Main website: http://vispy.org
VisPy is a high-performance interactive 2D/3D data visualization library. VisPy leverages the computational power of modern Graphics Processing Units (GPUs) through the OpenGL library to display very large datasets. Applications of VisPy include:
- High-quality interactive scientific plots with millions of points.
- Direct visualization of real-time data.
- Fast interactive visualization of 3D models (meshes, volume rendering).
- OpenGL visualization demos.
- Scientific GUIs with fast, scalable visualization widgets (Qt or IPython notebook with WebGL).
- Release! Version 0.4, May 22, 2015
- VisPy tutorial in the IPython Cookbook
- Release! Version 0.3, August 29, 2014
- EuroSciPy 2014: talk at Saturday 30, and sprint at Sunday 31, August 2014
- Article in Linux Magazine, French Edition, July 2014
- GSoC 2014: two GSoC students are currently working on VisPy under the PSF umbrella
- Release!, Version 0.2.1 04-11-2013
- Presentation at BI forum, Budapest, 6 November 2013
- Presentation at Euroscipy, Belgium, August 2013
- EuroSciPy Sprint, Belgium, August 2013
- Release! Version 0.1.0 14-08-2013
VisPy is a young library under heavy development at this time. It targets two categories of users:
- Users knowing OpenGL, or willing to learn OpenGL, who want to create beautiful and fast interactive 2D/3D visualizations in Python as easily as possible.
- Scientists without any knowledge of OpenGL, who are seeking a high-level, high-performance plotting toolkit.
If you're in the first category, you can already start using VisPy. VisPy offers a Pythonic, NumPy-aware, user-friendly interface for OpenGL ES 2.0 called gloo. You can focus on writing your GLSL code instead of dealing with the complicated OpenGL API - VisPy takes care of that automatically for you.
If you're in the second category, we're starting to build experimental high-level plotting interfaces. Notably, VisPy now ships a very basic and experimental OpenGL backend for matplotlib.
VisPy runs on Python 2.6+ and Python 3.3+ and depends on NumPy. You also need a backend (PyQt4/PySide, glfw, pyglet, SDL, or wx).
As VisPy is under heavy development at this time, we highly recommend
you to use the development version on Github (master branch). You need
to clone the repository and install VisPy with
python setup.py install
.
As a one-liner, assuming git is installed
git clone https://github.com/vispy/vispy.git && cd vispy && python setup.py install --user
This will automatically install the latest version of vispy.
If you need to install Python for the first time, consider using the Anaconda Python distribution. It provides a convenient package management system.
Currently, the main subpackages are:
- app: integrates an event system and offers a unified interface on top of many window backends (Qt4, wx, glfw, IPython notebook with/without WebGL, and others). Relatively stable API.
- gloo: a Pythonic, object-oriented interface to OpenGL. Relatively stable API.
- mpl_plot: an OpenGL backend for matplotlib. Experimental.
- scene: this is the system underlying our upcoming high level
visualization interfaces. Under heavy development and still
experimental, it contains several modules.
- Visuals are graphical abstractions representing 2D shapes, 3D meshes, text, etc.
- Transforms implement 2D/3D transformations implemented on both CPU and GPU.
- Shaders implements a shader composition system for plumbing together snippets of GLSL code.
- The scene graph tracks all objects within a transformation graph.
- plot: high-level plotting interfaces.
The API of all public interfaces are subject to change in the future, although app and gloo are relatively stable at this point.
VisPy began when four developers with their own visualization libraries decided to team up:
- Luke Campagnola with PyQtGraph
- Almar Klein with Visvis
- Cyrille Rossant with Galry
- Nicolas Rougier with Glumpy
Now VisPy looks to build on the expertise of these developers and the broader open-source community to build a high-performance OpenGL library.