
|
||||
"rmse = np.sqrt(mean_squared_error(df_all[target_column_name], df_all['predicted']))\n",
|
||||
"print(\"[Test Data] \\nRoot Mean squared error: %.2f\" % rmse)\n",
|
||||
"mae = mean_absolute_error(df_all[target_column_name], df_all['predicted'])\n",
|
||||
"print('mean_absolute_error score: %.2f' % mae)\n",
|
||||
"print('MAPE: %.2f' % MAPE(df_all[target_column_name], df_all['predicted']))\n",
|
||||
"\n",
|
||||
"# Plot outputs\n",
|
||||
"%matplotlib notebook\n",
|
||||
"test_pred = plt.scatter(df_all[target_column_name], df_all['predicted'], color='b')\n",
|
||||
"test_test = plt.scatter(y_test, y_test, color='g')\n",
|
||||
"plt.legend((test_pred, test_test), ('prediction', 'truth'), loc='upper left', fontsize=8)\n",
|
||||
"plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"The MAPE seems high; it is being skewed by an actual with a small absolute value. For a more informative evaluation, we can calculate the metrics by forecast horizon:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"df_all.groupby('horizon_origin').apply(\n",
|
||||
" lambda df: pd.Series({'MAPE': MAPE(df[target_column_name], df['predicted']),\n",
|
||||
" 'RMSE': np.sqrt(mean_squared_error(df[target_column_name], df['predicted'])),\n",
|
||||
" 'MAE': mean_absolute_error(df[target_column_name], df['predicted'])}))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"It's also interesting to see the distributions of APE (absolute percentage error) by horizon. On a log scale, the outlying APE in the horizon-3 group is clear."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"df_all_APE = df_all.assign(APE=APE(df_all[target_column_name], df_all['predicted']))\n",
|
||||
"APEs = [df_all_APE[df_all['horizon_origin'] == h].APE.values for h in range(1, max_horizon + 1)]\n",
|
||||
"\n",
|
||||
"%matplotlib notebook\n",
|
||||
"plt.boxplot(APEs)\n",
|
||||
"plt.yscale('log')\n",
|
||||
"plt.xlabel('horizon')\n",
|
||||
"plt.ylabel('APE (%)')\n",
|
||||
"plt.title('Absolute Percentage Errors by Forecast Horizon')\n",
|
||||
"\n",
|
||||
"plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,9 @@
|
||||
name: auto-ml-forecasting-bike-share
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
- statsmodels
|
||||
@@ -0,0 +1,732 @@
|
||||
instant,date,season,yr,mnth,weekday,weathersit,temp,atemp,hum,windspeed,casual,registered,cnt
|
||||
1,1/1/2011,1,0,1,6,2,0.344167,0.363625,0.805833,0.160446,331,654,985
|
||||
2,1/2/2011,1,0,1,0,2,0.363478,0.353739,0.696087,0.248539,131,670,801
|
||||
3,1/3/2011,1,0,1,1,1,0.196364,0.189405,0.437273,0.248309,120,1229,1349
|
||||
4,1/4/2011,1,0,1,2,1,0.2,0.212122,0.590435,0.160296,108,1454,1562
|
||||
5,1/5/2011,1,0,1,3,1,0.226957,0.22927,0.436957,0.1869,82,1518,1600
|
||||
6,1/6/2011,1,0,1,4,1,0.204348,0.233209,0.518261,0.0895652,88,1518,1606
|
||||
7,1/7/2011,1,0,1,5,2,0.196522,0.208839,0.498696,0.168726,148,1362,1510
|
||||
8,1/8/2011,1,0,1,6,2,0.165,0.162254,0.535833,0.266804,68,891,959
|
||||
9,1/9/2011,1,0,1,0,1,0.138333,0.116175,0.434167,0.36195,54,768,822
|
||||
10,1/10/2011,1,0,1,1,1,0.150833,0.150888,0.482917,0.223267,41,1280,1321
|
||||
11,1/11/2011,1,0,1,2,2,0.169091,0.191464,0.686364,0.122132,43,1220,1263
|
||||
12,1/12/2011,1,0,1,3,1,0.172727,0.160473,0.599545,0.304627,25,1137,1162
|
||||
13,1/13/2011,1,0,1,4,1,0.165,0.150883,0.470417,0.301,38,1368,1406
|
||||
14,1/14/2011,1,0,1,5,1,0.16087,0.188413,0.537826,0.126548,54,1367,1421
|
||||
15,1/15/2011,1,0,1,6,2,0.233333,0.248112,0.49875,0.157963,222,1026,1248
|
||||
16,1/16/2011,1,0,1,0,1,0.231667,0.234217,0.48375,0.188433,251,953,1204
|
||||
17,1/17/2011,1,0,1,1,2,0.175833,0.176771,0.5375,0.194017,117,883,1000
|
||||
18,1/18/2011,1,0,1,2,2,0.216667,0.232333,0.861667,0.146775,9,674,683
|
||||
19,1/19/2011,1,0,1,3,2,0.292174,0.298422,0.741739,0.208317,78,1572,1650
|
||||
20,1/20/2011,1,0,1,4,2,0.261667,0.25505,0.538333,0.195904,83,1844,1927
|
||||
21,1/21/2011,1,0,1,5,1,0.1775,0.157833,0.457083,0.353242,75,1468,1543
|
||||
22,1/22/2011,1,0,1,6,1,0.0591304,0.0790696,0.4,0.17197,93,888,981
|
||||
23,1/23/2011,1,0,1,0,1,0.0965217,0.0988391,0.436522,0.2466,150,836,986
|
||||
24,1/24/2011,1,0,1,1,1,0.0973913,0.11793,0.491739,0.15833,86,1330,1416
|
||||
25,1/25/2011,1,0,1,2,2,0.223478,0.234526,0.616957,0.129796,186,1799,1985
|
||||
26,1/26/2011,1,0,1,3,3,0.2175,0.2036,0.8625,0.29385,34,472,506
|
||||
27,1/27/2011,1,0,1,4,1,0.195,0.2197,0.6875,0.113837,15,416,431
|
||||
28,1/28/2011,1,0,1,5,2,0.203478,0.223317,0.793043,0.1233,38,1129,1167
|
||||
29,1/29/2011,1,0,1,6,1,0.196522,0.212126,0.651739,0.145365,123,975,1098
|
||||
30,1/30/2011,1,0,1,0,1,0.216522,0.250322,0.722174,0.0739826,140,956,1096
|
||||
31,1/31/2011,1,0,1,1,2,0.180833,0.18625,0.60375,0.187192,42,1459,1501
|
||||
32,2/1/2011,1,0,2,2,2,0.192174,0.23453,0.829565,0.053213,47,1313,1360
|
||||
33,2/2/2011,1,0,2,3,2,0.26,0.254417,0.775417,0.264308,72,1454,1526
|
||||
34,2/3/2011,1,0,2,4,1,0.186957,0.177878,0.437826,0.277752,61,1489,1550
|
||||
35,2/4/2011,1,0,2,5,2,0.211304,0.228587,0.585217,0.127839,88,1620,1708
|
||||
36,2/5/2011,1,0,2,6,2,0.233333,0.243058,0.929167,0.161079,100,905,1005
|
||||
37,2/6/2011,1,0,2,0,1,0.285833,0.291671,0.568333,0.1418,354,1269,1623
|
||||
38,2/7/2011,1,0,2,1,1,0.271667,0.303658,0.738333,0.0454083,120,1592,1712
|
||||
39,2/8/2011,1,0,2,2,1,0.220833,0.198246,0.537917,0.36195,64,1466,1530
|
||||
40,2/9/2011,1,0,2,3,2,0.134783,0.144283,0.494783,0.188839,53,1552,1605
|
||||
41,2/10/2011,1,0,2,4,1,0.144348,0.149548,0.437391,0.221935,47,1491,1538
|
||||
42,2/11/2011,1,0,2,5,1,0.189091,0.213509,0.506364,0.10855,149,1597,1746
|
||||
43,2/12/2011,1,0,2,6,1,0.2225,0.232954,0.544167,0.203367,288,1184,1472
|
||||
44,2/13/2011,1,0,2,0,1,0.316522,0.324113,0.457391,0.260883,397,1192,1589
|
||||
45,2/14/2011,1,0,2,1,1,0.415,0.39835,0.375833,0.417908,208,1705,1913
|
||||
46,2/15/2011,1,0,2,2,1,0.266087,0.254274,0.314348,0.291374,140,1675,1815
|
||||
47,2/16/2011,1,0,2,3,1,0.318261,0.3162,0.423478,0.251791,218,1897,2115
|
||||
48,2/17/2011,1,0,2,4,1,0.435833,0.428658,0.505,0.230104,259,2216,2475
|
||||
49,2/18/2011,1,0,2,5,1,0.521667,0.511983,0.516667,0.264925,579,2348,2927
|
||||
50,2/19/2011,1,0,2,6,1,0.399167,0.391404,0.187917,0.507463,532,1103,1635
|
||||
51,2/20/2011,1,0,2,0,1,0.285217,0.27733,0.407826,0.223235,639,1173,1812
|
||||
52,2/21/2011,1,0,2,1,2,0.303333,0.284075,0.605,0.307846,195,912,1107
|
||||
53,2/22/2011,1,0,2,2,1,0.182222,0.186033,0.577778,0.195683,74,1376,1450
|
||||
54,2/23/2011,1,0,2,3,1,0.221739,0.245717,0.423043,0.094113,139,1778,1917
|
||||
55,2/24/2011,1,0,2,4,2,0.295652,0.289191,0.697391,0.250496,100,1707,1807
|
||||
56,2/25/2011,1,0,2,5,2,0.364348,0.350461,0.712174,0.346539,120,1341,1461
|
||||
57,2/26/2011,1,0,2,6,1,0.2825,0.282192,0.537917,0.186571,424,1545,1969
|
||||
58,2/27/2011,1,0,2,0,1,0.343478,0.351109,0.68,0.125248,694,1708,2402
|
||||
59,2/28/2011,1,0,2,1,2,0.407273,0.400118,0.876364,0.289686,81,1365,1446
|
||||
60,3/1/2011,1,0,3,2,1,0.266667,0.263879,0.535,0.216425,137,1714,1851
|
||||
61,3/2/2011,1,0,3,3,1,0.335,0.320071,0.449583,0.307833,231,1903,2134
|
||||
62,3/3/2011,1,0,3,4,1,0.198333,0.200133,0.318333,0.225754,123,1562,1685
|
||||
63,3/4/2011,1,0,3,5,2,0.261667,0.255679,0.610417,0.203346,214,1730,1944
|
||||
64,3/5/2011,1,0,3,6,2,0.384167,0.378779,0.789167,0.251871,640,1437,2077
|
||||
65,3/6/2011,1,0,3,0,2,0.376522,0.366252,0.948261,0.343287,114,491,605
|
||||
66,3/7/2011,1,0,3,1,1,0.261739,0.238461,0.551304,0.341352,244,1628,1872
|
||||
67,3/8/2011,1,0,3,2,1,0.2925,0.3024,0.420833,0.12065,316,1817,2133
|
||||
68,3/9/2011,1,0,3,3,2,0.295833,0.286608,0.775417,0.22015,191,1700,1891
|
||||
69,3/10/2011,1,0,3,4,3,0.389091,0.385668,0,0.261877,46,577,623
|
||||
70,3/11/2011,1,0,3,5,2,0.316522,0.305,0.649565,0.23297,247,1730,1977
|
||||
71,3/12/2011,1,0,3,6,1,0.329167,0.32575,0.594583,0.220775,724,1408,2132
|
||||
72,3/13/2011,1,0,3,0,1,0.384348,0.380091,0.527391,0.270604,982,1435,2417
|
||||
73,3/14/2011,1,0,3,1,1,0.325217,0.332,0.496957,0.136926,359,1687,2046
|
||||
74,3/15/2011,1,0,3,2,2,0.317391,0.318178,0.655652,0.184309,289,1767,2056
|
||||
75,3/16/2011,1,0,3,3,2,0.365217,0.36693,0.776522,0.203117,321,1871,2192
|
||||
76,3/17/2011,1,0,3,4,1,0.415,0.410333,0.602917,0.209579,424,2320,2744
|
||||
77,3/18/2011,1,0,3,5,1,0.54,0.527009,0.525217,0.231017,884,2355,3239
|
||||
78,3/19/2011,1,0,3,6,1,0.4725,0.466525,0.379167,0.368167,1424,1693,3117
|
||||
79,3/20/2011,1,0,3,0,1,0.3325,0.32575,0.47375,0.207721,1047,1424,2471
|
||||
80,3/21/2011,2,0,3,1,2,0.430435,0.409735,0.737391,0.288783,401,1676,2077
|
||||
81,3/22/2011,2,0,3,2,1,0.441667,0.440642,0.624583,0.22575,460,2243,2703
|
||||
82,3/23/2011,2,0,3,3,2,0.346957,0.337939,0.839565,0.234261,203,1918,2121
|
||||
83,3/24/2011,2,0,3,4,2,0.285,0.270833,0.805833,0.243787,166,1699,1865
|
||||
84,3/25/2011,2,0,3,5,1,0.264167,0.256312,0.495,0.230725,300,1910,2210
|
||||
85,3/26/2011,2,0,3,6,1,0.265833,0.257571,0.394167,0.209571,981,1515,2496
|
||||
86,3/27/2011,2,0,3,0,2,0.253043,0.250339,0.493913,0.1843,472,1221,1693
|
||||
87,3/28/2011,2,0,3,1,1,0.264348,0.257574,0.302174,0.212204,222,1806,2028
|
||||
88,3/29/2011,2,0,3,2,1,0.3025,0.292908,0.314167,0.226996,317,2108,2425
|
||||
89,3/30/2011,2,0,3,3,2,0.3,0.29735,0.646667,0.172888,168,1368,1536
|
||||
90,3/31/2011,2,0,3,4,3,0.268333,0.257575,0.918333,0.217646,179,1506,1685
|
||||
91,4/1/2011,2,0,4,5,2,0.3,0.283454,0.68625,0.258708,307,1920,2227
|
||||
92,4/2/2011,2,0,4,6,2,0.315,0.315637,0.65375,0.197146,898,1354,2252
|
||||
93,4/3/2011,2,0,4,0,1,0.378333,0.378767,0.48,0.182213,1651,1598,3249
|
||||
94,4/4/2011,2,0,4,1,1,0.573333,0.542929,0.42625,0.385571,734,2381,3115
|
||||
95,4/5/2011,2,0,4,2,2,0.414167,0.39835,0.642083,0.388067,167,1628,1795
|
||||
96,4/6/2011,2,0,4,3,1,0.390833,0.387608,0.470833,0.263063,413,2395,2808
|
||||
97,4/7/2011,2,0,4,4,1,0.4375,0.433696,0.602917,0.162312,571,2570,3141
|
||||
98,4/8/2011,2,0,4,5,2,0.335833,0.324479,0.83625,0.226992,172,1299,1471
|
||||
99,4/9/2011,2,0,4,6,2,0.3425,0.341529,0.8775,0.133083,879,1576,2455
|
||||
100,4/10/2011,2,0,4,0,2,0.426667,0.426737,0.8575,0.146767,1188,1707,2895
|
||||
101,4/11/2011,2,0,4,1,2,0.595652,0.565217,0.716956,0.324474,855,2493,3348
|
||||
102,4/12/2011,2,0,4,2,2,0.5025,0.493054,0.739167,0.274879,257,1777,2034
|
||||
103,4/13/2011,2,0,4,3,2,0.4125,0.417283,0.819167,0.250617,209,1953,2162
|
||||
104,4/14/2011,2,0,4,4,1,0.4675,0.462742,0.540417,0.1107,529,2738,3267
|
||||
105,4/15/2011,2,0,4,5,1,0.446667,0.441913,0.67125,0.226375,642,2484,3126
|
||||
106,4/16/2011,2,0,4,6,3,0.430833,0.425492,0.888333,0.340808,121,674,795
|
||||
107,4/17/2011,2,0,4,0,1,0.456667,0.445696,0.479583,0.303496,1558,2186,3744
|
||||
108,4/18/2011,2,0,4,1,1,0.5125,0.503146,0.5425,0.163567,669,2760,3429
|
||||
109,4/19/2011,2,0,4,2,2,0.505833,0.489258,0.665833,0.157971,409,2795,3204
|
||||
110,4/20/2011,2,0,4,3,1,0.595,0.564392,0.614167,0.241925,613,3331,3944
|
||||
111,4/21/2011,2,0,4,4,1,0.459167,0.453892,0.407083,0.325258,745,3444,4189
|
||||
112,4/22/2011,2,0,4,5,2,0.336667,0.321954,0.729583,0.219521,177,1506,1683
|
||||
113,4/23/2011,2,0,4,6,2,0.46,0.450121,0.887917,0.230725,1462,2574,4036
|
||||
114,4/24/2011,2,0,4,0,2,0.581667,0.551763,0.810833,0.192175,1710,2481,4191
|
||||
115,4/25/2011,2,0,4,1,1,0.606667,0.5745,0.776667,0.185333,773,3300,4073
|
||||
116,4/26/2011,2,0,4,2,1,0.631667,0.594083,0.729167,0.3265,678,3722,4400
|
||||
117,4/27/2011,2,0,4,3,2,0.62,0.575142,0.835417,0.3122,547,3325,3872
|
||||
118,4/28/2011,2,0,4,4,2,0.6175,0.578929,0.700833,0.320908,569,3489,4058
|
||||
119,4/29/2011,2,0,4,5,1,0.51,0.497463,0.457083,0.240063,878,3717,4595
|
||||
120,4/30/2011,2,0,4,6,1,0.4725,0.464021,0.503333,0.235075,1965,3347,5312
|
||||
121,5/1/2011,2,0,5,0,2,0.451667,0.448204,0.762083,0.106354,1138,2213,3351
|
||||
122,5/2/2011,2,0,5,1,2,0.549167,0.532833,0.73,0.183454,847,3554,4401
|
||||
123,5/3/2011,2,0,5,2,2,0.616667,0.582079,0.697083,0.342667,603,3848,4451
|
||||
124,5/4/2011,2,0,5,3,2,0.414167,0.40465,0.737083,0.328996,255,2378,2633
|
||||
125,5/5/2011,2,0,5,4,1,0.459167,0.441917,0.444167,0.295392,614,3819,4433
|
||||
126,5/6/2011,2,0,5,5,1,0.479167,0.474117,0.59,0.228246,894,3714,4608
|
||||
127,5/7/2011,2,0,5,6,1,0.52,0.512621,0.54125,0.16045,1612,3102,4714
|
||||
128,5/8/2011,2,0,5,0,1,0.528333,0.518933,0.631667,0.0746375,1401,2932,4333
|
||||
129,5/9/2011,2,0,5,1,1,0.5325,0.525246,0.58875,0.176,664,3698,4362
|
||||
130,5/10/2011,2,0,5,2,1,0.5325,0.522721,0.489167,0.115671,694,4109,4803
|
||||
131,5/11/2011,2,0,5,3,1,0.5425,0.5284,0.632917,0.120642,550,3632,4182
|
||||
132,5/12/2011,2,0,5,4,1,0.535,0.523363,0.7475,0.189667,695,4169,4864
|
||||
133,5/13/2011,2,0,5,5,2,0.5125,0.4943,0.863333,0.179725,692,3413,4105
|
||||
134,5/14/2011,2,0,5,6,2,0.520833,0.500629,0.9225,0.13495,902,2507,3409
|
||||
135,5/15/2011,2,0,5,0,2,0.5625,0.536,0.867083,0.152979,1582,2971,4553
|
||||
136,5/16/2011,2,0,5,1,1,0.5775,0.550512,0.787917,0.126871,773,3185,3958
|
||||
137,5/17/2011,2,0,5,2,2,0.561667,0.538529,0.837917,0.277354,678,3445,4123
|
||||
138,5/18/2011,2,0,5,3,2,0.55,0.527158,0.87,0.201492,536,3319,3855
|
||||
139,5/19/2011,2,0,5,4,2,0.530833,0.510742,0.829583,0.108213,735,3840,4575
|
||||
140,5/20/2011,2,0,5,5,1,0.536667,0.529042,0.719583,0.125013,909,4008,4917
|
||||
141,5/21/2011,2,0,5,6,1,0.6025,0.571975,0.626667,0.12065,2258,3547,5805
|
||||
142,5/22/2011,2,0,5,0,1,0.604167,0.5745,0.749583,0.148008,1576,3084,4660
|
||||
143,5/23/2011,2,0,5,1,2,0.631667,0.590296,0.81,0.233842,836,3438,4274
|
||||
144,5/24/2011,2,0,5,2,2,0.66,0.604813,0.740833,0.207092,659,3833,4492
|
||||
145,5/25/2011,2,0,5,3,1,0.660833,0.615542,0.69625,0.154233,740,4238,4978
|
||||
146,5/26/2011,2,0,5,4,1,0.708333,0.654688,0.6775,0.199642,758,3919,4677
|
||||
147,5/27/2011,2,0,5,5,1,0.681667,0.637008,0.65375,0.240679,871,3808,4679
|
||||
148,5/28/2011,2,0,5,6,1,0.655833,0.612379,0.729583,0.230092,2001,2757,4758
|
||||
149,5/29/2011,2,0,5,0,1,0.6675,0.61555,0.81875,0.213938,2355,2433,4788
|
||||
150,5/30/2011,2,0,5,1,1,0.733333,0.671092,0.685,0.131225,1549,2549,4098
|
||||
151,5/31/2011,2,0,5,2,1,0.775,0.725383,0.636667,0.111329,673,3309,3982
|
||||
152,6/1/2011,2,0,6,3,2,0.764167,0.720967,0.677083,0.207092,513,3461,3974
|
||||
153,6/2/2011,2,0,6,4,1,0.715,0.643942,0.305,0.292287,736,4232,4968
|
||||
154,6/3/2011,2,0,6,5,1,0.62,0.587133,0.354167,0.253121,898,4414,5312
|
||||
155,6/4/2011,2,0,6,6,1,0.635,0.594696,0.45625,0.123142,1869,3473,5342
|
||||
156,6/5/2011,2,0,6,0,2,0.648333,0.616804,0.6525,0.138692,1685,3221,4906
|
||||
157,6/6/2011,2,0,6,1,1,0.678333,0.621858,0.6,0.121896,673,3875,4548
|
||||
158,6/7/2011,2,0,6,2,1,0.7075,0.65595,0.597917,0.187808,763,4070,4833
|
||||
159,6/8/2011,2,0,6,3,1,0.775833,0.727279,0.622083,0.136817,676,3725,4401
|
||||
160,6/9/2011,2,0,6,4,2,0.808333,0.757579,0.568333,0.149883,563,3352,3915
|
||||
161,6/10/2011,2,0,6,5,1,0.755,0.703292,0.605,0.140554,815,3771,4586
|
||||
162,6/11/2011,2,0,6,6,1,0.725,0.678038,0.654583,0.15485,1729,3237,4966
|
||||
163,6/12/2011,2,0,6,0,1,0.6925,0.643325,0.747917,0.163567,1467,2993,4460
|
||||
164,6/13/2011,2,0,6,1,1,0.635,0.601654,0.494583,0.30535,863,4157,5020
|
||||
165,6/14/2011,2,0,6,2,1,0.604167,0.591546,0.507083,0.269283,727,4164,4891
|
||||
166,6/15/2011,2,0,6,3,1,0.626667,0.587754,0.471667,0.167912,769,4411,5180
|
||||
167,6/16/2011,2,0,6,4,2,0.628333,0.595346,0.688333,0.206471,545,3222,3767
|
||||
168,6/17/2011,2,0,6,5,1,0.649167,0.600383,0.735833,0.143029,863,3981,4844
|
||||
169,6/18/2011,2,0,6,6,1,0.696667,0.643954,0.670417,0.119408,1807,3312,5119
|
||||
170,6/19/2011,2,0,6,0,2,0.699167,0.645846,0.666667,0.102,1639,3105,4744
|
||||
171,6/20/2011,2,0,6,1,2,0.635,0.595346,0.74625,0.155475,699,3311,4010
|
||||
172,6/21/2011,3,0,6,2,2,0.680833,0.637646,0.770417,0.171025,774,4061,4835
|
||||
173,6/22/2011,3,0,6,3,1,0.733333,0.693829,0.7075,0.172262,661,3846,4507
|
||||
174,6/23/2011,3,0,6,4,2,0.728333,0.693833,0.703333,0.238804,746,4044,4790
|
||||
175,6/24/2011,3,0,6,5,1,0.724167,0.656583,0.573333,0.222025,969,4022,4991
|
||||
176,6/25/2011,3,0,6,6,1,0.695,0.643313,0.483333,0.209571,1782,3420,5202
|
||||
177,6/26/2011,3,0,6,0,1,0.68,0.637629,0.513333,0.0945333,1920,3385,5305
|
||||
178,6/27/2011,3,0,6,1,2,0.6825,0.637004,0.658333,0.107588,854,3854,4708
|
||||
179,6/28/2011,3,0,6,2,1,0.744167,0.692558,0.634167,0.144283,732,3916,4648
|
||||
180,6/29/2011,3,0,6,3,1,0.728333,0.654688,0.497917,0.261821,848,4377,5225
|
||||
181,6/30/2011,3,0,6,4,1,0.696667,0.637008,0.434167,0.185312,1027,4488,5515
|
||||
182,7/1/2011,3,0,7,5,1,0.7225,0.652162,0.39625,0.102608,1246,4116,5362
|
||||
183,7/2/2011,3,0,7,6,1,0.738333,0.667308,0.444583,0.115062,2204,2915,5119
|
||||
184,7/3/2011,3,0,7,0,2,0.716667,0.668575,0.6825,0.228858,2282,2367,4649
|
||||
185,7/4/2011,3,0,7,1,2,0.726667,0.665417,0.637917,0.0814792,3065,2978,6043
|
||||
186,7/5/2011,3,0,7,2,1,0.746667,0.696338,0.590417,0.126258,1031,3634,4665
|
||||
187,7/6/2011,3,0,7,3,1,0.72,0.685633,0.743333,0.149883,784,3845,4629
|
||||
188,7/7/2011,3,0,7,4,1,0.75,0.686871,0.65125,0.1592,754,3838,4592
|
||||
189,7/8/2011,3,0,7,5,2,0.709167,0.670483,0.757917,0.225129,692,3348,4040
|
||||
190,7/9/2011,3,0,7,6,1,0.733333,0.664158,0.609167,0.167912,1988,3348,5336
|
||||
191,7/10/2011,3,0,7,0,1,0.7475,0.690025,0.578333,0.183471,1743,3138,4881
|
||||
192,7/11/2011,3,0,7,1,1,0.7625,0.729804,0.635833,0.282337,723,3363,4086
|
||||
193,7/12/2011,3,0,7,2,1,0.794167,0.739275,0.559167,0.200254,662,3596,4258
|
||||
194,7/13/2011,3,0,7,3,1,0.746667,0.689404,0.631667,0.146133,748,3594,4342
|
||||
195,7/14/2011,3,0,7,4,1,0.680833,0.635104,0.47625,0.240667,888,4196,5084
|
||||
196,7/15/2011,3,0,7,5,1,0.663333,0.624371,0.59125,0.182833,1318,4220,5538
|
||||
197,7/16/2011,3,0,7,6,1,0.686667,0.638263,0.585,0.208342,2418,3505,5923
|
||||
198,7/17/2011,3,0,7,0,1,0.719167,0.669833,0.604167,0.245033,2006,3296,5302
|
||||
199,7/18/2011,3,0,7,1,1,0.746667,0.703925,0.65125,0.215804,841,3617,4458
|
||||
200,7/19/2011,3,0,7,2,1,0.776667,0.747479,0.650417,0.1306,752,3789,4541
|
||||
201,7/20/2011,3,0,7,3,1,0.768333,0.74685,0.707083,0.113817,644,3688,4332
|
||||
202,7/21/2011,3,0,7,4,2,0.815,0.826371,0.69125,0.222021,632,3152,3784
|
||||
203,7/22/2011,3,0,7,5,1,0.848333,0.840896,0.580417,0.1331,562,2825,3387
|
||||
204,7/23/2011,3,0,7,6,1,0.849167,0.804287,0.5,0.131221,987,2298,3285
|
||||
205,7/24/2011,3,0,7,0,1,0.83,0.794829,0.550833,0.169171,1050,2556,3606
|
||||
206,7/25/2011,3,0,7,1,1,0.743333,0.720958,0.757083,0.0908083,568,3272,3840
|
||||
207,7/26/2011,3,0,7,2,1,0.771667,0.696979,0.540833,0.200258,750,3840,4590
|
||||
208,7/27/2011,3,0,7,3,1,0.775,0.690667,0.402917,0.183463,755,3901,4656
|
||||
209,7/28/2011,3,0,7,4,1,0.779167,0.7399,0.583333,0.178479,606,3784,4390
|
||||
210,7/29/2011,3,0,7,5,1,0.838333,0.785967,0.5425,0.174138,670,3176,3846
|
||||
211,7/30/2011,3,0,7,6,1,0.804167,0.728537,0.465833,0.168537,1559,2916,4475
|
||||
212,7/31/2011,3,0,7,0,1,0.805833,0.729796,0.480833,0.164813,1524,2778,4302
|
||||
213,8/1/2011,3,0,8,1,1,0.771667,0.703292,0.550833,0.156717,729,3537,4266
|
||||
214,8/2/2011,3,0,8,2,1,0.783333,0.707071,0.49125,0.20585,801,4044,4845
|
||||
215,8/3/2011,3,0,8,3,2,0.731667,0.679937,0.6575,0.135583,467,3107,3574
|
||||
216,8/4/2011,3,0,8,4,2,0.71,0.664788,0.7575,0.19715,799,3777,4576
|
||||
217,8/5/2011,3,0,8,5,1,0.710833,0.656567,0.630833,0.184696,1023,3843,4866
|
||||
218,8/6/2011,3,0,8,6,2,0.716667,0.676154,0.755,0.22825,1521,2773,4294
|
||||
219,8/7/2011,3,0,8,0,1,0.7425,0.715292,0.752917,0.201487,1298,2487,3785
|
||||
220,8/8/2011,3,0,8,1,1,0.765,0.703283,0.592083,0.192175,846,3480,4326
|
||||
221,8/9/2011,3,0,8,2,1,0.775,0.724121,0.570417,0.151121,907,3695,4602
|
||||
222,8/10/2011,3,0,8,3,1,0.766667,0.684983,0.424167,0.200258,884,3896,4780
|
||||
223,8/11/2011,3,0,8,4,1,0.7175,0.651521,0.42375,0.164796,812,3980,4792
|
||||
224,8/12/2011,3,0,8,5,1,0.708333,0.654042,0.415,0.125621,1051,3854,4905
|
||||
225,8/13/2011,3,0,8,6,2,0.685833,0.645858,0.729583,0.211454,1504,2646,4150
|
||||
226,8/14/2011,3,0,8,0,2,0.676667,0.624388,0.8175,0.222633,1338,2482,3820
|
||||
227,8/15/2011,3,0,8,1,1,0.665833,0.616167,0.712083,0.208954,775,3563,4338
|
||||
228,8/16/2011,3,0,8,2,1,0.700833,0.645837,0.578333,0.236329,721,4004,4725
|
||||
229,8/17/2011,3,0,8,3,1,0.723333,0.666671,0.575417,0.143667,668,4026,4694
|
||||
230,8/18/2011,3,0,8,4,1,0.711667,0.662258,0.654583,0.233208,639,3166,3805
|
||||
231,8/19/2011,3,0,8,5,2,0.685,0.633221,0.722917,0.139308,797,3356,4153
|
||||
232,8/20/2011,3,0,8,6,1,0.6975,0.648996,0.674167,0.104467,1914,3277,5191
|
||||
233,8/21/2011,3,0,8,0,1,0.710833,0.675525,0.77,0.248754,1249,2624,3873
|
||||
234,8/22/2011,3,0,8,1,1,0.691667,0.638254,0.47,0.27675,833,3925,4758
|
||||
235,8/23/2011,3,0,8,2,1,0.640833,0.606067,0.455417,0.146763,1281,4614,5895
|
||||
236,8/24/2011,3,0,8,3,1,0.673333,0.630692,0.605,0.253108,949,4181,5130
|
||||
237,8/25/2011,3,0,8,4,2,0.684167,0.645854,0.771667,0.210833,435,3107,3542
|
||||
238,8/26/2011,3,0,8,5,1,0.7,0.659733,0.76125,0.0839625,768,3893,4661
|
||||
239,8/27/2011,3,0,8,6,2,0.68,0.635556,0.85,0.375617,226,889,1115
|
||||
240,8/28/2011,3,0,8,0,1,0.707059,0.647959,0.561765,0.304659,1415,2919,4334
|
||||
241,8/29/2011,3,0,8,1,1,0.636667,0.607958,0.554583,0.159825,729,3905,4634
|
||||
242,8/30/2011,3,0,8,2,1,0.639167,0.594704,0.548333,0.125008,775,4429,5204
|
||||
243,8/31/2011,3,0,8,3,1,0.656667,0.611121,0.597917,0.0833333,688,4370,5058
|
||||
244,9/1/2011,3,0,9,4,1,0.655,0.614921,0.639167,0.141796,783,4332,5115
|
||||
245,9/2/2011,3,0,9,5,2,0.643333,0.604808,0.727083,0.139929,875,3852,4727
|
||||
246,9/3/2011,3,0,9,6,1,0.669167,0.633213,0.716667,0.185325,1935,2549,4484
|
||||
247,9/4/2011,3,0,9,0,1,0.709167,0.665429,0.742083,0.206467,2521,2419,4940
|
||||
248,9/5/2011,3,0,9,1,2,0.673333,0.625646,0.790417,0.212696,1236,2115,3351
|
||||
249,9/6/2011,3,0,9,2,3,0.54,0.5152,0.886957,0.343943,204,2506,2710
|
||||
250,9/7/2011,3,0,9,3,3,0.599167,0.544229,0.917083,0.0970208,118,1878,1996
|
||||
251,9/8/2011,3,0,9,4,3,0.633913,0.555361,0.939565,0.192748,153,1689,1842
|
||||
252,9/9/2011,3,0,9,5,2,0.65,0.578946,0.897917,0.124379,417,3127,3544
|
||||
253,9/10/2011,3,0,9,6,1,0.66,0.607962,0.75375,0.153608,1750,3595,5345
|
||||
254,9/11/2011,3,0,9,0,1,0.653333,0.609229,0.71375,0.115054,1633,3413,5046
|
||||
255,9/12/2011,3,0,9,1,1,0.644348,0.60213,0.692174,0.088913,690,4023,4713
|
||||
256,9/13/2011,3,0,9,2,1,0.650833,0.603554,0.7125,0.141804,701,4062,4763
|
||||
257,9/14/2011,3,0,9,3,1,0.673333,0.6269,0.697083,0.1673,647,4138,4785
|
||||
258,9/15/2011,3,0,9,4,2,0.5775,0.553671,0.709167,0.271146,428,3231,3659
|
||||
259,9/16/2011,3,0,9,5,2,0.469167,0.461475,0.590417,0.164183,742,4018,4760
|
||||
260,9/17/2011,3,0,9,6,2,0.491667,0.478512,0.718333,0.189675,1434,3077,4511
|
||||
261,9/18/2011,3,0,9,0,1,0.5075,0.490537,0.695,0.178483,1353,2921,4274
|
||||
262,9/19/2011,3,0,9,1,2,0.549167,0.529675,0.69,0.151742,691,3848,4539
|
||||
263,9/20/2011,3,0,9,2,2,0.561667,0.532217,0.88125,0.134954,438,3203,3641
|
||||
264,9/21/2011,3,0,9,3,2,0.595,0.550533,0.9,0.0964042,539,3813,4352
|
||||
265,9/22/2011,3,0,9,4,2,0.628333,0.554963,0.902083,0.128125,555,4240,4795
|
||||
266,9/23/2011,4,0,9,5,2,0.609167,0.522125,0.9725,0.0783667,258,2137,2395
|
||||
267,9/24/2011,4,0,9,6,2,0.606667,0.564412,0.8625,0.0783833,1776,3647,5423
|
||||
268,9/25/2011,4,0,9,0,2,0.634167,0.572637,0.845,0.0503792,1544,3466,5010
|
||||
269,9/26/2011,4,0,9,1,2,0.649167,0.589042,0.848333,0.1107,684,3946,4630
|
||||
270,9/27/2011,4,0,9,2,2,0.636667,0.574525,0.885417,0.118171,477,3643,4120
|
||||
271,9/28/2011,4,0,9,3,2,0.635,0.575158,0.84875,0.148629,480,3427,3907
|
||||
272,9/29/2011,4,0,9,4,1,0.616667,0.574512,0.699167,0.172883,653,4186,4839
|
||||
273,9/30/2011,4,0,9,5,1,0.564167,0.544829,0.6475,0.206475,830,4372,5202
|
||||
274,10/1/2011,4,0,10,6,2,0.41,0.412863,0.75375,0.292296,480,1949,2429
|
||||
275,10/2/2011,4,0,10,0,2,0.356667,0.345317,0.791667,0.222013,616,2302,2918
|
||||
276,10/3/2011,4,0,10,1,2,0.384167,0.392046,0.760833,0.0833458,330,3240,3570
|
||||
277,10/4/2011,4,0,10,2,1,0.484167,0.472858,0.71,0.205854,486,3970,4456
|
||||
278,10/5/2011,4,0,10,3,1,0.538333,0.527138,0.647917,0.17725,559,4267,4826
|
||||
279,10/6/2011,4,0,10,4,1,0.494167,0.480425,0.620833,0.134954,639,4126,4765
|
||||
280,10/7/2011,4,0,10,5,1,0.510833,0.504404,0.684167,0.0223917,949,4036,4985
|
||||
281,10/8/2011,4,0,10,6,1,0.521667,0.513242,0.70125,0.0454042,2235,3174,5409
|
||||
282,10/9/2011,4,0,10,0,1,0.540833,0.523983,0.7275,0.06345,2397,3114,5511
|
||||
283,10/10/2011,4,0,10,1,1,0.570833,0.542925,0.73375,0.0423042,1514,3603,5117
|
||||
284,10/11/2011,4,0,10,2,2,0.566667,0.546096,0.80875,0.143042,667,3896,4563
|
||||
285,10/12/2011,4,0,10,3,3,0.543333,0.517717,0.90625,0.24815,217,2199,2416
|
||||
286,10/13/2011,4,0,10,4,2,0.589167,0.551804,0.896667,0.141787,290,2623,2913
|
||||
287,10/14/2011,4,0,10,5,2,0.550833,0.529675,0.71625,0.223883,529,3115,3644
|
||||
288,10/15/2011,4,0,10,6,1,0.506667,0.498725,0.483333,0.258083,1899,3318,5217
|
||||
289,10/16/2011,4,0,10,0,1,0.511667,0.503154,0.486667,0.281717,1748,3293,5041
|
||||
290,10/17/2011,4,0,10,1,1,0.534167,0.510725,0.579583,0.175379,713,3857,4570
|
||||
291,10/18/2011,4,0,10,2,2,0.5325,0.522721,0.701667,0.110087,637,4111,4748
|
||||
292,10/19/2011,4,0,10,3,3,0.541739,0.513848,0.895217,0.243339,254,2170,2424
|
||||
293,10/20/2011,4,0,10,4,1,0.475833,0.466525,0.63625,0.422275,471,3724,4195
|
||||
294,10/21/2011,4,0,10,5,1,0.4275,0.423596,0.574167,0.221396,676,3628,4304
|
||||
295,10/22/2011,4,0,10,6,1,0.4225,0.425492,0.629167,0.0926667,1499,2809,4308
|
||||
296,10/23/2011,4,0,10,0,1,0.421667,0.422333,0.74125,0.0995125,1619,2762,4381
|
||||
297,10/24/2011,4,0,10,1,1,0.463333,0.457067,0.772083,0.118792,699,3488,4187
|
||||
298,10/25/2011,4,0,10,2,1,0.471667,0.463375,0.622917,0.166658,695,3992,4687
|
||||
299,10/26/2011,4,0,10,3,2,0.484167,0.472846,0.720417,0.148642,404,3490,3894
|
||||
300,10/27/2011,4,0,10,4,2,0.47,0.457046,0.812917,0.197763,240,2419,2659
|
||||
301,10/28/2011,4,0,10,5,2,0.330833,0.318812,0.585833,0.229479,456,3291,3747
|
||||
302,10/29/2011,4,0,10,6,3,0.254167,0.227913,0.8825,0.351371,57,570,627
|
||||
303,10/30/2011,4,0,10,0,1,0.319167,0.321329,0.62375,0.176617,885,2446,3331
|
||||
304,10/31/2011,4,0,10,1,1,0.34,0.356063,0.703333,0.10635,362,3307,3669
|
||||
305,11/1/2011,4,0,11,2,1,0.400833,0.397088,0.68375,0.135571,410,3658,4068
|
||||
306,11/2/2011,4,0,11,3,1,0.3775,0.390133,0.71875,0.0820917,370,3816,4186
|
||||
307,11/3/2011,4,0,11,4,1,0.408333,0.405921,0.702083,0.136817,318,3656,3974
|
||||
308,11/4/2011,4,0,11,5,2,0.403333,0.403392,0.6225,0.271779,470,3576,4046
|
||||
309,11/5/2011,4,0,11,6,1,0.326667,0.323854,0.519167,0.189062,1156,2770,3926
|
||||
310,11/6/2011,4,0,11,0,1,0.348333,0.362358,0.734583,0.0920542,952,2697,3649
|
||||
311,11/7/2011,4,0,11,1,1,0.395,0.400871,0.75875,0.057225,373,3662,4035
|
||||
312,11/8/2011,4,0,11,2,1,0.408333,0.412246,0.721667,0.0690375,376,3829,4205
|
||||
313,11/9/2011,4,0,11,3,1,0.4,0.409079,0.758333,0.0621958,305,3804,4109
|
||||
314,11/10/2011,4,0,11,4,2,0.38,0.373721,0.813333,0.189067,190,2743,2933
|
||||
315,11/11/2011,4,0,11,5,1,0.324167,0.306817,0.44625,0.314675,440,2928,3368
|
||||
316,11/12/2011,4,0,11,6,1,0.356667,0.357942,0.552917,0.212062,1275,2792,4067
|
||||
317,11/13/2011,4,0,11,0,1,0.440833,0.43055,0.458333,0.281721,1004,2713,3717
|
||||
318,11/14/2011,4,0,11,1,1,0.53,0.524612,0.587083,0.306596,595,3891,4486
|
||||
319,11/15/2011,4,0,11,2,2,0.53,0.507579,0.68875,0.199633,449,3746,4195
|
||||
320,11/16/2011,4,0,11,3,3,0.456667,0.451988,0.93,0.136829,145,1672,1817
|
||||
321,11/17/2011,4,0,11,4,2,0.341667,0.323221,0.575833,0.305362,139,2914,3053
|
||||
322,11/18/2011,4,0,11,5,1,0.274167,0.272721,0.41,0.168533,245,3147,3392
|
||||
323,11/19/2011,4,0,11,6,1,0.329167,0.324483,0.502083,0.224496,943,2720,3663
|
||||
324,11/20/2011,4,0,11,0,2,0.463333,0.457058,0.684583,0.18595,787,2733,3520
|
||||
325,11/21/2011,4,0,11,1,3,0.4475,0.445062,0.91,0.138054,220,2545,2765
|
||||
326,11/22/2011,4,0,11,2,3,0.416667,0.421696,0.9625,0.118792,69,1538,1607
|
||||
327,11/23/2011,4,0,11,3,2,0.440833,0.430537,0.757917,0.335825,112,2454,2566
|
||||
328,11/24/2011,4,0,11,4,1,0.373333,0.372471,0.549167,0.167304,560,935,1495
|
||||
329,11/25/2011,4,0,11,5,1,0.375,0.380671,0.64375,0.0988958,1095,1697,2792
|
||||
330,11/26/2011,4,0,11,6,1,0.375833,0.385087,0.681667,0.0684208,1249,1819,3068
|
||||
331,11/27/2011,4,0,11,0,1,0.459167,0.4558,0.698333,0.208954,810,2261,3071
|
||||
332,11/28/2011,4,0,11,1,1,0.503478,0.490122,0.743043,0.142122,253,3614,3867
|
||||
333,11/29/2011,4,0,11,2,2,0.458333,0.451375,0.830833,0.258092,96,2818,2914
|
||||
334,11/30/2011,4,0,11,3,1,0.325,0.311221,0.613333,0.271158,188,3425,3613
|
||||
335,12/1/2011,4,0,12,4,1,0.3125,0.305554,0.524583,0.220158,182,3545,3727
|
||||
336,12/2/2011,4,0,12,5,1,0.314167,0.331433,0.625833,0.100754,268,3672,3940
|
||||
337,12/3/2011,4,0,12,6,1,0.299167,0.310604,0.612917,0.0957833,706,2908,3614
|
||||
338,12/4/2011,4,0,12,0,1,0.330833,0.3491,0.775833,0.0839583,634,2851,3485
|
||||
339,12/5/2011,4,0,12,1,2,0.385833,0.393925,0.827083,0.0622083,233,3578,3811
|
||||
340,12/6/2011,4,0,12,2,3,0.4625,0.4564,0.949583,0.232583,126,2468,2594
|
||||
341,12/7/2011,4,0,12,3,3,0.41,0.400246,0.970417,0.266175,50,655,705
|
||||
342,12/8/2011,4,0,12,4,1,0.265833,0.256938,0.58,0.240058,150,3172,3322
|
||||
343,12/9/2011,4,0,12,5,1,0.290833,0.317542,0.695833,0.0827167,261,3359,3620
|
||||
344,12/10/2011,4,0,12,6,1,0.275,0.266412,0.5075,0.233221,502,2688,3190
|
||||
345,12/11/2011,4,0,12,0,1,0.220833,0.253154,0.49,0.0665417,377,2366,2743
|
||||
346,12/12/2011,4,0,12,1,1,0.238333,0.270196,0.670833,0.06345,143,3167,3310
|
||||
347,12/13/2011,4,0,12,2,1,0.2825,0.301138,0.59,0.14055,155,3368,3523
|
||||
348,12/14/2011,4,0,12,3,2,0.3175,0.338362,0.66375,0.0609583,178,3562,3740
|
||||
349,12/15/2011,4,0,12,4,2,0.4225,0.412237,0.634167,0.268042,181,3528,3709
|
||||
350,12/16/2011,4,0,12,5,2,0.375,0.359825,0.500417,0.260575,178,3399,3577
|
||||
351,12/17/2011,4,0,12,6,2,0.258333,0.249371,0.560833,0.243167,275,2464,2739
|
||||
352,12/18/2011,4,0,12,0,1,0.238333,0.245579,0.58625,0.169779,220,2211,2431
|
||||
353,12/19/2011,4,0,12,1,1,0.276667,0.280933,0.6375,0.172896,260,3143,3403
|
||||
354,12/20/2011,4,0,12,2,2,0.385833,0.396454,0.595417,0.0615708,216,3534,3750
|
||||
355,12/21/2011,1,0,12,3,2,0.428333,0.428017,0.858333,0.2214,107,2553,2660
|
||||
356,12/22/2011,1,0,12,4,2,0.423333,0.426121,0.7575,0.047275,227,2841,3068
|
||||
357,12/23/2011,1,0,12,5,1,0.373333,0.377513,0.68625,0.274246,163,2046,2209
|
||||
358,12/24/2011,1,0,12,6,1,0.3025,0.299242,0.5425,0.190304,155,856,1011
|
||||
359,12/25/2011,1,0,12,0,1,0.274783,0.279961,0.681304,0.155091,303,451,754
|
||||
360,12/26/2011,1,0,12,1,1,0.321739,0.315535,0.506957,0.239465,430,887,1317
|
||||
361,12/27/2011,1,0,12,2,2,0.325,0.327633,0.7625,0.18845,103,1059,1162
|
||||
362,12/28/2011,1,0,12,3,1,0.29913,0.279974,0.503913,0.293961,255,2047,2302
|
||||
363,12/29/2011,1,0,12,4,1,0.248333,0.263892,0.574167,0.119412,254,2169,2423
|
||||
364,12/30/2011,1,0,12,5,1,0.311667,0.318812,0.636667,0.134337,491,2508,2999
|
||||
365,12/31/2011,1,0,12,6,1,0.41,0.414121,0.615833,0.220154,665,1820,2485
|
||||
366,1/1/2012,1,1,1,0,1,0.37,0.375621,0.6925,0.192167,686,1608,2294
|
||||
367,1/2/2012,1,1,1,1,1,0.273043,0.252304,0.381304,0.329665,244,1707,1951
|
||||
368,1/3/2012,1,1,1,2,1,0.15,0.126275,0.44125,0.365671,89,2147,2236
|
||||
369,1/4/2012,1,1,1,3,2,0.1075,0.119337,0.414583,0.1847,95,2273,2368
|
||||
370,1/5/2012,1,1,1,4,1,0.265833,0.278412,0.524167,0.129987,140,3132,3272
|
||||
371,1/6/2012,1,1,1,5,1,0.334167,0.340267,0.542083,0.167908,307,3791,4098
|
||||
372,1/7/2012,1,1,1,6,1,0.393333,0.390779,0.531667,0.174758,1070,3451,4521
|
||||
373,1/8/2012,1,1,1,0,1,0.3375,0.340258,0.465,0.191542,599,2826,3425
|
||||
374,1/9/2012,1,1,1,1,2,0.224167,0.247479,0.701667,0.0989,106,2270,2376
|
||||
375,1/10/2012,1,1,1,2,1,0.308696,0.318826,0.646522,0.187552,173,3425,3598
|
||||
376,1/11/2012,1,1,1,3,2,0.274167,0.282821,0.8475,0.131221,92,2085,2177
|
||||
377,1/12/2012,1,1,1,4,2,0.3825,0.381938,0.802917,0.180967,269,3828,4097
|
||||
378,1/13/2012,1,1,1,5,1,0.274167,0.249362,0.5075,0.378108,174,3040,3214
|
||||
379,1/14/2012,1,1,1,6,1,0.18,0.183087,0.4575,0.187183,333,2160,2493
|
||||
380,1/15/2012,1,1,1,0,1,0.166667,0.161625,0.419167,0.251258,284,2027,2311
|
||||
381,1/16/2012,1,1,1,1,1,0.19,0.190663,0.5225,0.231358,217,2081,2298
|
||||
382,1/17/2012,1,1,1,2,2,0.373043,0.364278,0.716087,0.34913,127,2808,2935
|
||||
383,1/18/2012,1,1,1,3,1,0.303333,0.275254,0.443333,0.415429,109,3267,3376
|
||||
384,1/19/2012,1,1,1,4,1,0.19,0.190038,0.4975,0.220158,130,3162,3292
|
||||
385,1/20/2012,1,1,1,5,2,0.2175,0.220958,0.45,0.20275,115,3048,3163
|
||||
386,1/21/2012,1,1,1,6,2,0.173333,0.174875,0.83125,0.222642,67,1234,1301
|
||||
387,1/22/2012,1,1,1,0,2,0.1625,0.16225,0.79625,0.199638,196,1781,1977
|
||||
388,1/23/2012,1,1,1,1,2,0.218333,0.243058,0.91125,0.110708,145,2287,2432
|
||||
389,1/24/2012,1,1,1,2,1,0.3425,0.349108,0.835833,0.123767,439,3900,4339
|
||||
390,1/25/2012,1,1,1,3,1,0.294167,0.294821,0.64375,0.161071,467,3803,4270
|
||||
391,1/26/2012,1,1,1,4,2,0.341667,0.35605,0.769583,0.0733958,244,3831,4075
|
||||
392,1/27/2012,1,1,1,5,2,0.425,0.415383,0.74125,0.342667,269,3187,3456
|
||||
393,1/28/2012,1,1,1,6,1,0.315833,0.326379,0.543333,0.210829,775,3248,4023
|
||||
394,1/29/2012,1,1,1,0,1,0.2825,0.272721,0.31125,0.24005,558,2685,3243
|
||||
395,1/30/2012,1,1,1,1,1,0.269167,0.262625,0.400833,0.215792,126,3498,3624
|
||||
396,1/31/2012,1,1,1,2,1,0.39,0.381317,0.416667,0.261817,324,4185,4509
|
||||
397,2/1/2012,1,1,2,3,1,0.469167,0.466538,0.507917,0.189067,304,4275,4579
|
||||
398,2/2/2012,1,1,2,4,2,0.399167,0.398971,0.672917,0.187187,190,3571,3761
|
||||
399,2/3/2012,1,1,2,5,1,0.313333,0.309346,0.526667,0.178496,310,3841,4151
|
||||
400,2/4/2012,1,1,2,6,2,0.264167,0.272725,0.779583,0.121896,384,2448,2832
|
||||
401,2/5/2012,1,1,2,0,2,0.265833,0.264521,0.687917,0.175996,318,2629,2947
|
||||
402,2/6/2012,1,1,2,1,1,0.282609,0.296426,0.622174,0.1538,206,3578,3784
|
||||
403,2/7/2012,1,1,2,2,1,0.354167,0.361104,0.49625,0.147379,199,4176,4375
|
||||
404,2/8/2012,1,1,2,3,2,0.256667,0.266421,0.722917,0.133721,109,2693,2802
|
||||
405,2/9/2012,1,1,2,4,1,0.265,0.261988,0.562083,0.194037,163,3667,3830
|
||||
406,2/10/2012,1,1,2,5,2,0.280833,0.293558,0.54,0.116929,227,3604,3831
|
||||
407,2/11/2012,1,1,2,6,3,0.224167,0.210867,0.73125,0.289796,192,1977,2169
|
||||
408,2/12/2012,1,1,2,0,1,0.1275,0.101658,0.464583,0.409212,73,1456,1529
|
||||
409,2/13/2012,1,1,2,1,1,0.2225,0.227913,0.41125,0.167283,94,3328,3422
|
||||
410,2/14/2012,1,1,2,2,2,0.319167,0.333946,0.50875,0.141179,135,3787,3922
|
||||
411,2/15/2012,1,1,2,3,1,0.348333,0.351629,0.53125,0.1816,141,4028,4169
|
||||
412,2/16/2012,1,1,2,4,2,0.316667,0.330162,0.752917,0.091425,74,2931,3005
|
||||
413,2/17/2012,1,1,2,5,1,0.343333,0.351629,0.634583,0.205846,349,3805,4154
|
||||
414,2/18/2012,1,1,2,6,1,0.346667,0.355425,0.534583,0.190929,1435,2883,4318
|
||||
415,2/19/2012,1,1,2,0,2,0.28,0.265788,0.515833,0.253112,618,2071,2689
|
||||
416,2/20/2012,1,1,2,1,1,0.28,0.273391,0.507826,0.229083,502,2627,3129
|
||||
417,2/21/2012,1,1,2,2,1,0.287826,0.295113,0.594348,0.205717,163,3614,3777
|
||||
418,2/22/2012,1,1,2,3,1,0.395833,0.392667,0.567917,0.234471,394,4379,4773
|
||||
419,2/23/2012,1,1,2,4,1,0.454167,0.444446,0.554583,0.190913,516,4546,5062
|
||||
420,2/24/2012,1,1,2,5,2,0.4075,0.410971,0.7375,0.237567,246,3241,3487
|
||||
421,2/25/2012,1,1,2,6,1,0.290833,0.255675,0.395833,0.421642,317,2415,2732
|
||||
422,2/26/2012,1,1,2,0,1,0.279167,0.268308,0.41,0.205229,515,2874,3389
|
||||
423,2/27/2012,1,1,2,1,1,0.366667,0.357954,0.490833,0.268033,253,4069,4322
|
||||
424,2/28/2012,1,1,2,2,1,0.359167,0.353525,0.395833,0.193417,229,4134,4363
|
||||
425,2/29/2012,1,1,2,3,2,0.344348,0.34847,0.804783,0.179117,65,1769,1834
|
||||
426,3/1/2012,1,1,3,4,1,0.485833,0.475371,0.615417,0.226987,325,4665,4990
|
||||
427,3/2/2012,1,1,3,5,2,0.353333,0.359842,0.657083,0.144904,246,2948,3194
|
||||
428,3/3/2012,1,1,3,6,2,0.414167,0.413492,0.62125,0.161079,956,3110,4066
|
||||
429,3/4/2012,1,1,3,0,1,0.325833,0.303021,0.403333,0.334571,710,2713,3423
|
||||
430,3/5/2012,1,1,3,1,1,0.243333,0.241171,0.50625,0.228858,203,3130,3333
|
||||
431,3/6/2012,1,1,3,2,1,0.258333,0.255042,0.456667,0.200875,221,3735,3956
|
||||
432,3/7/2012,1,1,3,3,1,0.404167,0.3851,0.513333,0.345779,432,4484,4916
|
||||
433,3/8/2012,1,1,3,4,1,0.5275,0.524604,0.5675,0.441563,486,4896,5382
|
||||
434,3/9/2012,1,1,3,5,2,0.410833,0.397083,0.407083,0.4148,447,4122,4569
|
||||
435,3/10/2012,1,1,3,6,1,0.2875,0.277767,0.350417,0.22575,968,3150,4118
|
||||
436,3/11/2012,1,1,3,0,1,0.361739,0.35967,0.476957,0.222587,1658,3253,4911
|
||||
437,3/12/2012,1,1,3,1,1,0.466667,0.459592,0.489167,0.207713,838,4460,5298
|
||||
438,3/13/2012,1,1,3,2,1,0.565,0.542929,0.6175,0.23695,762,5085,5847
|
||||
439,3/14/2012,1,1,3,3,1,0.5725,0.548617,0.507083,0.115062,997,5315,6312
|
||||
440,3/15/2012,1,1,3,4,1,0.5575,0.532825,0.579583,0.149883,1005,5187,6192
|
||||
441,3/16/2012,1,1,3,5,2,0.435833,0.436229,0.842083,0.113192,548,3830,4378
|
||||
442,3/17/2012,1,1,3,6,2,0.514167,0.505046,0.755833,0.110704,3155,4681,7836
|
||||
443,3/18/2012,1,1,3,0,2,0.4725,0.464,0.81,0.126883,2207,3685,5892
|
||||
444,3/19/2012,1,1,3,1,1,0.545,0.532821,0.72875,0.162317,982,5171,6153
|
||||
445,3/20/2012,1,1,3,2,1,0.560833,0.538533,0.807917,0.121271,1051,5042,6093
|
||||
446,3/21/2012,2,1,3,3,2,0.531667,0.513258,0.82125,0.0895583,1122,5108,6230
|
||||
447,3/22/2012,2,1,3,4,1,0.554167,0.531567,0.83125,0.117562,1334,5537,6871
|
||||
448,3/23/2012,2,1,3,5,2,0.601667,0.570067,0.694167,0.1163,2469,5893,8362
|
||||
449,3/24/2012,2,1,3,6,2,0.5025,0.486733,0.885417,0.192783,1033,2339,3372
|
||||
450,3/25/2012,2,1,3,0,2,0.4375,0.437488,0.880833,0.220775,1532,3464,4996
|
||||
451,3/26/2012,2,1,3,1,1,0.445833,0.43875,0.477917,0.386821,795,4763,5558
|
||||
452,3/27/2012,2,1,3,2,1,0.323333,0.315654,0.29,0.187192,531,4571,5102
|
||||
453,3/28/2012,2,1,3,3,1,0.484167,0.47095,0.48125,0.291671,674,5024,5698
|
||||
454,3/29/2012,2,1,3,4,1,0.494167,0.482304,0.439167,0.31965,834,5299,6133
|
||||
455,3/30/2012,2,1,3,5,2,0.37,0.375621,0.580833,0.138067,796,4663,5459
|
||||
456,3/31/2012,2,1,3,6,2,0.424167,0.421708,0.738333,0.250617,2301,3934,6235
|
||||
457,4/1/2012,2,1,4,0,2,0.425833,0.417287,0.67625,0.172267,2347,3694,6041
|
||||
458,4/2/2012,2,1,4,1,1,0.433913,0.427513,0.504348,0.312139,1208,4728,5936
|
||||
459,4/3/2012,2,1,4,2,1,0.466667,0.461483,0.396667,0.100133,1348,5424,6772
|
||||
460,4/4/2012,2,1,4,3,1,0.541667,0.53345,0.469583,0.180975,1058,5378,6436
|
||||
461,4/5/2012,2,1,4,4,1,0.435,0.431163,0.374167,0.219529,1192,5265,6457
|
||||
462,4/6/2012,2,1,4,5,1,0.403333,0.390767,0.377083,0.300388,1807,4653,6460
|
||||
463,4/7/2012,2,1,4,6,1,0.4375,0.426129,0.254167,0.274871,3252,3605,6857
|
||||
464,4/8/2012,2,1,4,0,1,0.5,0.492425,0.275833,0.232596,2230,2939,5169
|
||||
465,4/9/2012,2,1,4,1,1,0.489167,0.476638,0.3175,0.358196,905,4680,5585
|
||||
466,4/10/2012,2,1,4,2,1,0.446667,0.436233,0.435,0.249375,819,5099,5918
|
||||
467,4/11/2012,2,1,4,3,1,0.348696,0.337274,0.469565,0.295274,482,4380,4862
|
||||
468,4/12/2012,2,1,4,4,1,0.3975,0.387604,0.46625,0.290429,663,4746,5409
|
||||
469,4/13/2012,2,1,4,5,1,0.4425,0.431808,0.408333,0.155471,1252,5146,6398
|
||||
470,4/14/2012,2,1,4,6,1,0.495,0.487996,0.502917,0.190917,2795,4665,7460
|
||||
471,4/15/2012,2,1,4,0,1,0.606667,0.573875,0.507917,0.225129,2846,4286,7132
|
||||
472,4/16/2012,2,1,4,1,1,0.664167,0.614925,0.561667,0.284829,1198,5172,6370
|
||||
473,4/17/2012,2,1,4,2,1,0.608333,0.598487,0.390417,0.273629,989,5702,6691
|
||||
474,4/18/2012,2,1,4,3,2,0.463333,0.457038,0.569167,0.167912,347,4020,4367
|
||||
475,4/19/2012,2,1,4,4,1,0.498333,0.493046,0.6125,0.0659292,846,5719,6565
|
||||
476,4/20/2012,2,1,4,5,1,0.526667,0.515775,0.694583,0.149871,1340,5950,7290
|
||||
477,4/21/2012,2,1,4,6,1,0.57,0.542921,0.682917,0.283587,2541,4083,6624
|
||||
478,4/22/2012,2,1,4,0,3,0.396667,0.389504,0.835417,0.344546,120,907,1027
|
||||
479,4/23/2012,2,1,4,1,2,0.321667,0.301125,0.766667,0.303496,195,3019,3214
|
||||
480,4/24/2012,2,1,4,2,1,0.413333,0.405283,0.454167,0.249383,518,5115,5633
|
||||
481,4/25/2012,2,1,4,3,1,0.476667,0.470317,0.427917,0.118792,655,5541,6196
|
||||
482,4/26/2012,2,1,4,4,2,0.498333,0.483583,0.756667,0.176625,475,4551,5026
|
||||
483,4/27/2012,2,1,4,5,1,0.4575,0.452637,0.400833,0.347633,1014,5219,6233
|
||||
484,4/28/2012,2,1,4,6,2,0.376667,0.377504,0.489583,0.129975,1120,3100,4220
|
||||
485,4/29/2012,2,1,4,0,1,0.458333,0.450121,0.587083,0.116908,2229,4075,6304
|
||||
486,4/30/2012,2,1,4,1,2,0.464167,0.457696,0.57,0.171638,665,4907,5572
|
||||
487,5/1/2012,2,1,5,2,2,0.613333,0.577021,0.659583,0.156096,653,5087,5740
|
||||
488,5/2/2012,2,1,5,3,1,0.564167,0.537896,0.797083,0.138058,667,5502,6169
|
||||
489,5/3/2012,2,1,5,4,2,0.56,0.537242,0.768333,0.133696,764,5657,6421
|
||||
490,5/4/2012,2,1,5,5,1,0.6275,0.590917,0.735417,0.162938,1069,5227,6296
|
||||
491,5/5/2012,2,1,5,6,2,0.621667,0.584608,0.756667,0.152992,2496,4387,6883
|
||||
492,5/6/2012,2,1,5,0,2,0.5625,0.546737,0.74,0.149879,2135,4224,6359
|
||||
493,5/7/2012,2,1,5,1,2,0.5375,0.527142,0.664167,0.230721,1008,5265,6273
|
||||
494,5/8/2012,2,1,5,2,2,0.581667,0.557471,0.685833,0.296029,738,4990,5728
|
||||
495,5/9/2012,2,1,5,3,2,0.575,0.553025,0.744167,0.216412,620,4097,4717
|
||||
496,5/10/2012,2,1,5,4,1,0.505833,0.491783,0.552083,0.314063,1026,5546,6572
|
||||
497,5/11/2012,2,1,5,5,1,0.533333,0.520833,0.360417,0.236937,1319,5711,7030
|
||||
498,5/12/2012,2,1,5,6,1,0.564167,0.544817,0.480417,0.123133,2622,4807,7429
|
||||
499,5/13/2012,2,1,5,0,1,0.6125,0.585238,0.57625,0.225117,2172,3946,6118
|
||||
500,5/14/2012,2,1,5,1,2,0.573333,0.5499,0.789583,0.212692,342,2501,2843
|
||||
501,5/15/2012,2,1,5,2,2,0.611667,0.576404,0.794583,0.147392,625,4490,5115
|
||||
502,5/16/2012,2,1,5,3,1,0.636667,0.595975,0.697917,0.122512,991,6433,7424
|
||||
503,5/17/2012,2,1,5,4,1,0.593333,0.572613,0.52,0.229475,1242,6142,7384
|
||||
504,5/18/2012,2,1,5,5,1,0.564167,0.551121,0.523333,0.136817,1521,6118,7639
|
||||
505,5/19/2012,2,1,5,6,1,0.6,0.566908,0.45625,0.083975,3410,4884,8294
|
||||
506,5/20/2012,2,1,5,0,1,0.620833,0.583967,0.530417,0.254367,2704,4425,7129
|
||||
507,5/21/2012,2,1,5,1,2,0.598333,0.565667,0.81125,0.233204,630,3729,4359
|
||||
508,5/22/2012,2,1,5,2,2,0.615,0.580825,0.765833,0.118167,819,5254,6073
|
||||
509,5/23/2012,2,1,5,3,2,0.621667,0.584612,0.774583,0.102,766,4494,5260
|
||||
510,5/24/2012,2,1,5,4,1,0.655,0.6067,0.716667,0.172896,1059,5711,6770
|
||||
511,5/25/2012,2,1,5,5,1,0.68,0.627529,0.747083,0.14055,1417,5317,6734
|
||||
512,5/26/2012,2,1,5,6,1,0.6925,0.642696,0.7325,0.198992,2855,3681,6536
|
||||
513,5/27/2012,2,1,5,0,1,0.69,0.641425,0.697083,0.215171,3283,3308,6591
|
||||
514,5/28/2012,2,1,5,1,1,0.7125,0.6793,0.67625,0.196521,2557,3486,6043
|
||||
515,5/29/2012,2,1,5,2,1,0.7225,0.672992,0.684583,0.2954,880,4863,5743
|
||||
516,5/30/2012,2,1,5,3,2,0.656667,0.611129,0.67,0.134329,745,6110,6855
|
||||
517,5/31/2012,2,1,5,4,1,0.68,0.631329,0.492917,0.195279,1100,6238,7338
|
||||
518,6/1/2012,2,1,6,5,2,0.654167,0.607962,0.755417,0.237563,533,3594,4127
|
||||
519,6/2/2012,2,1,6,6,1,0.583333,0.566288,0.549167,0.186562,2795,5325,8120
|
||||
520,6/3/2012,2,1,6,0,1,0.6025,0.575133,0.493333,0.184087,2494,5147,7641
|
||||
521,6/4/2012,2,1,6,1,1,0.5975,0.578283,0.487083,0.284833,1071,5927,6998
|
||||
522,6/5/2012,2,1,6,2,2,0.540833,0.525892,0.613333,0.209575,968,6033,7001
|
||||
523,6/6/2012,2,1,6,3,1,0.554167,0.542292,0.61125,0.077125,1027,6028,7055
|
||||
524,6/7/2012,2,1,6,4,1,0.6025,0.569442,0.567083,0.15735,1038,6456,7494
|
||||
525,6/8/2012,2,1,6,5,1,0.649167,0.597862,0.467917,0.175383,1488,6248,7736
|
||||
526,6/9/2012,2,1,6,6,1,0.710833,0.648367,0.437083,0.144287,2708,4790,7498
|
||||
527,6/10/2012,2,1,6,0,1,0.726667,0.663517,0.538333,0.133721,2224,4374,6598
|
||||
528,6/11/2012,2,1,6,1,2,0.720833,0.659721,0.587917,0.207713,1017,5647,6664
|
||||
529,6/12/2012,2,1,6,2,2,0.653333,0.597875,0.833333,0.214546,477,4495,4972
|
||||
530,6/13/2012,2,1,6,3,1,0.655833,0.611117,0.582083,0.343279,1173,6248,7421
|
||||
531,6/14/2012,2,1,6,4,1,0.648333,0.624383,0.569583,0.253733,1180,6183,7363
|
||||
532,6/15/2012,2,1,6,5,1,0.639167,0.599754,0.589583,0.176617,1563,6102,7665
|
||||
533,6/16/2012,2,1,6,6,1,0.631667,0.594708,0.504167,0.166667,2963,4739,7702
|
||||
534,6/17/2012,2,1,6,0,1,0.5925,0.571975,0.59875,0.144904,2634,4344,6978
|
||||
535,6/18/2012,2,1,6,1,2,0.568333,0.544842,0.777917,0.174746,653,4446,5099
|
||||
536,6/19/2012,2,1,6,2,1,0.688333,0.654692,0.69,0.148017,968,5857,6825
|
||||
537,6/20/2012,2,1,6,3,1,0.7825,0.720975,0.592083,0.113812,872,5339,6211
|
||||
538,6/21/2012,3,1,6,4,1,0.805833,0.752542,0.567917,0.118787,778,5127,5905
|
||||
539,6/22/2012,3,1,6,5,1,0.7775,0.724121,0.57375,0.182842,964,4859,5823
|
||||
540,6/23/2012,3,1,6,6,1,0.731667,0.652792,0.534583,0.179721,2657,4801,7458
|
||||
541,6/24/2012,3,1,6,0,1,0.743333,0.674254,0.479167,0.145525,2551,4340,6891
|
||||
542,6/25/2012,3,1,6,1,1,0.715833,0.654042,0.504167,0.300383,1139,5640,6779
|
||||
543,6/26/2012,3,1,6,2,1,0.630833,0.594704,0.373333,0.347642,1077,6365,7442
|
||||
544,6/27/2012,3,1,6,3,1,0.6975,0.640792,0.36,0.271775,1077,6258,7335
|
||||
545,6/28/2012,3,1,6,4,1,0.749167,0.675512,0.4225,0.17165,921,5958,6879
|
||||
546,6/29/2012,3,1,6,5,1,0.834167,0.786613,0.48875,0.165417,829,4634,5463
|
||||
547,6/30/2012,3,1,6,6,1,0.765,0.687508,0.60125,0.161071,1455,4232,5687
|
||||
548,7/1/2012,3,1,7,0,1,0.815833,0.750629,0.51875,0.168529,1421,4110,5531
|
||||
549,7/2/2012,3,1,7,1,1,0.781667,0.702038,0.447083,0.195267,904,5323,6227
|
||||
550,7/3/2012,3,1,7,2,1,0.780833,0.70265,0.492083,0.126237,1052,5608,6660
|
||||
551,7/4/2012,3,1,7,3,1,0.789167,0.732337,0.53875,0.13495,2562,4841,7403
|
||||
552,7/5/2012,3,1,7,4,1,0.8275,0.761367,0.457917,0.194029,1405,4836,6241
|
||||
553,7/6/2012,3,1,7,5,1,0.828333,0.752533,0.450833,0.146142,1366,4841,6207
|
||||
554,7/7/2012,3,1,7,6,1,0.861667,0.804913,0.492083,0.163554,1448,3392,4840
|
||||
555,7/8/2012,3,1,7,0,1,0.8225,0.790396,0.57375,0.125629,1203,3469,4672
|
||||
556,7/9/2012,3,1,7,1,2,0.710833,0.654054,0.683333,0.180975,998,5571,6569
|
||||
557,7/10/2012,3,1,7,2,2,0.720833,0.664796,0.6675,0.151737,954,5336,6290
|
||||
558,7/11/2012,3,1,7,3,1,0.716667,0.650271,0.633333,0.151733,975,6289,7264
|
||||
559,7/12/2012,3,1,7,4,1,0.715833,0.654683,0.529583,0.146775,1032,6414,7446
|
||||
560,7/13/2012,3,1,7,5,2,0.731667,0.667933,0.485833,0.08085,1511,5988,7499
|
||||
561,7/14/2012,3,1,7,6,2,0.703333,0.666042,0.699167,0.143679,2355,4614,6969
|
||||
562,7/15/2012,3,1,7,0,1,0.745833,0.705196,0.717917,0.166667,1920,4111,6031
|
||||
563,7/16/2012,3,1,7,1,1,0.763333,0.724125,0.645,0.164187,1088,5742,6830
|
||||
564,7/17/2012,3,1,7,2,1,0.818333,0.755683,0.505833,0.114429,921,5865,6786
|
||||
565,7/18/2012,3,1,7,3,1,0.793333,0.745583,0.577083,0.137442,799,4914,5713
|
||||
566,7/19/2012,3,1,7,4,1,0.77,0.714642,0.600417,0.165429,888,5703,6591
|
||||
567,7/20/2012,3,1,7,5,2,0.665833,0.613025,0.844167,0.208967,747,5123,5870
|
||||
568,7/21/2012,3,1,7,6,3,0.595833,0.549912,0.865417,0.2133,1264,3195,4459
|
||||
569,7/22/2012,3,1,7,0,2,0.6675,0.623125,0.7625,0.0939208,2544,4866,7410
|
||||
570,7/23/2012,3,1,7,1,1,0.741667,0.690017,0.694167,0.138683,1135,5831,6966
|
||||
571,7/24/2012,3,1,7,2,1,0.750833,0.70645,0.655,0.211454,1140,6452,7592
|
||||
572,7/25/2012,3,1,7,3,1,0.724167,0.654054,0.45,0.1648,1383,6790,8173
|
||||
573,7/26/2012,3,1,7,4,1,0.776667,0.739263,0.596667,0.284813,1036,5825,6861
|
||||
574,7/27/2012,3,1,7,5,1,0.781667,0.734217,0.594583,0.152992,1259,5645,6904
|
||||
575,7/28/2012,3,1,7,6,1,0.755833,0.697604,0.613333,0.15735,2234,4451,6685
|
||||
576,7/29/2012,3,1,7,0,1,0.721667,0.667933,0.62375,0.170396,2153,4444,6597
|
||||
577,7/30/2012,3,1,7,1,1,0.730833,0.684987,0.66875,0.153617,1040,6065,7105
|
||||
578,7/31/2012,3,1,7,2,1,0.713333,0.662896,0.704167,0.165425,968,6248,7216
|
||||
579,8/1/2012,3,1,8,3,1,0.7175,0.667308,0.6775,0.141179,1074,6506,7580
|
||||
580,8/2/2012,3,1,8,4,1,0.7525,0.707088,0.659583,0.129354,983,6278,7261
|
||||
581,8/3/2012,3,1,8,5,2,0.765833,0.722867,0.6425,0.215792,1328,5847,7175
|
||||
582,8/4/2012,3,1,8,6,1,0.793333,0.751267,0.613333,0.257458,2345,4479,6824
|
||||
583,8/5/2012,3,1,8,0,1,0.769167,0.731079,0.6525,0.290421,1707,3757,5464
|
||||
584,8/6/2012,3,1,8,1,2,0.7525,0.710246,0.654167,0.129354,1233,5780,7013
|
||||
585,8/7/2012,3,1,8,2,2,0.735833,0.697621,0.70375,0.116908,1278,5995,7273
|
||||
586,8/8/2012,3,1,8,3,2,0.75,0.707717,0.672917,0.1107,1263,6271,7534
|
||||
587,8/9/2012,3,1,8,4,1,0.755833,0.699508,0.620417,0.1561,1196,6090,7286
|
||||
588,8/10/2012,3,1,8,5,2,0.715833,0.667942,0.715833,0.238813,1065,4721,5786
|
||||
589,8/11/2012,3,1,8,6,2,0.6925,0.638267,0.732917,0.206479,2247,4052,6299
|
||||
590,8/12/2012,3,1,8,0,1,0.700833,0.644579,0.530417,0.122512,2182,4362,6544
|
||||
591,8/13/2012,3,1,8,1,1,0.720833,0.662254,0.545417,0.136212,1207,5676,6883
|
||||
592,8/14/2012,3,1,8,2,1,0.726667,0.676779,0.686667,0.169158,1128,5656,6784
|
||||
593,8/15/2012,3,1,8,3,1,0.706667,0.654037,0.619583,0.169771,1198,6149,7347
|
||||
594,8/16/2012,3,1,8,4,1,0.719167,0.654688,0.519167,0.141796,1338,6267,7605
|
||||
595,8/17/2012,3,1,8,5,1,0.723333,0.2424,0.570833,0.231354,1483,5665,7148
|
||||
596,8/18/2012,3,1,8,6,1,0.678333,0.618071,0.603333,0.177867,2827,5038,7865
|
||||
597,8/19/2012,3,1,8,0,2,0.635833,0.603554,0.711667,0.08645,1208,3341,4549
|
||||
598,8/20/2012,3,1,8,1,2,0.635833,0.595967,0.734167,0.129979,1026,5504,6530
|
||||
599,8/21/2012,3,1,8,2,1,0.649167,0.601025,0.67375,0.0727708,1081,5925,7006
|
||||
600,8/22/2012,3,1,8,3,1,0.6675,0.621854,0.677083,0.0702833,1094,6281,7375
|
||||
601,8/23/2012,3,1,8,4,1,0.695833,0.637008,0.635833,0.0845958,1363,6402,7765
|
||||
602,8/24/2012,3,1,8,5,2,0.7025,0.6471,0.615,0.0721458,1325,6257,7582
|
||||
603,8/25/2012,3,1,8,6,2,0.661667,0.618696,0.712917,0.244408,1829,4224,6053
|
||||
604,8/26/2012,3,1,8,0,2,0.653333,0.595996,0.845833,0.228858,1483,3772,5255
|
||||
605,8/27/2012,3,1,8,1,1,0.703333,0.654688,0.730417,0.128733,989,5928,6917
|
||||
606,8/28/2012,3,1,8,2,1,0.728333,0.66605,0.62,0.190925,935,6105,7040
|
||||
607,8/29/2012,3,1,8,3,1,0.685,0.635733,0.552083,0.112562,1177,6520,7697
|
||||
608,8/30/2012,3,1,8,4,1,0.706667,0.652779,0.590417,0.0771167,1172,6541,7713
|
||||
609,8/31/2012,3,1,8,5,1,0.764167,0.6894,0.5875,0.168533,1433,5917,7350
|
||||
610,9/1/2012,3,1,9,6,2,0.753333,0.702654,0.638333,0.113187,2352,3788,6140
|
||||
611,9/2/2012,3,1,9,0,2,0.696667,0.649,0.815,0.0640708,2613,3197,5810
|
||||
612,9/3/2012,3,1,9,1,1,0.7075,0.661629,0.790833,0.151121,1965,4069,6034
|
||||
613,9/4/2012,3,1,9,2,1,0.725833,0.686888,0.755,0.236321,867,5997,6864
|
||||
614,9/5/2012,3,1,9,3,1,0.736667,0.708983,0.74125,0.187808,832,6280,7112
|
||||
615,9/6/2012,3,1,9,4,2,0.696667,0.655329,0.810417,0.142421,611,5592,6203
|
||||
616,9/7/2012,3,1,9,5,1,0.703333,0.657204,0.73625,0.171646,1045,6459,7504
|
||||
617,9/8/2012,3,1,9,6,2,0.659167,0.611121,0.799167,0.281104,1557,4419,5976
|
||||
618,9/9/2012,3,1,9,0,1,0.61,0.578925,0.5475,0.224496,2570,5657,8227
|
||||
619,9/10/2012,3,1,9,1,1,0.583333,0.565654,0.50375,0.258713,1118,6407,7525
|
||||
620,9/11/2012,3,1,9,2,1,0.5775,0.554292,0.52,0.0920542,1070,6697,7767
|
||||
621,9/12/2012,3,1,9,3,1,0.599167,0.570075,0.577083,0.131846,1050,6820,7870
|
||||
622,9/13/2012,3,1,9,4,1,0.6125,0.579558,0.637083,0.0827208,1054,6750,7804
|
||||
623,9/14/2012,3,1,9,5,1,0.633333,0.594083,0.6725,0.103863,1379,6630,8009
|
||||
624,9/15/2012,3,1,9,6,1,0.608333,0.585867,0.501667,0.247521,3160,5554,8714
|
||||
625,9/16/2012,3,1,9,0,1,0.58,0.563125,0.57,0.0901833,2166,5167,7333
|
||||
626,9/17/2012,3,1,9,1,2,0.580833,0.55305,0.734583,0.151742,1022,5847,6869
|
||||
627,9/18/2012,3,1,9,2,2,0.623333,0.565067,0.8725,0.357587,371,3702,4073
|
||||
628,9/19/2012,3,1,9,3,1,0.5525,0.540404,0.536667,0.215175,788,6803,7591
|
||||
629,9/20/2012,3,1,9,4,1,0.546667,0.532192,0.618333,0.118167,939,6781,7720
|
||||
630,9/21/2012,3,1,9,5,1,0.599167,0.571971,0.66875,0.154229,1250,6917,8167
|
||||
631,9/22/2012,3,1,9,6,1,0.65,0.610488,0.646667,0.283583,2512,5883,8395
|
||||
632,9/23/2012,4,1,9,0,1,0.529167,0.518933,0.467083,0.223258,2454,5453,7907
|
||||
633,9/24/2012,4,1,9,1,1,0.514167,0.502513,0.492917,0.142404,1001,6435,7436
|
||||
634,9/25/2012,4,1,9,2,1,0.55,0.544179,0.57,0.236321,845,6693,7538
|
||||
635,9/26/2012,4,1,9,3,1,0.635,0.596613,0.630833,0.2444,787,6946,7733
|
||||
636,9/27/2012,4,1,9,4,2,0.65,0.607975,0.690833,0.134342,751,6642,7393
|
||||
637,9/28/2012,4,1,9,5,2,0.619167,0.585863,0.69,0.164179,1045,6370,7415
|
||||
638,9/29/2012,4,1,9,6,1,0.5425,0.530296,0.542917,0.227604,2589,5966,8555
|
||||
639,9/30/2012,4,1,9,0,1,0.526667,0.517663,0.583333,0.134958,2015,4874,6889
|
||||
640,10/1/2012,4,1,10,1,2,0.520833,0.512,0.649167,0.0908042,763,6015,6778
|
||||
641,10/2/2012,4,1,10,2,3,0.590833,0.542333,0.871667,0.104475,315,4324,4639
|
||||
642,10/3/2012,4,1,10,3,2,0.6575,0.599133,0.79375,0.0665458,728,6844,7572
|
||||
643,10/4/2012,4,1,10,4,2,0.6575,0.607975,0.722917,0.117546,891,6437,7328
|
||||
644,10/5/2012,4,1,10,5,1,0.615,0.580187,0.6275,0.10635,1516,6640,8156
|
||||
645,10/6/2012,4,1,10,6,1,0.554167,0.538521,0.664167,0.268025,3031,4934,7965
|
||||
646,10/7/2012,4,1,10,0,2,0.415833,0.419813,0.708333,0.141162,781,2729,3510
|
||||
647,10/8/2012,4,1,10,1,2,0.383333,0.387608,0.709583,0.189679,874,4604,5478
|
||||
648,10/9/2012,4,1,10,2,2,0.446667,0.438112,0.761667,0.1903,601,5791,6392
|
||||
649,10/10/2012,4,1,10,3,1,0.514167,0.503142,0.630833,0.187821,780,6911,7691
|
||||
650,10/11/2012,4,1,10,4,1,0.435,0.431167,0.463333,0.181596,834,6736,7570
|
||||
651,10/12/2012,4,1,10,5,1,0.4375,0.433071,0.539167,0.235092,1060,6222,7282
|
||||
652,10/13/2012,4,1,10,6,1,0.393333,0.391396,0.494583,0.146142,2252,4857,7109
|
||||
653,10/14/2012,4,1,10,0,1,0.521667,0.508204,0.640417,0.278612,2080,4559,6639
|
||||
654,10/15/2012,4,1,10,1,2,0.561667,0.53915,0.7075,0.296037,760,5115,5875
|
||||
655,10/16/2012,4,1,10,2,1,0.468333,0.460846,0.558333,0.182221,922,6612,7534
|
||||
656,10/17/2012,4,1,10,3,1,0.455833,0.450108,0.692917,0.101371,979,6482,7461
|
||||
657,10/18/2012,4,1,10,4,2,0.5225,0.512625,0.728333,0.236937,1008,6501,7509
|
||||
658,10/19/2012,4,1,10,5,2,0.563333,0.537896,0.815,0.134954,753,4671,5424
|
||||
659,10/20/2012,4,1,10,6,1,0.484167,0.472842,0.572917,0.117537,2806,5284,8090
|
||||
660,10/21/2012,4,1,10,0,1,0.464167,0.456429,0.51,0.166054,2132,4692,6824
|
||||
661,10/22/2012,4,1,10,1,1,0.4875,0.482942,0.568333,0.0814833,830,6228,7058
|
||||
662,10/23/2012,4,1,10,2,1,0.544167,0.530304,0.641667,0.0945458,841,6625,7466
|
||||
663,10/24/2012,4,1,10,3,1,0.5875,0.558721,0.63625,0.0727792,795,6898,7693
|
||||
664,10/25/2012,4,1,10,4,2,0.55,0.529688,0.800417,0.124375,875,6484,7359
|
||||
665,10/26/2012,4,1,10,5,2,0.545833,0.52275,0.807083,0.132467,1182,6262,7444
|
||||
666,10/27/2012,4,1,10,6,2,0.53,0.515133,0.72,0.235692,2643,5209,7852
|
||||
667,10/28/2012,4,1,10,0,2,0.4775,0.467771,0.694583,0.398008,998,3461,4459
|
||||
668,10/29/2012,4,1,10,1,3,0.44,0.4394,0.88,0.3582,2,20,22
|
||||
669,10/30/2012,4,1,10,2,2,0.318182,0.309909,0.825455,0.213009,87,1009,1096
|
||||
670,10/31/2012,4,1,10,3,2,0.3575,0.3611,0.666667,0.166667,419,5147,5566
|
||||
671,11/1/2012,4,1,11,4,2,0.365833,0.369942,0.581667,0.157346,466,5520,5986
|
||||
672,11/2/2012,4,1,11,5,1,0.355,0.356042,0.522083,0.266175,618,5229,5847
|
||||
673,11/3/2012,4,1,11,6,2,0.343333,0.323846,0.49125,0.270529,1029,4109,5138
|
||||
674,11/4/2012,4,1,11,0,1,0.325833,0.329538,0.532917,0.179108,1201,3906,5107
|
||||
675,11/5/2012,4,1,11,1,1,0.319167,0.308075,0.494167,0.236325,378,4881,5259
|
||||
676,11/6/2012,4,1,11,2,1,0.280833,0.281567,0.567083,0.173513,466,5220,5686
|
||||
677,11/7/2012,4,1,11,3,2,0.295833,0.274621,0.5475,0.304108,326,4709,5035
|
||||
678,11/8/2012,4,1,11,4,1,0.352174,0.341891,0.333478,0.347835,340,4975,5315
|
||||
679,11/9/2012,4,1,11,5,1,0.361667,0.355413,0.540833,0.214558,709,5283,5992
|
||||
680,11/10/2012,4,1,11,6,1,0.389167,0.393937,0.645417,0.0578458,2090,4446,6536
|
||||
681,11/11/2012,4,1,11,0,1,0.420833,0.421713,0.659167,0.1275,2290,4562,6852
|
||||
682,11/12/2012,4,1,11,1,1,0.485,0.475383,0.741667,0.173517,1097,5172,6269
|
||||
683,11/13/2012,4,1,11,2,2,0.343333,0.323225,0.662917,0.342046,327,3767,4094
|
||||
684,11/14/2012,4,1,11,3,1,0.289167,0.281563,0.552083,0.199625,373,5122,5495
|
||||
685,11/15/2012,4,1,11,4,2,0.321667,0.324492,0.620417,0.152987,320,5125,5445
|
||||
686,11/16/2012,4,1,11,5,1,0.345,0.347204,0.524583,0.171025,484,5214,5698
|
||||
687,11/17/2012,4,1,11,6,1,0.325,0.326383,0.545417,0.179729,1313,4316,5629
|
||||
688,11/18/2012,4,1,11,0,1,0.3425,0.337746,0.692917,0.227612,922,3747,4669
|
||||
689,11/19/2012,4,1,11,1,2,0.380833,0.375621,0.623333,0.235067,449,5050,5499
|
||||
690,11/20/2012,4,1,11,2,2,0.374167,0.380667,0.685,0.082725,534,5100,5634
|
||||
691,11/21/2012,4,1,11,3,1,0.353333,0.364892,0.61375,0.103246,615,4531,5146
|
||||
692,11/22/2012,4,1,11,4,1,0.34,0.350371,0.580417,0.0528708,955,1470,2425
|
||||
693,11/23/2012,4,1,11,5,1,0.368333,0.378779,0.56875,0.148021,1603,2307,3910
|
||||
694,11/24/2012,4,1,11,6,1,0.278333,0.248742,0.404583,0.376871,532,1745,2277
|
||||
695,11/25/2012,4,1,11,0,1,0.245833,0.257583,0.468333,0.1505,309,2115,2424
|
||||
696,11/26/2012,4,1,11,1,1,0.313333,0.339004,0.535417,0.04665,337,4750,5087
|
||||
697,11/27/2012,4,1,11,2,2,0.291667,0.281558,0.786667,0.237562,123,3836,3959
|
||||
698,11/28/2012,4,1,11,3,1,0.296667,0.289762,0.50625,0.210821,198,5062,5260
|
||||
699,11/29/2012,4,1,11,4,1,0.28087,0.298422,0.555652,0.115522,243,5080,5323
|
||||
700,11/30/2012,4,1,11,5,1,0.298333,0.323867,0.649583,0.0584708,362,5306,5668
|
||||
701,12/1/2012,4,1,12,6,2,0.298333,0.316904,0.806667,0.0597042,951,4240,5191
|
||||
702,12/2/2012,4,1,12,0,2,0.3475,0.359208,0.823333,0.124379,892,3757,4649
|
||||
703,12/3/2012,4,1,12,1,1,0.4525,0.455796,0.7675,0.0827208,555,5679,6234
|
||||
704,12/4/2012,4,1,12,2,1,0.475833,0.469054,0.73375,0.174129,551,6055,6606
|
||||
705,12/5/2012,4,1,12,3,1,0.438333,0.428012,0.485,0.324021,331,5398,5729
|
||||
706,12/6/2012,4,1,12,4,1,0.255833,0.258204,0.50875,0.174754,340,5035,5375
|
||||
707,12/7/2012,4,1,12,5,2,0.320833,0.321958,0.764167,0.1306,349,4659,5008
|
||||
708,12/8/2012,4,1,12,6,2,0.381667,0.389508,0.91125,0.101379,1153,4429,5582
|
||||
709,12/9/2012,4,1,12,0,2,0.384167,0.390146,0.905417,0.157975,441,2787,3228
|
||||
710,12/10/2012,4,1,12,1,2,0.435833,0.435575,0.925,0.190308,329,4841,5170
|
||||
711,12/11/2012,4,1,12,2,2,0.353333,0.338363,0.596667,0.296037,282,5219,5501
|
||||
712,12/12/2012,4,1,12,3,2,0.2975,0.297338,0.538333,0.162937,310,5009,5319
|
||||
713,12/13/2012,4,1,12,4,1,0.295833,0.294188,0.485833,0.174129,425,5107,5532
|
||||
714,12/14/2012,4,1,12,5,1,0.281667,0.294192,0.642917,0.131229,429,5182,5611
|
||||
715,12/15/2012,4,1,12,6,1,0.324167,0.338383,0.650417,0.10635,767,4280,5047
|
||||
716,12/16/2012,4,1,12,0,2,0.3625,0.369938,0.83875,0.100742,538,3248,3786
|
||||
717,12/17/2012,4,1,12,1,2,0.393333,0.4015,0.907083,0.0982583,212,4373,4585
|
||||
718,12/18/2012,4,1,12,2,1,0.410833,0.409708,0.66625,0.221404,433,5124,5557
|
||||
719,12/19/2012,4,1,12,3,1,0.3325,0.342162,0.625417,0.184092,333,4934,5267
|
||||
720,12/20/2012,4,1,12,4,2,0.33,0.335217,0.667917,0.132463,314,3814,4128
|
||||
721,12/21/2012,1,1,12,5,2,0.326667,0.301767,0.556667,0.374383,221,3402,3623
|
||||
722,12/22/2012,1,1,12,6,1,0.265833,0.236113,0.44125,0.407346,205,1544,1749
|
||||
723,12/23/2012,1,1,12,0,1,0.245833,0.259471,0.515417,0.133083,408,1379,1787
|
||||
724,12/24/2012,1,1,12,1,2,0.231304,0.2589,0.791304,0.0772304,174,746,920
|
||||
725,12/25/2012,1,1,12,2,2,0.291304,0.294465,0.734783,0.168726,440,573,1013
|
||||
726,12/26/2012,1,1,12,3,3,0.243333,0.220333,0.823333,0.316546,9,432,441
|
||||
727,12/27/2012,1,1,12,4,2,0.254167,0.226642,0.652917,0.350133,247,1867,2114
|
||||
728,12/28/2012,1,1,12,5,2,0.253333,0.255046,0.59,0.155471,644,2451,3095
|
||||
729,12/29/2012,1,1,12,6,2,0.253333,0.2424,0.752917,0.124383,159,1182,1341
|
||||
730,12/30/2012,1,1,12,0,1,0.255833,0.2317,0.483333,0.350754,364,1432,1796
|
||||
731,12/31/2012,1,1,12,1,2,0.215833,0.223487,0.5775,0.154846,439,2290,2729
|
||||
|
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|
||||
name: auto-ml-forecasting-energy-demand
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
- statsmodels
|
||||
- azureml-explain-model
|
||||
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|
||||
name: auto-ml-forecasting-orange-juice-sales
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
- statsmodels
|
||||
File diff suppressed because it is too large
Load Diff
@@ -1,401 +1,424 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Blacklisting Models, Early Termination, and Handling Missing Data**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for handling missing values in data. We also provide a stopping metric indicating a target for the primary metrics so that AutoML can terminate the run without necessarly going through all the iterations. Finally, if you want to avoid a certain pipeline, we allow you to specify a blacklist of algorithms that AutoML will ignore for this run.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"4. Train the model.\n",
|
||||
"5. Explore the results.\n",
|
||||
"6. Test the best fitted model.\n",
|
||||
"\n",
|
||||
"In addition this notebook showcases the following features\n",
|
||||
"- **Blacklisting** certain pipelines\n",
|
||||
"- Specifying **target metrics** to indicate stopping criteria\n",
|
||||
"- Handling **missing data** in the input"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment.\n",
|
||||
"experiment_name = 'automl-local-missing-data'\n",
|
||||
"project_folder = './sample_projects/automl-local-missing-data'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data=output, index=['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from scipy import sparse\n",
|
||||
"\n",
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_train = digits.data[10:,:]\n",
|
||||
"y_train = digits.target[10:]\n",
|
||||
"\n",
|
||||
"# Add missing values in 75% of the lines.\n",
|
||||
"missing_rate = 0.75\n",
|
||||
"n_missing_samples = int(np.floor(X_train.shape[0] * missing_rate))\n",
|
||||
"missing_samples = np.hstack((np.zeros(X_train.shape[0] - n_missing_samples, dtype=np.bool), np.ones(n_missing_samples, dtype=np.bool)))\n",
|
||||
"rng = np.random.RandomState(0)\n",
|
||||
"rng.shuffle(missing_samples)\n",
|
||||
"missing_features = rng.randint(0, X_train.shape[1], n_missing_samples)\n",
|
||||
"X_train[np.where(missing_samples)[0], missing_features] = np.nan"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"df = pd.DataFrame(data = X_train)\n",
|
||||
"df['Label'] = pd.Series(y_train, index=df.index)\n",
|
||||
"df.head()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment. This includes setting `experiment_exit_score`, which should cause the run to complete before the `iterations` count is reached.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**preprocess**|Setting this to *True* enables AutoML to perform preprocessing on the input to handle *missing data*, and to perform some common *feature extraction*.|\n",
|
||||
"|**experiment_exit_score**|*double* value indicating the target for *primary_metric*. <br>Once the target is surpassed the run terminates.|\n",
|
||||
"|**blacklist_models**|*List* of *strings* indicating machine learning algorithms for AutoML to avoid in this run.<br><br> Allowed values for **Classification**<br><i>LogisticRegression</i><br><i>SGD</i><br><i>MultinomialNaiveBayes</i><br><i>BernoulliNaiveBayes</i><br><i>SVM</i><br><i>LinearSVM</i><br><i>KNN</i><br><i>DecisionTree</i><br><i>RandomForest</i><br><i>ExtremeRandomTrees</i><br><i>LightGBM</i><br><i>GradientBoosting</i><br><i>TensorFlowDNN</i><br><i>TensorFlowLinearClassifier</i><br><br>Allowed values for **Regression**<br><i>ElasticNet</i><br><i>GradientBoosting</i><br><i>DecisionTree</i><br><i>KNN</i><br><i>LassoLars</i><br><i>SGD</i><br><i>RandomForest</i><br><i>ExtremeRandomTrees</i><br><i>LightGBM</i><br><i>TensorFlowLinearRegressor</i><br><i>TensorFlowDNN</i>|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], [n_samples, n_classes]<br>Multi-class targets. An indicator matrix turns on multilabel classification. This should be an array of integers.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 20,\n",
|
||||
" n_cross_validations = 5,\n",
|
||||
" preprocess = True,\n",
|
||||
" experiment_exit_score = 0.9984,\n",
|
||||
" blacklist_models = ['KNN','LinearSVM'],\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" path = project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model which has the smallest `accuracy` value:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# lookup_metric = \"accuracy\"\n",
|
||||
"# best_run, fitted_model = local_run.get_output(metric = lookup_metric)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# iteration = 3\n",
|
||||
"# best_run, fitted_model = local_run.get_output(iteration = iteration)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]\n",
|
||||
"\n",
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize=(3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()\n"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Blacklisting Models, Early Termination, and Handling Missing Data**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for handling missing values in data. We also provide a stopping metric indicating a target for the primary metrics so that AutoML can terminate the run without necessarly going through all the iterations. Finally, if you want to avoid a certain pipeline, we allow you to specify a blacklist of algorithms that AutoML will ignore for this run.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Viewing the engineered names for featurized data and featurization summary for all raw features.\n",
|
||||
"6. Test the best fitted model.\n",
|
||||
"\n",
|
||||
"In addition this notebook showcases the following features\n",
|
||||
"- **Blacklisting** certain pipelines\n",
|
||||
"- Specifying **target metrics** to indicate stopping criteria\n",
|
||||
"- Handling **missing data** in the input"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment.\n",
|
||||
"experiment_name = 'automl-local-missing-data'\n",
|
||||
"project_folder = './sample_projects/automl-local-missing-data'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_train = digits.data[10:,:]\n",
|
||||
"y_train = digits.target[10:]\n",
|
||||
"\n",
|
||||
"# Add missing values in 75% of the lines.\n",
|
||||
"missing_rate = 0.75\n",
|
||||
"n_missing_samples = int(np.floor(X_train.shape[0] * missing_rate))\n",
|
||||
"missing_samples = np.hstack((np.zeros(X_train.shape[0] - n_missing_samples, dtype=np.bool), np.ones(n_missing_samples, dtype=np.bool)))\n",
|
||||
"rng = np.random.RandomState(0)\n",
|
||||
"rng.shuffle(missing_samples)\n",
|
||||
"missing_features = rng.randint(0, X_train.shape[1], n_missing_samples)\n",
|
||||
"X_train[np.where(missing_samples)[0], missing_features] = np.nan"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"df = pd.DataFrame(data = X_train)\n",
|
||||
"df['Label'] = pd.Series(y_train, index=df.index)\n",
|
||||
"df.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment. This includes setting `experiment_exit_score`, which should cause the run to complete before the `iterations` count is reached.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**preprocess**|Setting this to *True* enables AutoML to perform preprocessing on the input to handle *missing data*, and to perform some common *feature extraction*.|\n",
|
||||
"|**experiment_exit_score**|*double* value indicating the target for *primary_metric*. <br>Once the target is surpassed the run terminates.|\n",
|
||||
"|**blacklist_models**|*List* of *strings* indicating machine learning algorithms for AutoML to avoid in this run.<br><br> Allowed values for **Classification**<br><i>LogisticRegression</i><br><i>SGD</i><br><i>MultinomialNaiveBayes</i><br><i>BernoulliNaiveBayes</i><br><i>SVM</i><br><i>LinearSVM</i><br><i>KNN</i><br><i>DecisionTree</i><br><i>RandomForest</i><br><i>ExtremeRandomTrees</i><br><i>LightGBM</i><br><i>GradientBoosting</i><br><i>TensorFlowDNN</i><br><i>TensorFlowLinearClassifier</i><br><br>Allowed values for **Regression**<br><i>ElasticNet</i><br><i>GradientBoosting</i><br><i>DecisionTree</i><br><i>KNN</i><br><i>LassoLars</i><br><i>SGD</i><br><i>RandomForest</i><br><i>ExtremeRandomTrees</i><br><i>LightGBM</i><br><i>TensorFlowLinearRegressor</i><br><i>TensorFlowDNN</i>|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 20,\n",
|
||||
" preprocess = True,\n",
|
||||
" experiment_exit_score = 0.9984,\n",
|
||||
" blacklist_models = ['KNN','LinearSVM'],\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" path = project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model which has the smallest `accuracy` value:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# lookup_metric = \"accuracy\"\n",
|
||||
"# best_run, fitted_model = local_run.get_output(metric = lookup_metric)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# iteration = 3\n",
|
||||
"# best_run, fitted_model = local_run.get_output(iteration = iteration)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### View the engineered names for featurized data\n",
|
||||
"Below we display the engineered feature names generated for the featurized data using the preprocessing featurization."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"fitted_model.named_steps['datatransformer'].get_engineered_feature_names()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### View the featurization summary\n",
|
||||
"Below we display the featurization that was performed on different raw features in the user data. For each raw feature in the user data, the following information is displayed:-\n",
|
||||
"- Raw feature name\n",
|
||||
"- Number of engineered features formed out of this raw feature\n",
|
||||
"- Type detected\n",
|
||||
"- If feature was dropped\n",
|
||||
"- List of feature transformations for the raw feature"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"fitted_model.named_steps['datatransformer'].get_featurization_summary()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]\n",
|
||||
"\n",
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize=(3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-missing-data-blacklist-early-termination
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,367 +1,357 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Explain classification model and visualize the explanation**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the sklearn's [iris dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_iris.html) to showcase how you can use the AutoML Classifier for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you would see\n",
|
||||
"1. Creating an Experiment in an existing Workspace\n",
|
||||
"2. Instantiating AutoMLConfig\n",
|
||||
"3. Training the Model using local compute and explain the model\n",
|
||||
"4. Visualization model's feature importance in widget\n",
|
||||
"5. Explore best model's explanation"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created a <b>Workspace</b>. For AutoML you would need to create an <b>Experiment</b>. An <b>Experiment</b> is a named object in a <b>Workspace</b>, which is used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"import pandas as pd\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# choose a name for experiment\n",
|
||||
"experiment_name = 'automl-local-classification'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-local-classification-model-explanation'\n",
|
||||
"\n",
|
||||
"experiment=Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"iris = datasets.load_iris()\n",
|
||||
"y = iris.target\n",
|
||||
"X = iris.data\n",
|
||||
"\n",
|
||||
"features = iris.feature_names\n",
|
||||
"\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"X_train, X_test, y_train, y_test = train_test_split(X,\n",
|
||||
" y,\n",
|
||||
" test_size=0.1,\n",
|
||||
" random_state=100,\n",
|
||||
" stratify=y)\n",
|
||||
"\n",
|
||||
"X_train = pd.DataFrame(X_train, columns=features)\n",
|
||||
"X_test = pd.DataFrame(X_test, columns=features)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate a AutoMLConfig object. This defines the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**max_time_sec**|Time limit in minutes for each iterations|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration Auto ML trains the data with a specific pipeline|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], [n_samples, n_classes]<br>Multi-class targets. An indicator matrix turns on multilabel classification. This should be an array of integers. |\n",
|
||||
"|**X_valid**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y_valid**|(sparse) array-like, shape = [n_samples, ], [n_samples, n_classes]|\n",
|
||||
"|**model_explainability**|Indicate to explain each trained pipeline or not |\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder. |"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 200,\n",
|
||||
" iterations = 10,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" X_valid = X_test,\n",
|
||||
" y_valid = y_test,\n",
|
||||
" model_explainability=True,\n",
|
||||
" path=project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"You can call the submit method on the experiment object and pass the run configuration. For Local runs the execution is synchronous. Depending on the data and number of iterations this can run for while.\n",
|
||||
"You will see the currently running iterations printing to the console."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Widget for monitoring runs\n",
|
||||
"\n",
|
||||
"The widget will sit on \"loading\" until the first iteration completed, then you will see an auto-updating graph and table show up. It refreshed once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"NOTE: The widget displays a link at the bottom. This links to a web-ui to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The *get_output* method on automl_classifier returns the best run and the fitted model for the last *fit* invocation. There are overloads on *get_output* that allow you to retrieve the best run and fitted model for *any* logged metric or a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Best Model 's explanation\n",
|
||||
"\n",
|
||||
"Retrieve the explanation from the best_run. And explanation information includes:\n",
|
||||
"\n",
|
||||
"1.\tshap_values: The explanation information generated by shap lib\n",
|
||||
"2.\texpected_values: The expected value of the model applied to set of X_train data.\n",
|
||||
"3.\toverall_summary: The model level feature importance values sorted in descending order\n",
|
||||
"4.\toverall_imp: The feature names sorted in the same order as in overall_summary\n",
|
||||
"5.\tper_class_summary: The class level feature importance values sorted in descending order. Only available for the classification case\n",
|
||||
"6.\tper_class_imp: The feature names sorted in the same order as in per_class_summary. Only available for the classification case"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.train.automl.automlexplainer import retrieve_model_explanation\n",
|
||||
"\n",
|
||||
"shap_values, expected_values, overall_summary, overall_imp, per_class_summary, per_class_imp = \\\n",
|
||||
" retrieve_model_explanation(best_run)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"print(overall_summary)\n",
|
||||
"print(overall_imp)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"print(per_class_summary)\n",
|
||||
"print(per_class_imp)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Beside retrieve the existed model explanation information, explain the model with different train/test data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.train.automl.automlexplainer import explain_model\n",
|
||||
"\n",
|
||||
"shap_values, expected_values, overall_summary, overall_imp, per_class_summary, per_class_imp = \\\n",
|
||||
" explain_model(fitted_model, X_train, X_test)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"print(overall_summary)\n",
|
||||
"print(overall_imp)"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "xif"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "xif"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Explain classification model and visualize the explanation**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the sklearn's [iris dataset](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_iris.html) to showcase how you can use the AutoML Classifier for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you would see\n",
|
||||
"1. Creating an Experiment in an existing Workspace\n",
|
||||
"2. Instantiating AutoMLConfig\n",
|
||||
"3. Training the Model using local compute and explain the model\n",
|
||||
"4. Visualization model's feature importance in widget\n",
|
||||
"5. Explore best model's explanation"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created a <b>Workspace</b>. For AutoML you would need to create an <b>Experiment</b>. An <b>Experiment</b> is a named object in a <b>Workspace</b>, which is used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"import pandas as pd\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# choose a name for experiment\n",
|
||||
"experiment_name = 'automl-model-explanation'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-model-explanation'\n",
|
||||
"\n",
|
||||
"experiment=Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"iris = datasets.load_iris()\n",
|
||||
"y = iris.target\n",
|
||||
"X = iris.data\n",
|
||||
"\n",
|
||||
"features = iris.feature_names\n",
|
||||
"\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"X_train, X_test, y_train, y_test = train_test_split(X,\n",
|
||||
" y,\n",
|
||||
" test_size=0.1,\n",
|
||||
" random_state=100,\n",
|
||||
" stratify=y)\n",
|
||||
"\n",
|
||||
"X_train = pd.DataFrame(X_train, columns=features)\n",
|
||||
"X_test = pd.DataFrame(X_test, columns=features)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate a AutoMLConfig object. This defines the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**max_time_sec**|Time limit in minutes for each iterations|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration Auto ML trains the data with a specific pipeline|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**X_valid**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y_valid**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**model_explainability**|Indicate to explain each trained pipeline or not |\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder. |"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 200,\n",
|
||||
" iterations = 10,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" X_valid = X_test,\n",
|
||||
" y_valid = y_test,\n",
|
||||
" model_explainability=True,\n",
|
||||
" path=project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"You can call the submit method on the experiment object and pass the run configuration. For Local runs the execution is synchronous. Depending on the data and number of iterations this can run for while.\n",
|
||||
"You will see the currently running iterations printing to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Widget for monitoring runs\n",
|
||||
"\n",
|
||||
"The widget will sit on \"loading\" until the first iteration completed, then you will see an auto-updating graph and table show up. It refreshed once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"NOTE: The widget displays a link at the bottom. This links to a web-ui to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The *get_output* method on automl_classifier returns the best run and the fitted model for the last *fit* invocation. There are overloads on *get_output* that allow you to retrieve the best run and fitted model for *any* logged metric or a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Best Model 's explanation\n",
|
||||
"\n",
|
||||
"Retrieve the explanation from the best_run. And explanation information includes:\n",
|
||||
"\n",
|
||||
"1.\tshap_values: The explanation information generated by shap lib\n",
|
||||
"2.\texpected_values: The expected value of the model applied to set of X_train data.\n",
|
||||
"3.\toverall_summary: The model level feature importance values sorted in descending order\n",
|
||||
"4.\toverall_imp: The feature names sorted in the same order as in overall_summary\n",
|
||||
"5.\tper_class_summary: The class level feature importance values sorted in descending order. Only available for the classification case\n",
|
||||
"6.\tper_class_imp: The feature names sorted in the same order as in per_class_summary. Only available for the classification case\n",
|
||||
"\n",
|
||||
"Note:- The **retrieve_model_explanation()** API only works in case AutoML has been configured with **'model_explainability'** flag set to **True**. "
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.train.automl.automlexplainer import retrieve_model_explanation\n",
|
||||
"\n",
|
||||
"shap_values, expected_values, overall_summary, overall_imp, per_class_summary, per_class_imp = \\\n",
|
||||
" retrieve_model_explanation(best_run)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"print(overall_summary)\n",
|
||||
"print(overall_imp)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"print(per_class_summary)\n",
|
||||
"print(per_class_imp)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Beside retrieve the existed model explanation information, explain the model with different train/test data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.train.automl.automlexplainer import explain_model\n",
|
||||
"\n",
|
||||
"shap_values, expected_values, overall_summary, overall_imp, per_class_summary, per_class_imp = \\\n",
|
||||
" explain_model(fitted_model, X_train, X_test, features=features)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"print(overall_summary)\n",
|
||||
"print(overall_imp)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,9 @@
|
||||
name: auto-ml-model-explanation
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
- azureml-explain-model
|
||||
@@ -0,0 +1,800 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "v-rasav"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.7.1"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Regression with Deployment using Hardware Performance Dataset**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n",
|
||||
"1. [Acknowledgements](#Acknowledgements)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the Predicting Compressive Strength of Concrete Dataset to showcase how you can use AutoML for a regression problem. The regression goal is to predict the compressive strength of concrete based off of different ingredient combinations and the quantities of those ingredients.\n",
|
||||
"\n",
|
||||
"If you are using an Azure Machine Learning Notebook VM, you are all set. Otherwise, go through the [configuration](../../../configuration.ipynb) notebook first if you haven't already to establish your connection to the AzureML Workspace. \n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Test the best fitted model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"As part of the setup you have already created an Azure ML Workspace object. For AutoML you will need to create an Experiment object, which is a named object in a Workspace used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"import os\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"import azureml.dataprep as dprep\n",
|
||||
" \n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-regression-concrete'\n",
|
||||
"project_folder = './sample_projects/automl-regression-concrete'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Create or Attach existing AmlCompute\n",
|
||||
"You will need to create a compute target for your AutoML run. In this tutorial, you create AmlCompute as your training compute resource.\n",
|
||||
"#### Creation of AmlCompute takes approximately 5 minutes. \n",
|
||||
"If the AmlCompute with that name is already in your workspace this code will skip the creation process.\n",
|
||||
"As with other Azure services, there are limits on certain resources (e.g. AmlCompute) associated with the Azure Machine Learning service. Please read this article on the default limits and how to request more quota."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.compute import AmlCompute\n",
|
||||
"from azureml.core.compute import ComputeTarget\n",
|
||||
"\n",
|
||||
"# Choose a name for your cluster.\n",
|
||||
"amlcompute_cluster_name = \"automlcl\"\n",
|
||||
"\n",
|
||||
"found = False\n",
|
||||
"# Check if this compute target already exists in the workspace.\n",
|
||||
"cts = ws.compute_targets\n",
|
||||
"if amlcompute_cluster_name in cts and cts[amlcompute_cluster_name].type == 'AmlCompute':\n",
|
||||
" found = True\n",
|
||||
" print('Found existing compute target.')\n",
|
||||
" compute_target = cts[amlcompute_cluster_name]\n",
|
||||
" \n",
|
||||
"if not found:\n",
|
||||
" print('Creating a new compute target...')\n",
|
||||
" provisioning_config = AmlCompute.provisioning_configuration(vm_size = \"STANDARD_D2_V2\", # for GPU, use \"STANDARD_NC6\"\n",
|
||||
" #vm_priority = 'lowpriority', # optional\n",
|
||||
" max_nodes = 6)\n",
|
||||
"\n",
|
||||
" # Create the cluster.\n",
|
||||
" compute_target = ComputeTarget.create(ws, amlcompute_cluster_name, provisioning_config)\n",
|
||||
" \n",
|
||||
" # Can poll for a minimum number of nodes and for a specific timeout.\n",
|
||||
" # If no min_node_count is provided, it will use the scale settings for the cluster.\n",
|
||||
" compute_target.wait_for_completion(show_output = True, min_node_count = None, timeout_in_minutes = 20)\n",
|
||||
" \n",
|
||||
" # For a more detailed view of current AmlCompute status, use get_status()."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Data\n",
|
||||
"\n",
|
||||
"Here load the data in the get_data script to be utilized in azure compute. To do this, first load all the necessary libraries and dependencies to set up paths for the data and to create the conda_run_config."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"if not os.path.isdir('data'):\n",
|
||||
" os.mkdir('data')\n",
|
||||
" \n",
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to AmlCompute\n",
|
||||
"conda_run_config.target = compute_target\n",
|
||||
"conda_run_config.environment.docker.enabled = True\n",
|
||||
"conda_run_config.environment.docker.base_image = azureml.core.runconfig.DEFAULT_CPU_IMAGE\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Load Data\n",
|
||||
"\n",
|
||||
"Here create the script to be run in azure compute for loading the data, load the concrete strength dataset into the X and y variables. Next, split the data using train_test_split and return X_train and y_train for training the model. Finally, return X_train and y_train for training the model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"data = \"https://automlsamplenotebookdata.blob.core.windows.net/automl-sample-notebook-data/compresive_strength_concrete.csv\"\n",
|
||||
"dflow = dprep.auto_read_file(data)\n",
|
||||
"dflow.get_profile()\n",
|
||||
"X = dflow.drop_columns(columns=['CONCRETE'])\n",
|
||||
"y = dflow.keep_columns(columns=['CONCRETE'], validate_column_exists=True)\n",
|
||||
"X_train, X_test = X.random_split(percentage=0.8, seed=223)\n",
|
||||
"y_train, y_test = y.random_split(percentage=0.8, seed=223) \n",
|
||||
"dflow.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Regression supports the following primary metrics: <br><i>spearman_correlation</i><br><i>normalized_root_mean_squared_error</i><br><i>r2_score</i><br><i>normalized_mean_absolute_error</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], targets values.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|\n",
|
||||
"\n",
|
||||
"**_You can find more information about primary metrics_** [here](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#primary-metric)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"##### If you would like to see even better results increase \"iteration_time_out minutes\" to 10+ mins and increase \"iterations\" to a minimum of 30"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 5,\n",
|
||||
" \"iterations\": 10,\n",
|
||||
" \"n_cross_validations\": 5,\n",
|
||||
" \"primary_metric\": 'spearman_correlation',\n",
|
||||
" \"preprocess\": True,\n",
|
||||
" \"max_concurrent_iterations\": 5,\n",
|
||||
" \"verbosity\": logging.INFO,\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task = 'regression',\n",
|
||||
" debug_log = 'automl.log',\n",
|
||||
" path = project_folder,\n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" X = X_train,\n",
|
||||
" y = y_train,\n",
|
||||
" **automl_settings\n",
|
||||
" )"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results\n",
|
||||
"Widget for Monitoring Runs\n",
|
||||
"The widget will first report a \u00e2\u20ac\u0153loading status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"Note: The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(remote_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Retrieve the Best Model\n",
|
||||
"Below we select the best pipeline from our iterations. The get_output method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on get_output allow you to retrieve the best run and fitted model for any logged metric or for a particular iteration."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest root_mean_squared_error value (which turned out to be the same as the one with largest spearman_correlation value):"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"lookup_metric = \"root_mean_squared_error\"\n",
|
||||
"best_run, fitted_model = remote_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = remote_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Register the Fitted Model for Deployment\n",
|
||||
"If neither metric nor iteration are specified in the register_model call, the iteration with the best primary metric is registered."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"model = remote_run.register_model(description = description, tags = tags)\n",
|
||||
"\n",
|
||||
"print(remote_run.model_id) # This will be written to the script file later in the notebook."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create Scoring Script\n",
|
||||
"The scoring script is required to generate the image for deployment. It contains the code to do the predictions on input data."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%%writefile score.py\n",
|
||||
"import pickle\n",
|
||||
"import json\n",
|
||||
"import numpy\n",
|
||||
"import azureml.train.automl\n",
|
||||
"from sklearn.externals import joblib\n",
|
||||
"from azureml.core.model import Model\n",
|
||||
"\n",
|
||||
"def init():\n",
|
||||
" global model\n",
|
||||
" model_path = Model.get_model_path(model_name = '<<modelid>>') # this name is model.id of model that we want to deploy\n",
|
||||
" # deserialize the model file back into a sklearn model\n",
|
||||
" model = joblib.load(model_path)\n",
|
||||
"\n",
|
||||
"def run(rawdata):\n",
|
||||
" try:\n",
|
||||
" data = json.loads(rawdata)['data']\n",
|
||||
" data = numpy.array(data)\n",
|
||||
" result = model.predict(data)\n",
|
||||
" except Exception as e:\n",
|
||||
" result = str(e)\n",
|
||||
" return json.dumps({\"error\": result})\n",
|
||||
" return json.dumps({\"result\":result.tolist()})"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a YAML File for the Environment"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"To ensure the fit results are consistent with the training results, the SDK dependency versions need to be the same as the environment that trains the model. Details about retrieving the versions can be found in notebook [12.auto-ml-retrieve-the-training-sdk-versions](12.auto-ml-retrieve-the-training-sdk-versions.ipynb)."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"dependencies = remote_run.get_run_sdk_dependencies(iteration = 1)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"for p in ['azureml-train-automl', 'azureml-sdk', 'azureml-core']:\n",
|
||||
" print('{}\\t{}'.format(p, dependencies[p]))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"myenv = CondaDependencies.create(conda_packages=['numpy','scikit-learn'], pip_packages=['azureml-sdk[automl]'])\n",
|
||||
"\n",
|
||||
"conda_env_file_name = 'myenv.yml'\n",
|
||||
"myenv.save_to_file('.', conda_env_file_name)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Substitute the actual version number in the environment file.\n",
|
||||
"# This is not strictly needed in this notebook because the model should have been generated using the current SDK version.\n",
|
||||
"# However, we include this in case this code is used on an experiment from a previous SDK version.\n",
|
||||
"\n",
|
||||
"with open(conda_env_file_name, 'r') as cefr:\n",
|
||||
" content = cefr.read()\n",
|
||||
"\n",
|
||||
"with open(conda_env_file_name, 'w') as cefw:\n",
|
||||
" cefw.write(content.replace(azureml.core.VERSION, dependencies['azureml-sdk']))\n",
|
||||
"\n",
|
||||
"# Substitute the actual model id in the script file.\n",
|
||||
"\n",
|
||||
"script_file_name = 'score.py'\n",
|
||||
"\n",
|
||||
"with open(script_file_name, 'r') as cefr:\n",
|
||||
" content = cefr.read()\n",
|
||||
"\n",
|
||||
"with open(script_file_name, 'w') as cefw:\n",
|
||||
" cefw.write(content.replace('<<modelid>>', remote_run.model_id))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a Container Image\n",
|
||||
"\n",
|
||||
"Next use Azure Container Instances for deploying models as a web service for quickly deploying and validating your model\n",
|
||||
"or when testing a model that is under development."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.image import Image, ContainerImage\n",
|
||||
"\n",
|
||||
"image_config = ContainerImage.image_configuration(runtime= \"python\",\n",
|
||||
" execution_script = script_file_name,\n",
|
||||
" conda_file = conda_env_file_name,\n",
|
||||
" tags = {'area': \"digits\", 'type': \"automl_regression\"},\n",
|
||||
" description = \"Image for automl regression sample\")\n",
|
||||
"\n",
|
||||
"image = Image.create(name = \"automlsampleimage\",\n",
|
||||
" # this is the model object \n",
|
||||
" models = [model],\n",
|
||||
" image_config = image_config, \n",
|
||||
" workspace = ws)\n",
|
||||
"\n",
|
||||
"image.wait_for_creation(show_output = True)\n",
|
||||
"\n",
|
||||
"if image.creation_state == 'Failed':\n",
|
||||
" print(\"Image build log at: \" + image.image_build_log_uri)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Deploy the Image as a Web Service on Azure Container Instance\n",
|
||||
"\n",
|
||||
"Deploy an image that contains the model and other assets needed by the service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import AciWebservice\n",
|
||||
"\n",
|
||||
"aciconfig = AciWebservice.deploy_configuration(cpu_cores = 1, \n",
|
||||
" memory_gb = 1, \n",
|
||||
" tags = {'area': \"digits\", 'type': \"automl_regression\"}, \n",
|
||||
" description = 'sample service for Automl Regression')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import Webservice\n",
|
||||
"\n",
|
||||
"aci_service_name = 'automl-sample-concrete'\n",
|
||||
"print(aci_service_name)\n",
|
||||
"aci_service = Webservice.deploy_from_image(deployment_config = aciconfig,\n",
|
||||
" image = image,\n",
|
||||
" name = aci_service_name,\n",
|
||||
" workspace = ws)\n",
|
||||
"aci_service.wait_for_deployment(True)\n",
|
||||
"print(aci_service.state)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Delete a Web Service\n",
|
||||
"\n",
|
||||
"Deletes the specified web service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#aci_service.delete()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Get Logs from a Deployed Web Service\n",
|
||||
"\n",
|
||||
"Gets logs from a deployed web service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#aci_service.get_logs()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Test\n",
|
||||
"\n",
|
||||
"Now that the model is trained, split the data in the same way the data was split for training (The difference here is the data is being split locally) and then run the test data through the trained model to get the predicted values."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"X_test = X_test.to_pandas_dataframe()\n",
|
||||
"y_test = y_test.to_pandas_dataframe()\n",
|
||||
"y_test = np.array(y_test)\n",
|
||||
"y_test = y_test[:,0]\n",
|
||||
"X_train = X_train.to_pandas_dataframe()\n",
|
||||
"y_train = y_train.to_pandas_dataframe()\n",
|
||||
"y_train = np.array(y_train)\n",
|
||||
"y_train = y_train[:,0]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"##### Predict on training and test set, and calculate residual values."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"y_pred_train = fitted_model.predict(X_train)\n",
|
||||
"y_residual_train = y_train - y_pred_train\n",
|
||||
"\n",
|
||||
"y_pred_test = fitted_model.predict(X_test)\n",
|
||||
"y_residual_test = y_test - y_pred_test\n",
|
||||
"\n",
|
||||
"y_residual_train.shape"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%matplotlib inline\n",
|
||||
"from sklearn.metrics import mean_squared_error, r2_score\n",
|
||||
"\n",
|
||||
"# Set up a multi-plot chart.\n",
|
||||
"f, (a0, a1) = plt.subplots(1, 2, gridspec_kw = {'width_ratios':[1, 1], 'wspace':0, 'hspace': 0})\n",
|
||||
"f.suptitle('Regression Residual Values', fontsize = 18)\n",
|
||||
"f.set_figheight(6)\n",
|
||||
"f.set_figwidth(16)\n",
|
||||
"\n",
|
||||
"# Plot residual values of training set.\n",
|
||||
"a0.axis([0, 360, -200, 200])\n",
|
||||
"a0.plot(y_residual_train, 'bo', alpha = 0.5)\n",
|
||||
"a0.plot([-10,360],[0,0], 'r-', lw = 3)\n",
|
||||
"a0.text(16,170,'RMSE = {0:.2f}'.format(np.sqrt(mean_squared_error(y_train, y_pred_train))), fontsize = 12)\n",
|
||||
"a0.text(16,140,'R2 score = {0:.2f}'.format(r2_score(y_train, y_pred_train)), fontsize = 12)\n",
|
||||
"a0.set_xlabel('Training samples', fontsize = 12)\n",
|
||||
"a0.set_ylabel('Residual Values', fontsize = 12)\n",
|
||||
"\n",
|
||||
"# Plot a histogram.\n",
|
||||
"#a0.hist(y_residual_train, orientation = 'horizontal', color = ['b']*len(y_residual_train), bins = 10, histtype = 'step')\n",
|
||||
"#a0.hist(y_residual_train, orientation = 'horizontal', color = ['b']*len(y_residual_train), alpha = 0.2, bins = 10)\n",
|
||||
"\n",
|
||||
"# Plot residual values of test set.\n",
|
||||
"a1.axis([0, 90, -200, 200])\n",
|
||||
"a1.plot(y_residual_test, 'bo', alpha = 0.5)\n",
|
||||
"a1.plot([-10,360],[0,0], 'r-', lw = 3)\n",
|
||||
"a1.text(5,170,'RMSE = {0:.2f}'.format(np.sqrt(mean_squared_error(y_test, y_pred_test))), fontsize = 12)\n",
|
||||
"a1.text(5,140,'R2 score = {0:.2f}'.format(r2_score(y_test, y_pred_test)), fontsize = 12)\n",
|
||||
"a1.set_xlabel('Test samples', fontsize = 12)\n",
|
||||
"a1.set_yticklabels([])\n",
|
||||
"\n",
|
||||
"# Plot a histogram.\n",
|
||||
"#a1.hist(y_residual_test, orientation = 'horizontal', color = ['b']*len(y_residual_test), bins = 10, histtype = 'step')\n",
|
||||
"#a1.hist(y_residual_test, orientation = 'horizontal', color = ['b']*len(y_residual_test), alpha = 0.2, bins = 10)\n",
|
||||
"\n",
|
||||
"plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Calculate metrics for the prediction\n",
|
||||
"\n",
|
||||
"Now visualize the data on a scatter plot to show what our truth (actual) values are compared to the predicted values \n",
|
||||
"from the trained model that was returned."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Plot outputs\n",
|
||||
"%matplotlib notebook\n",
|
||||
"test_pred = plt.scatter(y_test, y_pred_test, color='b')\n",
|
||||
"test_test = plt.scatter(y_test, y_test, color='g')\n",
|
||||
"plt.legend((test_pred, test_test), ('prediction', 'truth'), loc='upper left', fontsize=8)\n",
|
||||
"plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Acknowledgements\n",
|
||||
"\n",
|
||||
"This Predicting Compressive Strength of Concrete Dataset is made available under the CC0 1.0 Universal (CC0 1.0)\n",
|
||||
"Public Domain Dedication License: https://creativecommons.org/publicdomain/zero/1.0/. Any rights in individual contents of the database are licensed under the CC0 1.0 Universal (CC0 1.0)\n",
|
||||
"Public Domain Dedication License: https://creativecommons.org/publicdomain/zero/1.0/ . The dataset itself can be found here: https://www.kaggle.com/pavanraj159/concrete-compressive-strength-data-set and http://archive.ics.uci.edu/ml/datasets/concrete+compressive+strength\n",
|
||||
"\n",
|
||||
"I-Cheng Yeh, \"Modeling of strength of high performance concrete using artificial neural networks,\" Cement and Concrete Research, Vol. 28, No. 12, pp. 1797-1808 (1998). \n",
|
||||
"\n",
|
||||
"Dua, D. and Graff, C. (2019). UCI Machine Learning Repository [http://archive.ics.uci.edu/ml]. Irvine, CA: University of California, School of Information and Computer Science."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-regression-concrete-strength
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -0,0 +1,800 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "v-rasav"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.7.1"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Regression with Deployment using Hardware Performance Dataset**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n",
|
||||
"1. [Acknowledgements](#Acknowledgements)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the Hardware Performance Dataset to showcase how you can use AutoML for a simple regression problem. The Regression goal is to predict the performance of certain combinations of hardware parts.\n",
|
||||
"\n",
|
||||
"If you are using an Azure Machine Learning Notebook VM, you are all set. Otherwise, go through the [configuration](../../../configuration.ipynb) notebook first if you haven't already to establish your connection to the AzureML Workspace. \n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Test the best fitted model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"As part of the setup you have already created an Azure ML Workspace object. For AutoML you will need to create an Experiment object, which is a named object in a Workspace used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"import os\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"import azureml.dataprep as dprep\n",
|
||||
" \n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-regression-hardware'\n",
|
||||
"project_folder = './sample_projects/automl-remote-regression'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Create or Attach existing AmlCompute\n",
|
||||
"You will need to create a compute target for your AutoML run. In this tutorial, you create AmlCompute as your training compute resource.\n",
|
||||
"#### Creation of AmlCompute takes approximately 5 minutes. \n",
|
||||
"If the AmlCompute with that name is already in your workspace this code will skip the creation process.\n",
|
||||
"As with other Azure services, there are limits on certain resources (e.g. AmlCompute) associated with the Azure Machine Learning service. Please read this article on the default limits and how to request more quota."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.compute import AmlCompute\n",
|
||||
"from azureml.core.compute import ComputeTarget\n",
|
||||
"\n",
|
||||
"# Choose a name for your cluster.\n",
|
||||
"amlcompute_cluster_name = \"automlcl\"\n",
|
||||
"\n",
|
||||
"found = False\n",
|
||||
"# Check if this compute target already exists in the workspace.\n",
|
||||
"cts = ws.compute_targets\n",
|
||||
"if amlcompute_cluster_name in cts and cts[amlcompute_cluster_name].type == 'AmlCompute':\n",
|
||||
" found = True\n",
|
||||
" print('Found existing compute target.')\n",
|
||||
" compute_target = cts[amlcompute_cluster_name]\n",
|
||||
" \n",
|
||||
"if not found:\n",
|
||||
" print('Creating a new compute target...')\n",
|
||||
" provisioning_config = AmlCompute.provisioning_configuration(vm_size = \"STANDARD_D2_V2\", # for GPU, use \"STANDARD_NC6\"\n",
|
||||
" #vm_priority = 'lowpriority', # optional\n",
|
||||
" max_nodes = 6)\n",
|
||||
"\n",
|
||||
" # Create the cluster.\n",
|
||||
" compute_target = ComputeTarget.create(ws, amlcompute_cluster_name, provisioning_config)\n",
|
||||
" \n",
|
||||
" # Can poll for a minimum number of nodes and for a specific timeout.\n",
|
||||
" # If no min_node_count is provided, it will use the scale settings for the cluster.\n",
|
||||
" compute_target.wait_for_completion(show_output = True, min_node_count = None, timeout_in_minutes = 20)\n",
|
||||
" \n",
|
||||
" # For a more detailed view of current AmlCompute status, use get_status()."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Data\n",
|
||||
"\n",
|
||||
"Here load the data in the get_data script to be utilized in azure compute. To do this, first load all the necessary libraries and dependencies to set up paths for the data and to create the conda_run_config."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"if not os.path.isdir('data'):\n",
|
||||
" os.mkdir('data')\n",
|
||||
" \n",
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to AmlCompute\n",
|
||||
"conda_run_config.target = compute_target\n",
|
||||
"conda_run_config.environment.docker.enabled = True\n",
|
||||
"conda_run_config.environment.docker.base_image = azureml.core.runconfig.DEFAULT_CPU_IMAGE\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Load Data\n",
|
||||
"\n",
|
||||
"Here create the script to be run in azure compute for loading the data, load the hardware dataset into the X and y variables. Next split the data using train_test_split and return X_train and y_train for training the model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"data = \"https://automlsamplenotebookdata.blob.core.windows.net/automl-sample-notebook-data/machineData.csv\"\n",
|
||||
"dflow = dprep.auto_read_file(data)\n",
|
||||
"dflow.get_profile()\n",
|
||||
"X = dflow.drop_columns(columns=['ERP'])\n",
|
||||
"y = dflow.keep_columns(columns=['ERP'], validate_column_exists=True)\n",
|
||||
"X_train, X_test = X.random_split(percentage=0.8, seed=223)\n",
|
||||
"y_train, y_test = y.random_split(percentage=0.8, seed=223) \n",
|
||||
"dflow.head()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Regression supports the following primary metrics: <br><i>spearman_correlation</i><br><i>normalized_root_mean_squared_error</i><br><i>r2_score</i><br><i>normalized_mean_absolute_error</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], targets values.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|\n",
|
||||
"\n",
|
||||
"**_You can find more information about primary metrics_** [here](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#primary-metric)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"##### If you would like to see even better results increase \"iteration_time_out minutes\" to 10+ mins and increase \"iterations\" to a minimum of 30"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 5,\n",
|
||||
" \"iterations\": 10,\n",
|
||||
" \"n_cross_validations\": 5,\n",
|
||||
" \"primary_metric\": 'spearman_correlation',\n",
|
||||
" \"preprocess\": True,\n",
|
||||
" \"max_concurrent_iterations\": 5,\n",
|
||||
" \"verbosity\": logging.INFO,\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task = 'regression',\n",
|
||||
" debug_log = 'automl_errors_20190417.log',\n",
|
||||
" path = project_folder,\n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" X = X_train,\n",
|
||||
" y = y_train,\n",
|
||||
" **automl_settings\n",
|
||||
" )"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config, show_output = False)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Wait until the run finishes.\n",
|
||||
"remote_run.wait_for_completion(show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(remote_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Retrieve the Best Model\n",
|
||||
"Below we select the best pipeline from our iterations. The get_output method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on get_output allow you to retrieve the best run and fitted model for any logged metric or for a particular iteration."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `root_mean_squared_error` value (which turned out to be the same as the one with largest `spearman_correlation` value):"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"lookup_metric = \"root_mean_squared_error\"\n",
|
||||
"best_run, fitted_model = remote_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = remote_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Register the Fitted Model for Deployment\n",
|
||||
"If neither metric nor iteration are specified in the register_model call, the iteration with the best primary metric is registered."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"description = 'AutoML Model'\n",
|
||||
"tags = None\n",
|
||||
"model = remote_run.register_model(description = description, tags = tags)\n",
|
||||
"\n",
|
||||
"print(remote_run.model_id) # This will be written to the script file later in the notebook."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create Scoring Script\n",
|
||||
"The scoring script is required to generate the image for deployment. It contains the code to do the predictions on input data."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%%writefile score.py\n",
|
||||
"import pickle\n",
|
||||
"import json\n",
|
||||
"import numpy\n",
|
||||
"import azureml.train.automl\n",
|
||||
"from sklearn.externals import joblib\n",
|
||||
"from azureml.core.model import Model\n",
|
||||
"\n",
|
||||
"def init():\n",
|
||||
" global model\n",
|
||||
" model_path = Model.get_model_path(model_name = '<<modelid>>') # this name is model.id of model that we want to deploy\n",
|
||||
" # deserialize the model file back into a sklearn model\n",
|
||||
" model = joblib.load(model_path)\n",
|
||||
"\n",
|
||||
"def run(rawdata):\n",
|
||||
" try:\n",
|
||||
" data = json.loads(rawdata)['data']\n",
|
||||
" data = numpy.array(data)\n",
|
||||
" result = model.predict(data)\n",
|
||||
" except Exception as e:\n",
|
||||
" result = str(e)\n",
|
||||
" return json.dumps({\"error\": result})\n",
|
||||
" return json.dumps({\"result\":result.tolist()})"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a YAML File for the Environment"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"To ensure the fit results are consistent with the training results, the SDK dependency versions need to be the same as the environment that trains the model. Details about retrieving the versions can be found in notebook [12.auto-ml-retrieve-the-training-sdk-versions](12.auto-ml-retrieve-the-training-sdk-versions.ipynb)."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"dependencies = remote_run.get_run_sdk_dependencies(iteration = 1)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"for p in ['azureml-train-automl', 'azureml-sdk', 'azureml-core']:\n",
|
||||
" print('{}\\t{}'.format(p, dependencies[p]))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"myenv = CondaDependencies.create(conda_packages=['numpy','scikit-learn'], pip_packages=['azureml-sdk[automl]'])\n",
|
||||
"\n",
|
||||
"conda_env_file_name = 'myenv.yml'\n",
|
||||
"myenv.save_to_file('.', conda_env_file_name)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Substitute the actual version number in the environment file.\n",
|
||||
"# This is not strictly needed in this notebook because the model should have been generated using the current SDK version.\n",
|
||||
"# However, we include this in case this code is used on an experiment from a previous SDK version.\n",
|
||||
"\n",
|
||||
"with open(conda_env_file_name, 'r') as cefr:\n",
|
||||
" content = cefr.read()\n",
|
||||
"\n",
|
||||
"with open(conda_env_file_name, 'w') as cefw:\n",
|
||||
" cefw.write(content.replace(azureml.core.VERSION, dependencies['azureml-sdk']))\n",
|
||||
"\n",
|
||||
"# Substitute the actual model id in the script file.\n",
|
||||
"\n",
|
||||
"script_file_name = 'score.py'\n",
|
||||
"\n",
|
||||
"with open(script_file_name, 'r') as cefr:\n",
|
||||
" content = cefr.read()\n",
|
||||
"\n",
|
||||
"with open(script_file_name, 'w') as cefw:\n",
|
||||
" cefw.write(content.replace('<<modelid>>', remote_run.model_id))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a Container Image\n",
|
||||
"\n",
|
||||
"Next use Azure Container Instances for deploying models as a web service for quickly deploying and validating your model\n",
|
||||
"or when testing a model that is under development."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.image import Image, ContainerImage\n",
|
||||
"\n",
|
||||
"image_config = ContainerImage.image_configuration(runtime= \"python\",\n",
|
||||
" execution_script = script_file_name,\n",
|
||||
" conda_file = conda_env_file_name,\n",
|
||||
" tags = {'area': \"digits\", 'type': \"automl_regression\"},\n",
|
||||
" description = \"Image for automl regression sample\")\n",
|
||||
"\n",
|
||||
"image = Image.create(name = \"automlsampleimage\",\n",
|
||||
" # this is the model object \n",
|
||||
" models = [model],\n",
|
||||
" image_config = image_config, \n",
|
||||
" workspace = ws)\n",
|
||||
"\n",
|
||||
"image.wait_for_creation(show_output = True)\n",
|
||||
"\n",
|
||||
"if image.creation_state == 'Failed':\n",
|
||||
" print(\"Image build log at: \" + image.image_build_log_uri)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Deploy the Image as a Web Service on Azure Container Instance\n",
|
||||
"\n",
|
||||
"Deploy an image that contains the model and other assets needed by the service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import AciWebservice\n",
|
||||
"\n",
|
||||
"aciconfig = AciWebservice.deploy_configuration(cpu_cores = 1, \n",
|
||||
" memory_gb = 1, \n",
|
||||
" tags = {'area': \"digits\", 'type': \"automl_regression\"}, \n",
|
||||
" description = 'sample service for Automl Regression')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import Webservice\n",
|
||||
"\n",
|
||||
"aci_service_name = 'automl-sample-hardware'\n",
|
||||
"print(aci_service_name)\n",
|
||||
"aci_service = Webservice.deploy_from_image(deployment_config = aciconfig,\n",
|
||||
" image = image,\n",
|
||||
" name = aci_service_name,\n",
|
||||
" workspace = ws)\n",
|
||||
"aci_service.wait_for_deployment(True)\n",
|
||||
"print(aci_service.state)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Delete a Web Service\n",
|
||||
"\n",
|
||||
"Deletes the specified web service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#aci_service.delete()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Get Logs from a Deployed Web Service\n",
|
||||
"\n",
|
||||
"Gets logs from a deployed web service."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#aci_service.get_logs()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"Now that the model is trained, split the data in the same way the data was split for training (The difference here is the data is being split locally) and then run the test data through the trained model to get the predicted values."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"X_test = X_test.to_pandas_dataframe()\n",
|
||||
"y_test = y_test.to_pandas_dataframe()\n",
|
||||
"y_test = np.array(y_test)\n",
|
||||
"y_test = y_test[:,0]\n",
|
||||
"X_train = X_train.to_pandas_dataframe()\n",
|
||||
"y_train = y_train.to_pandas_dataframe()\n",
|
||||
"y_train = np.array(y_train)\n",
|
||||
"y_train = y_train[:,0]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"##### Predict on training and test set, and calculate residual values."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"y_pred_train = fitted_model.predict(X_train)\n",
|
||||
"y_residual_train = y_train - y_pred_train\n",
|
||||
"\n",
|
||||
"y_pred_test = fitted_model.predict(X_test)\n",
|
||||
"y_residual_test = y_test - y_pred_test"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Calculate metrics for the prediction\n",
|
||||
"\n",
|
||||
"Now visualize the data on a scatter plot to show what our truth (actual) values are compared to the predicted values \n",
|
||||
"from the trained model that was returned."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%matplotlib inline\n",
|
||||
"from sklearn.metrics import mean_squared_error, r2_score\n",
|
||||
"\n",
|
||||
"# Set up a multi-plot chart.\n",
|
||||
"f, (a0, a1) = plt.subplots(1, 2, gridspec_kw = {'width_ratios':[1, 1], 'wspace':0, 'hspace': 0})\n",
|
||||
"f.suptitle('Regression Residual Values', fontsize = 18)\n",
|
||||
"f.set_figheight(6)\n",
|
||||
"f.set_figwidth(16)\n",
|
||||
"\n",
|
||||
"# Plot residual values of training set.\n",
|
||||
"a0.axis([0, 360, -200, 200])\n",
|
||||
"a0.plot(y_residual_train, 'bo', alpha = 0.5)\n",
|
||||
"a0.plot([-10,360],[0,0], 'r-', lw = 3)\n",
|
||||
"a0.text(16,170,'RMSE = {0:.2f}'.format(np.sqrt(mean_squared_error(y_train, y_pred_train))), fontsize = 12)\n",
|
||||
"a0.text(16,140,'R2 score = {0:.2f}'.format(r2_score(y_train, y_pred_train)),fontsize = 12)\n",
|
||||
"a0.set_xlabel('Training samples', fontsize = 12)\n",
|
||||
"a0.set_ylabel('Residual Values', fontsize = 12)\n",
|
||||
"\n",
|
||||
"# Plot residual values of test set.\n",
|
||||
"a1.axis([0, 90, -200, 200])\n",
|
||||
"a1.plot(y_residual_test, 'bo', alpha = 0.5)\n",
|
||||
"a1.plot([-10,360],[0,0], 'r-', lw = 3)\n",
|
||||
"a1.text(5,170,'RMSE = {0:.2f}'.format(np.sqrt(mean_squared_error(y_test, y_pred_test))), fontsize = 12)\n",
|
||||
"a1.text(5,140,'R2 score = {0:.2f}'.format(r2_score(y_test, y_pred_test)),fontsize = 12)\n",
|
||||
"a1.set_xlabel('Test samples', fontsize = 12)\n",
|
||||
"a1.set_yticklabels([])\n",
|
||||
"\n",
|
||||
"plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%matplotlib notebook\n",
|
||||
"test_pred = plt.scatter(y_test, y_pred_test, color='')\n",
|
||||
"test_test = plt.scatter(y_test, y_test, color='g')\n",
|
||||
"plt.legend((test_pred, test_test), ('prediction', 'truth'), loc='upper left', fontsize=8)\n",
|
||||
"plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Acknowledgements\n",
|
||||
"This Predicting Hardware Performance Dataset is made available under the CC0 1.0 Universal (CC0 1.0) Public Domain Dedication License: https://creativecommons.org/publicdomain/zero/1.0/. Any rights in individual contents of the database are licensed under the CC0 1.0 Universal (CC0 1.0) Public Domain Dedication License: https://creativecommons.org/publicdomain/zero/1.0/ . The dataset itself can be found here: https://www.kaggle.com/faizunnabi/comp-hardware-performance and https://archive.ics.uci.edu/ml/datasets/Computer+Hardware\n",
|
||||
"\n",
|
||||
"_**Citation Found Here**_\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-regression-hardware-performance
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,424 +1,407 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Regression with Local Compute**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [diabetes dataset](http://scikit-learn.org/stable/datasets/index.html#diabetes-dataset) to showcase how you can use AutoML for a simple regression problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Test the best fitted model."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-local-regression'\n",
|
||||
"project_folder = './sample_projects/automl-local-regression'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"This uses scikit-learn's [load_diabetes](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_diabetes.html) method."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Load the diabetes dataset, a well-known built-in small dataset that comes with scikit-learn.\n",
|
||||
"from sklearn.datasets import load_diabetes\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"\n",
|
||||
"X, y = load_diabetes(return_X_y = True)\n",
|
||||
"\n",
|
||||
"columns = ['age', 'gender', 'bmi', 'bp', 's1', 's2', 's3', 's4', 's5', 's6']\n",
|
||||
"\n",
|
||||
"X_train, X_test, y_train, y_test = train_test_split(X, y, test_size = 0.2, random_state = 0)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Regression supports the following primary metrics: <br><i>spearman_correlation</i><br><i>normalized_root_mean_squared_error</i><br><i>r2_score</i><br><i>normalized_mean_absolute_error</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], [n_samples, n_classes]<br>Multi-class targets. An indicator matrix turns on multilabel classification. This should be an array of integers.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'regression',\n",
|
||||
" iteration_timeout_minutes = 10,\n",
|
||||
" iterations = 10,\n",
|
||||
" primary_metric = 'spearman_correlation',\n",
|
||||
" n_cross_validations = 5,\n",
|
||||
" debug_log = 'automl.log',\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" path = project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `root_mean_squared_error` value (which turned out to be the same as the one with largest `spearman_correlation` value):"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"lookup_metric = \"root_mean_squared_error\"\n",
|
||||
"best_run, fitted_model = local_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = local_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Predict on training and test set, and calculate residual values."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"y_pred_train = fitted_model.predict(X_train)\n",
|
||||
"y_residual_train = y_train - y_pred_train\n",
|
||||
"\n",
|
||||
"y_pred_test = fitted_model.predict(X_test)\n",
|
||||
"y_residual_test = y_test - y_pred_test"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"%matplotlib inline\n",
|
||||
"import matplotlib.pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"from sklearn import datasets\n",
|
||||
"from sklearn.metrics import mean_squared_error, r2_score\n",
|
||||
"\n",
|
||||
"# Set up a multi-plot chart.\n",
|
||||
"f, (a0, a1) = plt.subplots(1, 2, gridspec_kw = {'width_ratios':[1, 1], 'wspace':0, 'hspace': 0})\n",
|
||||
"f.suptitle('Regression Residual Values', fontsize = 18)\n",
|
||||
"f.set_figheight(6)\n",
|
||||
"f.set_figwidth(16)\n",
|
||||
"\n",
|
||||
"# Plot residual values of training set.\n",
|
||||
"a0.axis([0, 360, -200, 200])\n",
|
||||
"a0.plot(y_residual_train, 'bo', alpha = 0.5)\n",
|
||||
"a0.plot([-10,360],[0,0], 'r-', lw = 3)\n",
|
||||
"a0.text(16,170,'RMSE = {0:.2f}'.format(np.sqrt(mean_squared_error(y_train, y_pred_train))), fontsize = 12)\n",
|
||||
"a0.text(16,140,'R2 score = {0:.2f}'.format(r2_score(y_train, y_pred_train)), fontsize = 12)\n",
|
||||
"a0.set_xlabel('Training samples', fontsize = 12)\n",
|
||||
"a0.set_ylabel('Residual Values', fontsize = 12)\n",
|
||||
"\n",
|
||||
"# Plot a histogram.\n",
|
||||
"a0.hist(y_residual_train, orientation = 'horizontal', color = 'b', bins = 10, histtype = 'step');\n",
|
||||
"a0.hist(y_residual_train, orientation = 'horizontal', color = 'b', alpha = 0.2, bins = 10);\n",
|
||||
"\n",
|
||||
"# Plot residual values of test set.\n",
|
||||
"a1.axis([0, 90, -200, 200])\n",
|
||||
"a1.plot(y_residual_test, 'bo', alpha = 0.5)\n",
|
||||
"a1.plot([-10,360],[0,0], 'r-', lw = 3)\n",
|
||||
"a1.text(5,170,'RMSE = {0:.2f}'.format(np.sqrt(mean_squared_error(y_test, y_pred_test))), fontsize = 12)\n",
|
||||
"a1.text(5,140,'R2 score = {0:.2f}'.format(r2_score(y_test, y_pred_test)), fontsize = 12)\n",
|
||||
"a1.set_xlabel('Test samples', fontsize = 12)\n",
|
||||
"a1.set_yticklabels([])\n",
|
||||
"\n",
|
||||
"# Plot a histogram.\n",
|
||||
"a1.hist(y_residual_test, orientation = 'horizontal', color = 'b', bins = 10, histtype = 'step')\n",
|
||||
"a1.hist(y_residual_test, orientation = 'horizontal', color = 'b', alpha = 0.2, bins = 10)\n",
|
||||
"\n",
|
||||
"plt.show()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Regression with Local Compute**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [diabetes dataset](http://scikit-learn.org/stable/datasets/index.html#diabetes-dataset) to showcase how you can use AutoML for a simple regression problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"3. Train the model using local compute.\n",
|
||||
"4. Explore the results.\n",
|
||||
"5. Test the best fitted model."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-local-regression'\n",
|
||||
"project_folder = './sample_projects/automl-local-regression'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"This uses scikit-learn's [load_diabetes](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_diabetes.html) method."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Load the diabetes dataset, a well-known built-in small dataset that comes with scikit-learn.\n",
|
||||
"from sklearn.datasets import load_diabetes\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"\n",
|
||||
"X, y = load_diabetes(return_X_y = True)\n",
|
||||
"\n",
|
||||
"columns = ['age', 'gender', 'bmi', 'bp', 's1', 's2', 's3', 's4', 's5', 's6']\n",
|
||||
"\n",
|
||||
"X_train, X_test, y_train, y_test = train_test_split(X, y, test_size = 0.2, random_state = 0)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Regression supports the following primary metrics: <br><i>spearman_correlation</i><br><i>normalized_root_mean_squared_error</i><br><i>r2_score</i><br><i>normalized_mean_absolute_error</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], targets values.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'regression',\n",
|
||||
" iteration_timeout_minutes = 10,\n",
|
||||
" iterations = 10,\n",
|
||||
" primary_metric = 'spearman_correlation',\n",
|
||||
" n_cross_validations = 5,\n",
|
||||
" debug_log = 'automl.log',\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" path = project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model that has the smallest `root_mean_squared_error` value (which turned out to be the same as the one with largest `spearman_correlation` value):"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"lookup_metric = \"root_mean_squared_error\"\n",
|
||||
"best_run, fitted_model = local_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = local_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Predict on training and test set, and calculate residual values."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"y_pred_train = fitted_model.predict(X_train)\n",
|
||||
"y_residual_train = y_train - y_pred_train\n",
|
||||
"\n",
|
||||
"y_pred_test = fitted_model.predict(X_test)\n",
|
||||
"y_residual_test = y_test - y_pred_test"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%matplotlib inline\n",
|
||||
"from sklearn.metrics import mean_squared_error, r2_score\n",
|
||||
"\n",
|
||||
"# Set up a multi-plot chart.\n",
|
||||
"f, (a0, a1) = plt.subplots(1, 2, gridspec_kw = {'width_ratios':[1, 1], 'wspace':0, 'hspace': 0})\n",
|
||||
"f.suptitle('Regression Residual Values', fontsize = 18)\n",
|
||||
"f.set_figheight(6)\n",
|
||||
"f.set_figwidth(16)\n",
|
||||
"\n",
|
||||
"# Plot residual values of training set.\n",
|
||||
"a0.axis([0, 360, -200, 200])\n",
|
||||
"a0.plot(y_residual_train, 'bo', alpha = 0.5)\n",
|
||||
"a0.plot([-10,360],[0,0], 'r-', lw = 3)\n",
|
||||
"a0.text(16,170,'RMSE = {0:.2f}'.format(np.sqrt(mean_squared_error(y_train, y_pred_train))), fontsize = 12)\n",
|
||||
"a0.text(16,140,'R2 score = {0:.2f}'.format(r2_score(y_train, y_pred_train)), fontsize = 12)\n",
|
||||
"a0.set_xlabel('Training samples', fontsize = 12)\n",
|
||||
"a0.set_ylabel('Residual Values', fontsize = 12)\n",
|
||||
"\n",
|
||||
"# Plot a histogram.\n",
|
||||
"a0.hist(y_residual_train, orientation = 'horizontal', color = 'b', bins = 10, histtype = 'step')\n",
|
||||
"a0.hist(y_residual_train, orientation = 'horizontal', color = 'b', alpha = 0.2, bins = 10)\n",
|
||||
"\n",
|
||||
"# Plot residual values of test set.\n",
|
||||
"a1.axis([0, 90, -200, 200])\n",
|
||||
"a1.plot(y_residual_test, 'bo', alpha = 0.5)\n",
|
||||
"a1.plot([-10,360],[0,0], 'r-', lw = 3)\n",
|
||||
"a1.text(5,170,'RMSE = {0:.2f}'.format(np.sqrt(mean_squared_error(y_test, y_pred_test))), fontsize = 12)\n",
|
||||
"a1.text(5,140,'R2 score = {0:.2f}'.format(r2_score(y_test, y_pred_test)), fontsize = 12)\n",
|
||||
"a1.set_xlabel('Test samples', fontsize = 12)\n",
|
||||
"a1.set_yticklabels([])\n",
|
||||
"\n",
|
||||
"# Plot a histogram.\n",
|
||||
"a1.hist(y_residual_test, orientation = 'horizontal', color = 'b', bins = 10, histtype = 'step')\n",
|
||||
"a1.hist(y_residual_test, orientation = 'horizontal', color = 'b', alpha = 0.2, bins = 10)\n",
|
||||
"\n",
|
||||
"plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,9 @@
|
||||
name: auto-ml-regression
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
- paramiko<2.5.0
|
||||
@@ -0,0 +1,555 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Remote Execution using AmlCompute**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you would see\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Create or Attach existing AmlCompute to a workspace.\n",
|
||||
"3. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"4. Train the model using AmlCompute\n",
|
||||
"5. Explore the results.\n",
|
||||
"6. Test the best fitted model.\n",
|
||||
"\n",
|
||||
"In addition this notebook showcases the following features\n",
|
||||
"- **Parallel** executions for iterations\n",
|
||||
"- **Asynchronous** tracking of progress\n",
|
||||
"- **Cancellation** of individual iterations or the entire run\n",
|
||||
"- Retrieving models for any iteration or logged metric\n",
|
||||
"- Specifying AutoML settings as `**kwargs`"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import csv\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the run history container in the workspace.\n",
|
||||
"experiment_name = 'automl-remote-amlcompute'\n",
|
||||
"project_folder = './project'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create or Attach existing AmlCompute\n",
|
||||
"You will need to create a [compute target](https://docs.microsoft.com/azure/machine-learning/service/concept-azure-machine-learning-architecture#compute-target) for your AutoML run. In this tutorial, you create `AmlCompute` as your training compute resource.\n",
|
||||
"\n",
|
||||
"**Creation of AmlCompute takes approximately 5 minutes.** If the AmlCompute with that name is already in your workspace this code will skip the creation process.\n",
|
||||
"\n",
|
||||
"As with other Azure services, there are limits on certain resources (e.g. AmlCompute) associated with the Azure Machine Learning service. Please read [this article](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-quotas) on the default limits and how to request more quota."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.compute import AmlCompute\n",
|
||||
"from azureml.core.compute import ComputeTarget\n",
|
||||
"\n",
|
||||
"# Choose a name for your cluster.\n",
|
||||
"amlcompute_cluster_name = \"cpu-cluster\"\n",
|
||||
"\n",
|
||||
"found = False\n",
|
||||
"# Check if this compute target already exists in the workspace.\n",
|
||||
"cts = ws.compute_targets\n",
|
||||
"if amlcompute_cluster_name in cts and cts[amlcompute_cluster_name].type == 'AmlCompute':\n",
|
||||
" found = True\n",
|
||||
" print('Found existing compute target.')\n",
|
||||
" compute_target = cts[amlcompute_cluster_name]\n",
|
||||
"\n",
|
||||
"if not found:\n",
|
||||
" print('Creating a new compute target...')\n",
|
||||
" provisioning_config = AmlCompute.provisioning_configuration(vm_size = \"STANDARD_D2_V2\", # for GPU, use \"STANDARD_NC6\"\n",
|
||||
" #vm_priority = 'lowpriority', # optional\n",
|
||||
" max_nodes = 6)\n",
|
||||
"\n",
|
||||
" # Create the cluster.\\n\",\n",
|
||||
" compute_target = ComputeTarget.create(ws, amlcompute_cluster_name, provisioning_config)\n",
|
||||
"\n",
|
||||
" # Can poll for a minimum number of nodes and for a specific timeout.\n",
|
||||
" # If no min_node_count is provided, it will use the scale settings for the cluster.\n",
|
||||
" compute_target.wait_for_completion(show_output = True, min_node_count = None, timeout_in_minutes = 20)\n",
|
||||
"\n",
|
||||
" # For a more detailed view of current AmlCompute status, use get_status()."
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"For remote executions, you need to make the data accessible from the remote compute.\n",
|
||||
"This can be done by uploading the data to DataStore.\n",
|
||||
"In this example, we upload scikit-learn's [load_digits](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html) data."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"data_train = datasets.load_digits()\n",
|
||||
"\n",
|
||||
"if not os.path.isdir('data'):\n",
|
||||
" os.mkdir('data')\n",
|
||||
" \n",
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)\n",
|
||||
" \n",
|
||||
"pd.DataFrame(data_train.data).to_csv(\"data/X_train.tsv\", index=False, header=False, quoting=csv.QUOTE_ALL, sep=\"\\t\")\n",
|
||||
"pd.DataFrame(data_train.target).to_csv(\"data/y_train.tsv\", index=False, header=False, sep=\"\\t\")\n",
|
||||
"\n",
|
||||
"ds = ws.get_default_datastore()\n",
|
||||
"ds.upload(src_dir='./data', target_path='bai_data', overwrite=True, show_progress=True)\n",
|
||||
"\n",
|
||||
"from azureml.core.runconfig import DataReferenceConfiguration\n",
|
||||
"dr = DataReferenceConfiguration(datastore_name=ds.name, \n",
|
||||
" path_on_datastore='bai_data', \n",
|
||||
" path_on_compute='/tmp/azureml_runs',\n",
|
||||
" mode='download', # download files from datastore to compute target\n",
|
||||
" overwrite=False)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to AmlCompute\n",
|
||||
"conda_run_config.target = compute_target\n",
|
||||
"conda_run_config.environment.docker.enabled = True\n",
|
||||
"conda_run_config.environment.docker.base_image = azureml.core.runconfig.DEFAULT_CPU_IMAGE\n",
|
||||
"\n",
|
||||
"# set the data reference of the run coonfiguration\n",
|
||||
"conda_run_config.data_references = {ds.name: dr}\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy','py-xgboost<=0.80'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%%writefile $project_folder/get_data.py\n",
|
||||
"\n",
|
||||
"import pandas as pd\n",
|
||||
"\n",
|
||||
"def get_data():\n",
|
||||
" X_train = pd.read_csv(\"/tmp/azureml_runs/bai_data/X_train.tsv\", delimiter=\"\\t\", header=None, quotechar='\"')\n",
|
||||
" y_train = pd.read_csv(\"/tmp/azureml_runs/bai_data/y_train.tsv\", delimiter=\"\\t\", header=None, quotechar='\"')\n",
|
||||
"\n",
|
||||
" return { \"X\" : X_train.values, \"y\" : y_train[0].values }\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"You can specify `automl_settings` as `**kwargs` as well. Also note that you can use a `get_data()` function for local excutions too.\n",
|
||||
"\n",
|
||||
"**Note:** When using AmlCompute, you can't pass Numpy arrays directly to the fit method.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**max_concurrent_iterations**|Maximum number of iterations that would be executed in parallel. This should be less than the number of cores on the DSVM.|"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 10,\n",
|
||||
" \"iterations\": 20,\n",
|
||||
" \"n_cross_validations\": 5,\n",
|
||||
" \"primary_metric\": 'AUC_weighted',\n",
|
||||
" \"preprocess\": False,\n",
|
||||
" \"max_concurrent_iterations\": 5,\n",
|
||||
" \"verbosity\": logging.INFO\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" path = project_folder,\n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" data_script = project_folder + \"/get_data.py\",\n",
|
||||
" **automl_settings\n",
|
||||
" )\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. For remote runs the execution is asynchronous, so you will see the iterations get populated as they complete. You can interact with the widgets and models even when the experiment is running to retrieve the best model up to that point. Once you are satisfied with the model, you can cancel a particular iteration or the whole run.\n",
|
||||
"In this example, we specify `show_output = False` to suppress console output while the run is in progress."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config, show_output = False)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results\n",
|
||||
"\n",
|
||||
"#### Loading executed runs\n",
|
||||
"In case you need to load a previously executed run, enable the cell below and replace the `run_id` value."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"remote_run = AutoMLRun(experiment = experiment, run_id = 'AutoML_5db13491-c92a-4f1d-b622-8ab8d973a058')"
|
||||
],
|
||||
"cell_type": "raw"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"You can click on a pipeline to see run properties and output logs. Logs are also available on the DSVM under `/tmp/azureml_run/{iterationid}/azureml-logs`\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"remote_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Wait until the run finishes.\n",
|
||||
"remote_run.wait_for_completion(show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(remote_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Cancelling Runs\n",
|
||||
"\n",
|
||||
"You can cancel ongoing remote runs using the `cancel` and `cancel_iteration` functions."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Cancel the ongoing experiment and stop scheduling new iterations.\n",
|
||||
"# remote_run.cancel()\n",
|
||||
"\n",
|
||||
"# Cancel iteration 1 and move onto iteration 2.\n",
|
||||
"# remote_run.cancel_iteration(1)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model which has the smallest `log_loss` value:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = remote_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = remote_run.get_output(iteration=iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Testing Our Best Fitted Model"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize=(3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-remote-amlcompute
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,537 +0,0 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Remote Execution using attach**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [20newsgroup](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.fetch_20newsgroups.html) to showcase how you can use AutoML to handle text data with remote attach.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Attach an existing DSVM to a workspace.\n",
|
||||
"3. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"4. Train the model using the DSVM.\n",
|
||||
"5. Explore the results.\n",
|
||||
"6. Test the best fitted model.\n",
|
||||
"\n",
|
||||
"In addition this notebook showcases the following features\n",
|
||||
"- **Parallel** executions for iterations\n",
|
||||
"- **Asynchronous** tracking of progress\n",
|
||||
"- **Cancellation** of individual iterations or the entire run\n",
|
||||
"- Retrieving models for any iteration or logged metric\n",
|
||||
"- Specifying AutoML settings as `**kwargs`\n",
|
||||
"- Handling **text** data using the `preprocess` flag"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the run history container in the workspace.\n",
|
||||
"experiment_name = 'automl-remote-attach'\n",
|
||||
"project_folder = './sample_projects/automl-remote-attach'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data=output, index=['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Attach a Remote Linux DSVM\n",
|
||||
"To use a remote Docker compute target:\n",
|
||||
"1. Create a Linux DSVM in Azure, following these [quick instructions](https://docs.microsoft.com/en-us/azure/machine-learning/desktop-workbench/how-to-create-dsvm-hdi). Make sure you use the Ubuntu flavor (not CentOS). Make sure that disk space is available under `/tmp` because AutoML creates files under `/tmp/azureml_run`s. The DSVM should have more cores than the number of parallel runs that you plan to enable. It should also have at least 4GB per core.\n",
|
||||
"2. Enter the IP address, user name and password below.\n",
|
||||
"\n",
|
||||
"**Note:** By default, SSH runs on port 22 and you don't need to change the port number below. If you've configured SSH to use a different port, change `dsvm_ssh_port` accordinglyaddress. [Read more](https://render.githubusercontent.com/documentation/sdk/ssh-issue.md) on changing SSH ports for security reasons."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.compute import ComputeTarget, RemoteCompute\n",
|
||||
"import time\n",
|
||||
"\n",
|
||||
"# Add your VM information below\n",
|
||||
"# If a compute with the specified compute_name already exists, it will be used and the dsvm_ip_addr, dsvm_ssh_port, \n",
|
||||
"# dsvm_username and dsvm_password will be ignored.\n",
|
||||
"compute_name = 'mydsvmb'\n",
|
||||
"dsvm_ip_addr = '<<ip_addr>>'\n",
|
||||
"dsvm_ssh_port = 22\n",
|
||||
"dsvm_username = '<<username>>'\n",
|
||||
"dsvm_password = '<<password>>'\n",
|
||||
"\n",
|
||||
"if compute_name in ws.compute_targets:\n",
|
||||
" print('Using existing compute.')\n",
|
||||
" dsvm_compute = ws.compute_targets[compute_name]\n",
|
||||
"else:\n",
|
||||
" attach_config = RemoteCompute.attach_configuration(address=dsvm_ip_addr, username=dsvm_username, password=dsvm_password, ssh_port=dsvm_ssh_port)\n",
|
||||
" ComputeTarget.attach(workspace=ws, name=compute_name, attach_configuration=attach_config)\n",
|
||||
"\n",
|
||||
" while ws.compute_targets[compute_name].provisioning_state == 'Creating':\n",
|
||||
" time.sleep(1)\n",
|
||||
"\n",
|
||||
" dsvm_compute = ws.compute_targets[compute_name]\n",
|
||||
" \n",
|
||||
" if dsvm_compute.provisioning_state == 'Failed':\n",
|
||||
" print('Attached failed.')\n",
|
||||
" print(dsvm_compute.provisioning_errors)\n",
|
||||
" dsvm_compute.detach()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to the Linux DSVM\n",
|
||||
"conda_run_config.target = dsvm_compute\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"For remote executions you should author a `get_data.py` file containing a `get_data()` function. This file should be in the root directory of the project. You can encapsulate code to read data either from a blob storage or local disk in this file.\n",
|
||||
"In this example, the `get_data()` function returns a [dictionary](README.md#getdata)."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"%%writefile $project_folder/get_data.py\n",
|
||||
"\n",
|
||||
"import numpy as np\n",
|
||||
"from sklearn.datasets import fetch_20newsgroups\n",
|
||||
"\n",
|
||||
"def get_data():\n",
|
||||
" remove = ('headers', 'footers', 'quotes')\n",
|
||||
" categories = [\n",
|
||||
" 'alt.atheism',\n",
|
||||
" 'talk.religion.misc',\n",
|
||||
" 'comp.graphics',\n",
|
||||
" 'sci.space',\n",
|
||||
" ]\n",
|
||||
" data_train = fetch_20newsgroups(subset = 'train', categories = categories,\n",
|
||||
" shuffle = True, random_state = 42,\n",
|
||||
" remove = remove)\n",
|
||||
" \n",
|
||||
" X_train = np.array(data_train.data).reshape((len(data_train.data),1))\n",
|
||||
" y_train = np.array(data_train.target)\n",
|
||||
" \n",
|
||||
" return { \"X\" : X_train, \"y\" : y_train }"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"You can specify `automl_settings` as `**kwargs` as well. Also note that you can use a `get_data()` function for local excutions too.\n",
|
||||
"\n",
|
||||
"**Note:** When using Remote DSVM, you can't pass Numpy arrays directly to the fit method.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**max_concurrent_iterations**|Maximum number of iterations that would be executed in parallel. This should be less than the number of cores on the DSVM.|\n",
|
||||
"|**preprocess**|Setting this to *True* enables AutoML to perform preprocessing on the input to handle *missing data*, and to perform some common *feature extraction*.|\n",
|
||||
"|**enable_cache**|Setting this to *True* enables preprocess done once and reuse the same preprocessed data for all the iterations. Default value is True.\n",
|
||||
"|**max_cores_per_iteration**|Indicates how many cores on the compute target would be used to train a single pipeline.<br>Default is *1*; you can set it to *-1* to use all cores.|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 60,\n",
|
||||
" \"iterations\": 4,\n",
|
||||
" \"n_cross_validations\": 5,\n",
|
||||
" \"primary_metric\": 'AUC_weighted',\n",
|
||||
" \"preprocess\": True,\n",
|
||||
" \"max_cores_per_iteration\": 2\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" path = project_folder,\n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" data_script = project_folder + \"/get_data.py\",\n",
|
||||
" **automl_settings\n",
|
||||
" )\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. For remote runs the execution is asynchronous, so you will see the iterations get populated as they complete. You can interact with the widgets and models even when the experiment is running to retrieve the best model up to that point. Once you are satisfied with the model, you can cancel a particular iteration or the whole run."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results\n",
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"You can click on a pipeline to see run properties and output logs. Logs are also available on the DSVM under `/tmp/azureml_run/{iterationid}/azureml-logs`\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Wait until the run finishes.\n",
|
||||
"remote_run.wait_for_completion(show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Pre-process cache cleanup\n",
|
||||
"The preprocess data gets cache at user default file store. When the run is completed the cache can be cleaned by running below cell"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run.clean_preprocessor_cache()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log. "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(remote_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Cancelling Runs\n",
|
||||
"You can cancel ongoing remote runs using the `cancel` and `cancel_iteration` functions."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Cancel the ongoing experiment and stop scheduling new iterations.\n",
|
||||
"# remote_run.cancel()\n",
|
||||
"\n",
|
||||
"# Cancel iteration 1 and move onto iteration 2.\n",
|
||||
"# remote_run.cancel_iteration(1)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model which has the smallest `accuracy` value:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# lookup_metric = \"accuracy\"\n",
|
||||
"# best_run, fitted_model = remote_run.get_output(metric = lookup_metric)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 0\n",
|
||||
"zero_run, zero_model = remote_run.get_output(iteration = iteration)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Load test data.\n",
|
||||
"from pandas_ml import ConfusionMatrix\n",
|
||||
"from sklearn.datasets import fetch_20newsgroups\n",
|
||||
"\n",
|
||||
"remove = ('headers', 'footers', 'quotes')\n",
|
||||
"categories = [\n",
|
||||
" 'alt.atheism',\n",
|
||||
" 'talk.religion.misc',\n",
|
||||
" 'comp.graphics',\n",
|
||||
" 'sci.space',\n",
|
||||
" ]\n",
|
||||
"\n",
|
||||
"data_test = fetch_20newsgroups(subset = 'test', categories = categories,\n",
|
||||
" shuffle = True, random_state = 42,\n",
|
||||
" remove = remove)\n",
|
||||
"\n",
|
||||
"X_test = np.array(data_test.data).reshape((len(data_test.data),1))\n",
|
||||
"y_test = data_test.target\n",
|
||||
"\n",
|
||||
"# Test our best pipeline.\n",
|
||||
"\n",
|
||||
"y_pred = fitted_model.predict(X_test)\n",
|
||||
"y_pred_strings = [data_test.target_names[i] for i in y_pred]\n",
|
||||
"y_test_strings = [data_test.target_names[i] for i in y_test]\n",
|
||||
"\n",
|
||||
"cm = ConfusionMatrix(y_test_strings, y_pred_strings)\n",
|
||||
"print(cm)\n",
|
||||
"cm.plot()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -1,548 +0,0 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Remote Execution using AmlCompute**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you would see\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Create or Attach existing AmlCompute to a workspace.\n",
|
||||
"3. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"4. Train the model using AmlCompute\n",
|
||||
"5. Explore the results.\n",
|
||||
"6. Test the best fitted model.\n",
|
||||
"\n",
|
||||
"In addition this notebook showcases the following features\n",
|
||||
"- **Parallel** executions for iterations\n",
|
||||
"- **Asynchronous** tracking of progress\n",
|
||||
"- **Cancellation** of individual iterations or the entire run\n",
|
||||
"- Retrieving models for any iteration or logged metric\n",
|
||||
"- Specifying AutoML settings as `**kwargs`"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the run history container in the workspace.\n",
|
||||
"experiment_name = 'automl-remote-amlcompute'\n",
|
||||
"project_folder = './sample_projects/automl-remote-amlcompute'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create or Attach existing AmlCompute\n",
|
||||
"You will need to create a [compute target](https://docs.microsoft.com/azure/machine-learning/service/concept-azure-machine-learning-architecture#compute-target) for your AutoML run. In this tutorial, you create `AmlCompute` as your training compute resource.\n",
|
||||
"\n",
|
||||
"**Creation of AmlCompute takes approximately 5 minutes.** If the AmlCompute with that name is already in your workspace this code will skip the creation process.\n",
|
||||
"\n",
|
||||
"As with other Azure services, there are limits on certain resources (e.g. AmlCompute) associated with the Azure Machine Learning service. Please read [this article](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-quotas) on the default limits and how to request more quota."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.compute import AmlCompute\n",
|
||||
"from azureml.core.compute import ComputeTarget\n",
|
||||
"\n",
|
||||
"# Choose a name for your cluster.\n",
|
||||
"amlcompute_cluster_name = \"automlcl\"\n",
|
||||
"\n",
|
||||
"found = False\n",
|
||||
"# Check if this compute target already exists in the workspace.\n",
|
||||
"cts = ws.compute_targets\n",
|
||||
"if amlcompute_cluster_name in cts and cts[amlcompute_cluster_name].type == 'AmlCompute':\n",
|
||||
" found = True\n",
|
||||
" print('Found existing compute target.')\n",
|
||||
" compute_target = cts[amlcompute_cluster_name]\n",
|
||||
" \n",
|
||||
"if not found:\n",
|
||||
" print('Creating a new compute target...')\n",
|
||||
" provisioning_config = AmlCompute.provisioning_configuration(vm_size = \"STANDARD_D2_V2\", # for GPU, use \"STANDARD_NC6\"\n",
|
||||
" #vm_priority = 'lowpriority', # optional\n",
|
||||
" max_nodes = 6)\n",
|
||||
"\n",
|
||||
" # Create the cluster.\n",
|
||||
" compute_target = ComputeTarget.create(ws, amlcompute_cluster_name, provisioning_config)\n",
|
||||
" \n",
|
||||
" # Can poll for a minimum number of nodes and for a specific timeout.\n",
|
||||
" # If no min_node_count is provided, it will use the scale settings for the cluster.\n",
|
||||
" compute_target.wait_for_completion(show_output = True, min_node_count = None, timeout_in_minutes = 20)\n",
|
||||
" \n",
|
||||
" # For a more detailed view of current AmlCompute status, use the 'status' property."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to AmlCompute\n",
|
||||
"conda_run_config.target = compute_target\n",
|
||||
"conda_run_config.environment.docker.enabled = True\n",
|
||||
"conda_run_config.environment.docker.base_image = azureml.core.runconfig.DEFAULT_CPU_IMAGE\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"For remote executions you should author a `get_data.py` file containing a `get_data()` function. This file should be in the root directory of the project. You can encapsulate code to read data either from a blob storage or local disk in this file.\n",
|
||||
"In this example, the `get_data()` function returns data using scikit-learn's [load_digits](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html) method."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"%%writefile $project_folder/get_data.py\n",
|
||||
"\n",
|
||||
"from sklearn import datasets\n",
|
||||
"from scipy import sparse\n",
|
||||
"import numpy as np\n",
|
||||
"\n",
|
||||
"def get_data():\n",
|
||||
" \n",
|
||||
" digits = datasets.load_digits()\n",
|
||||
" X_train = digits.data\n",
|
||||
" y_train = digits.target\n",
|
||||
"\n",
|
||||
" return { \"X\" : X_train, \"y\" : y_train }"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"You can specify `automl_settings` as `**kwargs` as well. Also note that you can use a `get_data()` function for local excutions too.\n",
|
||||
"\n",
|
||||
"**Note:** When using AmlCompute, you can't pass Numpy arrays directly to the fit method.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**max_concurrent_iterations**|Maximum number of iterations that would be executed in parallel. This should be less than the number of cores on the DSVM.|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 2,\n",
|
||||
" \"iterations\": 20,\n",
|
||||
" \"n_cross_validations\": 5,\n",
|
||||
" \"primary_metric\": 'AUC_weighted',\n",
|
||||
" \"preprocess\": False,\n",
|
||||
" \"max_concurrent_iterations\": 5,\n",
|
||||
" \"verbosity\": logging.INFO\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" path = project_folder,\n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" data_script = project_folder + \"/get_data.py\",\n",
|
||||
" **automl_settings\n",
|
||||
" )\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. For remote runs the execution is asynchronous, so you will see the iterations get populated as they complete. You can interact with the widgets and models even when the experiment is running to retrieve the best model up to that point. Once you are satisfied with the model, you can cancel a particular iteration or the whole run.\n",
|
||||
"In this example, we specify `show_output = False` to suppress console output while the run is in progress."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config, show_output = False)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results\n",
|
||||
"\n",
|
||||
"#### Loading executed runs\n",
|
||||
"In case you need to load a previously executed run, enable the cell below and replace the `run_id` value."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "raw",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"remote_run = AutoMLRun(experiment = experiment, run_id = 'AutoML_5db13491-c92a-4f1d-b622-8ab8d973a058')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"You can click on a pipeline to see run properties and output logs. Logs are also available on the DSVM under `/tmp/azureml_run/{iterationid}/azureml-logs`\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Wait until the run finishes.\n",
|
||||
"remote_run.wait_for_completion(show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(remote_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Cancelling Runs\n",
|
||||
"\n",
|
||||
"You can cancel ongoing remote runs using the `cancel` and `cancel_iteration` functions."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Cancel the ongoing experiment and stop scheduling new iterations.\n",
|
||||
"# remote_run.cancel()\n",
|
||||
"\n",
|
||||
"# Cancel iteration 1 and move onto iteration 2.\n",
|
||||
"# remote_run.cancel_iteration(1)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model which has the smallest `log_loss` value:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = remote_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = remote_run.get_output(iteration=iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Testing Our Best Fitted Model"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize=(3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -1,604 +0,0 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Remote Execution with DataStore**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"This sample accesses a data file on a remote DSVM through DataStore. Advantages of using data store are:\n",
|
||||
"1. DataStore secures the access details.\n",
|
||||
"2. DataStore supports read, write to blob and file store\n",
|
||||
"3. AutoML natively supports copying data from DataStore to DSVM\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you would see\n",
|
||||
"1. Storing data in DataStore.\n",
|
||||
"2. get_data returning data from DataStore."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created a <b>Workspace</b>. For AutoML you would need to create an <b>Experiment</b>. An <b>Experiment</b> is a named object in a <b>Workspace</b>, which is used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"import time\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.compute import DsvmCompute\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# choose a name for experiment\n",
|
||||
"experiment_name = 'automl-remote-datastore-file'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-remote-datastore-file'\n",
|
||||
"\n",
|
||||
"experiment=Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data=output, index=['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a Remote Linux DSVM\n",
|
||||
"Note: If creation fails with a message about Marketplace purchase eligibilty, go to portal.azure.com, start creating DSVM there, and select \"Want to create programmatically\" to enable programmatic creation. Once you've enabled it, you can exit without actually creating VM.\n",
|
||||
"\n",
|
||||
"**Note**: By default SSH runs on port 22 and you don't need to specify it. But if for security reasons you can switch to a different port (such as 5022), you can append the port number to the address. [Read more](https://render.githubusercontent.com/documentation/sdk/ssh-issue.md) on this."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"compute_target_name = 'mydsvmc'\n",
|
||||
"\n",
|
||||
"try:\n",
|
||||
" while ws.compute_targets[compute_target_name].provisioning_state == 'Creating':\n",
|
||||
" time.sleep(1)\n",
|
||||
" \n",
|
||||
" dsvm_compute = DsvmCompute(workspace=ws, name=compute_target_name)\n",
|
||||
" print('found existing:', dsvm_compute.name)\n",
|
||||
"except:\n",
|
||||
" dsvm_config = DsvmCompute.provisioning_configuration(vm_size=\"Standard_D2_v2\")\n",
|
||||
" dsvm_compute = DsvmCompute.create(ws, name=compute_target_name, provisioning_configuration=dsvm_config)\n",
|
||||
" dsvm_compute.wait_for_completion(show_output=True)\n",
|
||||
" print(\"Waiting one minute for ssh to be accessible\")\n",
|
||||
" time.sleep(60) # Wait for ssh to be accessible"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"\n",
|
||||
"### Copy data file to local\n",
|
||||
"\n",
|
||||
"Download the data file.\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"mkdir data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from sklearn.datasets import fetch_20newsgroups\n",
|
||||
"import csv\n",
|
||||
"\n",
|
||||
"remove = ('headers', 'footers', 'quotes')\n",
|
||||
"categories = [\n",
|
||||
" 'alt.atheism',\n",
|
||||
" 'talk.religion.misc',\n",
|
||||
" 'comp.graphics',\n",
|
||||
" 'sci.space',\n",
|
||||
" ]\n",
|
||||
"data_train = fetch_20newsgroups(subset = 'train', categories = categories,\n",
|
||||
" shuffle = True, random_state = 42,\n",
|
||||
" remove = remove)\n",
|
||||
" \n",
|
||||
"pd.DataFrame(data_train.data).to_csv(\"data/X_train.tsv\", index=False, header=False, quoting=csv.QUOTE_ALL, sep=\"\\t\")\n",
|
||||
"pd.DataFrame(data_train.target).to_csv(\"data/y_train.tsv\", index=False, header=False, sep=\"\\t\")"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Upload data to the cloud"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Now make the data accessible remotely by uploading that data from your local machine into Azure so it can be accessed for remote training. The datastore is a convenient construct associated with your workspace for you to upload/download data, and interact with it from your remote compute targets. It is backed by Azure blob storage account.\n",
|
||||
"\n",
|
||||
"The data.tsv files are uploaded into a directory named data at the root of the datastore."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core import Workspace, Datastore\n",
|
||||
"#blob_datastore = Datastore(ws, blob_datastore_name)\n",
|
||||
"ds = ws.get_default_datastore()\n",
|
||||
"print(ds.datastore_type, ds.account_name, ds.container_name)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# ds.upload_files(\"data.tsv\")\n",
|
||||
"ds.upload(src_dir='./data', target_path='data', overwrite=True, show_progress=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Configure & Run\n",
|
||||
"\n",
|
||||
"First let's create a DataReferenceConfigruation object to inform the system what data folder to download to the compute target.\n",
|
||||
"The path_on_compute should be an absolute path to ensure that the data files are downloaded only once. The get_data method should use this same path to access the data files."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.runconfig import DataReferenceConfiguration\n",
|
||||
"dr = DataReferenceConfiguration(datastore_name=ds.name, \n",
|
||||
" path_on_datastore='data', \n",
|
||||
" path_on_compute='/tmp/azureml_runs',\n",
|
||||
" mode='download', # download files from datastore to compute target\n",
|
||||
" overwrite=False)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to the Linux DSVM\n",
|
||||
"conda_run_config.target = dsvm_compute\n",
|
||||
"# set the data reference of the run coonfiguration\n",
|
||||
"conda_run_config.data_references = {ds.name: dr}\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create Get Data File\n",
|
||||
"For remote executions you should author a get_data.py file containing a get_data() function. This file should be in the root directory of the project. You can encapsulate code to read data either from a blob storage or local disk in this file.\n",
|
||||
"\n",
|
||||
"The *get_data()* function returns a [dictionary](README.md#getdata).\n",
|
||||
"\n",
|
||||
"The read_csv uses the path_on_compute value specified in the DataReferenceConfiguration call plus the path_on_datastore folder and then the actual file name."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"%%writefile $project_folder/get_data.py\n",
|
||||
"\n",
|
||||
"import pandas as pd\n",
|
||||
"\n",
|
||||
"def get_data():\n",
|
||||
" X_train = pd.read_csv(\"/tmp/azureml_runs/data/X_train.tsv\", delimiter=\"\\t\", header=None, quotechar='\"')\n",
|
||||
" y_train = pd.read_csv(\"/tmp/azureml_runs/data/y_train.tsv\", delimiter=\"\\t\", header=None, quotechar='\"')\n",
|
||||
"\n",
|
||||
" return { \"X\" : X_train.values, \"y\" : y_train[0].values }"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"You can specify automl_settings as **kwargs** as well. Also note that you can use the get_data() symantic for local excutions too. \n",
|
||||
"\n",
|
||||
"<i>Note: For Remote DSVM and Batch AI you cannot pass Numpy arrays directly to AutoMLConfig.</i>\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration Auto ML trains a specific pipeline with the data|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits|\n",
|
||||
"|**max_concurrent_iterations**|Max number of iterations that would be executed in parallel. This should be less than the number of cores on the DSVM\n",
|
||||
"|**preprocess**| *True/False* <br>Setting this to *True* enables Auto ML to perform preprocessing <br>on the input to handle *missing data*, and perform some common *feature extraction*|\n",
|
||||
"|**enable_cache**|Setting this to *True* enables preprocess done once and reuse the same preprocessed data for all the iterations. Default value is True.|\n",
|
||||
"|**max_cores_per_iteration**| Indicates how many cores on the compute target would be used to train a single pipeline.<br> Default is *1*, you can set it to *-1* to use all cores|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 60,\n",
|
||||
" \"iterations\": 4,\n",
|
||||
" \"n_cross_validations\": 5,\n",
|
||||
" \"primary_metric\": 'AUC_weighted',\n",
|
||||
" \"preprocess\": True,\n",
|
||||
" \"max_cores_per_iteration\": 1,\n",
|
||||
" \"verbosity\": logging.INFO\n",
|
||||
"}\n",
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" path=project_folder,\n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" #compute_target = dsvm_compute,\n",
|
||||
" data_script = project_folder + \"/get_data.py\",\n",
|
||||
" **automl_settings\n",
|
||||
" )"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"For remote runs the execution is asynchronous, so you will see the iterations get populated as they complete. You can interact with the widgets/models even when the experiment is running to retreive the best model up to that point. Once you are satisfied with the model you can cancel a particular iteration or the whole run."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config, show_output=False)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results\n",
|
||||
"#### Widget for monitoring runs\n",
|
||||
"\n",
|
||||
"The widget will sit on \"loading\" until the first iteration completed, then you will see an auto-updating graph and table show up. It refreshed once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"You can click on a pipeline to see run properties and output logs. Logs are also available on the DSVM under /tmp/azureml_run/{iterationid}/azureml-logs\n",
|
||||
"\n",
|
||||
"NOTE: The widget displays a link at the bottom. This links to a web-ui to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Wait until the run finishes.\n",
|
||||
"remote_run.wait_for_completion(show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use sdk methods to fetch all the child runs and see individual metrics that we log. "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(remote_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)} \n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Canceling Runs\n",
|
||||
"You can cancel ongoing remote runs using the *cancel()* and *cancel_iteration()* functions"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Cancel the ongoing experiment and stop scheduling new iterations\n",
|
||||
"# remote_run.cancel()\n",
|
||||
"\n",
|
||||
"# Cancel iteration 1 and move onto iteration 2\n",
|
||||
"# remote_run.cancel_iteration(1)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Pre-process cache cleanup\n",
|
||||
"The preprocess data gets cache at user default file store. When the run is completed the cache can be cleaned by running below cell"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run.clean_preprocessor_cache()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The *get_output* method returns the best run and the fitted model. There are overloads on *get_output* that allow you to retrieve the best run and fitted model for *any* logged metric or a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model based on any other metric"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# lookup_metric = \"accuracy\"\n",
|
||||
"# best_run, fitted_model = remote_run.get_output(metric=lookup_metric)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a specific iteration"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# iteration = 1\n",
|
||||
"# best_run, fitted_model = remote_run.get_output(iteration=iteration)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Load test data.\n",
|
||||
"from pandas_ml import ConfusionMatrix\n",
|
||||
"\n",
|
||||
"data_test = fetch_20newsgroups(subset = 'test', categories = categories,\n",
|
||||
" shuffle = True, random_state = 42,\n",
|
||||
" remove = remove)\n",
|
||||
"\n",
|
||||
"X_test = np.array(data_test.data).reshape((len(data_test.data),1))\n",
|
||||
"y_test = data_test.target\n",
|
||||
"\n",
|
||||
"# Test our best pipeline.\n",
|
||||
"\n",
|
||||
"y_pred = fitted_model.predict(X_test)\n",
|
||||
"y_pred_strings = [data_test.target_names[i] for i in y_pred]\n",
|
||||
"y_test_strings = [data_test.target_names[i] for i in y_test]\n",
|
||||
"\n",
|
||||
"cm = ConfusionMatrix(y_test_strings, y_pred_strings)\n",
|
||||
"print(cm)\n",
|
||||
"cm.plot()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -1,527 +0,0 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Remote Execution using DSVM (Ubuntu)**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use AutoML for a simple classification problem.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you wiil learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Attach an existing DSVM to a workspace.\n",
|
||||
"3. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"4. Train the model using the DSVM.\n",
|
||||
"5. Explore the results.\n",
|
||||
"6. Test the best fitted model.\n",
|
||||
"\n",
|
||||
"In addition, this notebook showcases the following features:\n",
|
||||
"- **Parallel** executions for iterations\n",
|
||||
"- **Asynchronous** tracking of progress\n",
|
||||
"- **Cancellation** of individual iterations or the entire run\n",
|
||||
"- Retrieving models for any iteration or logged metric\n",
|
||||
"- Specifying AutoML settings as `**kwargs`"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"import time\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the run history container in the workspace.\n",
|
||||
"experiment_name = 'automl-remote-dsvm'\n",
|
||||
"project_folder = './sample_projects/automl-remote-dsvm'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Create a Remote Linux DSVM\n",
|
||||
"**Note:** If creation fails with a message about Marketplace purchase eligibilty, start creation of a DSVM through the [Azure portal](https://portal.azure.com), and select \"Want to create programmatically\" to enable programmatic creation. Once you've enabled this setting, you can exit the portal without actually creating the DSVM, and creation of the DSVM through the notebook should work.\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.compute import DsvmCompute\n",
|
||||
"\n",
|
||||
"dsvm_name = 'mydsvma'\n",
|
||||
"try:\n",
|
||||
" dsvm_compute = DsvmCompute(ws, dsvm_name)\n",
|
||||
" print('Found an existing DSVM.')\n",
|
||||
"except:\n",
|
||||
" print('Creating a new DSVM.')\n",
|
||||
" dsvm_config = DsvmCompute.provisioning_configuration(vm_size = \"Standard_D2s_v3\")\n",
|
||||
" dsvm_compute = DsvmCompute.create(ws, name = dsvm_name, provisioning_configuration = dsvm_config)\n",
|
||||
" dsvm_compute.wait_for_completion(show_output = True)\n",
|
||||
" print(\"Waiting one minute for ssh to be accessible\")\n",
|
||||
" time.sleep(60) # Wait for ssh to be accessible"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.runconfig import RunConfiguration\n",
|
||||
"from azureml.core.conda_dependencies import CondaDependencies\n",
|
||||
"\n",
|
||||
"# create a new RunConfig object\n",
|
||||
"conda_run_config = RunConfiguration(framework=\"python\")\n",
|
||||
"\n",
|
||||
"# Set compute target to the Linux DSVM\n",
|
||||
"conda_run_config.target = dsvm_compute\n",
|
||||
"\n",
|
||||
"cd = CondaDependencies.create(pip_packages=['azureml-sdk[automl]'], conda_packages=['numpy'])\n",
|
||||
"conda_run_config.environment.python.conda_dependencies = cd"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"For remote executions you should author a `get_data.py` file containing a `get_data()` function. This file should be in the root directory of the project. You can encapsulate code to read data either from a blob storage or local disk in this file.\n",
|
||||
"In this example, the `get_data()` function returns data using scikit-learn's [load_digits](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.load_digits.html) method."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"if not os.path.exists(project_folder):\n",
|
||||
" os.makedirs(project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"%%writefile $project_folder/get_data.py\n",
|
||||
"\n",
|
||||
"from sklearn import datasets\n",
|
||||
"from scipy import sparse\n",
|
||||
"import numpy as np\n",
|
||||
"\n",
|
||||
"def get_data():\n",
|
||||
" \n",
|
||||
" digits = datasets.load_digits()\n",
|
||||
" X_train = digits.data[100:,:]\n",
|
||||
" y_train = digits.target[100:]\n",
|
||||
"\n",
|
||||
" return { \"X\" : X_train, \"y\" : y_train }"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"You can specify `automl_settings` as `**kwargs` as well. Also note that you can use a `get_data()` function for local excutions too.\n",
|
||||
"\n",
|
||||
"**Note:** When using Remote DSVM, you can't pass Numpy arrays directly to the fit method.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**n_cross_validations**|Number of cross validation splits.|\n",
|
||||
"|**max_concurrent_iterations**|Maximum number of iterations to execute in parallel. This should be less than the number of cores on the DSVM.|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_settings = {\n",
|
||||
" \"iteration_timeout_minutes\": 10,\n",
|
||||
" \"iterations\": 20,\n",
|
||||
" \"n_cross_validations\": 5,\n",
|
||||
" \"primary_metric\": 'AUC_weighted',\n",
|
||||
" \"preprocess\": False,\n",
|
||||
" \"max_concurrent_iterations\": 2,\n",
|
||||
" \"verbosity\": logging.INFO\n",
|
||||
"}\n",
|
||||
"\n",
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" path = project_folder, \n",
|
||||
" run_configuration=conda_run_config,\n",
|
||||
" data_script = project_folder + \"/get_data.py\",\n",
|
||||
" **automl_settings\n",
|
||||
" )\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"**Note:** The first run on a new DSVM may take several minutes to prepare the environment."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. For remote runs the execution is asynchronous, so you will see the iterations get populated as they complete. You can interact with the widgets and models even when the experiment is running to retrieve the best model up to that point. Once you are satisfied with the model, you can cancel a particular iteration or the whole run.\n",
|
||||
"\n",
|
||||
"In this example, we specify `show_output = False` to suppress console output while the run is in progress."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run = experiment.submit(automl_config, show_output = False)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"remote_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results\n",
|
||||
"\n",
|
||||
"#### Loading Executed Runs\n",
|
||||
"In case you need to load a previously executed run, enable the cell below and replace the `run_id` value."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "raw",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"remote_run = AutoMLRun(experiment=experiment, run_id = 'AutoML_480d3ed6-fc94-44aa-8f4e-0b945db9d3ef')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"You can click on a pipeline to see run properties and output logs. Logs are also available on the DSVM under `/tmp/azureml_run/{iterationid}/azureml-logs`\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(remote_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Wait until the run finishes.\n",
|
||||
"remote_run.wait_for_completion(show_output = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(remote_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)} \n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
"\n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Cancelling Runs\n",
|
||||
"\n",
|
||||
"You can cancel ongoing remote runs using the `cancel` and `cancel_iteration` functions."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Cancel the ongoing experiment and stop scheduling new iterations.\n",
|
||||
"# remote_run.cancel()\n",
|
||||
"\n",
|
||||
"# Cancel iteration 1 and move onto iteration 2.\n",
|
||||
"# remote_run.cancel_iteration(1)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = remote_run.get_output()\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model which has the smallest `log_loss` value:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"lookup_metric = \"log_loss\"\n",
|
||||
"best_run, fitted_model = remote_run.get_output(metric = lookup_metric)\n",
|
||||
"print(best_run)\n",
|
||||
"print(fitted_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"iteration = 3\n",
|
||||
"third_run, third_model = remote_run.get_output(iteration = iteration)\n",
|
||||
"print(third_run)\n",
|
||||
"print(third_model)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:10, :]\n",
|
||||
"y_test = digits.target[:10]\n",
|
||||
"images = digits.images[:10]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Test Our Best Fitted Model"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in np.random.choice(len(y_test), 2, replace = False):\n",
|
||||
" print(index)\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" title = \"Label value = %d Predicted value = %d \" % (label, predicted)\n",
|
||||
" fig = plt.figure(1, figsize=(3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -1,260 +1,247 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Sample Weight**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use sample weight with AutoML. Sample weight is used where some sample values are more important than others.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to configure AutoML to use `sample_weight` and you will see the difference sample weight makes to the test results."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose names for the regular and the sample weight experiments.\n",
|
||||
"experiment_name = 'non_sample_weight_experiment'\n",
|
||||
"sample_weight_experiment_name = 'sample_weight_experiment'\n",
|
||||
"\n",
|
||||
"project_folder = './sample_projects/automl-local-classification'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"sample_weight_experiment=Experiment(ws, sample_weight_experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate two `AutoMLConfig` objects. One will be used with `sample_weight` and one without."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_train = digits.data[100:,:]\n",
|
||||
"y_train = digits.target[100:]\n",
|
||||
"\n",
|
||||
"# The example makes the sample weight 0.9 for the digit 4 and 0.1 for all other digits.\n",
|
||||
"# This makes the model more likely to classify as 4 if the image it not clear.\n",
|
||||
"sample_weight = np.array([(0.9 if x == 4 else 0.01) for x in y_train])\n",
|
||||
"\n",
|
||||
"automl_classifier = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 10,\n",
|
||||
" n_cross_validations = 2,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" path = project_folder)\n",
|
||||
"\n",
|
||||
"automl_sample_weight = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 10,\n",
|
||||
" n_cross_validations = 2,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" sample_weight = sample_weight,\n",
|
||||
" path = project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment objects and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_classifier, show_output = True)\n",
|
||||
"sample_weight_run = sample_weight_experiment.submit(automl_sample_weight, show_output = True)\n",
|
||||
"\n",
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"best_run_sample_weight, fitted_model_sample_weight = sample_weight_run.get_output()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:100, :]\n",
|
||||
"y_test = digits.target[:100]\n",
|
||||
"images = digits.images[:100]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Compare the Models\n",
|
||||
"The prediction from the sample weight model is more likely to correctly predict 4's. However, it is also more likely to predict 4 for some images that are not labelled as 4."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in range(0,len(y_test)):\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" predicted_sample_weight = fitted_model_sample_weight.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" if predicted == 4 or predicted_sample_weight == 4 or label == 4:\n",
|
||||
" title = \"Label value = %d Predicted value = %d Prediced with sample weight = %d\" % (label, predicted, predicted_sample_weight)\n",
|
||||
" fig = plt.figure(1, figsize=(3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.5"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.5"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Sample Weight**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [digit dataset](http://scikit-learn.org/stable/datasets/index.html#optical-recognition-of-handwritten-digits-dataset) to showcase how you can use sample weight with AutoML. Sample weight is used where some sample values are more important than others.\n",
|
||||
"\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to configure AutoML to use `sample_weight` and you will see the difference sample weight makes to the test results."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose names for the regular and the sample weight experiments.\n",
|
||||
"experiment_name = 'non_sample_weight_experiment'\n",
|
||||
"sample_weight_experiment_name = 'sample_weight_experiment'\n",
|
||||
"\n",
|
||||
"project_folder = './sample_projects/sample_weight'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"sample_weight_experiment=Experiment(ws, sample_weight_experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate two `AutoMLConfig` objects. One will be used with `sample_weight` and one without."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_train = digits.data[100:,:]\n",
|
||||
"y_train = digits.target[100:]\n",
|
||||
"\n",
|
||||
"# The example makes the sample weight 0.9 for the digit 4 and 0.1 for all other digits.\n",
|
||||
"# This makes the model more likely to classify as 4 if the image it not clear.\n",
|
||||
"sample_weight = np.array([(0.9 if x == 4 else 0.01) for x in y_train])\n",
|
||||
"\n",
|
||||
"automl_classifier = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 10,\n",
|
||||
" n_cross_validations = 2,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" path = project_folder)\n",
|
||||
"\n",
|
||||
"automl_sample_weight = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 10,\n",
|
||||
" n_cross_validations = 2,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" sample_weight = sample_weight,\n",
|
||||
" path = project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment objects and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_classifier, show_output = True)\n",
|
||||
"sample_weight_run = sample_weight_experiment.submit(automl_sample_weight, show_output = True)\n",
|
||||
"\n",
|
||||
"best_run, fitted_model = local_run.get_output()\n",
|
||||
"best_run_sample_weight, fitted_model_sample_weight = sample_weight_run.get_output()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test\n",
|
||||
"\n",
|
||||
"#### Load Test Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"digits = datasets.load_digits()\n",
|
||||
"X_test = digits.data[:100, :]\n",
|
||||
"y_test = digits.target[:100]\n",
|
||||
"images = digits.images[:100]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Compare the Models\n",
|
||||
"The prediction from the sample weight model is more likely to correctly predict 4's. However, it is also more likely to predict 4 for some images that are not labelled as 4."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Randomly select digits and test.\n",
|
||||
"for index in range(0,len(y_test)):\n",
|
||||
" predicted = fitted_model.predict(X_test[index:index + 1])[0]\n",
|
||||
" predicted_sample_weight = fitted_model_sample_weight.predict(X_test[index:index + 1])[0]\n",
|
||||
" label = y_test[index]\n",
|
||||
" if predicted == 4 or predicted_sample_weight == 4 or label == 4:\n",
|
||||
" title = \"Label value = %d Predicted value = %d Prediced with sample weight = %d\" % (label, predicted, predicted_sample_weight)\n",
|
||||
" fig = plt.figure(1, figsize=(3,3))\n",
|
||||
" ax1 = fig.add_axes((0,0,.8,.8))\n",
|
||||
" ax1.set_title(title)\n",
|
||||
" plt.imshow(images[index], cmap = plt.cm.gray_r, interpolation = 'nearest')\n",
|
||||
" plt.show()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-sample-weight
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,403 +1,387 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Train Test Split and Handling Sparse Data**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [20newsgroup](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.fetch_20newsgroups.html) to showcase how you can use AutoML for handling sparse data and how to specify custom cross validations splits.\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"4. Train the model.\n",
|
||||
"5. Explore the results.\n",
|
||||
"6. Test the best fitted model.\n",
|
||||
"\n",
|
||||
"In addition this notebook showcases the following features\n",
|
||||
"- Explicit train test splits \n",
|
||||
"- Handling **sparse data** in the input"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"import os\n",
|
||||
"import random\n",
|
||||
"\n",
|
||||
"from matplotlib import pyplot as plt\n",
|
||||
"from matplotlib.pyplot import imshow\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"from sklearn import datasets\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# choose a name for the experiment\n",
|
||||
"experiment_name = 'automl-local-missing-data'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/automl-local-missing-data'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data=output, index=['']).T"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Opt-in diagnostics for better experience, quality, and security of future releases."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.telemetry import set_diagnostics_collection\n",
|
||||
"set_diagnostics_collection(send_diagnostics = True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from sklearn.datasets import fetch_20newsgroups\n",
|
||||
"from sklearn.feature_extraction.text import HashingVectorizer\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"\n",
|
||||
"remove = ('headers', 'footers', 'quotes')\n",
|
||||
"categories = [\n",
|
||||
" 'alt.atheism',\n",
|
||||
" 'talk.religion.misc',\n",
|
||||
" 'comp.graphics',\n",
|
||||
" 'sci.space',\n",
|
||||
"]\n",
|
||||
"data_train = fetch_20newsgroups(subset = 'train', categories = categories,\n",
|
||||
" shuffle = True, random_state = 42,\n",
|
||||
" remove = remove)\n",
|
||||
"\n",
|
||||
"X_train, X_valid, y_train, y_valid = train_test_split(data_train.data, data_train.target, test_size = 0.33, random_state = 42)\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"vectorizer = HashingVectorizer(stop_words = 'english', alternate_sign = False,\n",
|
||||
" n_features = 2**16)\n",
|
||||
"X_train = vectorizer.transform(X_train)\n",
|
||||
"X_valid = vectorizer.transform(X_valid)\n",
|
||||
"\n",
|
||||
"summary_df = pd.DataFrame(index = ['No of Samples', 'No of Features'])\n",
|
||||
"summary_df['Train Set'] = [X_train.shape[0], X_train.shape[1]]\n",
|
||||
"summary_df['Validation Set'] = [X_valid.shape[0], X_valid.shape[1]]\n",
|
||||
"summary_df"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**preprocess**|Setting this to *True* enables AutoML to perform preprocessing on the input to handle *missing data*, and to perform some common *feature extraction*.<br>**Note:** If input data is sparse, you cannot use *True*.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], [n_samples, n_classes]<br>Multi-class targets. An indicator matrix turns on multilabel classification. This should be an array of integers.|\n",
|
||||
"|**X_valid**|(sparse) array-like, shape = [n_samples, n_features] for the custom validation set.|\n",
|
||||
"|**y_valid**|(sparse) array-like, shape = [n_samples, ], [n_samples, n_classes]<br>Multi-class targets. An indicator matrix turns on multilabel classification for the custom validation set.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 5,\n",
|
||||
" preprocess = False,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" X_valid = X_valid, \n",
|
||||
" y_valid = y_valid, \n",
|
||||
" path = project_folder)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"local_run"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
" \n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model which has the smallest `accuracy` value:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# lookup_metric = \"accuracy\"\n",
|
||||
"# best_run, fitted_model = local_run.get_output(metric = lookup_metric)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# iteration = 3\n",
|
||||
"# best_run, fitted_model = local_run.get_output(iteration = iteration)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Load test data.\n",
|
||||
"from pandas_ml import ConfusionMatrix\n",
|
||||
"\n",
|
||||
"data_test = fetch_20newsgroups(subset = 'test', categories = categories,\n",
|
||||
" shuffle = True, random_state = 42,\n",
|
||||
" remove = remove)\n",
|
||||
"\n",
|
||||
"X_test = vectorizer.transform(data_test.data)\n",
|
||||
"y_test = data_test.target\n",
|
||||
"\n",
|
||||
"# Test our best pipeline.\n",
|
||||
"\n",
|
||||
"y_pred = fitted_model.predict(X_test)\n",
|
||||
"y_pred_strings = [data_test.target_names[i] for i in y_pred]\n",
|
||||
"y_test_strings = [data_test.target_names[i] for i in y_test]\n",
|
||||
"\n",
|
||||
"cm = ConfusionMatrix(y_test_strings, y_pred_strings)\n",
|
||||
"print(cm)\n",
|
||||
"cm.plot()"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"language": "python",
|
||||
"name": "python36"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "savitam"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Train Test Split and Handling Sparse Data**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"1. [Results](#Results)\n",
|
||||
"1. [Test](#Test)\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"In this example we use the scikit-learn's [20newsgroup](http://scikit-learn.org/stable/modules/generated/sklearn.datasets.fetch_20newsgroups.html) to showcase how you can use AutoML for handling sparse data and how to specify custom cross validations splits.\n",
|
||||
"Make sure you have executed the [configuration](../../../configuration.ipynb) before running this notebook.\n",
|
||||
"\n",
|
||||
"In this notebook you will learn how to:\n",
|
||||
"1. Create an `Experiment` in an existing `Workspace`.\n",
|
||||
"2. Configure AutoML using `AutoMLConfig`.\n",
|
||||
"4. Train the model.\n",
|
||||
"5. Explore the results.\n",
|
||||
"6. Test the best fitted model.\n",
|
||||
"\n",
|
||||
"In addition this notebook showcases the following features\n",
|
||||
"- Explicit train test splits \n",
|
||||
"- Handling **sparse data** in the input"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"import pandas as pd\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# choose a name for the experiment\n",
|
||||
"experiment_name = 'sparse-data-train-test-split'\n",
|
||||
"# project folder\n",
|
||||
"project_folder = './sample_projects/sparse-data-train-test-split'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"outputDf = pd.DataFrame(data = output, index = [''])\n",
|
||||
"outputDf.T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from sklearn.datasets import fetch_20newsgroups\n",
|
||||
"from sklearn.feature_extraction.text import HashingVectorizer\n",
|
||||
"from sklearn.model_selection import train_test_split\n",
|
||||
"\n",
|
||||
"remove = ('headers', 'footers', 'quotes')\n",
|
||||
"categories = [\n",
|
||||
" 'alt.atheism',\n",
|
||||
" 'talk.religion.misc',\n",
|
||||
" 'comp.graphics',\n",
|
||||
" 'sci.space',\n",
|
||||
"]\n",
|
||||
"data_train = fetch_20newsgroups(subset = 'train', categories = categories,\n",
|
||||
" shuffle = True, random_state = 42,\n",
|
||||
" remove = remove)\n",
|
||||
"\n",
|
||||
"X_train, X_valid, y_train, y_valid = train_test_split(data_train.data, data_train.target, test_size = 0.33, random_state = 42)\n",
|
||||
"\n",
|
||||
"\n",
|
||||
"vectorizer = HashingVectorizer(stop_words = 'english', alternate_sign = False,\n",
|
||||
" n_features = 2**16)\n",
|
||||
"X_train = vectorizer.transform(X_train)\n",
|
||||
"X_valid = vectorizer.transform(X_valid)\n",
|
||||
"\n",
|
||||
"summary_df = pd.DataFrame(index = ['No of Samples', 'No of Features'])\n",
|
||||
"summary_df['Train Set'] = [X_train.shape[0], X_train.shape[1]]\n",
|
||||
"summary_df['Validation Set'] = [X_valid.shape[0], X_valid.shape[1]]\n",
|
||||
"summary_df"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**task**|classification or regression|\n",
|
||||
"|**primary_metric**|This is the metric that you want to optimize. Classification supports the following primary metrics: <br><i>accuracy</i><br><i>AUC_weighted</i><br><i>average_precision_score_weighted</i><br><i>norm_macro_recall</i><br><i>precision_score_weighted</i>|\n",
|
||||
"|**iteration_timeout_minutes**|Time limit in minutes for each iteration.|\n",
|
||||
"|**iterations**|Number of iterations. In each iteration AutoML trains a specific pipeline with the data.|\n",
|
||||
"|**preprocess**|Setting this to *True* enables AutoML to perform preprocessing on the input to handle *missing data*, and to perform some common *feature extraction*.<br>**Note:** If input data is sparse, you cannot use *True*.|\n",
|
||||
"|**X**|(sparse) array-like, shape = [n_samples, n_features]|\n",
|
||||
"|**y**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**X_valid**|(sparse) array-like, shape = [n_samples, n_features] for the custom validation set.|\n",
|
||||
"|**y_valid**|(sparse) array-like, shape = [n_samples, ], Multi-class targets.|\n",
|
||||
"|**path**|Relative path to the project folder. AutoML stores configuration files for the experiment under this folder. You can specify a new empty folder.|"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'AUC_weighted',\n",
|
||||
" iteration_timeout_minutes = 60,\n",
|
||||
" iterations = 5,\n",
|
||||
" preprocess = False,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" X_valid = X_valid, \n",
|
||||
" y_valid = y_valid, \n",
|
||||
" path = project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Results"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Widget for Monitoring Runs\n",
|
||||
"\n",
|
||||
"The widget will first report a \"loading\" status while running the first iteration. After completing the first iteration, an auto-updating graph and table will be shown. The widget will refresh once per minute, so you should see the graph update as child runs complete.\n",
|
||||
"\n",
|
||||
"**Note:** The widget displays a link at the bottom. Use this link to open a web interface to explore the individual run details."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.widgets import RunDetails\n",
|
||||
"RunDetails(local_run).show() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"\n",
|
||||
"#### Retrieve All Child Runs\n",
|
||||
"You can also use SDK methods to fetch all the child runs and see individual metrics that we log."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"children = list(local_run.get_children())\n",
|
||||
"metricslist = {}\n",
|
||||
"for run in children:\n",
|
||||
" properties = run.get_properties()\n",
|
||||
" metrics = {k: v for k, v in run.get_metrics().items() if isinstance(v, float)}\n",
|
||||
" metricslist[int(properties['iteration'])] = metrics\n",
|
||||
" \n",
|
||||
"rundata = pd.DataFrame(metricslist).sort_index(1)\n",
|
||||
"rundata"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"### Retrieve the Best Model\n",
|
||||
"\n",
|
||||
"Below we select the best pipeline from our iterations. The `get_output` method returns the best run and the fitted model. The Model includes the pipeline and any pre-processing. Overloads on `get_output` allow you to retrieve the best run and fitted model for *any* logged metric or for a particular *iteration*."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"best_run, fitted_model = local_run.get_output()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Best Model Based on Any Other Metric\n",
|
||||
"Show the run and the model which has the smallest `accuracy` value:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# lookup_metric = \"accuracy\"\n",
|
||||
"# best_run, fitted_model = local_run.get_output(metric = lookup_metric)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#### Model from a Specific Iteration\n",
|
||||
"Show the run and the model from the third iteration:"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# iteration = 3\n",
|
||||
"# best_run, fitted_model = local_run.get_output(iteration = iteration)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Test"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Load test data.\n",
|
||||
"from pandas_ml import ConfusionMatrix\n",
|
||||
"\n",
|
||||
"data_test = fetch_20newsgroups(subset = 'test', categories = categories,\n",
|
||||
" shuffle = True, random_state = 42,\n",
|
||||
" remove = remove)\n",
|
||||
"\n",
|
||||
"X_test = vectorizer.transform(data_test.data)\n",
|
||||
"y_test = data_test.target\n",
|
||||
"\n",
|
||||
"# Test our best pipeline.\n",
|
||||
"\n",
|
||||
"y_pred = fitted_model.predict(X_test)\n",
|
||||
"y_pred_strings = [data_test.target_names[i] for i in y_pred]\n",
|
||||
"y_test_strings = [data_test.target_names[i] for i in y_test]\n",
|
||||
"\n",
|
||||
"cm = ConfusionMatrix(y_test_strings, y_pred_strings)\n",
|
||||
"print(cm)\n",
|
||||
"cm.plot()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-sparse-data-train-test-split
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -0,0 +1,113 @@
|
||||
# Table of Contents
|
||||
1. [Introduction](#introduction)
|
||||
1. [Setup using Azure Data Studio](#azuredatastudiosetup)
|
||||
1. [Energy demand example using Azure Data Studio](#azuredatastudioenergydemand)
|
||||
1. [Set using SQL Server Management Studio for SQL Server 2017 on Windows](#ssms2017)
|
||||
1. [Set using SQL Server Management Studio for SQL Server 2019 on Linux](#ssms2019)
|
||||
1. [Energy demand example using SQL Server Management Studio](#ssmsenergydemand)
|
||||
|
||||
|
||||
<a name="introduction"></a>
|
||||
# Introduction
|
||||
SQL Server 2017 or 2019 can call Azure ML automated machine learning to create models trained on data from SQL Server.
|
||||
This uses the sp_execute_external_script stored procedure, which can call Python scripts.
|
||||
SQL Server 2017 and SQL Server 2019 can both run on Windows or Linux.
|
||||
However, this integration is not available for SQL Server 2017 on Linux.
|
||||
|
||||
This folder shows how to setup the integration and has a sample that uses the integration to train and predict based on an energy demand dataset.
|
||||
|
||||
This integration is part of SQL Server and so can be used from any SQL client.
|
||||
These instructions show using it from Azure Data Studio or SQL Server Managment Studio.
|
||||
|
||||
<a name="azuredatastudiosetup"></a>
|
||||
## Setup using Azure Data Studio
|
||||
|
||||
These step show setting up the integration using Azure Data Studio.
|
||||
|
||||
1. If you don't already have SQL Server, you can install it from [https://www.microsoft.com/en-us/sql-server/sql-server-downloads](https://www.microsoft.com/en-us/sql-server/sql-server-downloads)
|
||||
1. Install Azure Data Studio from [https://docs.microsoft.com/en-us/sql/azure-data-studio/download?view=sql-server-2017](https://docs.microsoft.com/en-us/sql/azure-data-studio/download?view=sql-server-2017)
|
||||
1. Start Azure Data Studio and connect to SQL Server. [https://docs.microsoft.com/en-us/sql/azure-data-studio/sql-notebooks?view=sql-server-2017](https://docs.microsoft.com/en-us/sql/azure-data-studio/sql-notebooks?view=sql-server-2017)
|
||||
1. Create a database named "automl".
|
||||
1. Open the notebook how-to-use-azureml\automated-machine-learning\sql-server\setup\auto-ml-sql-setup.ipynb and follow the instructions in it.
|
||||
|
||||
<a name="azuredatastudioenergydemand"></a>
|
||||
## Energy demand example using Azure Data Studio
|
||||
|
||||
Once you have completed the setup, you can try the energy demand sample in the notebook energy-demand\auto-ml-sql-energy-demand.ipynb.
|
||||
This has cells to train a model, predict based on the model and show metrics for each pipeline run in training the model.
|
||||
|
||||
<a name="ssms2017"></a>
|
||||
## Setup using SQL Server Management Studio for SQL Server 2017 on Windows
|
||||
|
||||
These instruction setup the integration for SQL Server 2017 on Windows.
|
||||
|
||||
1. If you don't already have SQL Server, you can install it from [https://www.microsoft.com/en-us/sql-server/sql-server-downloads](https://www.microsoft.com/en-us/sql-server/sql-server-downloads)
|
||||
2. Enable external scripts with the following commands:
|
||||
```sh
|
||||
sp_configure 'external scripts enabled',1
|
||||
reconfigure with override
|
||||
```
|
||||
3. Stop SQL Server.
|
||||
4. Install the automated machine learning libraries using the following commands from Administrator command prompt (If you are using a non-default SQL Server instance name, replace MSSQLSERVER in the second command with the instance name)
|
||||
```sh
|
||||
cd "C:\Program Files\Microsoft SQL Server"
|
||||
cd "MSSQL14.MSSQLSERVER\PYTHON_SERVICES"
|
||||
python.exe -m pip install azureml-sdk[automl]
|
||||
python.exe -m pip install --upgrade numpy
|
||||
python.exe -m pip install --upgrade sklearn
|
||||
```
|
||||
5. Start SQL Server and the service "SQL Server Launchpad service".
|
||||
6. In Windows Firewall, click on advanced settings and in Outbound Rules, disable "Block network access for R local user accounts in SQL Server instance xxxx".
|
||||
7. Execute the files in the setup folder in SQL Server Management Studio: aml_model.sql, aml_connection.sql, AutoMLGetMetrics.sql, AutoMLPredict.sql and AutoMLTrain.sql
|
||||
8. Create an Azure Machine Learning Workspace. You can use the instructions at: [https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-workspace ](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-workspace)
|
||||
9. Create a config.json file file using the subscription id, resource group name and workspace name that you used to create the workspace. The file is described at: [https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-environment#workspace](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-environment#workspace)
|
||||
10. Create an Azure service principal. You can do this with the commands:
|
||||
```sh
|
||||
az login
|
||||
az account set --subscription subscriptionid
|
||||
az ad sp create-for-rbac --name principlename --password password
|
||||
```
|
||||
11. Insert the values \<tenant\>, \<AppId\> and \<password\> returned by create-for-rbac above into the aml_connection table. Set \<path\> as the absolute path to your config.json file. Set the name to “Default”.
|
||||
|
||||
<a name="ssms2019"></a>
|
||||
## Setup using SQL Server Management Studio for SQL Server 2019 on Linux
|
||||
1. Install SQL Server 2019 from: [https://www.microsoft.com/en-us/sql-server/sql-server-downloads](https://www.microsoft.com/en-us/sql-server/sql-server-downloads)
|
||||
2. Install machine learning support from: [https://docs.microsoft.com/en-us/sql/linux/sql-server-linux-setup-machine-learning?view=sqlallproducts-allversions#ubuntu](https://docs.microsoft.com/en-us/sql/linux/sql-server-linux-setup-machine-learning?view=sqlallproducts-allversions#ubuntu)
|
||||
3. Then install SQL Server management Studio from [https://docs.microsoft.com/en-us/sql/ssms/download-sql-server-management-studio-ssms?view=sql-server-2017](https://docs.microsoft.com/en-us/sql/ssms/download-sql-server-management-studio-ssms?view=sql-server-2017)
|
||||
4. Enable external scripts with the following commands:
|
||||
```sh
|
||||
sp_configure 'external scripts enabled',1
|
||||
reconfigure with override
|
||||
```
|
||||
5. Stop SQL Server.
|
||||
6. Install the automated machine learning libraries using the following commands from Administrator command (If you are using a non-default SQL Server instance name, replace MSSQLSERVER in the second command with the instance name):
|
||||
```sh
|
||||
sudo /opt/mssql/mlservices/bin/python/python -m pip install azureml-sdk[automl]
|
||||
sudo /opt/mssql/mlservices/bin/python/python -m pip install --upgrade numpy
|
||||
sudo /opt/mssql/mlservices/bin/python/python -m pip install --upgrade sklearn
|
||||
```
|
||||
7. Start SQL Server.
|
||||
8. Execute the files aml_model.sql, aml_connection.sql, AutoMLGetMetrics.sql, AutoMLPredict.sql and AutoMLTrain.sql in SQL Server Management Studio.
|
||||
9. Create an Azure Machine Learning Workspace. You can use the instructions at: [https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-workspace](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-workspace)
|
||||
10. Create a config.json file file using the subscription id, resource group name and workspace name that you use to create the workspace. The file is described at: [https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-environment#workspace](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-environment#workspace)
|
||||
11. Create an Azure service principal. You can do this with the commands:
|
||||
```sh
|
||||
az login
|
||||
az account set --subscription subscriptionid
|
||||
az ad sp create-for-rbac --name principlename --password password
|
||||
```
|
||||
12. Insert the values \<tenant\>, \<AppId\> and \<password\> returned by create-for-rbac above into the aml_connection table. Set \<path\> as the absolute path to your config.json file. Set the name to “Default”.
|
||||
|
||||
<a name="ssmsenergydemand"></a>
|
||||
## Energy demand example using SQL Server Management Studio
|
||||
|
||||
Once you have completed the setup, you can try the energy demand sample queries.
|
||||
First you need to load the sample data in the database.
|
||||
1. In SQL Server Management Studio, you can right-click the database, select Tasks, then Import Flat file.
|
||||
1. Select the file MachineLearningNotebooks\notebooks\how-to-use-azureml\automated-machine-learning\forecasting-energy-demand\nyc_energy.csv.
|
||||
1. When you get to the column definition page, allow nulls for all columns.
|
||||
|
||||
You can then run the queries in the energy-demand folder:
|
||||
* TrainEnergyDemand.sql runs AutoML, trains multiple models on data and selects the best model.
|
||||
* PredictEnergyDemand.sql predicts based on the most recent training run.
|
||||
* GetMetrics.sql returns all the metrics for each model in the most recent training run.
|
||||
@@ -0,0 +1,23 @@
|
||||
-- This shows using the AutoMLForecast stored procedure to predict using a forecasting model for the nyc_energy dataset.
|
||||
|
||||
DECLARE @Model NVARCHAR(MAX) = (SELECT TOP 1 Model FROM dbo.aml_model
|
||||
WHERE ExperimentName = 'automl-sql-forecast'
|
||||
ORDER BY CreatedDate DESC)
|
||||
|
||||
DECLARE @max_horizon INT = 48
|
||||
DECLARE @split_time NVARCHAR(22) = (SELECT DATEADD(hour, -@max_horizon, MAX(timeStamp)) FROM nyc_energy WHERE demand IS NOT NULL)
|
||||
|
||||
DECLARE @TestDataQuery NVARCHAR(MAX) = '
|
||||
SELECT CAST(timeStamp AS NVARCHAR(30)) AS timeStamp,
|
||||
demand,
|
||||
precip,
|
||||
temp
|
||||
FROM nyc_energy
|
||||
WHERE demand IS NOT NULL AND precip IS NOT NULL AND temp IS NOT NULL
|
||||
AND timeStamp > ''' + @split_time + ''''
|
||||
|
||||
EXEC dbo.AutoMLForecast @input_query=@TestDataQuery,
|
||||
@label_column='demand',
|
||||
@time_column_name='timeStamp',
|
||||
@model=@model
|
||||
WITH RESULT SETS ((timeStamp DATETIME, grain NVARCHAR(255), predicted_demand FLOAT, precip FLOAT, temp FLOAT, actual_demand FLOAT))
|
||||
@@ -0,0 +1,10 @@
|
||||
-- This lists all the metrics for all iterations for the most recent run.
|
||||
|
||||
DECLARE @RunId NVARCHAR(43)
|
||||
DECLARE @ExperimentName NVARCHAR(255)
|
||||
|
||||
SELECT TOP 1 @ExperimentName=ExperimentName, @RunId=SUBSTRING(RunId, 1, 43)
|
||||
FROM aml_model
|
||||
ORDER BY CreatedDate DESC
|
||||
|
||||
EXEC dbo.AutoMLGetMetrics @RunId, @ExperimentName
|
||||
@@ -0,0 +1,25 @@
|
||||
-- This shows using the AutoMLTrain stored procedure to create a forecasting model for the nyc_energy dataset.
|
||||
|
||||
DECLARE @max_horizon INT = 48
|
||||
DECLARE @split_time NVARCHAR(22) = (SELECT DATEADD(hour, -@max_horizon, MAX(timeStamp)) FROM nyc_energy WHERE demand IS NOT NULL)
|
||||
|
||||
DECLARE @TrainDataQuery NVARCHAR(MAX) = '
|
||||
SELECT CAST(timeStamp as NVARCHAR(30)) as timeStamp,
|
||||
demand,
|
||||
precip,
|
||||
temp
|
||||
FROM nyc_energy
|
||||
WHERE demand IS NOT NULL AND precip IS NOT NULL AND temp IS NOT NULL
|
||||
and timeStamp < ''' + @split_time + ''''
|
||||
|
||||
INSERT INTO dbo.aml_model(RunId, ExperimentName, Model, LogFileText, WorkspaceName)
|
||||
EXEC dbo.AutoMLTrain @input_query= @TrainDataQuery,
|
||||
@label_column='demand',
|
||||
@task='forecasting',
|
||||
@iterations=10,
|
||||
@iteration_timeout_minutes=5,
|
||||
@time_column_name='timeStamp',
|
||||
@max_horizon=@max_horizon,
|
||||
@experiment_name='automl-sql-forecast',
|
||||
@primary_metric='normalized_root_mean_squared_error'
|
||||
|
||||
@@ -0,0 +1,141 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "sql"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "jeffshep"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"name": "sql",
|
||||
"version": ""
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Train a model and use it for prediction\r\n",
|
||||
"\r\n",
|
||||
"Before running this notebook, run the auto-ml-sql-setup.ipynb notebook."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Set the default database"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"USE [automl]\r\n",
|
||||
"GO"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Use the AutoMLTrain stored procedure to create a forecasting model for the nyc_energy dataset."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"INSERT INTO dbo.aml_model(RunId, ExperimentName, Model, LogFileText, WorkspaceName)\r\n",
|
||||
"EXEC dbo.AutoMLTrain @input_query='\r\n",
|
||||
"SELECT CAST(timeStamp as NVARCHAR(30)) as timeStamp,\r\n",
|
||||
" demand,\r\n",
|
||||
"\t precip,\r\n",
|
||||
"\t temp,\r\n",
|
||||
"\t CASE WHEN timeStamp < ''2017-01-01'' THEN 0 ELSE 1 END AS is_validate_column\r\n",
|
||||
"FROM nyc_energy\r\n",
|
||||
"WHERE demand IS NOT NULL AND precip IS NOT NULL AND temp IS NOT NULL\r\n",
|
||||
"and timeStamp < ''2017-02-01''',\r\n",
|
||||
"@label_column='demand',\r\n",
|
||||
"@task='forecasting',\r\n",
|
||||
"@iterations=10,\r\n",
|
||||
"@iteration_timeout_minutes=5,\r\n",
|
||||
"@time_column_name='timeStamp',\r\n",
|
||||
"@is_validate_column='is_validate_column',\r\n",
|
||||
"@experiment_name='automl-sql-forecast',\r\n",
|
||||
"@primary_metric='normalized_root_mean_squared_error'"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Use the AutoMLPredict stored procedure to predict using the forecasting model for the nyc_energy dataset."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"DECLARE @Model NVARCHAR(MAX) = (SELECT TOP 1 Model FROM dbo.aml_model\r\n",
|
||||
" WHERE ExperimentName = 'automl-sql-forecast'\r\n",
|
||||
"\t\t\t\t\t\t\t\tORDER BY CreatedDate DESC)\r\n",
|
||||
"\r\n",
|
||||
"EXEC dbo.AutoMLPredict @input_query='\r\n",
|
||||
"SELECT CAST(timeStamp AS NVARCHAR(30)) AS timeStamp,\r\n",
|
||||
" demand,\r\n",
|
||||
"\t precip,\r\n",
|
||||
"\t temp\r\n",
|
||||
"FROM nyc_energy\r\n",
|
||||
"WHERE demand IS NOT NULL AND precip IS NOT NULL AND temp IS NOT NULL\r\n",
|
||||
"AND timeStamp >= ''2017-02-01''',\r\n",
|
||||
"@label_column='demand',\r\n",
|
||||
"@model=@model\r\n",
|
||||
"WITH RESULT SETS ((timeStamp NVARCHAR(30), actual_demand FLOAT, precip FLOAT, temp FLOAT, predicted_demand FLOAT))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## List all the metrics for all iterations for the most recent training run."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"DECLARE @RunId NVARCHAR(43)\r\n",
|
||||
"DECLARE @ExperimentName NVARCHAR(255)\r\n",
|
||||
"\r\n",
|
||||
"SELECT TOP 1 @ExperimentName=ExperimentName, @RunId=SUBSTRING(RunId, 1, 43)\r\n",
|
||||
"FROM aml_model\r\n",
|
||||
"ORDER BY CreatedDate DESC\r\n",
|
||||
"\r\n",
|
||||
"EXEC dbo.AutoMLGetMetrics @RunId, @ExperimentName"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,92 @@
|
||||
-- This procedure forecast values based on a forecasting model returned by AutoMLTrain.
|
||||
-- It returns a dataset with the forecasted values.
|
||||
SET ANSI_NULLS ON
|
||||
GO
|
||||
SET QUOTED_IDENTIFIER ON
|
||||
GO
|
||||
CREATE OR ALTER PROCEDURE [dbo].[AutoMLForecast]
|
||||
(
|
||||
@input_query NVARCHAR(MAX), -- A SQL query returning data to predict on.
|
||||
@model NVARCHAR(MAX), -- A model returned from AutoMLTrain.
|
||||
@time_column_name NVARCHAR(255)='', -- The name of the timestamp column for forecasting.
|
||||
@label_column NVARCHAR(255)='', -- Optional name of the column from input_query, which should be ignored when predicting
|
||||
@y_query_column NVARCHAR(255)='', -- Optional value column that can be used for predicting.
|
||||
-- If specified, this can contain values for past times (after the model was trained)
|
||||
-- and contain Nan for future times.
|
||||
@forecast_column_name NVARCHAR(255) = 'predicted'
|
||||
-- The name of the output column containing the forecast value.
|
||||
) AS
|
||||
BEGIN
|
||||
|
||||
EXEC sp_execute_external_script @language = N'Python', @script = N'import pandas as pd
|
||||
import azureml.core
|
||||
import numpy as np
|
||||
from azureml.train.automl import AutoMLConfig
|
||||
import pickle
|
||||
import codecs
|
||||
|
||||
model_obj = pickle.loads(codecs.decode(model.encode(), "base64"))
|
||||
|
||||
test_data = input_data.copy()
|
||||
|
||||
if label_column != "" and label_column is not None:
|
||||
y_test = test_data.pop(label_column).values
|
||||
else:
|
||||
y_test = None
|
||||
|
||||
if y_query_column != "" and y_query_column is not None:
|
||||
y_query = test_data.pop(y_query_column).values
|
||||
else:
|
||||
y_query = np.repeat(np.nan, len(test_data))
|
||||
|
||||
X_test = test_data
|
||||
|
||||
if time_column_name != "" and time_column_name is not None:
|
||||
X_test[time_column_name] = pd.to_datetime(X_test[time_column_name])
|
||||
|
||||
y_fcst, X_trans = model_obj.forecast(X_test, y_query)
|
||||
|
||||
def align_outputs(y_forecast, X_trans, X_test, y_test, forecast_column_name):
|
||||
# Demonstrates how to get the output aligned to the inputs
|
||||
# using pandas indexes. Helps understand what happened if
|
||||
# the output shape differs from the input shape, or if
|
||||
# the data got re-sorted by time and grain during forecasting.
|
||||
|
||||
# Typical causes of misalignment are:
|
||||
# * we predicted some periods that were missing in actuals -> drop from eval
|
||||
# * model was asked to predict past max_horizon -> increase max horizon
|
||||
# * data at start of X_test was needed for lags -> provide previous periods
|
||||
|
||||
df_fcst = pd.DataFrame({forecast_column_name : y_forecast})
|
||||
# y and X outputs are aligned by forecast() function contract
|
||||
df_fcst.index = X_trans.index
|
||||
|
||||
# align original X_test to y_test
|
||||
X_test_full = X_test.copy()
|
||||
if y_test is not None:
|
||||
X_test_full[label_column] = y_test
|
||||
|
||||
# X_test_full does not include origin, so reset for merge
|
||||
df_fcst.reset_index(inplace=True)
|
||||
X_test_full = X_test_full.reset_index().drop(columns=''index'')
|
||||
together = df_fcst.merge(X_test_full, how=''right'')
|
||||
|
||||
# drop rows where prediction or actuals are nan
|
||||
# happens because of missing actuals
|
||||
# or at edges of time due to lags/rolling windows
|
||||
clean = together[together[[label_column, forecast_column_name]].notnull().all(axis=1)]
|
||||
return(clean)
|
||||
|
||||
combined_output = align_outputs(y_fcst, X_trans, X_test, y_test, forecast_column_name)
|
||||
|
||||
'
|
||||
, @input_data_1 = @input_query
|
||||
, @input_data_1_name = N'input_data'
|
||||
, @output_data_1_name = N'combined_output'
|
||||
, @params = N'@model NVARCHAR(MAX), @time_column_name NVARCHAR(255), @label_column NVARCHAR(255), @y_query_column NVARCHAR(255), @forecast_column_name NVARCHAR(255)'
|
||||
, @model = @model
|
||||
, @time_column_name = @time_column_name
|
||||
, @label_column = @label_column
|
||||
, @y_query_column = @y_query_column
|
||||
, @forecast_column_name = @forecast_column_name
|
||||
END
|
||||
@@ -0,0 +1,70 @@
|
||||
-- This procedure returns a list of metrics for each iteration of a run.
|
||||
SET ANSI_NULLS ON
|
||||
GO
|
||||
SET QUOTED_IDENTIFIER ON
|
||||
GO
|
||||
CREATE OR ALTER PROCEDURE [dbo].[AutoMLGetMetrics]
|
||||
(
|
||||
@run_id NVARCHAR(250), -- The RunId
|
||||
@experiment_name NVARCHAR(32)='automl-sql-test', -- This can be used to find the experiment in the Azure Portal.
|
||||
@connection_name NVARCHAR(255)='default' -- The AML connection to use.
|
||||
) AS
|
||||
BEGIN
|
||||
DECLARE @tenantid NVARCHAR(255)
|
||||
DECLARE @appid NVARCHAR(255)
|
||||
DECLARE @password NVARCHAR(255)
|
||||
DECLARE @config_file NVARCHAR(255)
|
||||
|
||||
SELECT @tenantid=TenantId, @appid=AppId, @password=Password, @config_file=ConfigFile
|
||||
FROM aml_connection
|
||||
WHERE ConnectionName = @connection_name;
|
||||
|
||||
EXEC sp_execute_external_script @language = N'Python', @script = N'import pandas as pd
|
||||
import logging
|
||||
import azureml.core
|
||||
import numpy as np
|
||||
from azureml.core.experiment import Experiment
|
||||
from azureml.train.automl.run import AutoMLRun
|
||||
from azureml.core.authentication import ServicePrincipalAuthentication
|
||||
from azureml.core.workspace import Workspace
|
||||
|
||||
auth = ServicePrincipalAuthentication(tenantid, appid, password)
|
||||
|
||||
ws = Workspace.from_config(path=config_file, auth=auth)
|
||||
|
||||
experiment = Experiment(ws, experiment_name)
|
||||
|
||||
ml_run = AutoMLRun(experiment = experiment, run_id = run_id)
|
||||
|
||||
children = list(ml_run.get_children())
|
||||
iterationlist = []
|
||||
metricnamelist = []
|
||||
metricvaluelist = []
|
||||
|
||||
for run in children:
|
||||
properties = run.get_properties()
|
||||
if "iteration" in properties:
|
||||
iteration = int(properties["iteration"])
|
||||
for metric_name, metric_value in run.get_metrics().items():
|
||||
if isinstance(metric_value, float):
|
||||
iterationlist.append(iteration)
|
||||
metricnamelist.append(metric_name)
|
||||
metricvaluelist.append(metric_value)
|
||||
|
||||
metrics = pd.DataFrame({"iteration": iterationlist, "metric_name": metricnamelist, "metric_value": metricvaluelist})
|
||||
'
|
||||
, @output_data_1_name = N'metrics'
|
||||
, @params = N'@run_id NVARCHAR(250),
|
||||
@experiment_name NVARCHAR(32),
|
||||
@tenantid NVARCHAR(255),
|
||||
@appid NVARCHAR(255),
|
||||
@password NVARCHAR(255),
|
||||
@config_file NVARCHAR(255)'
|
||||
, @run_id = @run_id
|
||||
, @experiment_name = @experiment_name
|
||||
, @tenantid = @tenantid
|
||||
, @appid = @appid
|
||||
, @password = @password
|
||||
, @config_file = @config_file
|
||||
WITH RESULT SETS ((iteration INT, metric_name NVARCHAR(100), metric_value FLOAT))
|
||||
END
|
||||
@@ -0,0 +1,41 @@
|
||||
-- This procedure predicts values based on a model returned by AutoMLTrain and a dataset.
|
||||
-- It returns the dataset with a new column added, which is the predicted value.
|
||||
SET ANSI_NULLS ON
|
||||
GO
|
||||
SET QUOTED_IDENTIFIER ON
|
||||
GO
|
||||
CREATE OR ALTER PROCEDURE [dbo].[AutoMLPredict]
|
||||
(
|
||||
@input_query NVARCHAR(MAX), -- A SQL query returning data to predict on.
|
||||
@model NVARCHAR(MAX), -- A model returned from AutoMLTrain.
|
||||
@label_column NVARCHAR(255)='' -- Optional name of the column from input_query, which should be ignored when predicting
|
||||
) AS
|
||||
BEGIN
|
||||
|
||||
EXEC sp_execute_external_script @language = N'Python', @script = N'import pandas as pd
|
||||
import azureml.core
|
||||
import numpy as np
|
||||
from azureml.train.automl import AutoMLConfig
|
||||
import pickle
|
||||
import codecs
|
||||
|
||||
model_obj = pickle.loads(codecs.decode(model.encode(), "base64"))
|
||||
|
||||
test_data = input_data.copy()
|
||||
|
||||
if label_column != "" and label_column is not None:
|
||||
y_test = test_data.pop(label_column).values
|
||||
X_test = test_data
|
||||
|
||||
predicted = model_obj.predict(X_test)
|
||||
|
||||
combined_output = input_data.assign(predicted=predicted)
|
||||
|
||||
'
|
||||
, @input_data_1 = @input_query
|
||||
, @input_data_1_name = N'input_data'
|
||||
, @output_data_1_name = N'combined_output'
|
||||
, @params = N'@model NVARCHAR(MAX), @label_column NVARCHAR(255)'
|
||||
, @model = @model
|
||||
, @label_column = @label_column
|
||||
END
|
||||
@@ -0,0 +1,240 @@
|
||||
-- This stored procedure uses automated machine learning to train several models
|
||||
-- and returns the best model.
|
||||
--
|
||||
-- The result set has several columns:
|
||||
-- best_run - iteration ID for the best model
|
||||
-- experiment_name - experiment name pass in with the @experiment_name parameter
|
||||
-- fitted_model - best model found
|
||||
-- log_file_text - AutoML debug_log contents
|
||||
-- workspace - name of the Azure ML workspace where run history is stored
|
||||
--
|
||||
-- An example call for a classification problem is:
|
||||
-- insert into dbo.aml_model(RunId, ExperimentName, Model, LogFileText, WorkspaceName)
|
||||
-- exec dbo.AutoMLTrain @input_query='
|
||||
-- SELECT top 100000
|
||||
-- CAST([pickup_datetime] AS NVARCHAR(30)) AS pickup_datetime
|
||||
-- ,CAST([dropoff_datetime] AS NVARCHAR(30)) AS dropoff_datetime
|
||||
-- ,[passenger_count]
|
||||
-- ,[trip_time_in_secs]
|
||||
-- ,[trip_distance]
|
||||
-- ,[payment_type]
|
||||
-- ,[tip_class]
|
||||
-- FROM [dbo].[nyctaxi_sample] order by [hack_license] ',
|
||||
-- @label_column = 'tip_class',
|
||||
-- @iterations=10
|
||||
--
|
||||
-- An example call for forecasting is:
|
||||
-- insert into dbo.aml_model(RunId, ExperimentName, Model, LogFileText, WorkspaceName)
|
||||
-- exec dbo.AutoMLTrain @input_query='
|
||||
-- select cast(timeStamp as nvarchar(30)) as timeStamp,
|
||||
-- demand,
|
||||
-- precip,
|
||||
-- temp,
|
||||
-- case when timeStamp < ''2017-01-01'' then 0 else 1 end as is_validate_column
|
||||
-- from nyc_energy
|
||||
-- where demand is not null and precip is not null and temp is not null
|
||||
-- and timeStamp < ''2017-02-01''',
|
||||
-- @label_column='demand',
|
||||
-- @task='forecasting',
|
||||
-- @iterations=10,
|
||||
-- @iteration_timeout_minutes=5,
|
||||
-- @time_column_name='timeStamp',
|
||||
-- @is_validate_column='is_validate_column',
|
||||
-- @experiment_name='automl-sql-forecast',
|
||||
-- @primary_metric='normalized_root_mean_squared_error'
|
||||
|
||||
SET ANSI_NULLS ON
|
||||
GO
|
||||
SET QUOTED_IDENTIFIER ON
|
||||
GO
|
||||
CREATE OR ALTER PROCEDURE [dbo].[AutoMLTrain]
|
||||
(
|
||||
@input_query NVARCHAR(MAX), -- The SQL Query that will return the data to train and validate the model.
|
||||
@label_column NVARCHAR(255)='Label', -- The name of the column in the result of @input_query that is the label.
|
||||
@primary_metric NVARCHAR(40)='AUC_weighted', -- The metric to optimize.
|
||||
@iterations INT=100, -- The maximum number of pipelines to train.
|
||||
@task NVARCHAR(40)='classification', -- The type of task. Can be classification, regression or forecasting.
|
||||
@experiment_name NVARCHAR(32)='automl-sql-test', -- This can be used to find the experiment in the Azure Portal.
|
||||
@iteration_timeout_minutes INT = 15, -- The maximum time in minutes for training a single pipeline.
|
||||
@experiment_timeout_minutes INT = 60, -- The maximum time in minutes for training all pipelines.
|
||||
@n_cross_validations INT = 3, -- The number of cross validations.
|
||||
@blacklist_models NVARCHAR(MAX) = '', -- A comma separated list of algos that will not be used.
|
||||
-- The list of possible models can be found at:
|
||||
-- https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#configure-your-experiment-settings
|
||||
@whitelist_models NVARCHAR(MAX) = '', -- A comma separated list of algos that can be used.
|
||||
-- The list of possible models can be found at:
|
||||
-- https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#configure-your-experiment-settings
|
||||
@experiment_exit_score FLOAT = 0, -- Stop the experiment if this score is acheived.
|
||||
@sample_weight_column NVARCHAR(255)='', -- The name of the column in the result of @input_query that gives a sample weight.
|
||||
@is_validate_column NVARCHAR(255)='', -- The name of the column in the result of @input_query that indicates if the row is for training or validation.
|
||||
-- In the values of the column, 0 means for training and 1 means for validation.
|
||||
@time_column_name NVARCHAR(255)='', -- The name of the timestamp column for forecasting.
|
||||
@connection_name NVARCHAR(255)='default', -- The AML connection to use.
|
||||
@max_horizon INT = 0 -- A forecast horizon is a time span into the future (or just beyond the latest date in the training data)
|
||||
-- where forecasts of the target quantity are needed.
|
||||
-- For example, if data is recorded daily and max_horizon is 5, we will predict 5 days ahead.
|
||||
) AS
|
||||
BEGIN
|
||||
|
||||
DECLARE @tenantid NVARCHAR(255)
|
||||
DECLARE @appid NVARCHAR(255)
|
||||
DECLARE @password NVARCHAR(255)
|
||||
DECLARE @config_file NVARCHAR(255)
|
||||
|
||||
SELECT @tenantid=TenantId, @appid=AppId, @password=Password, @config_file=ConfigFile
|
||||
FROM aml_connection
|
||||
WHERE ConnectionName = @connection_name;
|
||||
|
||||
EXEC sp_execute_external_script @language = N'Python', @script = N'import pandas as pd
|
||||
import logging
|
||||
import azureml.core
|
||||
import pandas as pd
|
||||
import numpy as np
|
||||
from azureml.core.experiment import Experiment
|
||||
from azureml.train.automl import AutoMLConfig
|
||||
from sklearn import datasets
|
||||
import pickle
|
||||
import codecs
|
||||
from azureml.core.authentication import ServicePrincipalAuthentication
|
||||
from azureml.core.workspace import Workspace
|
||||
|
||||
if __name__.startswith("sqlindb"):
|
||||
auth = ServicePrincipalAuthentication(tenantid, appid, password)
|
||||
|
||||
ws = Workspace.from_config(path=config_file, auth=auth)
|
||||
|
||||
project_folder = "./sample_projects/" + experiment_name
|
||||
|
||||
experiment = Experiment(ws, experiment_name)
|
||||
|
||||
data_train = input_data
|
||||
X_valid = None
|
||||
y_valid = None
|
||||
sample_weight_valid = None
|
||||
|
||||
if is_validate_column != "" and is_validate_column is not None:
|
||||
data_train = input_data[input_data[is_validate_column] <= 0]
|
||||
data_valid = input_data[input_data[is_validate_column] > 0]
|
||||
data_train.pop(is_validate_column)
|
||||
data_valid.pop(is_validate_column)
|
||||
y_valid = data_valid.pop(label_column).values
|
||||
if sample_weight_column != "" and sample_weight_column is not None:
|
||||
sample_weight_valid = data_valid.pop(sample_weight_column).values
|
||||
X_valid = data_valid
|
||||
n_cross_validations = None
|
||||
|
||||
y_train = data_train.pop(label_column).values
|
||||
|
||||
sample_weight = None
|
||||
if sample_weight_column != "" and sample_weight_column is not None:
|
||||
sample_weight = data_train.pop(sample_weight_column).values
|
||||
|
||||
X_train = data_train
|
||||
|
||||
if experiment_timeout_minutes == 0:
|
||||
experiment_timeout_minutes = None
|
||||
|
||||
if experiment_exit_score == 0:
|
||||
experiment_exit_score = None
|
||||
|
||||
if blacklist_models == "":
|
||||
blacklist_models = None
|
||||
|
||||
if blacklist_models is not None:
|
||||
blacklist_models = blacklist_models.replace(" ", "").split(",")
|
||||
|
||||
if whitelist_models == "":
|
||||
whitelist_models = None
|
||||
|
||||
if whitelist_models is not None:
|
||||
whitelist_models = whitelist_models.replace(" ", "").split(",")
|
||||
|
||||
automl_settings = {}
|
||||
preprocess = True
|
||||
if time_column_name != "" and time_column_name is not None:
|
||||
automl_settings = { "time_column_name": time_column_name }
|
||||
preprocess = False
|
||||
if max_horizon > 0:
|
||||
automl_settings["max_horizon"] = max_horizon
|
||||
|
||||
log_file_name = "automl_sqlindb_errors.log"
|
||||
|
||||
automl_config = AutoMLConfig(task = task,
|
||||
debug_log = log_file_name,
|
||||
primary_metric = primary_metric,
|
||||
iteration_timeout_minutes = iteration_timeout_minutes,
|
||||
experiment_timeout_minutes = experiment_timeout_minutes,
|
||||
iterations = iterations,
|
||||
n_cross_validations = n_cross_validations,
|
||||
preprocess = preprocess,
|
||||
verbosity = logging.INFO,
|
||||
X = X_train,
|
||||
y = y_train,
|
||||
path = project_folder,
|
||||
blacklist_models = blacklist_models,
|
||||
whitelist_models = whitelist_models,
|
||||
experiment_exit_score = experiment_exit_score,
|
||||
sample_weight = sample_weight,
|
||||
X_valid = X_valid,
|
||||
y_valid = y_valid,
|
||||
sample_weight_valid = sample_weight_valid,
|
||||
**automl_settings)
|
||||
|
||||
local_run = experiment.submit(automl_config, show_output = True)
|
||||
|
||||
best_run, fitted_model = local_run.get_output()
|
||||
|
||||
pickled_model = codecs.encode(pickle.dumps(fitted_model), "base64").decode()
|
||||
|
||||
log_file_text = ""
|
||||
|
||||
try:
|
||||
with open(log_file_name, "r") as log_file:
|
||||
log_file_text = log_file.read()
|
||||
except:
|
||||
log_file_text = "Log file not found"
|
||||
|
||||
returned_model = pd.DataFrame({"best_run": [best_run.id], "experiment_name": [experiment_name], "fitted_model": [pickled_model], "log_file_text": [log_file_text], "workspace": [ws.name]}, dtype=np.dtype(np.str))
|
||||
'
|
||||
, @input_data_1 = @input_query
|
||||
, @input_data_1_name = N'input_data'
|
||||
, @output_data_1_name = N'returned_model'
|
||||
, @params = N'@label_column NVARCHAR(255),
|
||||
@primary_metric NVARCHAR(40),
|
||||
@iterations INT, @task NVARCHAR(40),
|
||||
@experiment_name NVARCHAR(32),
|
||||
@iteration_timeout_minutes INT,
|
||||
@experiment_timeout_minutes INT,
|
||||
@n_cross_validations INT,
|
||||
@blacklist_models NVARCHAR(MAX),
|
||||
@whitelist_models NVARCHAR(MAX),
|
||||
@experiment_exit_score FLOAT,
|
||||
@sample_weight_column NVARCHAR(255),
|
||||
@is_validate_column NVARCHAR(255),
|
||||
@time_column_name NVARCHAR(255),
|
||||
@tenantid NVARCHAR(255),
|
||||
@appid NVARCHAR(255),
|
||||
@password NVARCHAR(255),
|
||||
@config_file NVARCHAR(255),
|
||||
@max_horizon INT'
|
||||
, @label_column = @label_column
|
||||
, @primary_metric = @primary_metric
|
||||
, @iterations = @iterations
|
||||
, @task = @task
|
||||
, @experiment_name = @experiment_name
|
||||
, @iteration_timeout_minutes = @iteration_timeout_minutes
|
||||
, @experiment_timeout_minutes = @experiment_timeout_minutes
|
||||
, @n_cross_validations = @n_cross_validations
|
||||
, @blacklist_models = @blacklist_models
|
||||
, @whitelist_models = @whitelist_models
|
||||
, @experiment_exit_score = @experiment_exit_score
|
||||
, @sample_weight_column = @sample_weight_column
|
||||
, @is_validate_column = @is_validate_column
|
||||
, @time_column_name = @time_column_name
|
||||
, @tenantid = @tenantid
|
||||
, @appid = @appid
|
||||
, @password = @password
|
||||
, @config_file = @config_file
|
||||
, @max_horizon = @max_horizon
|
||||
WITH RESULT SETS ((best_run NVARCHAR(250), experiment_name NVARCHAR(100), fitted_model VARCHAR(MAX), log_file_text NVARCHAR(MAX), workspace NVARCHAR(100)))
|
||||
END
|
||||
@@ -0,0 +1,18 @@
|
||||
-- This is a table to store the Azure ML connection information.
|
||||
SET ANSI_NULLS ON
|
||||
GO
|
||||
|
||||
SET QUOTED_IDENTIFIER ON
|
||||
GO
|
||||
|
||||
CREATE TABLE [dbo].[aml_connection](
|
||||
[Id] [int] IDENTITY(1,1) NOT NULL PRIMARY KEY,
|
||||
[ConnectionName] [nvarchar](255) NULL,
|
||||
[TenantId] [nvarchar](255) NULL,
|
||||
[AppId] [nvarchar](255) NULL,
|
||||
[Password] [nvarchar](255) NULL,
|
||||
[ConfigFile] [nvarchar](255) NULL
|
||||
) ON [PRIMARY]
|
||||
GO
|
||||
|
||||
|
||||
@@ -0,0 +1,22 @@
|
||||
-- This is a table to hold the results from the AutoMLTrain procedure.
|
||||
SET ANSI_NULLS ON
|
||||
GO
|
||||
|
||||
SET QUOTED_IDENTIFIER ON
|
||||
GO
|
||||
|
||||
CREATE TABLE [dbo].[aml_model](
|
||||
[Id] [int] IDENTITY(1,1) NOT NULL PRIMARY KEY,
|
||||
[Model] [varchar](max) NOT NULL, -- The model, which can be passed to AutoMLPredict for testing or prediction.
|
||||
[RunId] [nvarchar](250) NULL, -- The RunId, which can be used to view the model in the Azure Portal.
|
||||
[CreatedDate] [datetime] NULL,
|
||||
[ExperimentName] [nvarchar](100) NULL, -- Azure ML Experiment Name
|
||||
[WorkspaceName] [nvarchar](100) NULL, -- Azure ML Workspace Name
|
||||
[LogFileText] [nvarchar](max) NULL
|
||||
)
|
||||
GO
|
||||
|
||||
ALTER TABLE [dbo].[aml_model] ADD DEFAULT (getutcdate()) FOR [CreatedDate]
|
||||
GO
|
||||
|
||||
|
||||
@@ -0,0 +1,562 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "sql"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "jeffshep"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"name": "sql",
|
||||
"version": ""
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Set up Azure ML Automated Machine Learning on SQL Server 2019 CTP 2.4 big data cluster\r\n",
|
||||
"\r\n",
|
||||
"\\# Prerequisites: \r\n",
|
||||
"\\# - An Azure subscription and resource group \r\n",
|
||||
"\\# - An Azure Machine Learning workspace \r\n",
|
||||
"\\# - A SQL Server 2019 CTP 2.4 big data cluster with Internet access and a database named 'automl' \r\n",
|
||||
"\\# - Azure CLI \r\n",
|
||||
"\\# - kubectl command \r\n",
|
||||
"\\# - The https://github.com/Azure/MachineLearningNotebooks repository downloaded (cloned) to your local machine\r\n",
|
||||
"\r\n",
|
||||
"\\# In the 'automl' database, create a table named 'dbo.nyc_energy' as follows: \r\n",
|
||||
"\\# - In SQL Server Management Studio, right-click the 'automl' database, select Tasks, then Import Flat File. \r\n",
|
||||
"\\# - Select the file AzureMlCli\\notebooks\\how-to-use-azureml\\automated-machine-learning\\forecasting-energy-demand\\nyc_energy.csv. \r\n",
|
||||
"\\# - Using the \"Modify Columns\" page, allow nulls for all columns. \r\n",
|
||||
"\r\n",
|
||||
"\\# Create an Azure Machine Learning Workspace using the instructions at https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-manage-workspace \r\n",
|
||||
"\r\n",
|
||||
"\\# Create an Azure service principal. You can do this with the following commands: \r\n",
|
||||
"\r\n",
|
||||
"az login \r\n",
|
||||
"az account set --subscription *subscriptionid* \r\n",
|
||||
"\r\n",
|
||||
"\\# The following command prints out the **appId** and **tenant**, \r\n",
|
||||
"\\# which you insert into the indicated cell later in this notebook \r\n",
|
||||
"\\# to allow AutoML to authenticate with Azure: \r\n",
|
||||
"\r\n",
|
||||
"az ad sp create-for-rbac --name *principlename* --password *password*\r\n",
|
||||
"\r\n",
|
||||
"\\# Log into the master instance of SQL Server 2019 CTP 2.4: \r\n",
|
||||
"kubectl exec -it mssql-master-pool-0 -n *clustername* -c mssql-server -- /bin/bash\r\n",
|
||||
"\r\n",
|
||||
"mkdir /tmp/aml\r\n",
|
||||
"\r\n",
|
||||
"cd /tmp/aml\r\n",
|
||||
"\r\n",
|
||||
"\\# **Modify** the following with your subscription_id, resource_group, and workspace_name: \r\n",
|
||||
"cat > config.json << EOF \r\n",
|
||||
"{ \r\n",
|
||||
" \"subscription_id\": \"123456ab-78cd-0123-45ef-abcd12345678\", \r\n",
|
||||
" \"resource_group\": \"myrg1\", \r\n",
|
||||
" \"workspace_name\": \"myws1\" \r\n",
|
||||
"} \r\n",
|
||||
"EOF\r\n",
|
||||
"\r\n",
|
||||
"\\# The directory referenced below is appropriate for the master instance of SQL Server 2019 CTP 2.4.\r\n",
|
||||
"\r\n",
|
||||
"cd /opt/mssql/mlservices/runtime/python/bin\r\n",
|
||||
"\r\n",
|
||||
"./python -m pip install azureml-sdk[automl]\r\n",
|
||||
"\r\n",
|
||||
"./python -m pip install --upgrade numpy \r\n",
|
||||
"\r\n",
|
||||
"./python -m pip install --upgrade sklearn\r\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"-- Enable external scripts to allow invoking Python\r\n",
|
||||
"sp_configure 'external scripts enabled',1 \r\n",
|
||||
"reconfigure with override \r\n",
|
||||
"GO\r\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"-- Use database 'automl'\r\n",
|
||||
"USE [automl]\r\n",
|
||||
"GO"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"-- This is a table to hold the Azure ML connection information.\r\n",
|
||||
"SET ANSI_NULLS ON\r\n",
|
||||
"GO\r\n",
|
||||
"\r\n",
|
||||
"SET QUOTED_IDENTIFIER ON\r\n",
|
||||
"GO\r\n",
|
||||
"\r\n",
|
||||
"CREATE TABLE [dbo].[aml_connection](\r\n",
|
||||
" [Id] [int] IDENTITY(1,1) NOT NULL PRIMARY KEY,\r\n",
|
||||
"\t[ConnectionName] [nvarchar](255) NULL,\r\n",
|
||||
"\t[TenantId] [nvarchar](255) NULL,\r\n",
|
||||
"\t[AppId] [nvarchar](255) NULL,\r\n",
|
||||
"\t[Password] [nvarchar](255) NULL,\r\n",
|
||||
"\t[ConfigFile] [nvarchar](255) NULL\r\n",
|
||||
") ON [PRIMARY]\r\n",
|
||||
"GO"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Copy the values from create-for-rbac above into the cell below"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"-- Use the following values:\r\n",
|
||||
"-- Leave the name as 'Default'\r\n",
|
||||
"-- Insert <tenant> returned by create-for-rbac above\r\n",
|
||||
"-- Insert <AppId> returned by create-for-rbac above\r\n",
|
||||
"-- Insert <password> used in create-for-rbac above\r\n",
|
||||
"-- Leave <path> as '/tmp/aml/config.json'\r\n",
|
||||
"INSERT INTO [dbo].[aml_connection] \r\n",
|
||||
"VALUES (\r\n",
|
||||
" N'Default', -- Name\r\n",
|
||||
" N'11111111-2222-3333-4444-555555555555', -- Tenant\r\n",
|
||||
" N'aaaaaaaa-bbbb-cccc-dddd-eeeeeeeeeeee', -- AppId\r\n",
|
||||
" N'insertpasswordhere', -- Password\r\n",
|
||||
" N'/tmp/aml/config.json' -- Path\r\n",
|
||||
" );\r\n",
|
||||
"GO"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"-- This is a table to hold the results from the AutoMLTrain procedure.\r\n",
|
||||
"SET ANSI_NULLS ON\r\n",
|
||||
"GO\r\n",
|
||||
"\r\n",
|
||||
"SET QUOTED_IDENTIFIER ON\r\n",
|
||||
"GO\r\n",
|
||||
"\r\n",
|
||||
"CREATE TABLE [dbo].[aml_model](\r\n",
|
||||
" [Id] [int] IDENTITY(1,1) NOT NULL PRIMARY KEY,\r\n",
|
||||
" [Model] [varchar](max) NOT NULL, -- The model, which can be passed to AutoMLPredict for testing or prediction.\r\n",
|
||||
" [RunId] [nvarchar](250) NULL, -- The RunId, which can be used to view the model in the Azure Portal.\r\n",
|
||||
" [CreatedDate] [datetime] NULL,\r\n",
|
||||
" [ExperimentName] [nvarchar](100) NULL, -- Azure ML Experiment Name\r\n",
|
||||
" [WorkspaceName] [nvarchar](100) NULL, -- Azure ML Workspace Name\r\n",
|
||||
"\t[LogFileText] [nvarchar](max) NULL\r\n",
|
||||
") \r\n",
|
||||
"GO\r\n",
|
||||
"\r\n",
|
||||
"ALTER TABLE [dbo].[aml_model] ADD DEFAULT (getutcdate()) FOR [CreatedDate]\r\n",
|
||||
"GO\r\n"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"-- This stored procedure uses automated machine learning to train several models\r\n",
|
||||
"-- and return the best model.\r\n",
|
||||
"--\r\n",
|
||||
"-- The result set has several columns:\r\n",
|
||||
"-- best_run - ID of the best model found\r\n",
|
||||
"-- experiment_name - training run name\r\n",
|
||||
"-- fitted_model - best model found\r\n",
|
||||
"-- log_file_text - console output\r\n",
|
||||
"-- workspace - name of the Azure ML workspace where run history is stored\r\n",
|
||||
"--\r\n",
|
||||
"-- An example call for a classification problem is:\r\n",
|
||||
"-- insert into dbo.aml_model(RunId, ExperimentName, Model, LogFileText, WorkspaceName)\r\n",
|
||||
"-- exec dbo.AutoMLTrain @input_query='\r\n",
|
||||
"-- SELECT top 100000 \r\n",
|
||||
"-- CAST([pickup_datetime] AS NVARCHAR(30)) AS pickup_datetime\r\n",
|
||||
"-- ,CAST([dropoff_datetime] AS NVARCHAR(30)) AS dropoff_datetime\r\n",
|
||||
"-- ,[passenger_count]\r\n",
|
||||
"-- ,[trip_time_in_secs]\r\n",
|
||||
"-- ,[trip_distance]\r\n",
|
||||
"-- ,[payment_type]\r\n",
|
||||
"-- ,[tip_class]\r\n",
|
||||
"-- FROM [dbo].[nyctaxi_sample] order by [hack_license] ',\r\n",
|
||||
"-- @label_column = 'tip_class',\r\n",
|
||||
"-- @iterations=10\r\n",
|
||||
"-- \r\n",
|
||||
"-- An example call for forecasting is:\r\n",
|
||||
"-- insert into dbo.aml_model(RunId, ExperimentName, Model, LogFileText, WorkspaceName)\r\n",
|
||||
"-- exec dbo.AutoMLTrain @input_query='\r\n",
|
||||
"-- select cast(timeStamp as nvarchar(30)) as timeStamp,\r\n",
|
||||
"-- demand,\r\n",
|
||||
"-- \t precip,\r\n",
|
||||
"-- \t temp,\r\n",
|
||||
"-- case when timeStamp < ''2017-01-01'' then 0 else 1 end as is_validate_column\r\n",
|
||||
"-- from nyc_energy\r\n",
|
||||
"-- where demand is not null and precip is not null and temp is not null\r\n",
|
||||
"-- and timeStamp < ''2017-02-01''',\r\n",
|
||||
"-- @label_column='demand',\r\n",
|
||||
"-- @task='forecasting',\r\n",
|
||||
"-- @iterations=10,\r\n",
|
||||
"-- @iteration_timeout_minutes=5,\r\n",
|
||||
"-- @time_column_name='timeStamp',\r\n",
|
||||
"-- @is_validate_column='is_validate_column',\r\n",
|
||||
"-- @experiment_name='automl-sql-forecast',\r\n",
|
||||
"-- @primary_metric='normalized_root_mean_squared_error'\r\n",
|
||||
"\r\n",
|
||||
"SET ANSI_NULLS ON\r\n",
|
||||
"GO\r\n",
|
||||
"SET QUOTED_IDENTIFIER ON\r\n",
|
||||
"GO\r\n",
|
||||
"CREATE OR ALTER PROCEDURE [dbo].[AutoMLTrain]\r\n",
|
||||
" (\r\n",
|
||||
" @input_query NVARCHAR(MAX), -- The SQL Query that will return the data to train and validate the model.\r\n",
|
||||
" @label_column NVARCHAR(255)='Label', -- The name of the column in the result of @input_query that is the label.\r\n",
|
||||
" @primary_metric NVARCHAR(40)='AUC_weighted', -- The metric to optimize.\r\n",
|
||||
" @iterations INT=100, -- The maximum number of pipelines to train.\r\n",
|
||||
" @task NVARCHAR(40)='classification', -- The type of task. Can be classification, regression or forecasting.\r\n",
|
||||
" @experiment_name NVARCHAR(32)='automl-sql-test', -- This can be used to find the experiment in the Azure Portal.\r\n",
|
||||
" @iteration_timeout_minutes INT = 15, -- The maximum time in minutes for training a single pipeline. \r\n",
|
||||
" @experiment_timeout_minutes INT = 60, -- The maximum time in minutes for training all pipelines.\r\n",
|
||||
" @n_cross_validations INT = 3, -- The number of cross validations.\r\n",
|
||||
" @blacklist_models NVARCHAR(MAX) = '', -- A comma separated list of algos that will not be used.\r\n",
|
||||
" -- The list of possible models can be found at:\r\n",
|
||||
" -- https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#configure-your-experiment-settings\r\n",
|
||||
" @whitelist_models NVARCHAR(MAX) = '', -- A comma separated list of algos that can be used.\r\n",
|
||||
" -- The list of possible models can be found at:\r\n",
|
||||
" -- https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-auto-train#configure-your-experiment-settings\r\n",
|
||||
" @experiment_exit_score FLOAT = 0, -- Stop the experiment if this score is acheived.\r\n",
|
||||
" @sample_weight_column NVARCHAR(255)='', -- The name of the column in the result of @input_query that gives a sample weight.\r\n",
|
||||
" @is_validate_column NVARCHAR(255)='', -- The name of the column in the result of @input_query that indicates if the row is for training or validation.\r\n",
|
||||
"\t -- In the values of the column, 0 means for training and 1 means for validation.\r\n",
|
||||
" @time_column_name NVARCHAR(255)='', -- The name of the timestamp column for forecasting.\r\n",
|
||||
"\t@connection_name NVARCHAR(255)='default' -- The AML connection to use.\r\n",
|
||||
" ) AS\r\n",
|
||||
"BEGIN\r\n",
|
||||
"\r\n",
|
||||
" DECLARE @tenantid NVARCHAR(255)\r\n",
|
||||
" DECLARE @appid NVARCHAR(255)\r\n",
|
||||
" DECLARE @password NVARCHAR(255)\r\n",
|
||||
" DECLARE @config_file NVARCHAR(255)\r\n",
|
||||
"\r\n",
|
||||
"\tSELECT @tenantid=TenantId, @appid=AppId, @password=Password, @config_file=ConfigFile\r\n",
|
||||
"\tFROM aml_connection\r\n",
|
||||
"\tWHERE ConnectionName = @connection_name;\r\n",
|
||||
"\r\n",
|
||||
"\tEXEC sp_execute_external_script @language = N'Python', @script = N'import pandas as pd\r\n",
|
||||
"import logging \r\n",
|
||||
"import azureml.core \r\n",
|
||||
"import pandas as pd\r\n",
|
||||
"import numpy as np\r\n",
|
||||
"from azureml.core.experiment import Experiment \r\n",
|
||||
"from azureml.train.automl import AutoMLConfig \r\n",
|
||||
"from sklearn import datasets \r\n",
|
||||
"import pickle\r\n",
|
||||
"import codecs\r\n",
|
||||
"from azureml.core.authentication import ServicePrincipalAuthentication \r\n",
|
||||
"from azureml.core.workspace import Workspace \r\n",
|
||||
"\r\n",
|
||||
"if __name__.startswith(\"sqlindb\"):\r\n",
|
||||
" auth = ServicePrincipalAuthentication(tenantid, appid, password) \r\n",
|
||||
" \r\n",
|
||||
" ws = Workspace.from_config(path=config_file, auth=auth) \r\n",
|
||||
" \r\n",
|
||||
" project_folder = \"./sample_projects/\" + experiment_name\r\n",
|
||||
" \r\n",
|
||||
" experiment = Experiment(ws, experiment_name) \r\n",
|
||||
"\r\n",
|
||||
" data_train = input_data\r\n",
|
||||
" X_valid = None\r\n",
|
||||
" y_valid = None\r\n",
|
||||
" sample_weight_valid = None\r\n",
|
||||
"\r\n",
|
||||
" if is_validate_column != \"\" and is_validate_column is not None:\r\n",
|
||||
" data_train = input_data[input_data[is_validate_column] <= 0]\r\n",
|
||||
" data_valid = input_data[input_data[is_validate_column] > 0]\r\n",
|
||||
" data_train.pop(is_validate_column)\r\n",
|
||||
" data_valid.pop(is_validate_column)\r\n",
|
||||
" y_valid = data_valid.pop(label_column).values\r\n",
|
||||
" if sample_weight_column != \"\" and sample_weight_column is not None:\r\n",
|
||||
" sample_weight_valid = data_valid.pop(sample_weight_column).values\r\n",
|
||||
" X_valid = data_valid\r\n",
|
||||
" n_cross_validations = None\r\n",
|
||||
"\r\n",
|
||||
" y_train = data_train.pop(label_column).values\r\n",
|
||||
"\r\n",
|
||||
" sample_weight = None\r\n",
|
||||
" if sample_weight_column != \"\" and sample_weight_column is not None:\r\n",
|
||||
" sample_weight = data_train.pop(sample_weight_column).values\r\n",
|
||||
"\r\n",
|
||||
" X_train = data_train\r\n",
|
||||
"\r\n",
|
||||
" if experiment_timeout_minutes == 0:\r\n",
|
||||
" experiment_timeout_minutes = None\r\n",
|
||||
"\r\n",
|
||||
" if experiment_exit_score == 0:\r\n",
|
||||
" experiment_exit_score = None\r\n",
|
||||
"\r\n",
|
||||
" if blacklist_models == \"\":\r\n",
|
||||
" blacklist_models = None\r\n",
|
||||
"\r\n",
|
||||
" if blacklist_models is not None:\r\n",
|
||||
" blacklist_models = blacklist_models.replace(\" \", \"\").split(\",\")\r\n",
|
||||
"\r\n",
|
||||
" if whitelist_models == \"\":\r\n",
|
||||
" whitelist_models = None\r\n",
|
||||
"\r\n",
|
||||
" if whitelist_models is not None:\r\n",
|
||||
" whitelist_models = whitelist_models.replace(\" \", \"\").split(\",\")\r\n",
|
||||
"\r\n",
|
||||
" automl_settings = {}\r\n",
|
||||
" preprocess = True\r\n",
|
||||
" if time_column_name != \"\" and time_column_name is not None:\r\n",
|
||||
" automl_settings = { \"time_column_name\": time_column_name }\r\n",
|
||||
" preprocess = False\r\n",
|
||||
"\r\n",
|
||||
" log_file_name = \"automl_errors.log\"\r\n",
|
||||
"\t \r\n",
|
||||
" automl_config = AutoMLConfig(task = task, \r\n",
|
||||
" debug_log = log_file_name, \r\n",
|
||||
" primary_metric = primary_metric, \r\n",
|
||||
" iteration_timeout_minutes = iteration_timeout_minutes, \r\n",
|
||||
" experiment_timeout_minutes = experiment_timeout_minutes,\r\n",
|
||||
" iterations = iterations, \r\n",
|
||||
" n_cross_validations = n_cross_validations, \r\n",
|
||||
" preprocess = preprocess,\r\n",
|
||||
" verbosity = logging.INFO, \r\n",
|
||||
" enable_ensembling = False,\r\n",
|
||||
" X = X_train, \r\n",
|
||||
" y = y_train, \r\n",
|
||||
" path = project_folder,\r\n",
|
||||
" blacklist_models = blacklist_models,\r\n",
|
||||
" whitelist_models = whitelist_models,\r\n",
|
||||
" experiment_exit_score = experiment_exit_score,\r\n",
|
||||
" sample_weight = sample_weight,\r\n",
|
||||
" X_valid = X_valid,\r\n",
|
||||
" y_valid = y_valid,\r\n",
|
||||
" sample_weight_valid = sample_weight_valid,\r\n",
|
||||
" **automl_settings) \r\n",
|
||||
" \r\n",
|
||||
" local_run = experiment.submit(automl_config, show_output = True) \r\n",
|
||||
"\r\n",
|
||||
" best_run, fitted_model = local_run.get_output()\r\n",
|
||||
"\r\n",
|
||||
" pickled_model = codecs.encode(pickle.dumps(fitted_model), \"base64\").decode()\r\n",
|
||||
"\r\n",
|
||||
" log_file_text = \"\"\r\n",
|
||||
"\r\n",
|
||||
" try:\r\n",
|
||||
" with open(log_file_name, \"r\") as log_file:\r\n",
|
||||
" log_file_text = log_file.read()\r\n",
|
||||
" except:\r\n",
|
||||
" log_file_text = \"Log file not found\"\r\n",
|
||||
"\r\n",
|
||||
" returned_model = pd.DataFrame({\"best_run\": [best_run.id], \"experiment_name\": [experiment_name], \"fitted_model\": [pickled_model], \"log_file_text\": [log_file_text], \"workspace\": [ws.name]}, dtype=np.dtype(np.str))\r\n",
|
||||
"'\r\n",
|
||||
"\t, @input_data_1 = @input_query\r\n",
|
||||
"\t, @input_data_1_name = N'input_data'\r\n",
|
||||
"\t, @output_data_1_name = N'returned_model'\r\n",
|
||||
"\t, @params = N'@label_column NVARCHAR(255), \r\n",
|
||||
"\t @primary_metric NVARCHAR(40),\r\n",
|
||||
"\t\t\t\t @iterations INT, @task NVARCHAR(40),\r\n",
|
||||
"\t\t\t\t @experiment_name NVARCHAR(32),\r\n",
|
||||
"\t\t\t\t @iteration_timeout_minutes INT,\r\n",
|
||||
"\t\t\t\t @experiment_timeout_minutes INT,\r\n",
|
||||
"\t\t\t\t @n_cross_validations INT,\r\n",
|
||||
"\t\t\t\t @blacklist_models NVARCHAR(MAX),\r\n",
|
||||
"\t\t\t\t @whitelist_models NVARCHAR(MAX),\r\n",
|
||||
"\t\t\t\t @experiment_exit_score FLOAT,\r\n",
|
||||
"\t\t\t\t @sample_weight_column NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @is_validate_column NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @time_column_name NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @tenantid NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @appid NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @password NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @config_file NVARCHAR(255)'\r\n",
|
||||
"\t, @label_column = @label_column\r\n",
|
||||
"\t, @primary_metric = @primary_metric\r\n",
|
||||
"\t, @iterations = @iterations\r\n",
|
||||
"\t, @task = @task\r\n",
|
||||
"\t, @experiment_name = @experiment_name\r\n",
|
||||
"\t, @iteration_timeout_minutes = @iteration_timeout_minutes\r\n",
|
||||
"\t, @experiment_timeout_minutes = @experiment_timeout_minutes\r\n",
|
||||
"\t, @n_cross_validations = @n_cross_validations\r\n",
|
||||
"\t, @blacklist_models = @blacklist_models\r\n",
|
||||
"\t, @whitelist_models = @whitelist_models\r\n",
|
||||
"\t, @experiment_exit_score = @experiment_exit_score\r\n",
|
||||
"\t, @sample_weight_column = @sample_weight_column\r\n",
|
||||
"\t, @is_validate_column = @is_validate_column\r\n",
|
||||
"\t, @time_column_name = @time_column_name\r\n",
|
||||
"\t, @tenantid = @tenantid\r\n",
|
||||
"\t, @appid = @appid\r\n",
|
||||
"\t, @password = @password\r\n",
|
||||
"\t, @config_file = @config_file\r\n",
|
||||
"WITH RESULT SETS ((best_run NVARCHAR(250), experiment_name NVARCHAR(100), fitted_model VARCHAR(MAX), log_file_text NVARCHAR(MAX), workspace NVARCHAR(100)))\r\n",
|
||||
"END"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"-- This procedure returns a list of metrics for each iteration of a training run.\r\n",
|
||||
"SET ANSI_NULLS ON\r\n",
|
||||
"GO\r\n",
|
||||
"SET QUOTED_IDENTIFIER ON\r\n",
|
||||
"GO\r\n",
|
||||
"CREATE OR ALTER PROCEDURE [dbo].[AutoMLGetMetrics]\r\n",
|
||||
" (\r\n",
|
||||
"\t@run_id NVARCHAR(250), -- The RunId\r\n",
|
||||
" @experiment_name NVARCHAR(32)='automl-sql-test', -- This can be used to find the experiment in the Azure Portal.\r\n",
|
||||
" @connection_name NVARCHAR(255)='default' -- The AML connection to use.\r\n",
|
||||
" ) AS\r\n",
|
||||
"BEGIN\r\n",
|
||||
" DECLARE @tenantid NVARCHAR(255)\r\n",
|
||||
" DECLARE @appid NVARCHAR(255)\r\n",
|
||||
" DECLARE @password NVARCHAR(255)\r\n",
|
||||
" DECLARE @config_file NVARCHAR(255)\r\n",
|
||||
"\r\n",
|
||||
"\tSELECT @tenantid=TenantId, @appid=AppId, @password=Password, @config_file=ConfigFile\r\n",
|
||||
"\tFROM aml_connection\r\n",
|
||||
"\tWHERE ConnectionName = @connection_name;\r\n",
|
||||
"\r\n",
|
||||
" EXEC sp_execute_external_script @language = N'Python', @script = N'import pandas as pd\r\n",
|
||||
"import logging \r\n",
|
||||
"import azureml.core \r\n",
|
||||
"import numpy as np\r\n",
|
||||
"from azureml.core.experiment import Experiment \r\n",
|
||||
"from azureml.train.automl.run import AutoMLRun\r\n",
|
||||
"from azureml.core.authentication import ServicePrincipalAuthentication \r\n",
|
||||
"from azureml.core.workspace import Workspace \r\n",
|
||||
"\r\n",
|
||||
"auth = ServicePrincipalAuthentication(tenantid, appid, password) \r\n",
|
||||
" \r\n",
|
||||
"ws = Workspace.from_config(path=config_file, auth=auth) \r\n",
|
||||
" \r\n",
|
||||
"experiment = Experiment(ws, experiment_name) \r\n",
|
||||
"\r\n",
|
||||
"ml_run = AutoMLRun(experiment = experiment, run_id = run_id)\r\n",
|
||||
"\r\n",
|
||||
"children = list(ml_run.get_children())\r\n",
|
||||
"iterationlist = []\r\n",
|
||||
"metricnamelist = []\r\n",
|
||||
"metricvaluelist = []\r\n",
|
||||
"\r\n",
|
||||
"for run in children:\r\n",
|
||||
" properties = run.get_properties()\r\n",
|
||||
" if \"iteration\" in properties:\r\n",
|
||||
" iteration = int(properties[\"iteration\"])\r\n",
|
||||
" for metric_name, metric_value in run.get_metrics().items():\r\n",
|
||||
" if isinstance(metric_value, float):\r\n",
|
||||
" iterationlist.append(iteration)\r\n",
|
||||
" metricnamelist.append(metric_name)\r\n",
|
||||
" metricvaluelist.append(metric_value)\r\n",
|
||||
" \r\n",
|
||||
"metrics = pd.DataFrame({\"iteration\": iterationlist, \"metric_name\": metricnamelist, \"metric_value\": metricvaluelist})\r\n",
|
||||
"'\r\n",
|
||||
" , @output_data_1_name = N'metrics'\r\n",
|
||||
"\t, @params = N'@run_id NVARCHAR(250), \r\n",
|
||||
"\t\t\t\t @experiment_name NVARCHAR(32),\r\n",
|
||||
" \t\t\t\t @tenantid NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @appid NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @password NVARCHAR(255),\r\n",
|
||||
"\t\t\t\t @config_file NVARCHAR(255)'\r\n",
|
||||
" , @run_id = @run_id\r\n",
|
||||
"\t, @experiment_name = @experiment_name\r\n",
|
||||
"\t, @tenantid = @tenantid\r\n",
|
||||
"\t, @appid = @appid\r\n",
|
||||
"\t, @password = @password\r\n",
|
||||
"\t, @config_file = @config_file\r\n",
|
||||
"WITH RESULT SETS ((iteration INT, metric_name NVARCHAR(100), metric_value FLOAT))\r\n",
|
||||
"END"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"-- This procedure predicts values based on a model returned by AutoMLTrain and a dataset.\r\n",
|
||||
"-- It returns the dataset with a new column added, which is the predicted value.\r\n",
|
||||
"SET ANSI_NULLS ON\r\n",
|
||||
"GO\r\n",
|
||||
"SET QUOTED_IDENTIFIER ON\r\n",
|
||||
"GO\r\n",
|
||||
"CREATE OR ALTER PROCEDURE [dbo].[AutoMLPredict]\r\n",
|
||||
" (\r\n",
|
||||
" @input_query NVARCHAR(MAX), -- A SQL query returning data to predict on.\r\n",
|
||||
" @model NVARCHAR(MAX), -- A model returned from AutoMLTrain.\r\n",
|
||||
" @label_column NVARCHAR(255)='' -- Optional name of the column from input_query, which should be ignored when predicting\r\n",
|
||||
" ) AS \r\n",
|
||||
"BEGIN \r\n",
|
||||
" \r\n",
|
||||
" EXEC sp_execute_external_script @language = N'Python', @script = N'import pandas as pd \r\n",
|
||||
"import azureml.core \r\n",
|
||||
"import numpy as np \r\n",
|
||||
"from azureml.train.automl import AutoMLConfig \r\n",
|
||||
"import pickle \r\n",
|
||||
"import codecs \r\n",
|
||||
" \r\n",
|
||||
"model_obj = pickle.loads(codecs.decode(model.encode(), \"base64\")) \r\n",
|
||||
" \r\n",
|
||||
"test_data = input_data.copy() \r\n",
|
||||
"\r\n",
|
||||
"if label_column != \"\" and label_column is not None:\r\n",
|
||||
" y_test = test_data.pop(label_column).values \r\n",
|
||||
"X_test = test_data \r\n",
|
||||
" \r\n",
|
||||
"predicted = model_obj.predict(X_test) \r\n",
|
||||
" \r\n",
|
||||
"combined_output = input_data.assign(predicted=predicted)\r\n",
|
||||
" \r\n",
|
||||
"' \r\n",
|
||||
" , @input_data_1 = @input_query \r\n",
|
||||
" , @input_data_1_name = N'input_data' \r\n",
|
||||
" , @output_data_1_name = N'combined_output' \r\n",
|
||||
" , @params = N'@model NVARCHAR(MAX), @label_column NVARCHAR(255)' \r\n",
|
||||
" , @model = @model \r\n",
|
||||
"\t, @label_column = @label_column\r\n",
|
||||
"END"
|
||||
],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,208 @@
|
||||
{
|
||||
"metadata": {
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "rogehe"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
}
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"# Automated Machine Learning\n",
|
||||
"_**Classification with Local Compute**_\n",
|
||||
"\n",
|
||||
"## Contents\n",
|
||||
"1. [Introduction](#Introduction)\n",
|
||||
"1. [Setup](#Setup)\n",
|
||||
"1. [Data](#Data)\n",
|
||||
"1. [Train](#Train)\n",
|
||||
"\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Introduction\n",
|
||||
"\n",
|
||||
"In this example we will explore AutoML's subsampling feature. This is useful for training on large datasets to speed up the convergence.\n",
|
||||
"\n",
|
||||
"The setup is quiet similar to a normal classification, with the exception of the `enable_subsampling` option. Keep in mind that even with the `enable_subsampling` flag set, subsampling will only be run for large datasets (>= 50k rows) and large (>= 85) or no iteration restrictions.\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Setup\n",
|
||||
"\n",
|
||||
"As part of the setup you have already created an Azure ML `Workspace` object. For AutoML you will need to create an `Experiment` object, which is a named object in a `Workspace` used to run experiments."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import logging\n",
|
||||
"\n",
|
||||
"import numpy as np\n",
|
||||
"import pandas as pd\n",
|
||||
"\n",
|
||||
"import azureml.core\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"from azureml.core.workspace import Workspace\n",
|
||||
"from azureml.train.automl import AutoMLConfig\n",
|
||||
"from azureml.train.automl.run import AutoMLRun"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace.from_config()\n",
|
||||
"\n",
|
||||
"# Choose a name for the experiment and specify the project folder.\n",
|
||||
"experiment_name = 'automl-subsampling'\n",
|
||||
"project_folder = './sample_projects/automl-subsampling'\n",
|
||||
"\n",
|
||||
"experiment = Experiment(ws, experiment_name)\n",
|
||||
"\n",
|
||||
"output = {}\n",
|
||||
"output['SDK version'] = azureml.core.VERSION\n",
|
||||
"output['Subscription ID'] = ws.subscription_id\n",
|
||||
"output['Workspace Name'] = ws.name\n",
|
||||
"output['Resource Group'] = ws.resource_group\n",
|
||||
"output['Location'] = ws.location\n",
|
||||
"output['Project Directory'] = project_folder\n",
|
||||
"output['Experiment Name'] = experiment.name\n",
|
||||
"pd.set_option('display.max_colwidth', -1)\n",
|
||||
"pd.DataFrame(data = output, index = ['']).T"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Data\n",
|
||||
"\n",
|
||||
"We will create a simple dataset using the numpy sin function just for this example. We need just over 50k rows."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"base = np.arange(60000)\n",
|
||||
"cos = np.cos(base)\n",
|
||||
"y = np.round(np.sin(base)).astype('int')\n",
|
||||
"\n",
|
||||
"# Exclude the first 100 rows from training so that they can be used for test.\n",
|
||||
"X_train = np.hstack((base.reshape(-1, 1), cos.reshape(-1, 1)))\n",
|
||||
"y_train = y"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"## Train\n",
|
||||
"\n",
|
||||
"Instantiate an `AutoMLConfig` object to specify the settings and data used to run the experiment.\n",
|
||||
"\n",
|
||||
"|Property|Description|\n",
|
||||
"|-|-|\n",
|
||||
"|**enable_subsampling**|This enables subsampling as an option. However it does not guarantee subsampling will be used. It also depends on how large the dataset is and how many iterations it's expected to run at a minimum.|\n",
|
||||
"|**iterations**|Number of iterations. Subsampling requires a lot of iterations at smaller percent so in order for subsampling to be used we need to set iterations to be a high number.|\n",
|
||||
"|**experiment_timeout_minutes**|The experiment timeout, it's set to 5 right now to shorten the demo but it should probably be higher if we want to finish all the iterations.|\n",
|
||||
"\n"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"automl_config = AutoMLConfig(task = 'classification',\n",
|
||||
" debug_log = 'automl_errors.log',\n",
|
||||
" primary_metric = 'accuracy',\n",
|
||||
" iterations = 85,\n",
|
||||
" experiment_timeout_minutes = 5,\n",
|
||||
" n_cross_validations = 2,\n",
|
||||
" verbosity = logging.INFO,\n",
|
||||
" X = X_train, \n",
|
||||
" y = y_train,\n",
|
||||
" enable_subsampling=True,\n",
|
||||
" path = project_folder)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Call the `submit` method on the experiment object and pass the run configuration. Execution of local runs is synchronous. Depending on the data and the number of iterations this can run for a while.\n",
|
||||
"In this example, we specify `show_output = True` to print currently running iterations to the console."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"local_run = experiment.submit(automl_config, show_output = True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [],
|
||||
"cell_type": "code"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 2
|
||||
}
|
||||
@@ -0,0 +1,8 @@
|
||||
name: auto-ml-subsampling-local
|
||||
dependencies:
|
||||
- pip:
|
||||
- azureml-sdk
|
||||
- azureml-train-automl
|
||||
- azureml-widgets
|
||||
- matplotlib
|
||||
- pandas_ml
|
||||
@@ -1,70 +1,33 @@
|
||||
Azure Databricks is a managed Spark offering on Azure and customers already use it for advanced analytics. It provides a collaborative Notebook based environment with CPU or GPU based compute cluster.
|
||||
|
||||
In this section, you will see sample notebooks on how to use Azure Machine Learning SDK with Azure Databricks. You can train a model using Spark MLlib and then deploy the model to ACI/AKS from within Azure Databricks. You can also use Automated ML capability (**public preview**) of Azure ML SDK with Azure Databricks.
|
||||
|
||||
- Customers who use Azure Databricks for advanced analytics can now use the same cluster to run experiments with or without automated machine learning.
|
||||
- You can keep the data within the same cluster.
|
||||
- You can leverage the local worker nodes with autoscale and auto termination capabilities.
|
||||
- You can use multiple cores of your Azure Databricks cluster to perform simultenous training.
|
||||
- You can further tune the model generated by automated machine learning if you chose to.
|
||||
- Every run (including the best run) is available as a pipeline.
|
||||
- The model trained using Azure Databricks can be registered in Azure ML SDK workspace and then deployed to Azure managed compute (ACI or AKS) using the Azure Machine learning SDK.
|
||||
|
||||
**Create Azure Databricks Cluster:**
|
||||
|
||||
Select New Cluster and fill in following detail:
|
||||
- Cluster name: _yourclustername_
|
||||
- Databricks Runtime: Any 4.x runtime.
|
||||
- Python version: **3**
|
||||
- Workers: 2 or higher.
|
||||
|
||||
These settings are only for using Automated Machine Learning on Databricks.
|
||||
- Max. number of **concurrent iterations** in Automated ML settings is **<=** to the number of **worker nodes** in your Databricks cluster.
|
||||
- Worker node VM types: **Memory optimized VM** preferred.
|
||||
- Uncheck _Enable Autoscaling_
|
||||
|
||||
|
||||
It will take few minutes to create the cluster. Please ensure that the cluster state is running before proceeding further.
|
||||
|
||||
**Install Azure ML SDK without Automated ML capability on your Azure Databricks cluster**
|
||||
|
||||
- Select Import library
|
||||
|
||||
- Source: Upload Python Egg or PyPI
|
||||
|
||||
- PyPi Name: **azureml-sdk[databricks]**
|
||||
|
||||
**Install Azure ML with Automated ML SDK on your Azure Databricks cluster**
|
||||
|
||||
- Select Import library
|
||||
|
||||
- Source: Upload Python Egg or PyPI
|
||||
|
||||
- PyPi Name: **azureml-sdk[automl_databricks]**
|
||||
|
||||
**For installation with or without Automated ML**
|
||||
|
||||
- Click Install Library
|
||||
|
||||
- Do not select _Attach automatically to all clusters_. In case you have selected earlier then you can go to your Home folder and deselect it.
|
||||
|
||||
- Select the check box _Attach_ next to your cluster name
|
||||
|
||||
(More details on how to attach and detach libs are here - [https://docs.databricks.com/user-guide/libraries.html#attach-a-library-to-a-cluster](https://docs.databricks.com/user-guide/libraries.html#attach-a-library-to-a-cluster) )
|
||||
|
||||
- Ensure that there are no errors until Status changes to _Attached_. It may take a couple of minutes.
|
||||
|
||||
**Note** - If you have the old build the please deselect it from cluster’s installed libs > move to trash. Install the new build and restart the cluster. And if still there is an issue then detach and reattach your cluster.
|
||||
|
||||
iPython Notebooks 1-4 have to be run sequentially after making changes based on your subscription. The corresponding DBC archive contains all the notebooks and can be imported into your Databricks workspace. You can the run notebooks after importing [databricks_amlsdk](Databricks_AMLSDK_1-4_6.dbc) instead of downloading individually.
|
||||
|
||||
Notebooks 1-4 are related to Income prediction experiment based on this [dataset](https://archive.ics.uci.edu/ml/datasets/adult) and demonstrate how to data prep, train and operationalize a Spark ML model with Azure ML Python SDK from within Azure Databricks. Notebook 6 is an Automated ML sample notebook.
|
||||
|
||||
For details on SDK concepts, please refer to [notebooks](https://github.com/Azure/MachineLearningNotebooks).
|
||||
|
||||
Learn more about [how to use Azure Databricks as a development environment](https://docs.microsoft.com/azure/machine-learning/service/how-to-configure-environment#azure-databricks) for Azure Machine Learning service.
|
||||
|
||||
You can also use Azure Databricks as a compute target for [training models with an Azure Machine Learning pipeline](https://docs.microsoft.com/machine-learning/service/how-to-set-up-training-targets#databricks).
|
||||
|
||||
|
||||
**Please let us know your feedback.**
|
||||
Azure Databricks is a managed Spark offering on Azure and customers already use it for advanced analytics. It provides a collaborative Notebook based environment with CPU or GPU based compute cluster.
|
||||
|
||||
In this section, you will find sample notebooks on how to use Azure Machine Learning SDK with Azure Databricks. You can train a model using Spark MLlib and then deploy the model to ACI/AKS from within Azure Databricks. You can also use Automated ML capability (**public preview**) of Azure ML SDK with Azure Databricks.
|
||||
|
||||
- Customers who use Azure Databricks for advanced analytics can now use the same cluster to run experiments with or without automated machine learning.
|
||||
- You can keep the data within the same cluster.
|
||||
- You can leverage the local worker nodes with autoscale and auto termination capabilities.
|
||||
- You can use multiple cores of your Azure Databricks cluster to perform simultenous training.
|
||||
- You can further tune the model generated by automated machine learning if you chose to.
|
||||
- Every run (including the best run) is available as a pipeline, which you can tune further if needed.
|
||||
- The model trained using Azure Databricks can be registered in Azure ML SDK workspace and then deployed to Azure managed compute (ACI or AKS) using the Azure Machine learning SDK.
|
||||
|
||||
Please follow our [Azure doc](https://docs.microsoft.com/en-us/azure/machine-learning/service/how-to-configure-environment#azure-databricks) to install the sdk in your Azure Databricks cluster before trying any of the sample notebooks.
|
||||
|
||||
**Single file** -
|
||||
The following archive contains all the sample notebooks. You can the run notebooks after importing [DBC](Databricks_AMLSDK_1-4_6.dbc) in your Databricks workspace instead of downloading individually.
|
||||
|
||||
Notebooks 1-4 have to be run sequentially & are related to Income prediction experiment based on this [dataset](https://archive.ics.uci.edu/ml/datasets/adult) and demonstrate how to data prep, train and operationalize a Spark ML model with Azure ML Python SDK from within Azure Databricks.
|
||||
|
||||
Notebook 6 is an Automated ML sample notebook for Classification.
|
||||
|
||||
Learn more about [how to use Azure Databricks as a development environment](https://docs.microsoft.com/azure/machine-learning/service/how-to-configure-environment#azure-databricks) for Azure Machine Learning service.
|
||||
|
||||
**Databricks as a Compute Target from AML Pipelines**
|
||||
You can use Azure Databricks as a compute target from [Azure Machine Learning Pipelines](https://docs.microsoft.com/en-us/azure/machine-learning/service/concept-ml-pipelines). Take a look at this notebook for details: [aml-pipelines-use-databricks-as-compute-target.ipynb](https://github.com/Azure/MachineLearningNotebooks/tree/master/how-to-use-azureml/azure-databricks/databricks-as-remote-compute-target/aml-pipelines-use-databricks-as-compute-target.ipynb).
|
||||
|
||||
For more on SDK concepts, please refer to [notebooks](https://github.com/Azure/MachineLearningNotebooks).
|
||||
|
||||
**Please let us know your feedback.**
|
||||
|
||||
|
||||
|
||||

|
||||
@@ -1,396 +1,380 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Model Building"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import os\n",
|
||||
"import pprint\n",
|
||||
"import numpy as np\n",
|
||||
"\n",
|
||||
"from pyspark.ml import Pipeline, PipelineModel\n",
|
||||
"from pyspark.ml.feature import OneHotEncoder, StringIndexer, VectorAssembler\n",
|
||||
"from pyspark.ml.classification import LogisticRegression\n",
|
||||
"from pyspark.ml.evaluation import BinaryClassificationEvaluator\n",
|
||||
"from pyspark.ml.tuning import CrossValidator, ParamGridBuilder"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"# Check core SDK version number\n",
|
||||
"print(\"SDK version:\", azureml.core.VERSION)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##TESTONLY\n",
|
||||
"# import auth creds from notebook parameters\n",
|
||||
"tenant = dbutils.widgets.get('tenant_id')\n",
|
||||
"username = dbutils.widgets.get('service_principal_id')\n",
|
||||
"password = dbutils.widgets.get('service_principal_password')\n",
|
||||
"\n",
|
||||
"auth = azureml.core.authentication.ServicePrincipalAuthentication(tenant, username, password)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# import the Workspace class and check the azureml SDK version\n",
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"print('Workspace name: ' + ws.name, \n",
|
||||
" 'Azure region: ' + ws.location, \n",
|
||||
" 'Subscription id: ' + ws.subscription_id, \n",
|
||||
" 'Resource group: ' + ws.resource_group, sep = '\\n')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##PUBLISHONLY\n",
|
||||
"## import the Workspace class and check the azureml SDK version\n",
|
||||
"#from azureml.core import Workspace\n",
|
||||
"#\n",
|
||||
"#ws = Workspace.from_config()\n",
|
||||
"#print('Workspace name: ' + ws.name, \n",
|
||||
"# 'Azure region: ' + ws.location, \n",
|
||||
"# 'Subscription id: ' + ws.subscription_id, \n",
|
||||
"# 'Resource group: ' + ws.resource_group, sep = '\\n')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#get the train and test datasets\n",
|
||||
"train_data_path = \"AdultCensusIncomeTrain\"\n",
|
||||
"test_data_path = \"AdultCensusIncomeTest\"\n",
|
||||
"\n",
|
||||
"train = spark.read.parquet(train_data_path)\n",
|
||||
"test = spark.read.parquet(test_data_path)\n",
|
||||
"\n",
|
||||
"print(\"train: ({}, {})\".format(train.count(), len(train.columns)))\n",
|
||||
"print(\"test: ({}, {})\".format(test.count(), len(test.columns)))\n",
|
||||
"\n",
|
||||
"train.printSchema()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Define Model"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"label = \"income\"\n",
|
||||
"dtypes = dict(train.dtypes)\n",
|
||||
"dtypes.pop(label)\n",
|
||||
"\n",
|
||||
"si_xvars = []\n",
|
||||
"ohe_xvars = []\n",
|
||||
"featureCols = []\n",
|
||||
"for idx,key in enumerate(dtypes):\n",
|
||||
" if dtypes[key] == \"string\":\n",
|
||||
" featureCol = \"-\".join([key, \"encoded\"])\n",
|
||||
" featureCols.append(featureCol)\n",
|
||||
" \n",
|
||||
" tmpCol = \"-\".join([key, \"tmp\"])\n",
|
||||
" # string-index and one-hot encode the string column\n",
|
||||
" #https://spark.apache.org/docs/2.3.0/api/java/org/apache/spark/ml/feature/StringIndexer.html\n",
|
||||
" #handleInvalid: Param for how to handle invalid data (unseen labels or NULL values). \n",
|
||||
" #Options are 'skip' (filter out rows with invalid data), 'error' (throw an error), \n",
|
||||
" #or 'keep' (put invalid data in a special additional bucket, at index numLabels). Default: \"error\"\n",
|
||||
" si_xvars.append(StringIndexer(inputCol=key, outputCol=tmpCol, handleInvalid=\"skip\"))\n",
|
||||
" ohe_xvars.append(OneHotEncoder(inputCol=tmpCol, outputCol=featureCol))\n",
|
||||
" else:\n",
|
||||
" featureCols.append(key)\n",
|
||||
"\n",
|
||||
"# string-index the label column into a column named \"label\"\n",
|
||||
"si_label = StringIndexer(inputCol=label, outputCol='label')\n",
|
||||
"\n",
|
||||
"# assemble the encoded feature columns in to a column named \"features\"\n",
|
||||
"assembler = VectorAssembler(inputCols=featureCols, outputCol=\"features\")"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.run import Run\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"import numpy as np\n",
|
||||
"import os\n",
|
||||
"import shutil\n",
|
||||
"\n",
|
||||
"model_name = \"AdultCensus_runHistory.mml\"\n",
|
||||
"model_dbfs = os.path.join(\"/dbfs\", model_name)\n",
|
||||
"run_history_name = 'spark-ml-notebook'\n",
|
||||
"\n",
|
||||
"# start a training run by defining an experiment\n",
|
||||
"myexperiment = Experiment(ws, \"Ignite_AI_Talk\")\n",
|
||||
"root_run = myexperiment.start_logging()\n",
|
||||
"\n",
|
||||
"# Regularization Rates - \n",
|
||||
"regs = [0.0001, 0.001, 0.01, 0.1]\n",
|
||||
" \n",
|
||||
"# try a bunch of regularization rate in a Logistic Regression model\n",
|
||||
"for reg in regs:\n",
|
||||
" print(\"Regularization rate: {}\".format(reg))\n",
|
||||
" # create a bunch of child runs\n",
|
||||
" with root_run.child_run(\"reg-\" + str(reg)) as run:\n",
|
||||
" # create a new Logistic Regression model.\n",
|
||||
" lr = LogisticRegression(regParam=reg)\n",
|
||||
" \n",
|
||||
" # put together the pipeline\n",
|
||||
" pipe = Pipeline(stages=[*si_xvars, *ohe_xvars, si_label, assembler, lr])\n",
|
||||
"\n",
|
||||
" # train the model\n",
|
||||
" model_p = pipe.fit(train)\n",
|
||||
" \n",
|
||||
" # make prediction\n",
|
||||
" pred = model_p.transform(test)\n",
|
||||
" \n",
|
||||
" # evaluate. note only 2 metrics are supported out of the box by Spark ML.\n",
|
||||
" bce = BinaryClassificationEvaluator(rawPredictionCol='rawPrediction')\n",
|
||||
" au_roc = bce.setMetricName('areaUnderROC').evaluate(pred)\n",
|
||||
" au_prc = bce.setMetricName('areaUnderPR').evaluate(pred)\n",
|
||||
"\n",
|
||||
" print(\"Area under ROC: {}\".format(au_roc))\n",
|
||||
" print(\"Area Under PR: {}\".format(au_prc))\n",
|
||||
" \n",
|
||||
" # log reg, au_roc, au_prc and feature names in run history\n",
|
||||
" run.log(\"reg\", reg)\n",
|
||||
" run.log(\"au_roc\", au_roc)\n",
|
||||
" run.log(\"au_prc\", au_prc)\n",
|
||||
" run.log_list(\"columns\", train.columns)\n",
|
||||
"\n",
|
||||
" # save model\n",
|
||||
" model_p.write().overwrite().save(model_name)\n",
|
||||
" \n",
|
||||
" # upload the serialized model into run history record\n",
|
||||
" mdl, ext = model_name.split(\".\")\n",
|
||||
" model_zip = mdl + \".zip\"\n",
|
||||
" shutil.make_archive(mdl, 'zip', model_dbfs)\n",
|
||||
" run.upload_file(\"outputs/\" + model_name, model_zip) \n",
|
||||
" #run.upload_file(\"outputs/\" + model_name, path_or_stream = model_dbfs) #cannot deal with folders\n",
|
||||
"\n",
|
||||
" # now delete the serialized model from local folder since it is already uploaded to run history \n",
|
||||
" shutil.rmtree(model_dbfs)\n",
|
||||
" os.remove(model_zip)\n",
|
||||
" \n",
|
||||
"# Declare run completed\n",
|
||||
"root_run.complete()\n",
|
||||
"root_run_id = root_run.id\n",
|
||||
"print (\"run id:\", root_run.id)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"metrics = root_run.get_metrics(recursive=True)\n",
|
||||
"best_run_id = max(metrics, key = lambda k: metrics[k]['au_roc'])\n",
|
||||
"print(best_run_id, metrics[best_run_id]['au_roc'], metrics[best_run_id]['reg'])"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#Get the best run\n",
|
||||
"child_runs = {}\n",
|
||||
"\n",
|
||||
"for r in root_run.get_children():\n",
|
||||
" child_runs[r.id] = r\n",
|
||||
" \n",
|
||||
"best_run = child_runs[best_run_id]"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#Download the model from the best run to a local folder\n",
|
||||
"best_model_file_name = \"best_model.zip\"\n",
|
||||
"best_run.download_file(name = 'outputs/' + model_name, output_file_path = best_model_file_name)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Model Evaluation"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##unzip the model to dbfs (as load() seems to require that) and load it.\n",
|
||||
"if os.path.isfile(model_dbfs) or os.path.isdir(model_dbfs):\n",
|
||||
" shutil.rmtree(model_dbfs)\n",
|
||||
"shutil.unpack_archive(best_model_file_name, model_dbfs)\n",
|
||||
"\n",
|
||||
"model_p_best = PipelineModel.load(model_name)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# make prediction\n",
|
||||
"pred = model_p_best.transform(test)\n",
|
||||
"output = pred[['hours_per_week','age','workclass','marital_status','income','prediction']]\n",
|
||||
"display(output.limit(5))"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# evaluate. note only 2 metrics are supported out of the box by Spark ML.\n",
|
||||
"bce = BinaryClassificationEvaluator(rawPredictionCol='rawPrediction')\n",
|
||||
"au_roc = bce.setMetricName('areaUnderROC').evaluate(pred)\n",
|
||||
"au_prc = bce.setMetricName('areaUnderPR').evaluate(pred)\n",
|
||||
"\n",
|
||||
"print(\"Area under ROC: {}\".format(au_roc))\n",
|
||||
"print(\"Area Under PR: {}\".format(au_prc))"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Model Persistence"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##NOTE: by default the model is saved to and loaded from /dbfs/ instead of cwd!\n",
|
||||
"model_p_best.write().overwrite().save(model_name)\n",
|
||||
"print(\"saved model to {}\".format(model_dbfs))"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"%sh\n",
|
||||
"\n",
|
||||
"ls -la /dbfs/AdultCensus_runHistory.mml/*"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"dbutils.notebook.exit(\"success\")"
|
||||
]
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
},
|
||||
{
|
||||
"name": "wamartin"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3",
|
||||
"language": "python",
|
||||
"name": "python3"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.7.0"
|
||||
},
|
||||
"name": "03.Build_model_runHistory",
|
||||
"notebookId": 3836944406456339
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"name": "build-model-run-history-03",
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
},
|
||||
"notebookId": 3836944406456339
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Model Building"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import os\n",
|
||||
"import pprint\n",
|
||||
"import numpy as np\n",
|
||||
"\n",
|
||||
"from pyspark.ml import Pipeline, PipelineModel\n",
|
||||
"from pyspark.ml.feature import OneHotEncoder, StringIndexer, VectorAssembler\n",
|
||||
"from pyspark.ml.classification import LogisticRegression\n",
|
||||
"from pyspark.ml.evaluation import BinaryClassificationEvaluator\n",
|
||||
"from pyspark.ml.tuning import CrossValidator, ParamGridBuilder"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"# Check core SDK version number\n",
|
||||
"print(\"SDK version:\", azureml.core.VERSION)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Set auth to be used by workspace related APIs.\n",
|
||||
"# For automation or CI/CD ServicePrincipalAuthentication can be used.\n",
|
||||
"# https://docs.microsoft.com/en-us/python/api/azureml-core/azureml.core.authentication.serviceprincipalauthentication?view=azure-ml-py\n",
|
||||
"auth = None"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# import the Workspace class and check the azureml SDK version\n",
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"print('Workspace name: ' + ws.name, \n",
|
||||
" 'Azure region: ' + ws.location, \n",
|
||||
" 'Subscription id: ' + ws.subscription_id, \n",
|
||||
" 'Resource group: ' + ws.resource_group, sep = '\\n')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#get the train and test datasets\n",
|
||||
"train_data_path = \"AdultCensusIncomeTrain\"\n",
|
||||
"test_data_path = \"AdultCensusIncomeTest\"\n",
|
||||
"\n",
|
||||
"train = spark.read.parquet(train_data_path)\n",
|
||||
"test = spark.read.parquet(test_data_path)\n",
|
||||
"\n",
|
||||
"print(\"train: ({}, {})\".format(train.count(), len(train.columns)))\n",
|
||||
"print(\"test: ({}, {})\".format(test.count(), len(test.columns)))\n",
|
||||
"\n",
|
||||
"train.printSchema()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Define Model"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"label = \"income\"\n",
|
||||
"dtypes = dict(train.dtypes)\n",
|
||||
"dtypes.pop(label)\n",
|
||||
"\n",
|
||||
"si_xvars = []\n",
|
||||
"ohe_xvars = []\n",
|
||||
"featureCols = []\n",
|
||||
"for idx,key in enumerate(dtypes):\n",
|
||||
" if dtypes[key] == \"string\":\n",
|
||||
" featureCol = \"-\".join([key, \"encoded\"])\n",
|
||||
" featureCols.append(featureCol)\n",
|
||||
" \n",
|
||||
" tmpCol = \"-\".join([key, \"tmp\"])\n",
|
||||
" # string-index and one-hot encode the string column\n",
|
||||
" #https://spark.apache.org/docs/2.3.0/api/java/org/apache/spark/ml/feature/StringIndexer.html\n",
|
||||
" #handleInvalid: Param for how to handle invalid data (unseen labels or NULL values). \n",
|
||||
" #Options are 'skip' (filter out rows with invalid data), 'error' (throw an error), \n",
|
||||
" #or 'keep' (put invalid data in a special additional bucket, at index numLabels). Default: \"error\"\n",
|
||||
" si_xvars.append(StringIndexer(inputCol=key, outputCol=tmpCol, handleInvalid=\"skip\"))\n",
|
||||
" ohe_xvars.append(OneHotEncoder(inputCol=tmpCol, outputCol=featureCol))\n",
|
||||
" else:\n",
|
||||
" featureCols.append(key)\n",
|
||||
"\n",
|
||||
"# string-index the label column into a column named \"label\"\n",
|
||||
"si_label = StringIndexer(inputCol=label, outputCol='label')\n",
|
||||
"\n",
|
||||
"# assemble the encoded feature columns in to a column named \"features\"\n",
|
||||
"assembler = VectorAssembler(inputCols=featureCols, outputCol=\"features\")"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.run import Run\n",
|
||||
"from azureml.core.experiment import Experiment\n",
|
||||
"import numpy as np\n",
|
||||
"import os\n",
|
||||
"import shutil\n",
|
||||
"\n",
|
||||
"model_name = \"AdultCensus_runHistory.mml\"\n",
|
||||
"model_dbfs = os.path.join(\"/dbfs\", model_name)\n",
|
||||
"run_history_name = 'spark-ml-notebook'\n",
|
||||
"\n",
|
||||
"# start a training run by defining an experiment\n",
|
||||
"myexperiment = Experiment(ws, \"Ignite_AI_Talk\")\n",
|
||||
"root_run = myexperiment.start_logging()\n",
|
||||
"\n",
|
||||
"# Regularization Rates - \n",
|
||||
"regs = [0.0001, 0.001, 0.01, 0.1]\n",
|
||||
" \n",
|
||||
"# try a bunch of regularization rate in a Logistic Regression model\n",
|
||||
"for reg in regs:\n",
|
||||
" print(\"Regularization rate: {}\".format(reg))\n",
|
||||
" # create a bunch of child runs\n",
|
||||
" with root_run.child_run(\"reg-\" + str(reg)) as run:\n",
|
||||
" # create a new Logistic Regression model.\n",
|
||||
" lr = LogisticRegression(regParam=reg)\n",
|
||||
" \n",
|
||||
" # put together the pipeline\n",
|
||||
" pipe = Pipeline(stages=[*si_xvars, *ohe_xvars, si_label, assembler, lr])\n",
|
||||
"\n",
|
||||
" # train the model\n",
|
||||
" model_p = pipe.fit(train)\n",
|
||||
" \n",
|
||||
" # make prediction\n",
|
||||
" pred = model_p.transform(test)\n",
|
||||
" \n",
|
||||
" # evaluate. note only 2 metrics are supported out of the box by Spark ML.\n",
|
||||
" bce = BinaryClassificationEvaluator(rawPredictionCol='rawPrediction')\n",
|
||||
" au_roc = bce.setMetricName('areaUnderROC').evaluate(pred)\n",
|
||||
" au_prc = bce.setMetricName('areaUnderPR').evaluate(pred)\n",
|
||||
"\n",
|
||||
" print(\"Area under ROC: {}\".format(au_roc))\n",
|
||||
" print(\"Area Under PR: {}\".format(au_prc))\n",
|
||||
" \n",
|
||||
" # log reg, au_roc, au_prc and feature names in run history\n",
|
||||
" run.log(\"reg\", reg)\n",
|
||||
" run.log(\"au_roc\", au_roc)\n",
|
||||
" run.log(\"au_prc\", au_prc)\n",
|
||||
" run.log_list(\"columns\", train.columns)\n",
|
||||
"\n",
|
||||
" # save model\n",
|
||||
" model_p.write().overwrite().save(model_name)\n",
|
||||
" \n",
|
||||
" # upload the serialized model into run history record\n",
|
||||
" mdl, ext = model_name.split(\".\")\n",
|
||||
" model_zip = mdl + \".zip\"\n",
|
||||
" shutil.make_archive(mdl, 'zip', model_dbfs)\n",
|
||||
" run.upload_file(\"outputs/\" + model_name, model_zip) \n",
|
||||
" #run.upload_file(\"outputs/\" + model_name, path_or_stream = model_dbfs) #cannot deal with folders\n",
|
||||
"\n",
|
||||
" # now delete the serialized model from local folder since it is already uploaded to run history \n",
|
||||
" shutil.rmtree(model_dbfs)\n",
|
||||
" os.remove(model_zip)\n",
|
||||
" \n",
|
||||
"# Declare run completed\n",
|
||||
"root_run.complete()\n",
|
||||
"root_run_id = root_run.id\n",
|
||||
"print (\"run id:\", root_run.id)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"metrics = root_run.get_metrics(recursive=True)\n",
|
||||
"best_run_id = max(metrics, key = lambda k: metrics[k]['au_roc'])\n",
|
||||
"print(best_run_id, metrics[best_run_id]['au_roc'], metrics[best_run_id]['reg'])"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#Get the best run\n",
|
||||
"child_runs = {}\n",
|
||||
"\n",
|
||||
"for r in root_run.get_children():\n",
|
||||
" child_runs[r.id] = r\n",
|
||||
" \n",
|
||||
"best_run = child_runs[best_run_id]"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#Download the model from the best run to a local folder\n",
|
||||
"best_model_file_name = \"best_model.zip\"\n",
|
||||
"best_run.download_file(name = 'outputs/' + model_name, output_file_path = best_model_file_name)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Model Evaluation"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"##unzip the model to dbfs (as load() seems to require that) and load it.\n",
|
||||
"if os.path.isfile(model_dbfs) or os.path.isdir(model_dbfs):\n",
|
||||
" shutil.rmtree(model_dbfs)\n",
|
||||
"shutil.unpack_archive(best_model_file_name, model_dbfs)\n",
|
||||
"\n",
|
||||
"model_p_best = PipelineModel.load(model_name)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# make prediction\n",
|
||||
"pred = model_p_best.transform(test)\n",
|
||||
"output = pred[['hours_per_week','age','workclass','marital_status','income','prediction']]\n",
|
||||
"display(output.limit(5))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# evaluate. note only 2 metrics are supported out of the box by Spark ML.\n",
|
||||
"bce = BinaryClassificationEvaluator(rawPredictionCol='rawPrediction')\n",
|
||||
"au_roc = bce.setMetricName('areaUnderROC').evaluate(pred)\n",
|
||||
"au_prc = bce.setMetricName('areaUnderPR').evaluate(pred)\n",
|
||||
"\n",
|
||||
"print(\"Area under ROC: {}\".format(au_roc))\n",
|
||||
"print(\"Area Under PR: {}\".format(au_prc))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Model Persistence"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"##NOTE: by default the model is saved to and loaded from /dbfs/ instead of cwd!\n",
|
||||
"model_p_best.write().overwrite().save(model_name)\n",
|
||||
"print(\"saved model to {}\".format(model_dbfs))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"%sh\n",
|
||||
"\n",
|
||||
"ls -la /dbfs/AdultCensus_runHistory.mml/*"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"dbutils.notebook.exit(\"success\")"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
@@ -1,354 +1,324 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Please ensure you have run all previous notebooks in sequence before running this.\n",
|
||||
"\n",
|
||||
"Please Register Azure Container Instance(ACI) using Azure Portal: https://docs.microsoft.com/en-us/azure/azure-resource-manager/resource-manager-supported-services#portal in your subscription before using the SDK to deploy your ML model to ACI."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"# Check core SDK version number\n",
|
||||
"print(\"SDK version:\", azureml.core.VERSION)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##TESTONLY\n",
|
||||
"# import auth creds from notebook parameters\n",
|
||||
"tenant = dbutils.widgets.get('tenant_id')\n",
|
||||
"username = dbutils.widgets.get('service_principal_id')\n",
|
||||
"password = dbutils.widgets.get('service_principal_password')\n",
|
||||
"\n",
|
||||
"auth = azureml.core.authentication.ServicePrincipalAuthentication(tenant, username, password)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"#'''\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"print('Workspace name: ' + ws.name, \n",
|
||||
" 'Azure region: ' + ws.location, \n",
|
||||
" 'Subscription id: ' + ws.subscription_id, \n",
|
||||
" 'Resource group: ' + ws.resource_group, sep = '\\n')\n",
|
||||
"#'''"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##PUBLISHONLY\n",
|
||||
"#from azureml.core import Workspace\n",
|
||||
"#import azureml.core\n",
|
||||
"#\n",
|
||||
"## Check core SDK version number\n",
|
||||
"#print(\"SDK version:\", azureml.core.VERSION)\n",
|
||||
"#\n",
|
||||
"##'''\n",
|
||||
"#ws = Workspace.from_config()\n",
|
||||
"#print('Workspace name: ' + ws.name, \n",
|
||||
"# 'Azure region: ' + ws.location, \n",
|
||||
"# 'Subscription id: ' + ws.subscription_id, \n",
|
||||
"# 'Resource group: ' + ws.resource_group, sep = '\\n')\n",
|
||||
"##'''"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##NOTE: service deployment always gets the model from the current working dir.\n",
|
||||
"import os\n",
|
||||
"\n",
|
||||
"model_name = \"AdultCensus_runHistory.mml\" # \n",
|
||||
"model_name_dbfs = os.path.join(\"/dbfs\", model_name)\n",
|
||||
"\n",
|
||||
"print(\"copy model from dbfs to local\")\n",
|
||||
"model_local = \"file:\" + os.getcwd() + \"/\" + model_name\n",
|
||||
"dbutils.fs.cp(model_name, model_local, True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#Register the model\n",
|
||||
"from azureml.core.model import Model\n",
|
||||
"mymodel = Model.register(model_path = model_name, # this points to a local file\n",
|
||||
" model_name = model_name, # this is the name the model is registered as, am using same name for both path and name. \n",
|
||||
" description = \"ADB trained model by Parashar\",\n",
|
||||
" workspace = ws)\n",
|
||||
"\n",
|
||||
"print(mymodel.name, mymodel.description, mymodel.version)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#%%writefile score_sparkml.py\n",
|
||||
"score_sparkml = \"\"\"\n",
|
||||
" \n",
|
||||
"import json\n",
|
||||
" \n",
|
||||
"def init():\n",
|
||||
" # One-time initialization of PySpark and predictive model\n",
|
||||
" import pyspark\n",
|
||||
" from azureml.core.model import Model\n",
|
||||
" from pyspark.ml import PipelineModel\n",
|
||||
" \n",
|
||||
" global trainedModel\n",
|
||||
" global spark\n",
|
||||
" \n",
|
||||
" spark = pyspark.sql.SparkSession.builder.appName(\"ADB and AML notebook by Parashar\").getOrCreate()\n",
|
||||
" model_name = \"{model_name}\" #interpolated\n",
|
||||
" model_path = Model.get_model_path(model_name)\n",
|
||||
" trainedModel = PipelineModel.load(model_path)\n",
|
||||
" \n",
|
||||
"def run(input_json):\n",
|
||||
" if isinstance(trainedModel, Exception):\n",
|
||||
" return json.dumps({{\"trainedModel\":str(trainedModel)}})\n",
|
||||
" \n",
|
||||
" try:\n",
|
||||
" sc = spark.sparkContext\n",
|
||||
" input_list = json.loads(input_json)\n",
|
||||
" input_rdd = sc.parallelize(input_list)\n",
|
||||
" input_df = spark.read.json(input_rdd)\n",
|
||||
" \n",
|
||||
" # Compute prediction\n",
|
||||
" prediction = trainedModel.transform(input_df)\n",
|
||||
" #result = prediction.first().prediction\n",
|
||||
" predictions = prediction.collect()\n",
|
||||
" \n",
|
||||
" #Get each scored result\n",
|
||||
" preds = [str(x['prediction']) for x in predictions]\n",
|
||||
" result = \",\".join(preds)\n",
|
||||
" # you can return any data type as long as it is JSON-serializable\n",
|
||||
" return result.tolist()\n",
|
||||
" except Exception as e:\n",
|
||||
" result = str(e)\n",
|
||||
" return result\n",
|
||||
" \n",
|
||||
"\"\"\".format(model_name=model_name)\n",
|
||||
" \n",
|
||||
"exec(score_sparkml)\n",
|
||||
" \n",
|
||||
"with open(\"score_sparkml.py\", \"w\") as file:\n",
|
||||
" file.write(score_sparkml)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"from azureml.core.conda_dependencies import CondaDependencies \n",
|
||||
"\n",
|
||||
"myacienv = CondaDependencies.create(conda_packages=['scikit-learn','numpy','pandas']) #showing how to add libs as an eg. - not needed for this model.\n",
|
||||
"\n",
|
||||
"with open(\"mydeployenv.yml\",\"w\") as f:\n",
|
||||
" f.write(myacienv.serialize_to_string())"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#deploy to ACI\n",
|
||||
"from azureml.core.webservice import AciWebservice, Webservice\n",
|
||||
"\n",
|
||||
"myaci_config = AciWebservice.deploy_configuration(\n",
|
||||
" cpu_cores = 2, \n",
|
||||
" memory_gb = 2, \n",
|
||||
" tags = {'name':'Databricks Azure ML ACI'}, \n",
|
||||
" description = 'This is for ADB and AML example. Azure Databricks & Azure ML SDK demo with ACI by Parashar.')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# this will take 10-15 minutes to finish\n",
|
||||
"\n",
|
||||
"service_name = \"aciws\"\n",
|
||||
"runtime = \"spark-py\" \n",
|
||||
"driver_file = \"score_sparkml.py\"\n",
|
||||
"my_conda_file = \"mydeployenv.yml\"\n",
|
||||
"\n",
|
||||
"# image creation\n",
|
||||
"from azureml.core.image import ContainerImage\n",
|
||||
"myimage_config = ContainerImage.image_configuration(execution_script = driver_file, \n",
|
||||
" runtime = runtime, \n",
|
||||
" conda_file = my_conda_file)\n",
|
||||
"\n",
|
||||
"# Webservice creation\n",
|
||||
"myservice = Webservice.deploy_from_model(\n",
|
||||
" workspace=ws, \n",
|
||||
" name=service_name,\n",
|
||||
" deployment_config = myaci_config,\n",
|
||||
" models = [mymodel],\n",
|
||||
" image_config = myimage_config\n",
|
||||
" )\n",
|
||||
"\n",
|
||||
"myservice.wait_for_deployment(show_output=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"help(Webservice)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# List images by ws\n",
|
||||
"\n",
|
||||
"for i in ContainerImage.list(workspace = ws):\n",
|
||||
" print('{}(v.{} [{}]) stored at {} with build log {}'.format(i.name, i.version, i.creation_state, i.image_location, i.image_build_log_uri))"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#for using the Web HTTP API \n",
|
||||
"print(myservice.scoring_uri)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import json\n",
|
||||
"\n",
|
||||
"#get the some sample data\n",
|
||||
"test_data_path = \"AdultCensusIncomeTest\"\n",
|
||||
"test = spark.read.parquet(test_data_path).limit(5)\n",
|
||||
"\n",
|
||||
"test_json = json.dumps(test.toJSON().collect())\n",
|
||||
"\n",
|
||||
"print(test_json)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#using data defined above predict if income is >50K (1) or <=50K (0)\n",
|
||||
"myservice.run(input_data=test_json)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#comment to not delete the web service\n",
|
||||
"#myservice.delete()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": []
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
},
|
||||
{
|
||||
"name": "wamartin"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3",
|
||||
"language": "python",
|
||||
"name": "python3"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.7.0"
|
||||
},
|
||||
"name": "04.DeploytoACI",
|
||||
"notebookId": 3836944406456376
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"name": "deploy-to-aci-04",
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
},
|
||||
"notebookId": 3836944406456376
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Please ensure you have run all previous notebooks in sequence before running this.\n",
|
||||
"\n",
|
||||
"Please Register Azure Container Instance(ACI) using Azure Portal: https://docs.microsoft.com/en-us/azure/azure-resource-manager/resource-manager-supported-services#portal in your subscription before using the SDK to deploy your ML model to ACI."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"# Check core SDK version number\n",
|
||||
"print(\"SDK version:\", azureml.core.VERSION)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Set auth to be used by workspace related APIs.\n",
|
||||
"# For automation or CI/CD ServicePrincipalAuthentication can be used.\n",
|
||||
"# https://docs.microsoft.com/en-us/python/api/azureml-core/azureml.core.authentication.serviceprincipalauthentication?view=azure-ml-py\n",
|
||||
"auth = None"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"print('Workspace name: ' + ws.name, \n",
|
||||
" 'Azure region: ' + ws.location, \n",
|
||||
" 'Subscription id: ' + ws.subscription_id, \n",
|
||||
" 'Resource group: ' + ws.resource_group, sep = '\\n')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"##NOTE: service deployment always gets the model from the current working dir.\n",
|
||||
"import os\n",
|
||||
"\n",
|
||||
"model_name = \"AdultCensus_runHistory.mml\" # \n",
|
||||
"model_name_dbfs = os.path.join(\"/dbfs\", model_name)\n",
|
||||
"\n",
|
||||
"print(\"copy model from dbfs to local\")\n",
|
||||
"model_local = \"file:\" + os.getcwd() + \"/\" + model_name\n",
|
||||
"dbutils.fs.cp(model_name, model_local, True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#Register the model\n",
|
||||
"from azureml.core.model import Model\n",
|
||||
"mymodel = Model.register(model_path = model_name, # this points to a local file\n",
|
||||
" model_name = model_name, # this is the name the model is registered as, am using same name for both path and name. \n",
|
||||
" description = \"ADB trained model by Parashar\",\n",
|
||||
" workspace = ws)\n",
|
||||
"\n",
|
||||
"print(mymodel.name, mymodel.description, mymodel.version)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#%%writefile score_sparkml.py\n",
|
||||
"score_sparkml = \"\"\"\n",
|
||||
" \n",
|
||||
"import json\n",
|
||||
" \n",
|
||||
"def init():\n",
|
||||
" # One-time initialization of PySpark and predictive model\n",
|
||||
" import pyspark\n",
|
||||
" from azureml.core.model import Model\n",
|
||||
" from pyspark.ml import PipelineModel\n",
|
||||
" \n",
|
||||
" global trainedModel\n",
|
||||
" global spark\n",
|
||||
" \n",
|
||||
" spark = pyspark.sql.SparkSession.builder.appName(\"ADB and AML notebook by Parashar\").getOrCreate()\n",
|
||||
" model_name = \"{model_name}\" #interpolated\n",
|
||||
" model_path = Model.get_model_path(model_name)\n",
|
||||
" trainedModel = PipelineModel.load(model_path)\n",
|
||||
" \n",
|
||||
"def run(input_json):\n",
|
||||
" if isinstance(trainedModel, Exception):\n",
|
||||
" return json.dumps({{\"trainedModel\":str(trainedModel)}})\n",
|
||||
" \n",
|
||||
" try:\n",
|
||||
" sc = spark.sparkContext\n",
|
||||
" input_list = json.loads(input_json)\n",
|
||||
" input_rdd = sc.parallelize(input_list)\n",
|
||||
" input_df = spark.read.json(input_rdd)\n",
|
||||
" \n",
|
||||
" # Compute prediction\n",
|
||||
" prediction = trainedModel.transform(input_df)\n",
|
||||
" #result = prediction.first().prediction\n",
|
||||
" predictions = prediction.collect()\n",
|
||||
" \n",
|
||||
" #Get each scored result\n",
|
||||
" preds = [str(x['prediction']) for x in predictions]\n",
|
||||
" result = \",\".join(preds)\n",
|
||||
" # you can return any data type as long as it is JSON-serializable\n",
|
||||
" return result.tolist()\n",
|
||||
" except Exception as e:\n",
|
||||
" result = str(e)\n",
|
||||
" return result\n",
|
||||
" \n",
|
||||
"\"\"\".format(model_name=model_name)\n",
|
||||
" \n",
|
||||
"exec(score_sparkml)\n",
|
||||
" \n",
|
||||
"with open(\"score_sparkml.py\", \"w\") as file:\n",
|
||||
" file.write(score_sparkml)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.conda_dependencies import CondaDependencies \n",
|
||||
"\n",
|
||||
"myacienv = CondaDependencies.create(conda_packages=['scikit-learn','numpy','pandas']) #showing how to add libs as an eg. - not needed for this model.\n",
|
||||
"\n",
|
||||
"with open(\"mydeployenv.yml\",\"w\") as f:\n",
|
||||
" f.write(myacienv.serialize_to_string())"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#deploy to ACI\n",
|
||||
"from azureml.core.webservice import AciWebservice, Webservice\n",
|
||||
"\n",
|
||||
"myaci_config = AciWebservice.deploy_configuration(\n",
|
||||
" cpu_cores = 2, \n",
|
||||
" memory_gb = 2, \n",
|
||||
" tags = {'name':'Databricks Azure ML ACI'}, \n",
|
||||
" description = 'This is for ADB and AML example. Azure Databricks & Azure ML SDK demo with ACI by Parashar.')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# this will take 10-15 minutes to finish\n",
|
||||
"\n",
|
||||
"service_name = \"aciws\"\n",
|
||||
"runtime = \"spark-py\" \n",
|
||||
"driver_file = \"score_sparkml.py\"\n",
|
||||
"my_conda_file = \"mydeployenv.yml\"\n",
|
||||
"\n",
|
||||
"# image creation\n",
|
||||
"from azureml.core.image import ContainerImage\n",
|
||||
"myimage_config = ContainerImage.image_configuration(execution_script = driver_file, \n",
|
||||
" runtime = runtime, \n",
|
||||
" conda_file = my_conda_file)\n",
|
||||
"\n",
|
||||
"# Webservice creation\n",
|
||||
"myservice = Webservice.deploy_from_model(\n",
|
||||
" workspace=ws, \n",
|
||||
" name=service_name,\n",
|
||||
" deployment_config = myaci_config,\n",
|
||||
" models = [mymodel],\n",
|
||||
" image_config = myimage_config\n",
|
||||
" )\n",
|
||||
"\n",
|
||||
"myservice.wait_for_deployment(show_output=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"help(Webservice)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# List images by ws\n",
|
||||
"\n",
|
||||
"for i in ContainerImage.list(workspace = ws):\n",
|
||||
" print('{}(v.{} [{}]) stored at {} with build log {}'.format(i.name, i.version, i.creation_state, i.image_location, i.image_build_log_uri))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#for using the Web HTTP API \n",
|
||||
"print(myservice.scoring_uri)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import json\n",
|
||||
"\n",
|
||||
"#get the some sample data\n",
|
||||
"test_data_path = \"AdultCensusIncomeTest\"\n",
|
||||
"test = spark.read.parquet(test_data_path).limit(5)\n",
|
||||
"\n",
|
||||
"test_json = json.dumps(test.toJSON().collect())\n",
|
||||
"\n",
|
||||
"print(test_json)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#using data defined above predict if income is >50K (1) or <=50K (0)\n",
|
||||
"myservice.run(input_data=test_json)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#comment to not delete the web service\n",
|
||||
"myservice.delete()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
@@ -0,0 +1,250 @@
|
||||
{
|
||||
"metadata": {
|
||||
"name": "deploy-to-aks-existingimage-05",
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
},
|
||||
"notebookId": 1030695628045968
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"This notebook uses image from ACI notebook for deploying to AKS."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"# Check core SDK version number\n",
|
||||
"print(\"SDK version:\", azureml.core.VERSION)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Set auth to be used by workspace related APIs.\n",
|
||||
"# For automation or CI/CD ServicePrincipalAuthentication can be used.\n",
|
||||
"# https://docs.microsoft.com/en-us/python/api/azureml-core/azureml.core.authentication.serviceprincipalauthentication?view=azure-ml-py\n",
|
||||
"auth = None"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"print('Workspace name: ' + ws.name, \n",
|
||||
" 'Azure region: ' + ws.location, \n",
|
||||
" 'Subscription id: ' + ws.subscription_id, \n",
|
||||
" 'Resource group: ' + ws.resource_group, sep = '\\n')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# List images by ws\n",
|
||||
"\n",
|
||||
"from azureml.core.image import ContainerImage\n",
|
||||
"for i in ContainerImage.list(workspace = ws):\n",
|
||||
" print('{}(v.{} [{}]) stored at {} with build log {}'.format(i.name, i.version, i.creation_state, i.image_location, i.image_build_log_uri))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.image import Image\n",
|
||||
"myimage = Image(workspace=ws, name=\"aciws\")"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#create AKS compute\n",
|
||||
"#it may take 20-25 minutes to create a new cluster\n",
|
||||
"\n",
|
||||
"from azureml.core.compute import AksCompute, ComputeTarget\n",
|
||||
"\n",
|
||||
"# Use the default configuration (can also provide parameters to customize)\n",
|
||||
"prov_config = AksCompute.provisioning_configuration()\n",
|
||||
"\n",
|
||||
"aks_name = 'ps-aks-demo2' \n",
|
||||
"\n",
|
||||
"# Create the cluster\n",
|
||||
"aks_target = ComputeTarget.create(workspace = ws, \n",
|
||||
" name = aks_name, \n",
|
||||
" provisioning_configuration = prov_config)\n",
|
||||
"\n",
|
||||
"aks_target.wait_for_completion(show_output = True)\n",
|
||||
"\n",
|
||||
"print(aks_target.provisioning_state)\n",
|
||||
"print(aks_target.provisioning_errors)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import Webservice\n",
|
||||
"help( Webservice.deploy_from_image)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"from azureml.core.webservice import Webservice, AksWebservice\n",
|
||||
"from azureml.core.image import ContainerImage\n",
|
||||
"\n",
|
||||
"#Set the web service configuration (using default here with app insights)\n",
|
||||
"aks_config = AksWebservice.deploy_configuration(enable_app_insights=True)\n",
|
||||
"\n",
|
||||
"#unique service name\n",
|
||||
"service_name ='ps-aks-service'\n",
|
||||
"\n",
|
||||
"# Webservice creation using single command, there is a variant to use image directly as well.\n",
|
||||
"aks_service = Webservice.deploy_from_image(\n",
|
||||
" workspace=ws, \n",
|
||||
" name=service_name,\n",
|
||||
" deployment_config = aks_config,\n",
|
||||
" image = myimage,\n",
|
||||
" deployment_target = aks_target\n",
|
||||
" )\n",
|
||||
"\n",
|
||||
"aks_service.wait_for_deployment(show_output=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"aks_service.deployment_status"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#for using the Web HTTP API \n",
|
||||
"print(aks_service.scoring_uri)\n",
|
||||
"print(aks_service.get_keys())"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import json\n",
|
||||
"\n",
|
||||
"#get the some sample data\n",
|
||||
"test_data_path = \"AdultCensusIncomeTest\"\n",
|
||||
"test = spark.read.parquet(test_data_path).limit(5)\n",
|
||||
"\n",
|
||||
"test_json = json.dumps(test.toJSON().collect())\n",
|
||||
"\n",
|
||||
"print(test_json)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#using data defined above predict if income is >50K (1) or <=50K (0)\n",
|
||||
"aks_service.run(input_data=test_json)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#comment to not delete the web service\n",
|
||||
"aks_service.delete()\n",
|
||||
"#image.delete()\n",
|
||||
"#model.delete()\n",
|
||||
"aks_target.delete() "
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
@@ -1,182 +1,186 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Data Ingestion"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import os\n",
|
||||
"import urllib"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Download AdultCensusIncome.csv from Azure CDN. This file has 32,561 rows.\n",
|
||||
"basedataurl = \"https://amldockerdatasets.azureedge.net\"\n",
|
||||
"datafile = \"AdultCensusIncome.csv\"\n",
|
||||
"datafile_dbfs = os.path.join(\"/dbfs\", datafile)\n",
|
||||
"\n",
|
||||
"if os.path.isfile(datafile_dbfs):\n",
|
||||
" print(\"found {} at {}\".format(datafile, datafile_dbfs))\n",
|
||||
"else:\n",
|
||||
" print(\"downloading {} to {}\".format(datafile, datafile_dbfs))\n",
|
||||
" urllib.request.urlretrieve(os.path.join(basedataurl, datafile), datafile_dbfs)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Create a Spark dataframe out of the csv file.\n",
|
||||
"data_all = sqlContext.read.format('csv').options(header='true', inferSchema='true', ignoreLeadingWhiteSpace='true', ignoreTrailingWhiteSpace='true').load(datafile)\n",
|
||||
"print(\"({}, {})\".format(data_all.count(), len(data_all.columns)))\n",
|
||||
"data_all.printSchema()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#renaming columns\n",
|
||||
"columns_new = [col.replace(\"-\", \"_\") for col in data_all.columns]\n",
|
||||
"data_all = data_all.toDF(*columns_new)\n",
|
||||
"data_all.printSchema()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"display(data_all.limit(5))"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Data Preparation"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Choose feature columns and the label column.\n",
|
||||
"label = \"income\"\n",
|
||||
"xvars = set(data_all.columns) - {label}\n",
|
||||
"\n",
|
||||
"print(\"label = {}\".format(label))\n",
|
||||
"print(\"features = {}\".format(xvars))\n",
|
||||
"\n",
|
||||
"data = data_all.select([*xvars, label])\n",
|
||||
"\n",
|
||||
"# Split data into train and test.\n",
|
||||
"train, test = data.randomSplit([0.75, 0.25], seed=123)\n",
|
||||
"\n",
|
||||
"print(\"train ({}, {})\".format(train.count(), len(train.columns)))\n",
|
||||
"print(\"test ({}, {})\".format(test.count(), len(test.columns)))"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Data Persistence"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# Write the train and test data sets to intermediate storage\n",
|
||||
"train_data_path = \"AdultCensusIncomeTrain\"\n",
|
||||
"test_data_path = \"AdultCensusIncomeTest\"\n",
|
||||
"\n",
|
||||
"train_data_path_dbfs = os.path.join(\"/dbfs\", \"AdultCensusIncomeTrain\")\n",
|
||||
"test_data_path_dbfs = os.path.join(\"/dbfs\", \"AdultCensusIncomeTest\")\n",
|
||||
"\n",
|
||||
"train.write.mode('overwrite').parquet(train_data_path)\n",
|
||||
"test.write.mode('overwrite').parquet(test_data_path)\n",
|
||||
"print(\"train and test datasets saved to {} and {}\".format(train_data_path_dbfs, test_data_path_dbfs))"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": []
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
},
|
||||
{
|
||||
"name": "wamartin"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3",
|
||||
"language": "python",
|
||||
"name": "python3"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.7.0"
|
||||
},
|
||||
"name": "02.Ingest_data",
|
||||
"notebookId": 3836944406456362
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"name": "ingest-data-02",
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
},
|
||||
"notebookId": 3836944406456362
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Data Ingestion"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import os\n",
|
||||
"import urllib"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Download AdultCensusIncome.csv from Azure CDN. This file has 32,561 rows.\n",
|
||||
"dataurl = \"https://amldockerdatasets.azureedge.net/AdultCensusIncome.csv\"\n",
|
||||
"datafile = \"AdultCensusIncome.csv\"\n",
|
||||
"datafile_dbfs = os.path.join(\"/dbfs\", datafile)\n",
|
||||
"\n",
|
||||
"if os.path.isfile(datafile_dbfs):\n",
|
||||
" print(\"found {} at {}\".format(datafile, datafile_dbfs))\n",
|
||||
"else:\n",
|
||||
" print(\"downloading {} to {}\".format(datafile, datafile_dbfs))\n",
|
||||
" urllib.request.urlretrieve(dataurl, datafile_dbfs)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Create a Spark dataframe out of the csv file.\n",
|
||||
"data_all = sqlContext.read.format('csv').options(header='true', inferSchema='true', ignoreLeadingWhiteSpace='true', ignoreTrailingWhiteSpace='true').load(datafile)\n",
|
||||
"print(\"({}, {})\".format(data_all.count(), len(data_all.columns)))\n",
|
||||
"data_all.printSchema()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#renaming columns\n",
|
||||
"columns_new = [col.replace(\"-\", \"_\") for col in data_all.columns]\n",
|
||||
"data_all = data_all.toDF(*columns_new)\n",
|
||||
"data_all.printSchema()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"display(data_all.limit(5))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Data Preparation"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Choose feature columns and the label column.\n",
|
||||
"label = \"income\"\n",
|
||||
"xvars = set(data_all.columns) - {label}\n",
|
||||
"\n",
|
||||
"print(\"label = {}\".format(label))\n",
|
||||
"print(\"features = {}\".format(xvars))\n",
|
||||
"\n",
|
||||
"data = data_all.select([*xvars, label])\n",
|
||||
"\n",
|
||||
"# Split data into train and test.\n",
|
||||
"train, test = data.randomSplit([0.75, 0.25], seed=123)\n",
|
||||
"\n",
|
||||
"print(\"train ({}, {})\".format(train.count(), len(train.columns)))\n",
|
||||
"print(\"test ({}, {})\".format(test.count(), len(test.columns)))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"#Data Persistence"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Write the train and test data sets to intermediate storage\n",
|
||||
"train_data_path = \"AdultCensusIncomeTrain\"\n",
|
||||
"test_data_path = \"AdultCensusIncomeTest\"\n",
|
||||
"\n",
|
||||
"train_data_path_dbfs = os.path.join(\"/dbfs\", \"AdultCensusIncomeTrain\")\n",
|
||||
"test_data_path_dbfs = os.path.join(\"/dbfs\", \"AdultCensusIncomeTest\")\n",
|
||||
"\n",
|
||||
"train.write.mode('overwrite').parquet(train_data_path)\n",
|
||||
"test.write.mode('overwrite').parquet(test_data_path)\n",
|
||||
"print(\"train and test datasets saved to {} and {}\".format(train_data_path_dbfs, test_data_path_dbfs))"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
@@ -1,264 +1,190 @@
|
||||
{
|
||||
"cells": [
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"We support installing AML SDK as library from GUI. When attaching a library follow this https://docs.databricks.com/user-guide/libraries.html and add the below string as your PyPi package. You can select the option to attach the library to all clusters or just one cluster.\n",
|
||||
"\n",
|
||||
"**install azureml-sdk**\n",
|
||||
"* Source: Upload Python Egg or PyPi\n",
|
||||
"* PyPi Name: `azureml-sdk[databricks]`\n",
|
||||
"* Select Install Library"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"# Check core SDK version number - based on build number of preview/master.\n",
|
||||
"print(\"SDK version:\", azureml.core.VERSION)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "markdown",
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Please specify the Azure subscription Id, resource group name, workspace name, and the region in which you want to create the Azure Machine Learning Workspace.\n",
|
||||
"\n",
|
||||
"You can get the value of your Azure subscription ID from the Azure Portal, and then selecting Subscriptions from the menu on the left.\n",
|
||||
"\n",
|
||||
"For the resource_group, use the name of the resource group that contains your Azure Databricks Workspace.\n",
|
||||
"\n",
|
||||
"NOTE: If you provide a resource group name that does not exist, the resource group will be automatically created. This may or may not succeed in your environment, depending on the permissions you have on your Azure Subscription."
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"# subscription_id = \"<your-subscription-id>\"\n",
|
||||
"# resource_group = \"<your-existing-resource-group>\"\n",
|
||||
"# workspace_name = \"<a-new-or-existing-workspace; it is unrelated to Databricks workspace>\"\n",
|
||||
"# workspace_region = \"<your-resource group-region>\""
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##TESTONLY\n",
|
||||
"# import auth creds from notebook parameters\n",
|
||||
"tenant = dbutils.widgets.get('tenant_id')\n",
|
||||
"username = dbutils.widgets.get('service_principal_id')\n",
|
||||
"password = dbutils.widgets.get('service_principal_password')\n",
|
||||
"\n",
|
||||
"auth = azureml.core.authentication.ServicePrincipalAuthentication(tenant, username, password)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##TESTONLY\n",
|
||||
"subscription_id = dbutils.widgets.get('subscription_id')\n",
|
||||
"resource_group = dbutils.widgets.get('resource_group')\n",
|
||||
"workspace_name = dbutils.widgets.get('workspace_name')\n",
|
||||
"workspace_region = dbutils.widgets.get('workspace_region')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##TESTONLY\n",
|
||||
"# import the Workspace class and check the azureml SDK version\n",
|
||||
"# exist_ok checks if workspace exists or not.\n",
|
||||
"\n",
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.create(name = workspace_name,\n",
|
||||
" subscription_id = subscription_id,\n",
|
||||
" resource_group = resource_group, \n",
|
||||
" location = workspace_region,\n",
|
||||
" auth = auth,\n",
|
||||
" exist_ok=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##PUBLISHONLY\n",
|
||||
"## import the Workspace class and check the azureml SDK version\n",
|
||||
"## exist_ok checks if workspace exists or not.\n",
|
||||
"#\n",
|
||||
"#from azureml.core import Workspace\n",
|
||||
"#\n",
|
||||
"#ws = Workspace.create(name = workspace_name,\n",
|
||||
"# subscription_id = subscription_id,\n",
|
||||
"# resource_group = resource_group, \n",
|
||||
"# location = workspace_region,\n",
|
||||
"# exist_ok=True)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"#get workspace details\n",
|
||||
"ws.get_details()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##TESTONLY\n",
|
||||
"ws = Workspace(workspace_name = workspace_name,\n",
|
||||
" subscription_id = subscription_id,\n",
|
||||
" resource_group = resource_group,\n",
|
||||
" auth = auth)\n",
|
||||
"\n",
|
||||
"# persist the subscription id, resource group name, and workspace name in aml_config/config.json.\n",
|
||||
"ws.write_config()"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##PUBLISHONLY\n",
|
||||
"#ws = Workspace(workspace_name = workspace_name,\n",
|
||||
"# subscription_id = subscription_id,\n",
|
||||
"# resource_group = resource_group)\n",
|
||||
"#\n",
|
||||
"## persist the subscription id, resource group name, and workspace name in aml_config/config.json.\n",
|
||||
"#ws.write_config()\n",
|
||||
"###if you need to give a different path/filename please use this\n",
|
||||
"###write_config(path=\"/databricks/driver/aml_config/\",file_name=<alias_conf.cfg>)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"help(Workspace)"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##TESTONLY\n",
|
||||
"# import the Workspace class and check the azureml SDK version\n",
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"#ws = Workspace.from_config(<full path>)\n",
|
||||
"print('Workspace name: ' + ws.name, \n",
|
||||
" 'Azure region: ' + ws.location, \n",
|
||||
" 'Subscription id: ' + ws.subscription_id, \n",
|
||||
" 'Resource group: ' + ws.resource_group, sep = '\\n')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": [
|
||||
"##PUBLISHONLY\n",
|
||||
"## import the Workspace class and check the azureml SDK version\n",
|
||||
"#from azureml.core import Workspace\n",
|
||||
"#\n",
|
||||
"#ws = Workspace.from_config()\n",
|
||||
"##ws = Workspace.from_config(<full path>)\n",
|
||||
"#print('Workspace name: ' + ws.name, \n",
|
||||
"# 'Azure region: ' + ws.location, \n",
|
||||
"# 'Subscription id: ' + ws.subscription_id, \n",
|
||||
"# 'Resource group: ' + ws.resource_group, sep = '\\n')"
|
||||
]
|
||||
},
|
||||
{
|
||||
"cell_type": "code",
|
||||
"execution_count": null,
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"source": []
|
||||
}
|
||||
],
|
||||
"metadata": {
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
},
|
||||
{
|
||||
"name": "wamartin"
|
||||
}
|
||||
],
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3",
|
||||
"language": "python",
|
||||
"name": "python3"
|
||||
},
|
||||
"language_info": {
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"file_extension": ".py",
|
||||
"mimetype": "text/x-python",
|
||||
"name": "python",
|
||||
"nbconvert_exporter": "python",
|
||||
"pygments_lexer": "ipython3",
|
||||
"version": "3.7.0"
|
||||
},
|
||||
"name": "01.Installation_and_Configuration",
|
||||
"notebookId": 3836944406456490
|
||||
},
|
||||
"nbformat": 4,
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
{
|
||||
"metadata": {
|
||||
"name": "installation-and-configuration-01",
|
||||
"kernelspec": {
|
||||
"display_name": "Python 3.6",
|
||||
"name": "python36",
|
||||
"language": "python"
|
||||
},
|
||||
"authors": [
|
||||
{
|
||||
"name": "pasha"
|
||||
}
|
||||
],
|
||||
"language_info": {
|
||||
"mimetype": "text/x-python",
|
||||
"codemirror_mode": {
|
||||
"name": "ipython",
|
||||
"version": 3
|
||||
},
|
||||
"pygments_lexer": "ipython3",
|
||||
"name": "python",
|
||||
"file_extension": ".py",
|
||||
"nbconvert_exporter": "python",
|
||||
"version": "3.6.6"
|
||||
},
|
||||
"notebookId": 3688394266452835
|
||||
},
|
||||
"nbformat": 4,
|
||||
"cells": [
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Azure ML & Azure Databricks notebooks by Parashar Shah.\n",
|
||||
"\n",
|
||||
"Copyright (c) Microsoft Corporation. All rights reserved.\n",
|
||||
"\n",
|
||||
"Licensed under the MIT License."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"We support installing AML SDK as library from GUI. When attaching a library follow this https://docs.databricks.com/user-guide/libraries.html and add the below string as your PyPi package. You can select the option to attach the library to all clusters or just one cluster.\n",
|
||||
"\n",
|
||||
"**install azureml-sdk**\n",
|
||||
"* Source: Upload Python Egg or PyPi\n",
|
||||
"* PyPi Name: `azureml-sdk[databricks]`\n",
|
||||
"* Select Install Library"
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"import azureml.core\n",
|
||||
"\n",
|
||||
"# Check core SDK version number - based on build number of preview/master.\n",
|
||||
"print(\"SDK version:\", azureml.core.VERSION)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
"Please specify the Azure subscription Id, resource group name, workspace name, and the region in which you want to create the Azure Machine Learning Workspace.\n",
|
||||
"\n",
|
||||
"You can get the value of your Azure subscription ID from the Azure Portal, and then selecting Subscriptions from the menu on the left.\n",
|
||||
"\n",
|
||||
"For the resource_group, use the name of the resource group that contains your Azure Databricks Workspace.\n",
|
||||
"\n",
|
||||
"NOTE: If you provide a resource group name that does not exist, the resource group will be automatically created. This may or may not succeed in your environment, depending on the permissions you have on your Azure Subscription."
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# subscription_id = \"<your-subscription-id>\"\n",
|
||||
"# resource_group = \"<your-existing-resource-group>\"\n",
|
||||
"# workspace_name = \"<a-new-or-existing-workspace; it is unrelated to Databricks workspace>\"\n",
|
||||
"# workspace_region = \"<your-resource group-region>\""
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# Set auth to be used by workspace related APIs.\n",
|
||||
"# For automation or CI/CD ServicePrincipalAuthentication can be used.\n",
|
||||
"# https://docs.microsoft.com/en-us/python/api/azureml-core/azureml.core.authentication.serviceprincipalauthentication?view=azure-ml-py\n",
|
||||
"auth = None"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# import the Workspace class and check the azureml SDK version\n",
|
||||
"# exist_ok checks if workspace exists or not.\n",
|
||||
"\n",
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.create(name = workspace_name,\n",
|
||||
" subscription_id = subscription_id,\n",
|
||||
" resource_group = resource_group, \n",
|
||||
" location = workspace_region,\n",
|
||||
" auth = auth,\n",
|
||||
" exist_ok=True)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"#get workspace details\n",
|
||||
"ws.get_details()"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"ws = Workspace(workspace_name = workspace_name,\n",
|
||||
" subscription_id = subscription_id,\n",
|
||||
" resource_group = resource_group,\n",
|
||||
" auth = auth)\n",
|
||||
"\n",
|
||||
"# persist the subscription id, resource group name, and workspace name in aml_config/config.json.\n",
|
||||
"ws.write_config()\n",
|
||||
"#if you need to give a different path/filename please use this\n",
|
||||
"#write_config(path=\"/databricks/driver/aml_config/\",file_name=<alias_conf.cfg>)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"help(Workspace)"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"outputs": [],
|
||||
"execution_count": null,
|
||||
"source": [
|
||||
"# import the Workspace class and check the azureml SDK version\n",
|
||||
"from azureml.core import Workspace\n",
|
||||
"\n",
|
||||
"ws = Workspace.from_config(auth = auth)\n",
|
||||
"#ws = Workspace.from_config(<full path>)\n",
|
||||
"print('Workspace name: ' + ws.name, \n",
|
||||
" 'Azure region: ' + ws.location, \n",
|
||||
" 'Subscription id: ' + ws.subscription_id, \n",
|
||||
" 'Resource group: ' + ws.resource_group, sep = '\\n')"
|
||||
],
|
||||
"cell_type": "code"
|
||||
},
|
||||
{
|
||||
"metadata": {},
|
||||
"source": [
|
||||
""
|
||||
],
|
||||
"cell_type": "markdown"
|
||||
}
|
||||
],
|
||||
"nbformat_minor": 1
|
||||
}
|
||||
File diff suppressed because it is too large
Load Diff
Some files were not shown because too many files have changed in this diff Show More
Reference in New Issue
Block a user