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### What changes were proposed in this pull request? The PR is proposed to support creating a Column of numpy literal value in pandas-on-Spark. It consists of three changes mainly: - Enable the `lit` function defined in `pyspark.pandas.spark.functions` to support numpy literals input. ```py >>> from pyspark.pandas.spark import functions as SF >>> SF.lit(np.int64(1)) Column<'CAST(1 AS BIGINT)'> >>> SF.lit(np.int32(1)) Column<'CAST(1 AS INT)'> >>> SF.lit(np.int8(1)) Column<'CAST(1 AS TINYINT)'> >>> SF.lit(np.byte(1)) Column<'CAST(1 AS TINYINT)'> >>> SF.lit(np.float32(1)) Column<'CAST(1.0 AS FLOAT)'> ``` - Substitute `F.lit` by `SF.lit`, that is, use `lit` function defined in `pyspark.pandas.spark.functions` rather than `lit` function defined in `pyspark.sql.functions` to allow creating columns out of numpy literals. - Enable numpy literals input in `isin` method Non-goal: - Some pandas-on-Spark APIs use PySpark column-related APIs internally, and these column-related APIs don't support numpy literals, thus numpy literals are disallowed as input (e.g. `to_replace` parameter in `replace` API). This PR doesn't aim to adjust all of them. This PR adjusts `isin` only, because the PR is inspired by that (as https://github.com/databricks/koalas/issues/2161). - To complete mappings between all kinds of numpy literals and Spark data types should be a followup task. ### Why are the changes needed? Spark (`lit` function defined in `pyspark.sql.functions`) doesn't support creating a Column out of numpy literal value. So `lit` function defined in `pyspark.pandas.spark.functions` is adjusted in order to support that in pandas-on-Spark. ### Does this PR introduce _any_ user-facing change? Yes. Before: ```py >>> a = ps.DataFrame({'source': [1,2,3,4,5]}) >>> a.source.isin([np.int64(1), np.int64(2)]) Traceback (most recent call last): ... AttributeError: 'numpy.int64' object has no attribute '_get_object_id' ``` After: ```py >>> a = ps.DataFrame({'source': [1,2,3,4,5]}) >>> a.source.isin([np.int64(1), np.int64(2)]) 0 True 1 True 2 False 3 False 4 False Name: source, dtype: bool ``` ### How was this patch tested? Unit tests. Closes #32955 from xinrong-databricks/datatypeops_literal. Authored-by: Xinrong Meng <xinrong.meng@databricks.com> Signed-off-by: Takuya UESHIN <ueshin@databricks.com> |
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Apache Spark
Spark is a unified analytics engine for large-scale data processing. It provides high-level APIs in Scala, Java, Python, and R, and an optimized engine that supports general computation graphs for data analysis. It also supports a rich set of higher-level tools including Spark SQL for SQL and DataFrames, MLlib for machine learning, GraphX for graph processing, and Structured Streaming for stream processing.
Online Documentation
You can find the latest Spark documentation, including a programming guide, on the project web page. This README file only contains basic setup instructions.
Building Spark
Spark is built using Apache Maven. To build Spark and its example programs, run:
./build/mvn -DskipTests clean package
(You do not need to do this if you downloaded a pre-built package.)
More detailed documentation is available from the project site, at "Building Spark".
For general development tips, including info on developing Spark using an IDE, see "Useful Developer Tools".
Interactive Scala Shell
The easiest way to start using Spark is through the Scala shell:
./bin/spark-shell
Try the following command, which should return 1,000,000,000:
scala> spark.range(1000 * 1000 * 1000).count()
Interactive Python Shell
Alternatively, if you prefer Python, you can use the Python shell:
./bin/pyspark
And run the following command, which should also return 1,000,000,000:
>>> spark.range(1000 * 1000 * 1000).count()
Example Programs
Spark also comes with several sample programs in the examples
directory.
To run one of them, use ./bin/run-example <class> [params]
. For example:
./bin/run-example SparkPi
will run the Pi example locally.
You can set the MASTER environment variable when running examples to submit
examples to a cluster. This can be a mesos:// or spark:// URL,
"yarn" to run on YARN, and "local" to run
locally with one thread, or "local[N]" to run locally with N threads. You
can also use an abbreviated class name if the class is in the examples
package. For instance:
MASTER=spark://host:7077 ./bin/run-example SparkPi
Many of the example programs print usage help if no params are given.
Running Tests
Testing first requires building Spark. Once Spark is built, tests can be run using:
./dev/run-tests
Please see the guidance on how to run tests for a module, or individual tests.
There is also a Kubernetes integration test, see resource-managers/kubernetes/integration-tests/README.md
A Note About Hadoop Versions
Spark uses the Hadoop core library to talk to HDFS and other Hadoop-supported storage systems. Because the protocols have changed in different versions of Hadoop, you must build Spark against the same version that your cluster runs.
Please refer to the build documentation at "Specifying the Hadoop Version and Enabling YARN" for detailed guidance on building for a particular distribution of Hadoop, including building for particular Hive and Hive Thriftserver distributions.
Configuration
Please refer to the Configuration Guide in the online documentation for an overview on how to configure Spark.
Contributing
Please review the Contribution to Spark guide for information on how to get started contributing to the project.