bitshuffle 0.3.5-4build3 source package in Ubuntu

Changelog

bitshuffle (0.3.5-4build3) lunar; urgency=medium

  * No-change rebuild with Python 3.11 only

 -- Graham Inggs <email address hidden>  Wed, 15 Mar 2023 06:31:11 +0000

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Uploaded by:
Graham Inggs
Uploaded to:
Lunar
Original maintainer:
Thorsten Alteholz
Architectures:
any
Section:
misc
Urgency:
Medium Urgency

See full publishing history Publishing

Series Pocket Published Component Section
Mantic release universe misc
Lunar release universe misc

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File Size SHA-256 Checksum
bitshuffle_0.3.5.orig.tar.gz 109.7 KiB c3f4461d8013e3d9db0d58defec77b143164652de505a1fba3df088eaa19be2f
bitshuffle_0.3.5-4build3.debian.tar.xz 7.0 KiB 1ea3e32db87d4d2941e4586b6973f5ba44b7503b08651451766e869e3d24bed0
bitshuffle_0.3.5-4build3.dsc 2.0 KiB 829bed6b093e72a79519b0bf2fee35f5226dcb0b2859befc6217a8efe73cffc3

Available diffs

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Binary packages built by this source

bitshuffle: filter for improving compression of typed binary data

 Bitshuffle is an algorithm that rearranges typed, binary data for
 improving compression, as well as a python/C package that implements
 this algorithm within the Numpy framework.
 .
 The library can be used along side HDF5 to compress and decompress
 datasets and is integrated through the dynamically loaded filters
 framework. Bitshuffle is HDF5 filter number 32008.
 .
 Algorithmically, Bitshuffle is closely related to HDF5's Shuffle
 filter except it operates at the bit level instead of the byte level.
 Arranging a typed data array in to a matrix with the elements as the
 rows and the bits within the elements as the columns, Bitshuffle
 "transposes" the matrix, such that all the least-significant-bits
 are in a row, etc. This transpose is performed within blocks of
 data roughly 8kB long.
 .
 This does not in itself compress data, only rearranges it for more
 efficient compression. To perform the actual compression you will
 need a compression library. Bitshuffle has been designed to be well
 matched Marc Lehmann's LZF as well as LZ4. Note that because
 Bitshuffle modifies the data at the bit level, sophisticated entropy
 reducing compression libraries such as GZIP and BZIP are unlikely to
 achieve significantly better compression than simpler and faster
 duplicate-string-elimination algorithms such as LZF and LZ4.
 Bitshuffle thus includes routines (and HDF5 filter options) to apply
 LZ4 compression to each block after shuffling.
 .
 The Bitshuffle algorithm relies on neighbouring elements of a dataset
 being highly correlated to improve data compression. Any correlations
 that span at least 24 elements of the dataset may be exploited to
 improve compression.

bitshuffle-dbgsym: debug symbols for bitshuffle