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5 commits

Author SHA1 Message Date
Takuya UESHIN 4a4e7aeca7 [SPARK-26887][SQL][PYTHON][NS] Create datetime.date directly instead of creating datetime64 as intermediate data.
## What changes were proposed in this pull request?

Currently `DataFrame.toPandas()` with arrow enabled or `ArrowStreamPandasSerializer` for pandas UDF with pyarrow<0.12 creates `datetime64[ns]` type series as intermediate data and then convert to `datetime.date` series, but the intermediate `datetime64[ns]` might cause an overflow even if the date is valid.

```
>>> import datetime
>>>
>>> t = [datetime.date(2262, 4, 12), datetime.date(2263, 4, 12)]
>>>
>>> df = spark.createDataFrame(t, 'date')
>>> df.show()
+----------+
|     value|
+----------+
|2262-04-12|
|2263-04-12|
+----------+

>>>
>>> spark.conf.set("spark.sql.execution.arrow.enabled", "true")
>>>
>>> df.toPandas()
        value
0  1677-09-21
1  1678-09-21
```

We should avoid creating such intermediate data and create `datetime.date` series directly instead.

## How was this patch tested?

Modified some tests to include the date which overflow caused by the intermediate conversion.
Run tests with pyarrow 0.8, 0.10, 0.11, 0.12 in my local environment.

Closes #23795 from ueshin/issues/SPARK-26887/date_as_object.

Authored-by: Takuya UESHIN <ueshin@databricks.com>
Signed-off-by: Hyukjin Kwon <gurwls223@apache.org>
2019-02-18 11:48:10 +08:00
Bryan Cutler 16990f9299 [SPARK-26566][PYTHON][SQL] Upgrade Apache Arrow to version 0.12.0
## What changes were proposed in this pull request?

Upgrade Apache Arrow to version 0.12.0. This includes the Java artifacts and fixes to enable usage with pyarrow 0.12.0

Version 0.12.0 includes the following selected fixes/improvements relevant to Spark users:

* Safe cast fails from numpy float64 array with nans to integer, ARROW-4258
* Java, Reduce heap usage for variable width vectors, ARROW-4147
* Binary identity cast not implemented, ARROW-4101
* pyarrow open_stream deprecated, use ipc.open_stream, ARROW-4098
* conversion to date object no longer needed, ARROW-3910
* Error reading IPC file with no record batches, ARROW-3894
* Signed to unsigned integer cast yields incorrect results when type sizes are the same, ARROW-3790
* from_pandas gives incorrect results when converting floating point to bool, ARROW-3428
* Import pyarrow fails if scikit-learn is installed from conda (boost-cpp / libboost issue), ARROW-3048
* Java update to official Flatbuffers version 1.9.0, ARROW-3175

complete list [here](https://issues.apache.org/jira/issues/?jql=project%20%3D%20ARROW%20AND%20status%20in%20(Resolved%2C%20Closed)%20AND%20fixVersion%20%3D%200.12.0)

PySpark requires the following fixes to work with PyArrow 0.12.0

* Encrypted pyspark worker fails due to ChunkedStream missing closed property
* pyarrow now converts dates as objects by default, which causes error because type is assumed datetime64
* ArrowTests fails due to difference in raised error message
* pyarrow.open_stream deprecated
* tests fail because groupby adds index column with duplicate name

## How was this patch tested?

Ran unit tests with pyarrow versions 0.8.0, 0.10.0, 0.11.1, 0.12.0

Closes #23657 from BryanCutler/arrow-upgrade-012.

Authored-by: Bryan Cutler <cutlerb@gmail.com>
Signed-off-by: Hyukjin Kwon <gurwls223@apache.org>
2019-01-29 14:18:45 +08:00
Bryan Cutler ecaa495b1f [SPARK-25274][PYTHON][SQL] In toPandas with Arrow send un-ordered record batches to improve performance
## What changes were proposed in this pull request?

When executing `toPandas` with Arrow enabled, partitions that arrive in the JVM out-of-order must be buffered before they can be send to Python. This causes an excess of memory to be used in the driver JVM and increases the time it takes to complete because data must sit in the JVM waiting for preceding partitions to come in.

This change sends un-ordered partitions to Python as soon as they arrive in the JVM, followed by a list of partition indices so that Python can assemble the data in the correct order. This way, data is not buffered at the JVM and there is no waiting on particular partitions so performance will be increased.

Followup to #21546

## How was this patch tested?

Added new test with a large number of batches per partition, and test that forces a small delay in the first partition. These test that partitions are collected out-of-order and then are are put in the correct order in Python.

## Performance Tests - toPandas

Tests run on a 4 node standalone cluster with 32 cores total, 14.04.1-Ubuntu and OpenJDK 8
measured wall clock time to execute `toPandas()` and took the average best time of 5 runs/5 loops each.

Test code
```python
df = spark.range(1 << 25, numPartitions=32).toDF("id").withColumn("x1", rand()).withColumn("x2", rand()).withColumn("x3", rand()).withColumn("x4", rand())
for i in range(5):
	start = time.time()
	_ = df.toPandas()
	elapsed = time.time() - start
```

Spark config
```
spark.driver.memory 5g
spark.executor.memory 5g
spark.driver.maxResultSize 2g
spark.sql.execution.arrow.enabled true
```

Current Master w/ Arrow stream | This PR
---------------------|------------
5.16207 | 4.342533
5.133671 | 4.399408
5.147513 | 4.468471
5.105243 | 4.36524
5.018685 | 4.373791

Avg Master | Avg This PR
------------------|--------------
5.1134364 | 4.3898886

Speedup of **1.164821449**

Closes #22275 from BryanCutler/arrow-toPandas-oo-batches-SPARK-25274.

Authored-by: Bryan Cutler <cutlerb@gmail.com>
Signed-off-by: Bryan Cutler <cutlerb@gmail.com>
2018-12-06 10:07:28 -08:00
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
hyukjinkwon a7a331df6e [SPARK-26032][PYTHON] Break large sql/tests.py files into smaller files
## What changes were proposed in this pull request?

This is the official first attempt to break huge single `tests.py` file - I did it locally before few times and gave up for some reasons. Now, currently it really makes the unittests super hard to read and difficult to check. To me, it even bothers me to to scroll down the big file. It's one single 7000 lines file!

This is not only readability issue. Since one big test takes most of tests time, the tests don't run in parallel fully - although it will costs to start and stop the context.

We could pick up one example and follow. Given my investigation, the current style looks closer to NumPy structure and looks easier to follow. Please see https://github.com/numpy/numpy/tree/master/numpy.

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

```bash
pyspark
...
├── sql
...
│   ├── tests  # Includes all tests broken down from 'pyspark/sql/tests.py'
│   │   │      # Each matchs to module in 'pyspark/sql'. Additionally, some logical group can
│   │   │      # be added. For instance, 'test_arrow.py', 'test_datasources.py' ...
│   │   ├── __init__.py
│   │   ├── test_appsubmit.py
│   │   ├── test_arrow.py
│   │   ├── test_catalog.py
│   │   ├── test_column.py
│   │   ├── test_conf.py
│   │   ├── test_context.py
│   │   ├── test_dataframe.py
│   │   ├── test_datasources.py
│   │   ├── test_functions.py
│   │   ├── test_group.py
│   │   ├── test_pandas_udf.py
│   │   ├── test_pandas_udf_grouped_agg.py
│   │   ├── test_pandas_udf_grouped_map.py
│   │   ├── test_pandas_udf_scalar.py
│   │   ├── test_pandas_udf_window.py
│   │   ├── test_readwriter.py
│   │   ├── test_serde.py
│   │   ├── test_session.py
│   │   ├── test_streaming.py
│   │   ├── test_types.py
│   │   ├── test_udf.py
│   │   └── test_utils.py
...
├── testing  # Includes testing utils that can be used in unittests.
│   ├── __init__.py
│   └── sqlutils.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:

```
SPARK_TESTING=1 ./bin/pyspark pyspark.sql.tests.test_pandas_udf_scalar
```

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

Closes #23021 from HyukjinKwon/SPARK-25344.

Authored-by: hyukjinkwon <gurwls223@apache.org>
Signed-off-by: hyukjinkwon <gurwls223@apache.org>
2018-11-14 14:51:11 +08:00