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For files that have a Cloudera copyright (and no other copyright notice), make changes to follow the ASF source file header policy here: http://www.apache.org/legal/src-headers.html#headers Specifically: 1) Remove the Cloudera copyright. 2) Modify NOTICE.txt according to http://www.apache.org/legal/src-headers.html#notice to follow that format and add a line for Cloudera. 3) Replace or add the existing ASF license text with the one given on the website. Much of this change was automatically generated via: git grep -li 'Copyright.*Cloudera' > modified_files.txt cat modified_files.txt | xargs perl -n -i -e 'print unless m#Copyright.*Cloudera#i;' cat modified_files_txt | xargs fix_apache_license.py [1] Some manual fixups were performed following those steps, especially when license text was completely missing from the file. [1] https://gist.github.com/anonymous/ff71292094362fc5c594 with minor modification to ORIG_LICENSE to match Impala's license text. Change-Id: I2e0bd8420945b953e1b806041bea4d72a3943d86 Reviewed-on: http://gerrit.cloudera.org:8080/3779 Reviewed-by: Dan Hecht <dhecht@cloudera.com> Tested-by: Internal Jenkins
157 lines
5.5 KiB
Python
157 lines
5.5 KiB
Python
# Licensed to the Apache Software Foundation (ASF) under one
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# or more contributor license agreements. See the NOTICE file
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# distributed with this work for additional information
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# regarding copyright ownership. The ASF licenses this file
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# to you under the Apache License, Version 2.0 (the
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# "License"); you may not use this file except in compliance
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# with the License. You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing,
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# software distributed under the License is distributed on an
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# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
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# KIND, either express or implied. See the License for the
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# specific language governing permissions and limitations
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# under the License.
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import logging
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from tests.common.test_dimensions import (
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TableFormatInfo,
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get_dataset_from_workload,
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load_table_info_dimension)
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from tests.performance.query_executor import (
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BeeswaxQueryExecConfig,
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HiveHS2QueryConfig,
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ImpalaHS2QueryConfig,
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JdbcQueryExecConfig,
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QueryExecutor)
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from tests.performance.query_exec_functions import (
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execute_using_hive_hs2,
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execute_using_impala_beeswax,
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execute_using_impala_hs2,
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execute_using_jdbc)
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from tests.performance.scheduler import Scheduler
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# Setup Logging
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logging.basicConfig(level=logging.INFO, format='[%(name)s]: %(message)s')
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LOG = logging.getLogger('workload_runner')
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class WorkloadRunner(object):
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"""Runs query files and captures results from the specified workload(s)
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The usage is:
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1) Initialize WorkloadRunner with desired execution parameters.
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2) Call workload_runner.run()
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Internally, for each workload, this module looks up and parses that workload's
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query files and reads the workload's test vector to determine what combination(s)
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of file format / compression to run with.
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Args:
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workload (Workload)
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scale_factor (str): eg. "300gb"
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config (WorkloadConfig)
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Attributes:
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workload (Workload)
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scale_factor (str): eg. "300gb"
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config (WorkloadConfig)
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exit_on_error (boolean)
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results (list of ImpalaQueryResult)
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_test_vectors (list of ?)
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"""
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def __init__(self, workload, scale_factor, config):
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self.workload = workload
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self.scale_factor = scale_factor
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self.config = config
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self.exit_on_error = not self.config.continue_on_query_error
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if self.config.verbose: LOG.setLevel(level=logging.DEBUG)
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self._generate_test_vectors()
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self._results = list()
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@property
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def results(self):
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return self._results
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def _generate_test_vectors(self):
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"""Generate test vector objects
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If the user has specified a set for table_formats, generate them, otherwise generate
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vectors for all table formats within the specified exploration strategy.
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"""
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self._test_vectors = []
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if self.config.table_formats:
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dataset = get_dataset_from_workload(self.workload.name)
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for tf in self.config.table_formats:
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self._test_vectors.append(TableFormatInfo.create_from_string(dataset, tf))
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else:
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vectors = load_table_info_dimension(self.workload.name,
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self.config.exploration_strategy)
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self._test_vectors = [vector.value for vector in vectors]
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def _create_executor(self, executor_name):
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query_options = {
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'impala_beeswax': lambda: (execute_using_impala_beeswax,
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BeeswaxQueryExecConfig(plugin_runner=self.config.plugin_runner,
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exec_options=self.config.exec_options,
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use_kerberos=self.config.use_kerberos,
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)),
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'impala_jdbc': lambda: (execute_using_jdbc,
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JdbcQueryExecConfig(plugin_runner=self.config.plugin_runner)
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),
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'impala_hs2': lambda: (execute_using_impala_hs2,
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ImpalaHS2QueryConfig(plugin_runner=self.config.plugin_runner,
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use_kerberos=self.config.use_kerberos
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)),
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'hive_hs2': lambda: (execute_using_hive_hs2,
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HiveHS2QueryConfig(hiveserver=self.config.hiveserver,
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plugin_runner=self.config.plugin_runner,
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exec_options=self.config.exec_options,
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user=self.config.user,
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use_kerberos=self.config.use_kerberos
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))
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} [executor_name]()
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return query_options
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def _execute_queries(self, queries):
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"""Execute a set of queries.
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Create query executors for each query, and pass them along with config information to
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the scheduler.
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"""
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executor_name = "{0}_{1}".format(self.config.exec_engine, self.config.client_type)
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exec_func, exec_config = self._create_executor(executor_name)
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query_executors = []
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# Build an executor for each query
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for query in queries:
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query_executor = QueryExecutor(executor_name,
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query,
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exec_func,
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exec_config,
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self.exit_on_error)
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query_executors.append(query_executor)
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# Initialize the scheduler.
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scheduler = Scheduler(query_executors=query_executors,
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shuffle=self.config.shuffle_queries,
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iterations=self.config.workload_iterations,
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query_iterations=self.config.query_iterations,
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impalads=self.config.impalads,
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num_clients=self.config.num_clients)
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scheduler.run()
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self._results.extend(scheduler.results)
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def run(self):
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"""
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Runs the workload against all test vectors serially and stores the results.
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"""
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for test_vector in self._test_vectors:
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# Transform the query strings to Query objects for a combination of scale factor and
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# the test vector.
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queries = self.workload.construct_queries(test_vector, self.scale_factor)
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self._execute_queries(queries)
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