Menu

PyTables 3.0.0b1 released

=============================
Announcing PyTables 3.0.0b1
=============================

We are happy to announce PyTables 3.0.0b1.

PyTables 3.0.0b1 comes after about 5 years from the last major release
(2.0) and 7 months since the last stable release (2.4.0).

This is new major release and an important milestone for the PyTables project
since it provides the long waited support for Python 3.x that is being around
for already 4 years now.

Almost all the main numeric/scientific packages for python already support
Python 3 so we are very happy that now also PyTables can provide this
important feature.

What's new

A short summary of main new features:

  • Since this release PyTables provides full support to Python 3
  • The entire code base is now more compliant with coding style guidelines
    describe in the PEP8.
  • Basic support for HDF5 drivers. Now it is possible to open/create an
    HDF5 file using one of the SEC2, DIRECT, LOG, WINDOWS, STDIO or CORE
    drivers.
  • Basic support for in-memory image files. An HDF5 file can be set from or
    copied into a memory buffer.
  • Implemented methods to get/set the user block size in a HDF5 file.
  • All read methods now have an optional out argument that allows to pass a
    pre-allocated array to store data.
  • Added support for the floating point data types with extended precision
    (Float96, Float128, Complex192 and Complex256).

Please refer to the RELEASE_NOTES document for a more detailed list of
changes in this release.

As always, a large amount of bugs have been addressed and squashed as well.

In case you want to know more in detail what has changed in this
version, please refer to:
http://pytables.github.io/release_notes.html

You can download a source package with generated PDF and HTML docs, as
well as binaries for Windows, from:
http://sourceforge.net/projects/pytables/files/pytables/3.0.0b1

For an online version of the manual, visit:
http://pytables.github.io/usersguide/index.html

What it is?

PyTables is a library for managing hierarchical datasets and
designed to efficiently cope with extremely large amounts of data with
support for full 64-bit file addressing. PyTables runs on top of
the HDF5 library and NumPy package for achieving maximum throughput and
convenient use. PyTables includes OPSI, a new indexing technology,
allowing to perform data lookups in tables exceeding 10 gigarows
(10**10 rows) in less than a tenth of a second.

Resources

About PyTables: http://www.pytables.org

About the HDF5 library: http://hdfgroup.org/HDF5/

About NumPy: http://numpy.scipy.org/

Acknowledgments

Thanks to many users who provided feature improvements, patches, bug
reports, support and suggestions. See the THANKS file in the
distribution package for a (incomplete) list of contributors. Most
specially, a lot of kudos go to the HDF5 and NumPy makers.
Without them, PyTables simply would not exist.

Share your experience

Let us know of any bugs, suggestions, gripes, kudos, etc. you may
have.


Enjoy data!

--
The PyTables Team

Posted by Antonio Valentino 2013-04-27

Log in to post a comment.

Want the latest updates on software, tech news, and AI?
Get latest updates about software, tech news, and AI from SourceForge directly in your inbox once a month.