Optimal Transport Tools (OTT): A JAX Toolbox for all things Wasserstein

Cuturi, Marco, Meng-Papaxanthos, Laetitia, Tian, Yingtao, Bunne, Charlotte, Davis, Geoff, Teboul, Olivier

arXiv.org Machine Learning 

Optimal transport tools (OTT-JAX) is a python toolbox that can solve optimal transport problems between point clouds and histograms. The toolbox builds on various JAX features, such as automatic and custom reverse mode differentiation, vectorization, just-in-time compilation and accelerators support. The toolbox covers elementary computations, such as the resolution of the regularized OT problem, and more advanced extensions, such as barycenters, Gromov-Wasserstein, low-rank solvers, estimation of convex maps, differentiable generalizations of quantiles and ranks, and approximate OT between Gaussian mixtures. The toolbox code is available at https://github.com/ott-jax/ott