spark-instrumented-optimizer/python/pyspark/sql/tests/test_pandas_udf_window.py
hyukjinkwon 03306a6df3 [SPARK-26036][PYTHON] Break large tests.py files into smaller files
## What changes were proposed in this pull request?

This PR continues to break down a big large file into smaller files. See https://github.com/apache/spark/pull/23021. It targets to follow https://github.com/numpy/numpy/tree/master/numpy.

Basically this PR proposes to break down `pyspark/tests.py` into ...:

```
pyspark
...
├── testing
...
│   └── utils.py
├── tests
│   ├── __init__.py
│   ├── test_appsubmit.py
│   ├── test_broadcast.py
│   ├── test_conf.py
│   ├── test_context.py
│   ├── test_daemon.py
│   ├── test_join.py
│   ├── test_profiler.py
│   ├── test_rdd.py
│   ├── test_readwrite.py
│   ├── test_serializers.py
│   ├── test_shuffle.py
│   ├── test_taskcontext.py
│   ├── test_util.py
│   └── test_worker.py
...
```

## How was this patch tested?

Existing tests should cover.

`cd python` and .`/run-tests-with-coverage`. Manually checked they are actually being ran.

Each test (not officially) can be ran via:

```bash
SPARK_TESTING=1 ./bin/pyspark pyspark.tests.test_context
```

Note that if you're using Mac and Python 3, you might have to `OBJC_DISABLE_INITIALIZE_FORK_SAFETY=YES`.

Closes #23033 from HyukjinKwon/SPARK-26036.

Authored-by: hyukjinkwon <gurwls223@apache.org>
Signed-off-by: hyukjinkwon <gurwls223@apache.org>
2018-11-15 12:30:52 +08:00

264 lines
9.3 KiB
Python

#
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# (the "License"); you may not use this file except in compliance with
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# http://www.apache.org/licenses/LICENSE-2.0
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# Unless required by applicable law or agreed to in writing, software
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# See the License for the specific language governing permissions and
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#
import unittest
from pyspark.sql.utils import AnalysisException
from pyspark.sql.window import Window
from pyspark.testing.sqlutils import ReusedSQLTestCase, have_pandas, have_pyarrow, \
pandas_requirement_message, pyarrow_requirement_message
from pyspark.testing.utils import QuietTest
@unittest.skipIf(
not have_pandas or not have_pyarrow,
pandas_requirement_message or pyarrow_requirement_message)
class WindowPandasUDFTests(ReusedSQLTestCase):
@property
def data(self):
from pyspark.sql.functions import array, explode, col, lit
return self.spark.range(10).toDF('id') \
.withColumn("vs", array([lit(i * 1.0) + col('id') for i in range(20, 30)])) \
.withColumn("v", explode(col('vs'))) \
.drop('vs') \
.withColumn('w', lit(1.0))
@property
def python_plus_one(self):
from pyspark.sql.functions import udf
return udf(lambda v: v + 1, 'double')
@property
def pandas_scalar_time_two(self):
from pyspark.sql.functions import pandas_udf
return pandas_udf(lambda v: v * 2, 'double')
@property
def pandas_agg_mean_udf(self):
from pyspark.sql.functions import pandas_udf, PandasUDFType
@pandas_udf('double', PandasUDFType.GROUPED_AGG)
def avg(v):
return v.mean()
return avg
@property
def pandas_agg_max_udf(self):
from pyspark.sql.functions import pandas_udf, PandasUDFType
@pandas_udf('double', PandasUDFType.GROUPED_AGG)
def max(v):
return v.max()
return max
@property
def pandas_agg_min_udf(self):
from pyspark.sql.functions import pandas_udf, PandasUDFType
@pandas_udf('double', PandasUDFType.GROUPED_AGG)
def min(v):
return v.min()
return min
@property
def unbounded_window(self):
return Window.partitionBy('id') \
.rowsBetween(Window.unboundedPreceding, Window.unboundedFollowing)
@property
def ordered_window(self):
return Window.partitionBy('id').orderBy('v')
@property
def unpartitioned_window(self):
return Window.partitionBy()
def test_simple(self):
from pyspark.sql.functions import mean
df = self.data
w = self.unbounded_window
mean_udf = self.pandas_agg_mean_udf
result1 = df.withColumn('mean_v', mean_udf(df['v']).over(w))
expected1 = df.withColumn('mean_v', mean(df['v']).over(w))
result2 = df.select(mean_udf(df['v']).over(w))
expected2 = df.select(mean(df['v']).over(w))
self.assertPandasEqual(expected1.toPandas(), result1.toPandas())
self.assertPandasEqual(expected2.toPandas(), result2.toPandas())
def test_multiple_udfs(self):
from pyspark.sql.functions import max, min, mean
df = self.data
w = self.unbounded_window
result1 = df.withColumn('mean_v', self.pandas_agg_mean_udf(df['v']).over(w)) \
.withColumn('max_v', self.pandas_agg_max_udf(df['v']).over(w)) \
.withColumn('min_w', self.pandas_agg_min_udf(df['w']).over(w))
expected1 = df.withColumn('mean_v', mean(df['v']).over(w)) \
.withColumn('max_v', max(df['v']).over(w)) \
.withColumn('min_w', min(df['w']).over(w))
self.assertPandasEqual(expected1.toPandas(), result1.toPandas())
def test_replace_existing(self):
from pyspark.sql.functions import mean
df = self.data
w = self.unbounded_window
result1 = df.withColumn('v', self.pandas_agg_mean_udf(df['v']).over(w))
expected1 = df.withColumn('v', mean(df['v']).over(w))
self.assertPandasEqual(expected1.toPandas(), result1.toPandas())
def test_mixed_sql(self):
from pyspark.sql.functions import mean
df = self.data
w = self.unbounded_window
mean_udf = self.pandas_agg_mean_udf
result1 = df.withColumn('v', mean_udf(df['v'] * 2).over(w) + 1)
expected1 = df.withColumn('v', mean(df['v'] * 2).over(w) + 1)
self.assertPandasEqual(expected1.toPandas(), result1.toPandas())
def test_mixed_udf(self):
from pyspark.sql.functions import mean
df = self.data
w = self.unbounded_window
plus_one = self.python_plus_one
time_two = self.pandas_scalar_time_two
mean_udf = self.pandas_agg_mean_udf
result1 = df.withColumn(
'v2',
plus_one(mean_udf(plus_one(df['v'])).over(w)))
expected1 = df.withColumn(
'v2',
plus_one(mean(plus_one(df['v'])).over(w)))
result2 = df.withColumn(
'v2',
time_two(mean_udf(time_two(df['v'])).over(w)))
expected2 = df.withColumn(
'v2',
time_two(mean(time_two(df['v'])).over(w)))
self.assertPandasEqual(expected1.toPandas(), result1.toPandas())
self.assertPandasEqual(expected2.toPandas(), result2.toPandas())
def test_without_partitionBy(self):
from pyspark.sql.functions import mean
df = self.data
w = self.unpartitioned_window
mean_udf = self.pandas_agg_mean_udf
result1 = df.withColumn('v2', mean_udf(df['v']).over(w))
expected1 = df.withColumn('v2', mean(df['v']).over(w))
result2 = df.select(mean_udf(df['v']).over(w))
expected2 = df.select(mean(df['v']).over(w))
self.assertPandasEqual(expected1.toPandas(), result1.toPandas())
self.assertPandasEqual(expected2.toPandas(), result2.toPandas())
def test_mixed_sql_and_udf(self):
from pyspark.sql.functions import max, min, rank, col
df = self.data
w = self.unbounded_window
ow = self.ordered_window
max_udf = self.pandas_agg_max_udf
min_udf = self.pandas_agg_min_udf
result1 = df.withColumn('v_diff', max_udf(df['v']).over(w) - min_udf(df['v']).over(w))
expected1 = df.withColumn('v_diff', max(df['v']).over(w) - min(df['v']).over(w))
# Test mixing sql window function and window udf in the same expression
result2 = df.withColumn('v_diff', max_udf(df['v']).over(w) - min(df['v']).over(w))
expected2 = expected1
# Test chaining sql aggregate function and udf
result3 = df.withColumn('max_v', max_udf(df['v']).over(w)) \
.withColumn('min_v', min(df['v']).over(w)) \
.withColumn('v_diff', col('max_v') - col('min_v')) \
.drop('max_v', 'min_v')
expected3 = expected1
# Test mixing sql window function and udf
result4 = df.withColumn('max_v', max_udf(df['v']).over(w)) \
.withColumn('rank', rank().over(ow))
expected4 = df.withColumn('max_v', max(df['v']).over(w)) \
.withColumn('rank', rank().over(ow))
self.assertPandasEqual(expected1.toPandas(), result1.toPandas())
self.assertPandasEqual(expected2.toPandas(), result2.toPandas())
self.assertPandasEqual(expected3.toPandas(), result3.toPandas())
self.assertPandasEqual(expected4.toPandas(), result4.toPandas())
def test_array_type(self):
from pyspark.sql.functions import pandas_udf, PandasUDFType
df = self.data
w = self.unbounded_window
array_udf = pandas_udf(lambda x: [1.0, 2.0], 'array<double>', PandasUDFType.GROUPED_AGG)
result1 = df.withColumn('v2', array_udf(df['v']).over(w))
self.assertEquals(result1.first()['v2'], [1.0, 2.0])
def test_invalid_args(self):
from pyspark.sql.functions import pandas_udf, PandasUDFType
df = self.data
w = self.unbounded_window
ow = self.ordered_window
mean_udf = self.pandas_agg_mean_udf
with QuietTest(self.sc):
with self.assertRaisesRegexp(
AnalysisException,
'.*not supported within a window function'):
foo_udf = pandas_udf(lambda x: x, 'v double', PandasUDFType.GROUPED_MAP)
df.withColumn('v2', foo_udf(df['v']).over(w))
with QuietTest(self.sc):
with self.assertRaisesRegexp(
AnalysisException,
'.*Only unbounded window frame is supported.*'):
df.withColumn('mean_v', mean_udf(df['v']).over(ow))
if __name__ == "__main__":
from pyspark.sql.tests.test_pandas_udf_window import *
try:
import xmlrunner
testRunner = xmlrunner.XMLTestRunner(output='target/test-reports')
except ImportError:
testRunner = None
unittest.main(testRunner=testRunner, verbosity=2)