We present Rieoptax, an open source Python library for Riemannian optimization in JAX. We show that many differential geometric primitives, such as Riemannian exponential and logarithm maps, are usually faster in Rieoptax than existing frameworks in Python, both on CPU and GPU. We support various range of basic and advanced stochastic optimization solvers like Riemannian stochastic gradient, stochastic variance reduction, and adaptive gradient methods. A distinguishing feature of the proposed toolbox is that we also support differentially private optimization on Riemannian manifolds
This paper studies large-scale optimization problems on Riemannian manifolds whose objective functio...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
We present the Julia package Manifolds.jl, providing a fast and easy-to-use library of Riemannian ma...
We introduce Geomstats, an open-source Python package for computations and statistics on nonlinear m...
In this paper, we study the differentially private empirical risk minimization problem where the par...
Manifold optimization appears in a wide variety of computational problems in the applied sciences. I...
International audienceWe introduce Geomstats, an open-source Python toolbox for computations and sta...
A principal way of addressing constrained optimization problems is to model them as problems on Riem...
A principal way of addressing constrained optimization problems is to model them as problems on Riem...
Riemannian optimization is the task of finding an optimum of a real-valued function defined on a Riema...
Preprint NIPS2018We introduce geomstats, a python package that performs computations on manifolds su...
Information geometric optimization (IGO) is a general framework for stochastic optimization problems...
Optimization problems on the generalized Stiefel manifold (and products of it) are prevalent across ...
Abstract. The techniques and analysis presented in this paper provide new meth-ods to solve optimiza...
How to make the best decision? This general concern, pervasive in both research and industry, is wha...
This paper studies large-scale optimization problems on Riemannian manifolds whose objective functio...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
We present the Julia package Manifolds.jl, providing a fast and easy-to-use library of Riemannian ma...
We introduce Geomstats, an open-source Python package for computations and statistics on nonlinear m...
In this paper, we study the differentially private empirical risk minimization problem where the par...
Manifold optimization appears in a wide variety of computational problems in the applied sciences. I...
International audienceWe introduce Geomstats, an open-source Python toolbox for computations and sta...
A principal way of addressing constrained optimization problems is to model them as problems on Riem...
A principal way of addressing constrained optimization problems is to model them as problems on Riem...
Riemannian optimization is the task of finding an optimum of a real-valued function defined on a Riema...
Preprint NIPS2018We introduce geomstats, a python package that performs computations on manifolds su...
Information geometric optimization (IGO) is a general framework for stochastic optimization problems...
Optimization problems on the generalized Stiefel manifold (and products of it) are prevalent across ...
Abstract. The techniques and analysis presented in this paper provide new meth-ods to solve optimiza...
How to make the best decision? This general concern, pervasive in both research and industry, is wha...
This paper studies large-scale optimization problems on Riemannian manifolds whose objective functio...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
We present the Julia package Manifolds.jl, providing a fast and easy-to-use library of Riemannian ma...