Skip to main content

A library that provides useful extensions to Apache Spark.

Project description

Spark Extension

This project provides extensions to the Apache Spark project in Scala and Python:

Diff: A diff transformation and application for Datasets that computes the differences between two datasets, i.e. which rows to add, delete or change to get from one dataset to the other.

Histogram: A histogram transformation that computes the histogram DataFrame for a value column.

Global Row Number: A withRowNumbers transformation that provides the global row number w.r.t. the current order of the Dataset, or any given order. In contrast to the existing SQL function row_number, which requires a window spec, this transformation provides the row number across the entire Dataset without scaling problems.

Inspect Parquet files: The structure of Parquet files (the metadata, not the data stored in Parquet) can be inspected similar to parquet-tools or parquet-cli by reading from a simple Spark data source. This simplifies identifying why some Parquet files cannot be split by Spark into scalable partitions.

Install Python packages into PySpark job: Install Python dependencies via PIP or Poetry programatically into your running PySpark job (PySpark ≥ 3.1.0):

# noinspection PyUnresolvedReferences
from gresearch.spark import *

# using PIP
spark.install_pip_package("pandas==1.4.3", "pyarrow")
spark.install_pip_package("-r", "requirements.txt")

# using Poetry
spark.install_poetry_project("../my-poetry-project/", poetry_python="../venv-poetry/bin/python")

Count null values: count_null(e: Column): an aggregation function like count that counts null values in column e. This is equivalent to calling count(when(e.isNull, lit(1))).

.Net DateTime.Ticks: Convert .Net (C#, F#, Visual Basic) DateTime.Ticks into Spark timestamps, seconds and nanoseconds.

Available methods:
dotnet_ticks_to_timestamp(column_or_name)         # returns timestamp as TimestampType
dotnet_ticks_to_unix_epoch(column_or_name)        # returns Unix epoch seconds as DecimalType
dotnet_ticks_to_unix_epoch_nanos(column_or_name)  # returns Unix epoch nanoseconds as LongType

The reverse is provided by (all return LongType .Net ticks):

timestamp_to_dotnet_ticks(column_or_name)
unix_epoch_to_dotnet_ticks(column_or_name)
unix_epoch_nanos_to_dotnet_ticks(column_or_name)

Spark temporary directory: Create a temporary directory that will be removed on Spark application shutdown.

Example:
# noinspection PyUnresolvedReferences
from gresearch.spark import *

dir = spark.create_temporary_dir("prefix")

Spark job description: Set Spark job description for all Spark jobs within a context.

Example:
from gresearch.spark import job_description, append_job_description

with job_description("parquet file"):
    df = spark.read.parquet("data.parquet")
    with append_job_description("count"):
        count = df.count
    with append_job_description("write"):
        df.write.csv("data.csv")

For details, see the README.md at the project homepage.

Using Spark Extension

PyPi package (local Spark cluster only)

You may want to install the pyspark-extension python package from PyPi into your development environment. This provides you code completion, typing and test capabilities during your development phase.

Running your Python application on a Spark cluster will still require one of the ways below to add the Scala package to the Spark environment.

pip install pyspark-extension==2.13.0.3.4

Note: Pick the right Spark version (here 3.4) depending on your PySpark version.

PySpark API

Start a PySpark session with the Spark Extension dependency (version ≥1.1.0) as follows:

from pyspark.sql import SparkSession

spark = SparkSession \
    .builder \
    .config("spark.jars.packages", "uk.co.gresearch.spark:spark-extension_2.12:2.13.0-3.4") \
    .getOrCreate()

Note: Pick the right Scala version (here 2.12) and Spark version (here 3.4) depending on your PySpark version.

PySpark REPL

Launch the Python Spark REPL with the Spark Extension dependency (version ≥1.1.0) as follows:

pyspark --packages uk.co.gresearch.spark:spark-extension_2.12:2.13.0-3.4

Note: Pick the right Scala version (here 2.12) and Spark version (here 3.4) depending on your PySpark version.

PySpark spark-submit

Run your Python scripts that use PySpark via spark-submit:

spark-submit --packages uk.co.gresearch.spark:spark-extension_2.12:2.13.0-3.4 [script.py]

Note: Pick the right Scala version (here 2.12) and Spark version (here 3.4) depending on your Spark version.

Your favorite Data Science notebook

There are plenty of Data Science notebooks around. To use this library, add a jar dependency to your notebook using these Maven coordinates:

uk.co.gresearch.spark:spark-extension_2.12:2.13.0-3.4

Or download the jar and place it on a filesystem where it is accessible by the notebook, and reference that jar file directly.

Check the documentation of your favorite notebook to learn how to add jars to your Spark environment.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

pyspark_extension-2.13.0.3.4.tar.gz (346.2 kB view details)

Uploaded Source

Built Distribution

pyspark_extension-2.13.0.3.4-py3-none-any.whl (332.3 kB view details)

Uploaded Python 3

File details

Details for the file pyspark_extension-2.13.0.3.4.tar.gz.

File metadata

File hashes

Hashes for pyspark_extension-2.13.0.3.4.tar.gz
Algorithm Hash digest
SHA256 68a51e88b626011f02ad48ec7442806580d7d83bfb0054a543152164b831eae7
MD5 7293f3a4b675bd3f61bdacf2f6233c87
BLAKE2b-256 b71dd6d7eb26725d73e79a1df6037ba5e45047e2b277427a51ed9e8161078dde

See more details on using hashes here.

File details

Details for the file pyspark_extension-2.13.0.3.4-py3-none-any.whl.

File metadata

File hashes

Hashes for pyspark_extension-2.13.0.3.4-py3-none-any.whl
Algorithm Hash digest
SHA256 90598788d26fe6c1c14329b4fccd2ba1f78275ac039704d19480e38169d2731e
MD5 a5d066847cc539c5aa1b9ad4406d8951
BLAKE2b-256 ec9ba488aa5e6f8d882622bbf8e8b5a93b3dc19bd6c770069561bf528e526bf8

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page