numpy
-workalike.. image:: https://gitlab.tiker.net/inducer/arraycontext/badges/main/pipeline.svg :alt: Gitlab Build Status :target: https://gitlab.tiker.net/inducer/arraycontext/commits/main .. image:: https://github.com/inducer/arraycontext/workflows/CI/badge.svg :alt: Github Build Status :target: https://github.com/inducer/arraycontext/actions?query=branch%3Amain+workflow%3ACI .. image:: https://badge.fury.io/py/arraycontext.svg :alt: Python Package Index Release Page :target: https://pypi.org/project/arraycontext/
GPU arrays? Deferred-evaluation arrays? Just plain numpy
arrays? You'd like your
code to work with all of them? No problem! Comes with pre-made array context
implementations for:
PyOpenCL <https://documen.tician.de/pyopencl/array.html>
__JAX <https://jax.readthedocs.io/en/latest/>
__Pytato <https://documen.tician.de/pytato>
__ (for lazy/deferred evaluation)
with backends for pyopencl
and jax
.arraycontext
started life as an array abstraction for use with the
meshmode <https://documen.tician.de/meshmode/>
__ unstrucuted discretization
package.
Distributed under the MIT license.
Source code on Github <https://github.com/inducer/arraycontext>
_Documentation <https://documen.tician.de/arraycontext>
_