spark-instrumented-optimizer/python/pyspark/sql/tests/test_column.py
HyukjinKwon 7c05f61514 [SPARK-28130][PYTHON] Print pretty messages for skipped tests when xmlrunner is available in PySpark
## What changes were proposed in this pull request?

Currently, pretty skipped message added by f7435bec6a mechanism seems not working when xmlrunner is installed apparently.

This PR fixes two things:

1. When `xmlrunner` is installed, seems `xmlrunner` does not respect `vervosity` level in unittests (default is level 1).

    So the output looks as below

    ```
    Running tests...
     ----------------------------------------------------------------------
    SSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSSS
    ----------------------------------------------------------------------
    ```

    So it is not caught by our message detection mechanism.

2. If we manually set the `vervocity` level to `xmlrunner`, it prints messages as below:

    ```
    test_mixed_udf (pyspark.sql.tests.test_pandas_udf_scalar.ScalarPandasUDFTests) ... SKIP (0.000s)
    test_mixed_udf_and_sql (pyspark.sql.tests.test_pandas_udf_scalar.ScalarPandasUDFTests) ... SKIP (0.000s)
    ...
    ```

    This is different in our Jenkins machine:

    ```
    test_createDataFrame_column_name_encoding (pyspark.sql.tests.test_arrow.ArrowTests) ... skipped 'Pandas >= 0.23.2 must be installed; however, it was not found.'
    test_createDataFrame_does_not_modify_input (pyspark.sql.tests.test_arrow.ArrowTests) ... skipped 'Pandas >= 0.23.2 must be installed; however, it was not found.'
    ...
    ```

    Note that last `SKIP` is different. This PR fixes the regular expression to catch `SKIP` case as well.

## How was this patch tested?

Manually tested.

**Before:**

```
Starting test(python2.7): pyspark....
Finished test(python2.7): pyspark.... (0s)
...
Tests passed in 562 seconds

========================================================================
...
```

**After:**

```
Starting test(python2.7): pyspark....
Finished test(python2.7): pyspark.... (48s) ... 93 tests were skipped
...
Tests passed in 560 seconds

Skipped tests pyspark.... with python2.7:
      pyspark...(...) ... SKIP (0.000s)
...

========================================================================
...
```

Closes #24927 from HyukjinKwon/SPARK-28130.

Authored-by: HyukjinKwon <gurwls223@apache.org>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2019-06-24 09:58:17 +09:00

159 lines
7 KiB
Python

# -*- encoding: utf-8 -*-
#
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# The ASF licenses this file to You under the Apache License, Version 2.0
# (the "License"); you may not use this file except in compliance with
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# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
import sys
from pyspark.sql import Column, Row
from pyspark.sql.types import *
from pyspark.sql.utils import AnalysisException
from pyspark.testing.sqlutils import ReusedSQLTestCase
class ColumnTests(ReusedSQLTestCase):
def test_column_name_encoding(self):
"""Ensure that created columns has `str` type consistently."""
columns = self.spark.createDataFrame([('Alice', 1)], ['name', u'age']).columns
self.assertEqual(columns, ['name', 'age'])
self.assertTrue(isinstance(columns[0], str))
self.assertTrue(isinstance(columns[1], str))
def test_and_in_expression(self):
self.assertEqual(4, self.df.filter((self.df.key <= 10) & (self.df.value <= "2")).count())
self.assertRaises(ValueError, lambda: (self.df.key <= 10) and (self.df.value <= "2"))
self.assertEqual(14, self.df.filter((self.df.key <= 3) | (self.df.value < "2")).count())
self.assertRaises(ValueError, lambda: self.df.key <= 3 or self.df.value < "2")
self.assertEqual(99, self.df.filter(~(self.df.key == 1)).count())
self.assertRaises(ValueError, lambda: not self.df.key == 1)
def test_validate_column_types(self):
from pyspark.sql.functions import udf, to_json
from pyspark.sql.column import _to_java_column
self.assertTrue("Column" in _to_java_column("a").getClass().toString())
self.assertTrue("Column" in _to_java_column(u"a").getClass().toString())
self.assertTrue("Column" in _to_java_column(self.spark.range(1).id).getClass().toString())
self.assertRaisesRegexp(
TypeError,
"Invalid argument, not a string or column",
lambda: _to_java_column(1))
class A():
pass
self.assertRaises(TypeError, lambda: _to_java_column(A()))
self.assertRaises(TypeError, lambda: _to_java_column([]))
self.assertRaisesRegexp(
TypeError,
"Invalid argument, not a string or column",
lambda: udf(lambda x: x)(None))
self.assertRaises(TypeError, lambda: to_json(1))
def test_column_operators(self):
ci = self.df.key
cs = self.df.value
c = ci == cs
self.assertTrue(isinstance((- ci - 1 - 2) % 3 * 2.5 / 3.5, Column))
rcc = (1 + ci), (1 - ci), (1 * ci), (1 / ci), (1 % ci), (1 ** ci), (ci ** 1)
self.assertTrue(all(isinstance(c, Column) for c in rcc))
cb = [ci == 5, ci != 0, ci > 3, ci < 4, ci >= 0, ci <= 7]
self.assertTrue(all(isinstance(c, Column) for c in cb))
cbool = (ci & ci), (ci | ci), (~ci)
self.assertTrue(all(isinstance(c, Column) for c in cbool))
css = cs.contains('a'), cs.like('a'), cs.rlike('a'), cs.asc(), cs.desc(),\
cs.startswith('a'), cs.endswith('a'), ci.eqNullSafe(cs)
self.assertTrue(all(isinstance(c, Column) for c in css))
self.assertTrue(isinstance(ci.cast(LongType()), Column))
self.assertRaisesRegexp(ValueError,
"Cannot apply 'in' operator against a column",
lambda: 1 in cs)
def test_column_getitem(self):
from pyspark.sql.functions import col
self.assertIsInstance(col("foo")[1:3], Column)
self.assertIsInstance(col("foo")[0], Column)
self.assertIsInstance(col("foo")["bar"], Column)
self.assertRaises(ValueError, lambda: col("foo")[0:10:2])
def test_column_select(self):
df = self.df
self.assertEqual(self.testData, df.select("*").collect())
self.assertEqual(self.testData, df.select(df.key, df.value).collect())
self.assertEqual([Row(value='1')], df.where(df.key == 1).select(df.value).collect())
def test_access_column(self):
df = self.df
self.assertTrue(isinstance(df.key, Column))
self.assertTrue(isinstance(df['key'], Column))
self.assertTrue(isinstance(df[0], Column))
self.assertRaises(IndexError, lambda: df[2])
self.assertRaises(AnalysisException, lambda: df["bad_key"])
self.assertRaises(TypeError, lambda: df[{}])
def test_column_name_with_non_ascii(self):
if sys.version >= '3':
columnName = "数量"
self.assertTrue(isinstance(columnName, str))
else:
columnName = unicode("数量", "utf-8")
self.assertTrue(isinstance(columnName, unicode))
schema = StructType([StructField(columnName, LongType(), True)])
df = self.spark.createDataFrame([(1,)], schema)
self.assertEqual(schema, df.schema)
self.assertEqual("DataFrame[数量: bigint]", str(df))
self.assertEqual([("数量", 'bigint')], df.dtypes)
self.assertEqual(1, df.select("数量").first()[0])
self.assertEqual(1, df.select(df["数量"]).first()[0])
def test_field_accessor(self):
df = self.sc.parallelize([Row(l=[1], r=Row(a=1, b="b"), d={"k": "v"})]).toDF()
self.assertEqual(1, df.select(df.l[0]).first()[0])
self.assertEqual(1, df.select(df.r["a"]).first()[0])
self.assertEqual(1, df.select(df["r.a"]).first()[0])
self.assertEqual("b", df.select(df.r["b"]).first()[0])
self.assertEqual("b", df.select(df["r.b"]).first()[0])
self.assertEqual("v", df.select(df.d["k"]).first()[0])
def test_bitwise_operations(self):
from pyspark.sql import functions
row = Row(a=170, b=75)
df = self.spark.createDataFrame([row])
result = df.select(df.a.bitwiseAND(df.b)).collect()[0].asDict()
self.assertEqual(170 & 75, result['(a & b)'])
result = df.select(df.a.bitwiseOR(df.b)).collect()[0].asDict()
self.assertEqual(170 | 75, result['(a | b)'])
result = df.select(df.a.bitwiseXOR(df.b)).collect()[0].asDict()
self.assertEqual(170 ^ 75, result['(a ^ b)'])
result = df.select(functions.bitwiseNOT(df.b)).collect()[0].asDict()
self.assertEqual(~75, result['~b'])
if __name__ == "__main__":
import unittest
from pyspark.sql.tests.test_column import *
try:
import xmlrunner
testRunner = xmlrunner.XMLTestRunner(output='target/test-reports', verbosity=2)
except ImportError:
testRunner = None
unittest.main(testRunner=testRunner, verbosity=2)