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test_multiple_sort_run_bytes_limits seems to become flaky in ubuntu-16.04-dockerised-tests. This flakiness may come from accuracy change in query estimates, the mem_limit specified in the test does not fit anymore, or query concurrency in mini cluster that may disturb expected memory allocation. This patch remove the second test case of test_multiple_sort_run_bytes_limits due to variability in several test run in the past. It does not compromise the test itself because the basic feature of sort_run_bytes_limit is still verifiable by the remaining test cases. The assertion is also changed a bit to allow easier debugging in case test regression occurs again in the future. Testing: - Run and pass test_sort.py Change-Id: I84a8b579c943cddba4432cf183f7f002ef8ec6ad Reviewed-on: http://gerrit.cloudera.org:8080/16301 Reviewed-by: Impala Public Jenkins <impala-public-jenkins@cloudera.com> Tested-by: Impala Public Jenkins <impala-public-jenkins@cloudera.com>
264 lines
12 KiB
Python
264 lines
12 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 re
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from copy import copy, deepcopy
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from tests.common.impala_test_suite import ImpalaTestSuite
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from tests.common.skip import SkipIfNotHdfsMinicluster
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def transpose_results(result, map_fn=lambda x: x):
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"""Given a query result (list of strings, each string represents a row), return a list
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of columns, where each column is a list of strings. Optionally, map_fn can be provided
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to be applied to every value, eg. to convert the strings to their underlying types."""
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split_result = [row.split('\t') for row in result]
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return [map(map_fn, list(l)) for l in zip(*split_result)]
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class TestQueryFullSort(ImpalaTestSuite):
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"""Test class to do functional validation of sorting when data is spilled to disk."""
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@classmethod
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def get_workload(self):
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return 'tpch'
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@classmethod
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def add_test_dimensions(cls):
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super(TestQueryFullSort, cls).add_test_dimensions()
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if cls.exploration_strategy() == 'core':
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cls.ImpalaTestMatrix.add_constraint(lambda v:\
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v.get_value('table_format').file_format == 'parquet')
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def test_multiple_buffer_pool_limits(self, vector):
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"""Using lineitem table forces the multi-phase sort with low buffer_pool_limit.
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This test takes about a minute."""
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query = """select l_comment, l_partkey, l_orderkey, l_suppkey, l_commitdate
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from lineitem order by l_comment limit 100000"""
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exec_option = copy(vector.get_value('exec_option'))
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exec_option['disable_outermost_topn'] = 1
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exec_option['num_nodes'] = 1
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table_format = vector.get_value('table_format')
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"""The first run should fit in memory, the second run is a 2-phase disk sort,
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and the third run is a multi-phase sort (i.e. with an intermediate merge)."""
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for buffer_pool_limit in ['-1', '300m', '130m']:
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exec_option['buffer_pool_limit'] = buffer_pool_limit
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query_result = self.execute_query(
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query, exec_option, table_format=table_format)
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result = transpose_results(query_result.data)
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assert(result[0] == sorted(result[0]))
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def test_multiple_sort_run_bytes_limits(self, vector):
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"""Using lineitem table forces the multi-phase sort with low sort_run_bytes_limit.
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This test takes about a minute."""
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query = """select l_comment, l_partkey, l_orderkey, l_suppkey, l_commitdate
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from lineitem order by l_comment limit 100000"""
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exec_option = copy(vector.get_value('exec_option'))
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exec_option['disable_outermost_topn'] = 1
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exec_option['num_nodes'] = 1
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table_format = vector.get_value('table_format')
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"""The first sort run is given a privilege to ignore sort_run_bytes_limit, except
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when estimate hints that spill is inevitable. The lower sort_run_bytes_limit of
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a query is, the more sort runs are likely to be produced and spilled.
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Case 1 : 0 SpilledRuns, because all rows fit within the maximum reservation.
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sort_run_bytes_limit is not enforced.
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Case 2 : 4 SpilledRuns, because sort node estimate that spill is inevitable.
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So all runs are capped to 130m, including the first one."""
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options = [('2g', '100m', '0'), ('400m', '130m', '4')]
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for (mem_limit, sort_run_bytes_limit, spilled_runs) in options:
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exec_option['mem_limit'] = mem_limit
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exec_option['sort_run_bytes_limit'] = sort_run_bytes_limit
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query_result = self.execute_query(
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query, exec_option, table_format=table_format)
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m = re.search(r'\s+\- SpilledRuns: .*', query_result.runtime_profile)
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assert "SpilledRuns: " + spilled_runs in m.group()
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result = transpose_results(query_result.data)
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assert(result[0] == sorted(result[0]))
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def test_multiple_mem_limits_full_output(self, vector):
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""" Exercise a range of memory limits, returning the full sorted input. """
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query = """select o_orderdate, o_custkey, o_comment
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from orders
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order by o_orderdate"""
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exec_option = copy(vector.get_value('exec_option'))
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table_format = vector.get_value('table_format')
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exec_option['default_spillable_buffer_size'] = '8M'
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# Minimum memory for different parts of the plan.
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sort_reservation_mb = 48
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if table_format.file_format == 'parquet':
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scan_reservation_mb = 24
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else:
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scan_reservation_mb = 8
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total_reservation_mb = sort_reservation_mb + scan_reservation_mb
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# The below memory value assume 8M pages.
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# Test with unlimited and minimum memory for all file formats.
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buffer_pool_limit_values = ['-1', '{0}M'.format(total_reservation_mb)]
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if self.exploration_strategy() == 'exhaustive' and \
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table_format.file_format == 'parquet':
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# Test some intermediate values for parquet on exhaustive.
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buffer_pool_limit_values += ['128M', '256M']
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for buffer_pool_limit in buffer_pool_limit_values:
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exec_option['buffer_pool_limit'] = buffer_pool_limit
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result = transpose_results(self.execute_query(
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query, exec_option, table_format=table_format).data)
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assert(result[0] == sorted(result[0]))
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def test_sort_join(self, vector):
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"""With minimum memory limit this should be a 1-phase sort"""
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query = """select o1.o_orderdate, o2.o_custkey, o1.o_comment from orders o1 join
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orders o2 on (o1.o_orderkey = o2.o_orderkey) order by o1.o_orderdate limit 100000"""
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exec_option = copy(vector.get_value('exec_option'))
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exec_option['disable_outermost_topn'] = 1
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exec_option['mem_limit'] = "134m"
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exec_option['num_nodes'] = 1
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table_format = vector.get_value('table_format')
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query_result = self.execute_query(query, exec_option, table_format=table_format)
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assert "TotalMergesPerformed: 1" in query_result.runtime_profile
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result = transpose_results(query_result.data)
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assert(result[0] == sorted(result[0]))
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def test_sort_union(self, vector):
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query = """select o_orderdate, o_custkey, o_comment from (select * from orders union
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select * from orders union all select * from orders) as i
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order by o_orderdate limit 100000"""
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exec_option = copy(vector.get_value('exec_option'))
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exec_option['disable_outermost_topn'] = 1
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exec_option['mem_limit'] = "3000m"
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table_format = vector.get_value('table_format')
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result = transpose_results(self.execute_query(
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query, exec_option, table_format=table_format).data)
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assert(result[0] == sorted(result[0]))
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def test_pathological_input(self, vector):
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""" Regression test for stack overflow and poor performance on certain inputs where
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always selecting the middle element as a quicksort pivot caused poor performance. The
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trick is to concatenate two equal-size sorted inputs. If the middle element is always
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selected as the pivot (the old method), the sorter tends to get stuck selecting the
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minimum element as the pivot, which results in almost all of the tuples ending up
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in the right partition.
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"""
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query = """select l_orderkey from (
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select * from lineitem limit 300000
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union all
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select * from lineitem limit 300000) t
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order by l_orderkey"""
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exec_option = copy(vector.get_value('exec_option'))
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exec_option['disable_outermost_topn'] = 1
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# Run with a single scanner thread so that the input doesn't get reordered.
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exec_option['num_nodes'] = "1"
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exec_option['num_scanner_threads'] = "1"
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table_format = vector.get_value('table_format')
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result = transpose_results(self.execute_query(
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query, exec_option, table_format=table_format).data)
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numeric_results = [int(val) for val in result[0]]
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assert(numeric_results == sorted(numeric_results))
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def test_spill_empty_strings(self, vector):
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"""Test corner case of spilling sort with only empty strings. Spilling with var len
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slots typically means the sort must reorder blocks and convert pointers, but this case
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has to be handled differently because there are no var len blocks to point into."""
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query = """
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select empty_str, l_orderkey, l_partkey, l_suppkey,
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l_linenumber, l_quantity, l_extendedprice, l_discount, l_tax
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from (select substr(l_comment, 1000, 0) empty_str, * from lineitem) t
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order by empty_str, l_orderkey, l_partkey, l_suppkey, l_linenumber
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limit 100000
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"""
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exec_option = copy(vector.get_value('exec_option'))
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exec_option['disable_outermost_topn'] = 1
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exec_option['buffer_pool_limit'] = "256m"
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exec_option['num_nodes'] = "1"
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table_format = vector.get_value('table_format')
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result = transpose_results(self.execute_query(
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query, exec_option, table_format=table_format).data)
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assert(result[0] == sorted(result[0]))
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@SkipIfNotHdfsMinicluster.tuned_for_minicluster
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def test_sort_reservation_usage(self, vector):
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"""Tests for sorter reservation usage."""
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new_vector = deepcopy(vector)
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# Run with num_nodes=1 to make execution more deterministic.
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new_vector.get_value('exec_option')['num_nodes'] = 1
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self.run_test_case('sort-reservation-usage-single-node', new_vector)
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class TestRandomSort(ImpalaTestSuite):
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@classmethod
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def get_workload(self):
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return 'functional'
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def test_order_by_random(self):
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"""Tests that 'order by random()' works as expected."""
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# "order by random()" with different seeds should produce different orderings.
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seed_query = "select * from functional.alltypestiny order by random(%s)"
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results_seed0 = self.execute_query(seed_query % "0")
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results_seed1 = self.execute_query(seed_query % "1")
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assert results_seed0.data != results_seed1.data
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assert sorted(results_seed0.data) == sorted(results_seed1.data)
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# Include "random()" in the select list to check that it's sorted correctly.
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results = transpose_results(self.execute_query(
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"select random() as r from functional.alltypessmall order by r").data,
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lambda x: float(x))
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assert(results[0] == sorted(results[0]))
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# Like above, but with a limit.
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results = transpose_results(self.execute_query(
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"select random() as r from functional.alltypes order by r limit 100").data,
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lambda x: float(x))
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assert(results == sorted(results))
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# "order by random()" inside an inline view.
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query = "select r from (select random() r from functional.alltypessmall) v order by r"
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results = transpose_results(self.execute_query(query).data, lambda x: float(x))
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assert (results == sorted(results))
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def test_analytic_order_by_random(self):
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"""Tests that a window function over 'order by random()' works as expected."""
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# Since we use the same random seed, the results should be returned in order.
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query = """select last_value(rand(2)) over (order by rand(2)) from
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functional.alltypestiny"""
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results = transpose_results(self.execute_query(query).data, lambda x: float(x))
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assert (results == sorted(results))
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class TestPartialSort(ImpalaTestSuite):
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"""Test class to do functional validation of partial sorts."""
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def test_partial_sort_min_reservation(self, unique_database):
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"""Test that the partial sort node can operate if it only gets its minimum
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memory reservation."""
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table_name = "%s.kudu_test" % unique_database
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self.client.set_configuration_option(
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"debug_action", "-1:OPEN:SET_DENY_RESERVATION_PROBABILITY@1.0")
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self.execute_query("""create table %s (col0 string primary key)
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partition by hash(col0) partitions 8 stored as kudu""" % table_name)
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result = self.execute_query(
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"insert into %s select string_col from functional.alltypessmall" % table_name)
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assert "PARTIAL SORT" in result.runtime_profile, result.runtime_profile
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