Skip to main content

Dataproc client library for Spark Connect

Project description

Dataproc Spark Connect Client

A wrapper of the Apache Spark Connect client with additional functionalities that allow applications to communicate with a remote Dataproc Spark Session using the Spark Connect protocol without requiring additional steps.

Install

pip install dataproc_spark_connect

Uninstall

pip uninstall dataproc_spark_connect

Setup

This client requires permissions to manage Dataproc Sessions and Session Templates.

If you are running the client outside of Google Cloud, you need to provide authentication credentials. Set the GOOGLE_APPLICATION_CREDENTIALS environment variable to point to your Application Credentials file.

You can specify the project and region either via environment variables or directly in your code using the builder API:

  • Environment variables: GOOGLE_CLOUD_PROJECT and GOOGLE_CLOUD_REGION
  • Builder API: .projectId() and .location() methods (recommended)

Usage

  1. Install the latest version of Dataproc Spark Connect:

    pip install -U dataproc-spark-connect
    
  2. Add the required imports into your PySpark application or notebook and start a Spark session using the fluent API:

    from google.cloud.dataproc_spark_connect import DataprocSparkSession
    spark = DataprocSparkSession.builder.getOrCreate()
    
  3. You can configure Spark properties using the .config() method:

    from google.cloud.dataproc_spark_connect import DataprocSparkSession
    spark = DataprocSparkSession.builder.config('spark.executor.memory', '4g').config('spark.executor.cores', '2').getOrCreate()
    
  4. For advanced configuration, you can use the Session class to customize settings like subnetwork or other environment configurations:

    from google.cloud.dataproc_spark_connect import DataprocSparkSession
    from google.cloud.dataproc_v1 import Session
    session_config = Session()
    session_config.environment_config.execution_config.subnetwork_uri = '<subnet>'
    session_config.runtime_config.version = '3.0'
    spark = DataprocSparkSession.builder.projectId('my-project').location('us-central1').dataprocSessionConfig(session_config).getOrCreate()
    

Reusing Named Sessions Across Notebooks

Named sessions allow you to share a single Spark session across multiple notebooks, improving efficiency by avoiding repeated session startup times and reducing costs.

To create or connect to a named session:

  1. Create a session with a custom ID in your first notebook:

    from google.cloud.dataproc_spark_connect import DataprocSparkSession
    session_id = 'my-ml-pipeline-session'
    spark = DataprocSparkSession.builder.dataprocSessionId(session_id).getOrCreate()
    df = spark.createDataFrame([(1, 'data')], ['id', 'value'])
    df.show()
    
  2. Reuse the same session in another notebook by specifying the same session ID:

    from google.cloud.dataproc_spark_connect import DataprocSparkSession
    session_id = 'my-ml-pipeline-session'
    spark = DataprocSparkSession.builder.dataprocSessionId(session_id).getOrCreate()
    df = spark.createDataFrame([(2, 'more-data')], ['id', 'value'])
    df.show()
    
  3. Session IDs must be 4-63 characters long, start with a lowercase letter, contain only lowercase letters, numbers, and hyphens, and not end with a hyphen.

  4. Named sessions persist until explicitly terminated or reach their configured TTL.

  5. A session with a given ID that is in a TERMINATED state cannot be reused. It must be deleted before a new session with the same ID can be created.

Using Spark SQL Magic Commands (Jupyter Notebooks)

The package supports the sparksql-magic library for executing Spark SQL queries directly in Jupyter notebooks.

Installation: To use magic commands, install the required dependencies manually:

pip install dataproc-spark-connect
pip install IPython sparksql-magic
  1. Load the magic extension:

    %load_ext sparksql_magic
    
  2. Configure default settings (optional):

    %config SparkSql.limit=20
    
  3. Execute SQL queries:

    %%sparksql
    SELECT * FROM your_table
    
  4. Advanced usage with options:

    # Cache results and create a view
    %%sparksql --cache --view result_view df
    SELECT * FROM your_table WHERE condition = true
    

Available options:

  • --cache / -c: Cache the DataFrame
  • --eager / -e: Cache with eager loading
  • --view VIEW / -v VIEW: Create a temporary view
  • --limit N / -l N: Override default row display limit
  • variable_name: Store result in a variable

See sparksql-magic for more examples.

Note: Magic commands are optional. If you only need basic DataprocSparkSession functionality without Jupyter magic support, install only the base package:

pip install dataproc-spark-connect

Developing

For development instructions see guide.

Contributing

We'd love to accept your patches and contributions to this project. There are just a few small guidelines you need to follow.

Contributor License Agreement

Contributions to this project must be accompanied by a Contributor License Agreement. You (or your employer) retain the copyright to your contribution; this simply gives us permission to use and redistribute your contributions as part of the project. Head over to https://cla.developers.google.com to see your current agreements on file or to sign a new one.

You generally only need to submit a CLA once, so if you've already submitted one (even if it was for a different project), you probably don't need to do it again.

Code reviews

All submissions, including submissions by project members, require review. We use GitHub pull requests for this purpose. Consult GitHub Help for more information on using pull requests.

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

dataproc_spark_connect-1.0.0rc7.tar.gz (26.1 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

dataproc_spark_connect-1.0.0rc7-py2.py3-none-any.whl (30.3 kB view details)

Uploaded Python 2Python 3

File details

Details for the file dataproc_spark_connect-1.0.0rc7.tar.gz.

File metadata

File hashes

Hashes for dataproc_spark_connect-1.0.0rc7.tar.gz
Algorithm Hash digest
SHA256 6d0a2c1f56ec2efc61b31b4b1d769a99648ea0031ecbd2af957c98410581db69
MD5 07bc081fc2416eb5ef2f91877c7c8445
BLAKE2b-256 61647ca844924a0629b752726aaae300cbb77a8263a54241472fafc0f0542a30

See more details on using hashes here.

File details

Details for the file dataproc_spark_connect-1.0.0rc7-py2.py3-none-any.whl.

File metadata

File hashes

Hashes for dataproc_spark_connect-1.0.0rc7-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 657c290e8060efbb8d6d2092d0866765cf9f267527f4d17e4cbdd9cb40633543
MD5 7b65763f8ed82051807fc91116ad84b2
BLAKE2b-256 f33f8506651b0c2ef42cd4f056e3bf22cbb07a4f1a25f43abbbd3d7ceef93fd3

See more details on using hashes here.

Supported by

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