Skip to content
forked from cupy/cupy

NumPy-like API accelerated with CUDA

License

Notifications You must be signed in to change notification settings

venkywonka/cupy

 
 

Repository files navigation

CuPy : A NumPy-compatible array library accelerated by CUDA

pypi GitHub license travis coveralls Gitter Twitter

Website | Docs | Install Guide | Tutorial | Examples | API Reference | Forum (en, ja)

CuPy is an implementation of NumPy-compatible multi-dimensional array on CUDA. CuPy consists of the core multi-dimensional array class, cupy.ndarray, and many functions on it.

Installation

Wheels (precompiled binary packages) are available for Linux (Python 3.5+) and Windows (Python 3.6+). Choose the right package for your CUDA Toolkit version.

CUDA Command
v9.0 pip install cupy-cuda90
v9.2 pip install cupy-cuda92
v10.0 pip install cupy-cuda100
v10.1 pip install cupy-cuda101
v10.2 pip install cupy-cuda102
v11.0 pip install cupy-cuda110
v11.1 pip install cupy-cuda111 (Currently only for Windows; See #4209 for Linux)

See the Installation Guide if you are using Conda/Anaconda or to build from source.

Run on Docker

Use NVIDIA Container Toolkit to run CuPy image with GPU.

$ docker run --gpus all -it cupy/cupy

More information

License

MIT License (see LICENSE file).

CuPy is designed based on NumPy's API and SciPy's API (see docs/LICENSE_THIRD_PARTY file).

CuPy is being maintained and developed by Preferred Networks Inc. and community contributors.

Reference

Ryosuke Okuta, Yuya Unno, Daisuke Nishino, Shohei Hido and Crissman Loomis. CuPy: A NumPy-Compatible Library for NVIDIA GPU Calculations. Proceedings of Workshop on Machine Learning Systems (LearningSys) in The Thirty-first Annual Conference on Neural Information Processing Systems (NIPS), (2017). URL

@inproceedings{cupy_learningsys2017,
  author       = "Okuta, Ryosuke and Unno, Yuya and Nishino, Daisuke and Hido, Shohei and Loomis, Crissman",
  title        = "CuPy: A NumPy-Compatible Library for NVIDIA GPU Calculations",
  booktitle    = "Proceedings of Workshop on Machine Learning Systems (LearningSys) in The Thirty-first Annual Conference on Neural Information Processing Systems (NIPS)",
  year         = "2017",
  url          = "https://learningsys.org/nips17/assets/papers/paper_16.pdf"
}

About

NumPy-like API accelerated with CUDA

Resources

License

Code of conduct

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 75.4%
  • C 12.4%
  • C++ 10.8%
  • Cuda 1.0%
  • Shell 0.2%
  • PowerShell 0.1%
  • Other 0.1%