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from copy import copy, deepcopy
from tests.common.impala_test_suite import ImpalaTestSuite
from tests.common.skip import SkipIfNotHdfsMinicluster
def transpose_results(result, map_fn=lambda x: x):
"""Given a query result (list of strings, each string represents a row), return a list
of columns, where each column is a list of strings. Optionally, map_fn can be provided
to be applied to every value, eg. to convert the strings to their underlying types."""
split_result = [row.split('\t') for row in result]
return [map(map_fn, list(l)) for l in zip(*split_result)]
class TestQueryFullSort(ImpalaTestSuite):
"""Test class to do functional validation of sorting when data is spilled to disk."""
@classmethod
def get_workload(self):
return 'tpch'
@classmethod
def add_test_dimensions(cls):
super(TestQueryFullSort, cls).add_test_dimensions()
if cls.exploration_strategy() == 'core':
cls.ImpalaTestMatrix.add_constraint(lambda v:\
v.get_value('table_format').file_format == 'parquet')
def test_multiple_buffer_pool_limits(self, vector):
"""Using lineitem table forces the multi-phase sort with low buffer_pool_limit.
This test takes about a minute."""
query = """select l_comment, l_partkey, l_orderkey, l_suppkey, l_commitdate
from lineitem order by l_comment limit 100000"""
exec_option = copy(vector.get_value('exec_option'))
exec_option['disable_outermost_topn'] = 1
exec_option['num_nodes'] = 1
table_format = vector.get_value('table_format')
"""The first run should fit in memory, the second run is a 2-phase disk sort,
and the third run is a multi-phase sort (i.e. with an intermediate merge)."""
for buffer_pool_limit in ['-1', '300m', '130m']:
exec_option['buffer_pool_limit'] = buffer_pool_limit
query_result = self.execute_query(
query, exec_option, table_format=table_format)
result = transpose_results(query_result.data)
assert(result[0] == sorted(result[0]))
def test_multiple_mem_limits_full_output(self, vector):
""" Exercise a range of memory limits, returning the full sorted input. """
query = """select o_orderdate, o_custkey, o_comment
from orders
order by o_orderdate"""
exec_option = copy(vector.get_value('exec_option'))
table_format = vector.get_value('table_format')
exec_option['default_spillable_buffer_size'] = '8M'
# Minimum memory for different parts of the plan.
sort_reservation_mb = 48
if table_format.file_format == 'parquet':
scan_reservation_mb = 24
else:
scan_reservation_mb = 8
total_reservation_mb = sort_reservation_mb + scan_reservation_mb
# The below memory value assume 8M pages.
# Test with unlimited and minimum memory for all file formats.
buffer_pool_limit_values = ['-1', '{0}M'.format(total_reservation_mb)]
if self.exploration_strategy() == 'exhaustive' and \
table_format.file_format == 'parquet':
# Test some intermediate values for parquet on exhaustive.
buffer_pool_limit_values += ['128M', '256M']
for buffer_pool_limit in buffer_pool_limit_values:
exec_option['buffer_pool_limit'] = buffer_pool_limit
result = transpose_results(self.execute_query(
query, exec_option, table_format=table_format).data)
assert(result[0] == sorted(result[0]))
def test_sort_join(self, vector):
"""With minimum memory limit this should be a 1-phase sort"""
query = """select o1.o_orderdate, o2.o_custkey, o1.o_comment from orders o1 join
orders o2 on (o1.o_orderkey = o2.o_orderkey) order by o1.o_orderdate limit 100000"""
exec_option = copy(vector.get_value('exec_option'))
exec_option['disable_outermost_topn'] = 1
exec_option['mem_limit'] = "134m"
exec_option['num_nodes'] = 1
table_format = vector.get_value('table_format')
query_result = self.execute_query(query, exec_option, table_format=table_format)
assert "TotalMergesPerformed: 1" in query_result.runtime_profile
result = transpose_results(query_result.data)
assert(result[0] == sorted(result[0]))
def test_sort_union(self, vector):
query = """select o_orderdate, o_custkey, o_comment from (select * from orders union
select * from orders union all select * from orders) as i
order by o_orderdate limit 100000"""
exec_option = copy(vector.get_value('exec_option'))
exec_option['disable_outermost_topn'] = 1
exec_option['mem_limit'] = "3000m"
table_format = vector.get_value('table_format')
result = transpose_results(self.execute_query(
query, exec_option, table_format=table_format).data)
assert(result[0] == sorted(result[0]))
def test_pathological_input(self, vector):
""" Regression test for stack overflow and poor performance on certain inputs where
always selecting the middle element as a quicksort pivot caused poor performance. The
trick is to concatenate two equal-size sorted inputs. If the middle element is always
selected as the pivot (the old method), the sorter tends to get stuck selecting the
minimum element as the pivot, which results in almost all of the tuples ending up
in the right partition.
"""
query = """select l_orderkey from (
select * from lineitem limit 300000
union all
select * from lineitem limit 300000) t
order by l_orderkey"""
exec_option = copy(vector.get_value('exec_option'))
exec_option['disable_outermost_topn'] = 1
# Run with a single scanner thread so that the input doesn't get reordered.
exec_option['num_nodes'] = "1"
exec_option['num_scanner_threads'] = "1"
table_format = vector.get_value('table_format')
result = transpose_results(self.execute_query(
query, exec_option, table_format=table_format).data)
numeric_results = [int(val) for val in result[0]]
assert(numeric_results == sorted(numeric_results))
def test_spill_empty_strings(self, vector):
"""Test corner case of spilling sort with only empty strings. Spilling with var len
slots typically means the sort must reorder blocks and convert pointers, but this case
has to be handled differently because there are no var len blocks to point into."""
query = """
select empty_str, l_orderkey, l_partkey, l_suppkey,
l_linenumber, l_quantity, l_extendedprice, l_discount, l_tax
from (select substr(l_comment, 1000, 0) empty_str, * from lineitem) t
order by empty_str, l_orderkey, l_partkey, l_suppkey, l_linenumber
limit 100000
"""
exec_option = copy(vector.get_value('exec_option'))
exec_option['disable_outermost_topn'] = 1
exec_option['buffer_pool_limit'] = "256m"
exec_option['num_nodes'] = "1"
table_format = vector.get_value('table_format')
result = transpose_results(self.execute_query(
query, exec_option, table_format=table_format).data)
assert(result[0] == sorted(result[0]))
@SkipIfNotHdfsMinicluster.tuned_for_minicluster
def test_sort_reservation_usage(self, vector):
"""Tests for sorter reservation usage."""
new_vector = deepcopy(vector)
# Run with num_nodes=1 to make execution more deterministic.
new_vector.get_value('exec_option')['num_nodes'] = 1
self.run_test_case('sort-reservation-usage-single-node', new_vector)
class TestRandomSort(ImpalaTestSuite):
@classmethod
def get_workload(self):
return 'functional'
def test_order_by_random(self):
"""Tests that 'order by random()' works as expected."""
# "order by random()" with different seeds should produce different orderings.
seed_query = "select * from functional.alltypestiny order by random(%s)"
results_seed0 = self.execute_query(seed_query % "0")
results_seed1 = self.execute_query(seed_query % "1")
assert results_seed0.data != results_seed1.data
assert sorted(results_seed0.data) == sorted(results_seed1.data)
# Include "random()" in the select list to check that it's sorted correctly.
results = transpose_results(self.execute_query(
"select random() as r from functional.alltypessmall order by r").data,
lambda x: float(x))
assert(results[0] == sorted(results[0]))
# Like above, but with a limit.
results = transpose_results(self.execute_query(
"select random() as r from functional.alltypes order by r limit 100").data,
lambda x: float(x))
assert(results == sorted(results))
# "order by random()" inside an inline view.
query = "select r from (select random() r from functional.alltypessmall) v order by r"
results = transpose_results(self.execute_query(query).data, lambda x: float(x))
assert (results == sorted(results))
def test_analytic_order_by_random(self):
"""Tests that a window function over 'order by random()' works as expected."""
# Since we use the same random seed, the results should be returned in order.
query = """select last_value(rand(2)) over (order by rand(2)) from
functional.alltypestiny"""
results = transpose_results(self.execute_query(query).data, lambda x: float(x))
assert (results == sorted(results))
class TestPartialSort(ImpalaTestSuite):
"""Test class to do functional validation of partial sorts."""
def test_partial_sort_min_reservation(self, unique_database):
"""Test that the partial sort node can operate if it only gets its minimum
memory reservation."""
table_name = "%s.kudu_test" % unique_database
self.client.set_configuration_option(
"debug_action", "-1:OPEN:SET_DENY_RESERVATION_PROBABILITY@1.0")
self.execute_query("""create table %s (col0 string primary key)
partition by hash(col0) partitions 8 stored as kudu""" % table_name)
result = self.execute_query(
"insert into %s select string_col from functional.alltypessmall" % table_name)
assert "PARTIAL SORT" in result.runtime_profile, result.runtime_profile