Installation | Documentation | Examples | Cite us
⚠️ We are in the process of merging JAXopt into Optax. Because of this, JAXopt is now in maintenance mode and we will not be implementing new features ⚠️
Hardware accelerated, batchable and differentiable optimizers in JAX.
- Hardware accelerated: our implementations run on GPU and TPU, in addition to CPU.
- Batchable: multiple instances of the same optimization problem can be automatically vectorized using JAX's vmap.
- Differentiable: optimization problem solutions can be differentiated with respect to their inputs either implicitly or via autodiff of unrolled algorithm iterations.
To install the latest release of JAXopt, use the following command:
$ pip install jaxopt
To install the development version, use the following command instead:
$ pip install git+https://github.com/google/jaxopt
Alternatively, it can be installed from sources with the following command:
$ python setup.py install
Our implicit differentiation framework is described in this paper. To cite it:
@article{jaxopt_implicit_diff,
title={Efficient and Modular Implicit Differentiation},
author={Blondel, Mathieu and Berthet, Quentin and Cuturi, Marco and Frostig, Roy
and Hoyer, Stephan and Llinares-L{\'o}pez, Felipe and Pedregosa, Fabian
and Vert, Jean-Philippe},
journal={arXiv preprint arXiv:2105.15183},
year={2021}
}
JAXopt is an open source project maintained by a dedicated team in Google Research, but is not an official Google product.