Skip to main content

Pure Python implementation of the Spark RDD interface.

Project description

https://raw.githubusercontent.com/svenkreiss/pysparkling/master/logo/logo-w100.png

pysparkling

A native Python implementation of Spark’s RDD interface. The primary objective to remove the dependency on the JVM and Hadoop. The focus is on having a lightweight and fast implementation for small datasets at the expense of some data resilience features and some parallel processing features. It is a drop-in replacement for PySpark’s SparkContext and RDD.

Use case: you have a pipeline that processes 100k input documents and converts them to normalized features. They are used to train a local scikit-learn classifier. The preprocessing is perfect for a full Spark task. Now, you want to use this trained classifier in an API endpoint. Assume you need the same pre-processing pipeline for a single document per API call. This does not have to be done in parallel, but there should be only a small overhead in initialization and preferably no dependency on the JVM. This is what pysparkling is for.

https://badge.fury.io/py/pysparkling.svg https://img.shields.io/pypi/dm/pysparkling.svg Join the chat at https://gitter.im/svenkreiss/pysparkling

Install

pip install pysparkling[s3,hdfs,http]

Features

  • Supports multiple URI scheme: s3://, hdfs://, http:// and file://. Specify multiple files separated by comma. Resolves * and ? wildcards.

  • Handles .gz, .zip, .lzma, .xz and .bz2 compressed files. Supports reading of .7z files.

  • Parallelization via multiprocessing.Pool, concurrent.futures.ThreadPoolExecutor or any other Pool-like objects that have a map(func, iterable) method.

  • Plain pysparkling does not have any dependencies (use pip install pysparkling). Some file access methods have optional dependencies: boto for AWS S3, requests for http, hdfs for hdfs

The change log is in HISTORY.rst.

Examples

Word Count

from pysparkling import Context

counts = Context().textFile(
    'README.rst'
).map(
    lambda line: ''.join(ch if ch.isalnum() else ' ' for ch in line)
).flatMap(
    lambda line: line.split(' ')
).map(
    lambda word: (word, 1)
).reduceByKey(
    lambda a, b: a + b
)
print(counts.collect())

which prints a long list of pairs of words and their counts. This and more advanced examples are demoed in docs/demo.ipynb.

API

A usual pysparkling session starts with either parallelizing a list or by reading data from a file using the methods Context.parallelize(my_list) or Context.textFile("path/to/textfile.txt"). These two methods return an RDD which can then be processed with the methods below.

RDD

API doc: http://pysparkling.trivial.io/v0.3/api.html#pysparkling.RDD

Context

A Context describes the setup. Instantiating a Context with the default arguments using Context() is the most lightweight setup. All data is just in the local thread and is never serialized or deserialized.

If you want to process the data in parallel, you can use the multiprocessing module. Given the limitations of the default pickle serializer, you can specify to serialize all methods with cloudpickle instead. For example, a common instantiation with multiprocessing looks like this:

c = Context(
    multiprocessing.Pool(4),
    serializer=cloudpickle.dumps,
    deserializer=pickle.loads,
)

This assumes that your data is serializable with pickle which is generally faster. You can also specify a custom serializer/deserializer for data.

API doc: http://pysparkling.trivial.io/v0.3/api.html#pysparkling.Context

fileio

The functionality provided by this module is used in Context.textFile() for reading and in RDD.saveAsTextFile() for writing. You can use this submodule for writing files directly with File(filename).dump(some_data), File(filename).load() and File.exists(path) to read, write and check for existance of a file. All methods transparently handle http://, s3:// and file:// locations and compression/decompression of .gz and .bz2 files.

Use environment variables AWS_SECRET_ACCESS_KEY and AWS_ACCESS_KEY_ID for auth and use file paths of the form s3://bucket_name/filename.txt.

API doc: http://pysparkling.trivial.io/v0.3/api.html#pysparkling.fileio.File

Development

Fork the Github repository, apply your changes in a feature branch and create a Pull Request. Please run nosetests to run the unit test suite including doctests.

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

pysparkling-0.3.10.tar.gz (25.7 kB view details)

Uploaded Source

Built Distribution

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

pysparkling-0.3.10-py2.py3-none-any.whl (34.7 kB view details)

Uploaded Python 2Python 3

File details

Details for the file pysparkling-0.3.10.tar.gz.

File metadata

  • Download URL: pysparkling-0.3.10.tar.gz
  • Upload date:
  • Size: 25.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for pysparkling-0.3.10.tar.gz
Algorithm Hash digest
SHA256 6218567dfb26291de2b708eb758e31e0e2b79a9ffe9bd6af9bd140c2fc68ddc4
MD5 434af319ab890746bb823f954ed4f6f0
BLAKE2b-256 2cf6ebe76d1fab171f8aee0d9e4b2fd26ded51466d254e3bd036e60642ee5d60

See more details on using hashes here.

File details

Details for the file pysparkling-0.3.10-py2.py3-none-any.whl.

File metadata

File hashes

Hashes for pysparkling-0.3.10-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 2fca46c2772a635e8c13c7baf188b4545f621edd90da8a90808fd053079211e8
MD5 d3444b6003563007eb16ca5301bf7a9b
BLAKE2b-256 ec959aaa731161ad3382d6a3a86f6a1a878c0308f466aeba147160c3cf30c835

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