I am happy to announce the release of Bokeh version 0.4.2!
Bokeh is a Python library for visualizing large and realtime datasets on the
web. Its goal is to provide elegant, concise construction of novel graphics in
the style of Protovis/D3, while delivering high-performance interactivity to
thin clients. Bokeh includes its own Javascript library (BokehJS) that
implements a reactive scenegraph representation of the plot, and renders
efficiently to HTML5 Canvas. Bokeh works well with IPython Notebook, but can
generate standalone graphics that embed into regular HTML. We are also building
matplotlib compatibility so that users can drive Bokeh visualizations directly
from MPL code.
Check out the full documentation, interactive gallery, and tutorial at
http://bokeh.pydata.org
If you are using Anaconda, you can install with conda:
conda install bokeh
Alternatively, you can install with pip:
pip install bokeh
Some of the new features in this release include:
* Additional Matplotlib and Seaborn compatibility (PolyCollection)
* Extensive tutorial with exercises and solutions added to docs
* new %bokeh magic for improved IPython notebook integration
* Windows support for bokeh-server with two new storage backends (in-memory and
shelve)
Also, we've fixed lots of little bugs - see the CHANGELOG for full details.
BokehJS is also available by CDN for use in standalone javascript applications:
http://cdn.pydata.org/bokeh-0.4.2.js
http://cdn.pydata.org/bokeh-0.4.2.css
http://cdn.pydata.org/bokeh-0.4.2.min.js
http://cdn.pydata.org/bokeh-0.4.2.min.css
Some examples of BokehJS use can be found on the Bokeh JSFiddle page:
http://jsfiddle.net/user/bokeh/fiddles/
The release of Bokeh 0.5 is planned for late March. Some notable features we
plan to include are:
* Abstract Rendering for semantically meaningful downsampling of large datasets
* Better grid-based layout system, using Cassowary.js
* More MPL/Seaborn/ggplot.py compatibility and examples
* Additional tools, improved interactions, and better plot frame
* Touch support
Issues, enhancement requests, and pull requests can be made on the Bokeh Github
page: https://github.com/continuumio/bokeh
Questions can be directed to the Bokeh mailing list: [email protected]
Special thanks to recent contributors: Melissa Gymrek, Amy Troschinetz, Ben
Zaitlen, Damian Avila, and Terry Jones
Regards,
Bryan Van de Ven
Continuum Analytics
http://continuum.io
------------------------------------------------------------------------------
Learn Graph Databases - Download FREE O'Reilly Book
"Graph Databases" is the definitive new guide to graph databases and their
applications. Written by three acclaimed leaders in the field,
this first edition is now available. Download your free book today!
http://p.sf.net/sfu/13534_NeoTech
_______________________________________________
Matplotlib-users mailing list
[email protected]
https://lists.sourceforge.net/lists/listinfo/matplotlib-users