ReLax
Overview | Installation | Tutorials | Documentation | Citing ReLax
Overview
ReLax
(Recourse Explanation Library in Jax) is a library built on top of jax
to generate counterfactual and recourse explanations for Machine Learning algorithms. By leveraging vectorization though vmap
/pmap
and just-in-time compilation in jax (a high-performance auto-differentiation library). ReLax
offers massive speed improvements in generating individual (or local) explanations for predictions made by Machine Learning algorithms.
Some of the key features are as follows:
🏃 Fast recourse generation via
jax.jit
,jax.vmap
/jax.pmap
.🚀 Accelerated over
cpu
,gpu
,tpu
.🪓 Comprehensive set of recourse methods implemented for benchmarking.
👐 Customizable API to enable the building of entire modeling
and interpretation pipelines for new recourse algorithms.
Installation
The latest ReLax
release can directly be installed from PyPI:
pip install jax-relax
or installed directly from the repository:
pip install git+https://github.com/BirkhoffG/ReLax.git
To futher unleash the power of accelerators (i.e., GPU/TPU), we suggest to first install this library via pip install jax-relax
. Then, follow steps in the official install guidelines to install the right version for GPU or TPU.
An Example of using ReLax
Citing ReLax
To cite this repository:
@software{relax2023github,
author = {Hangzhi Guo and Xinchang Xiong and Amulya Yadav},
title = {{R}e{L}ax: Recourse Explanation Library in Jax},
url = {http://github.com/birkhoffg/ReLax},
version = {0.1.0},
year = {2023}, }