ArrayFire is a high performance library for parallel computing with an easy-to-use API. It enables users to write scientific computing code that is portable across CUDA, OpenCL and CPU devices. This project provides Python bindings for the ArrayFire library.
import arrayfire as af
# Display backend information
af.info()
# Generate a uniform random array with a size of 5 elements
a = af.randu(5, 1)
# Print a and its minimum value
af.display(a)
# Print min and max values of a
print("Minimum, Maximum: ", af.min(a), af.max(a))
On an AMD GPU:
Using opencl backend
ArrayFire v3.0.1 (OpenCL, 64-bit Linux, build 17db1c9)
[0] AMD : Spectre
-1- AMD : AMD A10-7850K Radeon R7, 12 Compute Cores 4C+8G
[5 1 1 1]
0.4107
0.8224
0.9518
0.1794
0.4198
Minimum, Maximum: 0.17936542630195618 0.9517996311187744
On an NVIDIA GPU:
Using cuda backend
ArrayFire v3.0.0 (CUDA, 64-bit Linux, build 86426db)
Platform: CUDA Toolkit 7, Driver: 346.46
[0] Tesla K40c, 12288 MB, CUDA Compute 3.5
-1- GeForce GTX 750, 1024 MB, CUDA Compute 5.0
Generate a random matrix a:
[5 1 1 1]
0.7402
0.9210
0.0390
0.9690
0.9251
Minimum, Maximum: 0.039020489901304245 0.9689629077911377
Fallback to CPU when CUDA and OpenCL are not availabe:
Using cpu backend
ArrayFire v3.0.0 (CPU, 64-bit Linux, build 86426db)
Generate a random matrix a:
[5 1 1 1]
0.0000
0.1315
0.7556
0.4587
0.5328
Minimum, Maximum: 7.825903594493866e-06 0.7556053400039673
Choosing a particular backend can be done using af.backend.set( backend_name )
where backend_name can be one of: "cuda", "opencl", or "cpu". The default device is chosen in the same order of preference.
Currently, this project is tested only on Linux and OSX. You also need to have the ArrayFire C/C++ library installed on your machine. You can get it from the following sources.
Please check the following links for dependencies.
Install the last stable version:
pip install arrayfire
Install the development version:
pip install git+git://github.com/arrayfire/arrayfire.git@master
Installing offline
cd path/to/arrayfire-python
python setup.py install
Please follow these instructions to ensure the arrayfire-python can find the arrayfire libraries.
This is a work in progress and is not intended for production use.
The ArrayFire library is written by developers at ArrayFire LLC with contributions from several individuals.
The developers at ArrayFire LLC have received partial financial support from several grants and institutions. Those that wish to receive public acknowledgement are listed below:
This material is based upon work supported by the DARPA SBIR Program Office under Contract Numbers W31P4Q-14-C-0012 and W31P4Q-15-C-0008. Any opinions, findings and conclusions or recommendations expressed in this material are those of the author(s) and do not necessarily reflect the views of the DARPA SBIR Program Office.