eigenpy
Bindings between Numpy and Eigen using Boost.Python
README
EigenPy — Versatile and efficient Python bindings between Numpy and Eigen
EigenPy is an open-source framework that allows the binding of the famous Eigen C++ library in Python via Boost.Python.
EigenPy provides:
full memory sharing between Numpy and Eigen, avoiding memory allocation
full support Eigen::Ref avoiding memory allocation
full support of the Eigen::Tensor module
exposition of the Geometry module of Eigen for easy code prototyping
standard matrix decomposion routines of Eigen such as the Cholesky decomposition (SVD and QR decompositions can be added)
full support of SWIG objects
full support of runtime declaration of Numpy scalar types
extended API to expose several STL types and some of their Boost equivalents:
optional
types,std::pair
, maps, variants…full support of vectorization between C++ and Python (all the hold objects are properly aligned in memory)
Installation
The installation of EigenPy on your computer is made easy for Linux/BSD, Mac OS X, and Windows environments.
The Conda approach
You simply need this simple line:
conda install eigenpy -c conda-forge
Ubuntu
You can easily install EigenPy from binaries.
Add robotpkg apt repository
Add robotpkg as source repository to apt:
sudo sh -c "echo 'deb [arch=amd64] http://robotpkg.openrobots.org/packages/debian/pub $(lsb_release -cs) robotpkg' >> /etc/apt/sources.list.d/robotpkg.list"
Register the authentication certificate of robotpkg:
curl http://robotpkg.openrobots.org/packages/debian/robotpkg.key | sudo apt-key add -
You need to run at least one apt update to fetch the package descriptions:
sudo apt-get update
Install EigenPy
The installation of EigenPy and its dependencies is made through the line:
sudo apt install robotpkg-py35-eigenpy
where 35 should be replaced by the Python 3, you want to work this (e.g., robotpkg-py36-eigenpy
to work with Python 3.6).
Mac OS X
The installation of EigenPy on Mac OS X is made via HomeBrew. You just need to register the tap of the software repository.
brew tap gepetto/homebrew-gepetto
and then install EigenPy for Python 3.x with:
brew install eigenpy
Contributing
Standard matrix decomposion routines of Eigen such as the SVD and QR decompositions can be readily added to EigenPy following the example of the Cholesky decomposition that is already implemented. Feel free to open a PR if you wrap them for your use case.
Build/install from source with Pixi
To build EigenPy from source the easiest way is to use Pixi.
Pixi is a cross-platform package management tool for developers that
will install all required dependencies in .pixi
directory.
It’s used by our CI agent so you have the guarantee to get the right dependencies.
Run the following command to install dependencies, configure, build and test the project:
pixi run test
The project will be built in the build
directory.
You can run pixi shell
and build the project with cmake
and ninja
manually.
Credits
The following people have been involved in the development of EigenPy:
Justin Carpentier (Inria): main developer and manager of the project
Nicolas Mansard (LAAS-CNRS): initial project instructor
Wolfgang Merkt (University of Edinburgh): ROS integration and support
Sean Yen (Microsoft): Windows integration
Loïc Estève (Inria): Conda integration
Wilson Jallet (Inria/LAAS-CNRS): core developer
Joris Vaillant (Inria): core developer and manager of the project
If you have taken part in the development of EigenPy, feel free to add your name and contribution here.
Acknowledgments
The development of EigenPy is supported by the Gepetto team @LAAS-CNRS and the Willow team @INRIA.