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.
Documentation for this project can be found over here.
# Monte Carlo estimation of pi
def calc_pi_device(samples):
# Simple, array based API
# Generate uniformly distributed random numers
x = af.randu(samples)
y = af.randu(samples)
# Supports Just In Time Compilation
# The following line generates a single kernel
within_unit_circle = (x * x + y * y) < 1
# Intuitive function names
return 4 * af.count(within_unit_circle) / samples
Choosing a particular backend can be done using af.set_backend(name)
where name is either "cuda", "opencl", or "cpu". The default device is chosen in the same order of preference.
ArrayFire can be installed from a variety of sources. Pre-built wheels are available for a number of systems and toolkits. These will include a distribution of the ArrayFire libraries. Currently, only the python wrapper is available on PyPI. Wrapper-only installations will require a separate installation of the ArrayFire C/C++ libraries. You can get the ArrayFire C/C++ library from the following sources:
Install the last stable version of python wrapper:
pip install arrayfire
Install a pre-built wheel for a specific CUDA toolkit version:
pip install arrayfire==3.8.0+cu112 -f https://repo.arrayfire.com/python/wheels/3.8.0/
# Replace the +cu112 local version with the desired toolkit
Install the development source distribution:
pip install git+git://github.com/arrayfire/arrayfire-python.git@master
Installing offline:
cd path/to/arrayfire-python
python setup.py install
Rather than installing and building ArrayFire elsewhere in the system, you can also build directly through python by first setting the AF_BUILD_LOCAL_LIBS=1
environment variable. Additional setup will be required to build ArrayFire, including satisfying dependencies and further CMake configuration. Details on how to pass additional arguments to the build systems can be found in the scikit-build documentation.
Post Installation:
If you are not using one of the pre-built wheels, you may need to ensure arrayfire-python can find the installed arrayfire libraries. Please follow these instructions to ensure that arrayfire-python can find the arrayfire libraries.
To run arrayfire tests, you can run the following command from command line.
python -m arrayfire.tests
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.