Skip to main content

Python bindings to the heatshrink library

Project description

Python binding to the heatshrink LZSS compression library.

Supported versions:
Python >= 2.6 – Full
Python 3 – Experimental

Tested platforms:
* OS X > 10.10
* Debian 8
* FreeBSD 10

Installation

From PyPI:

$ easy_install heatshrink
$ pip install heatshrink

Manual installation:

$ python setup.py install

Usage

The encoder accepts any iterable and returns a byte string containing encoded (compressed) data.

>>> import heatshrink
>>> encoded = heatshrink.encode('a string')
>>> type(encoded)
<type 'str'>  # <class 'bytes'> in Python 3
>>> encoded
'\xb0\xc8.wK\x95\xa6\xddg'

The decoder accepts any object that implements the buffer protocol and returns a byte representation of the decoded data.

>>> import heatshrink
>>> decoded = heatshrink.decode(b'\xb0\xc8.wK\x95\xa6\xddg')
>>> type(decoded)
<type 'str'>  # <class 'bytes'> in Python 3
>>> decoded
'a string'

Both the encoder and decoder allow providing window_sz2 and lookahead_sz2 keywords:

window_sz2 - The window size determines how far back in the input can be searched for repeated patterns. A window_sz2 of 8 will only use 256 bytes (2^8), while a window_sz2 of 10 will use 1024 bytes (2^10). The latter uses more memory, but may also compress more effectively by detecting more repetition.

lookahead_sz2 - The lookahead size determines the max length for repeated patterns that are found. If the lookahead_sz2 is 4, a 50-byte run of ‘a’ characters will be represented as several repeated 16-byte patterns (2^4 is 16), whereas a larger lookahead_sz2 may be able to represent it all at once. The number of bits used for the lookahead size is fixed, so an overly large lookahead size can reduce compression by adding unused size bits to small patterns.

input_buffer_size - How large an input buffer to use for the decoder. This impacts how much work the decoder can do in a single step, and a larger buffer will use more memory. An extremely small buffer (say, 1 byte) will add overhead due to lots of suspend/resume function calls, but should not change how well data compresses.

Check out the heatshrink configuration page for more details.

For more use cases, please refer to tests.py.

Benchmarks

The benchmarks check compression/decompression against a ~6MB file:

$ python bench/benchmarks.py

Testing

Running tests is as simple as doing:

$ python setup.py test

License

ISC license

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

Heatshrink-0.2.4.tar.gz (57.9 kB view hashes)

Uploaded Source

Built Distribution

Heatshrink-0.2.4.linux-x86_64.tar.gz (133.1 kB view hashes)

Uploaded Source

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