I will propose in this mini tutorial an overview of novel approaches to compute optimal transport between measures, using a blend of recent techniques. After starting with the basics, describing the Monge and Kantorovich problems, I will show how convex optimization (using for instance regularization), automatic differentiation and neural...

🔗 Read More & Access Full Source 🔓

Verified link by Valmet Tissue Converting Solutions

Reading Guide & Coverage Overview

Computational Optimal Transport Information Center

Get comprehensive updates, key reports, and detailed insights compiled from verified editorial sources.

Background to Computational Optimal Transport

I will propose in this mini tutorial an overview of novel approaches to compute optimal transport between measures, using a blend of recent techniques. After starting with the basics, describing the Monge and Kantorovich problems, I will show how convex optimization (using for instance regularization), automatic differentiation and neural networks can all prove useful to approximate optimal transport at scale, for various cost structures, and in high dimensional regimes. MT7: Computational Optimal Transport Organizer: Marco Cuturi Apple, Inc., U.S. This talk was given at the 2022 SIAM Conference on Mathematics of Data Science in San Diego, California, U.S. Learn more about SIAM Conferences at

Main Features

Explore the primary sources for Computational Optimal Transport.

History

Stay updated on Computational Optimal Transport's latest milestones.

Featured Video Reports & Highlights

Below is a handpicked selection of video coverage, expert reports, and highlights regarding Computational Optimal Transport from verified contributors.

Computational Optimal Transport
VIDEO

Computational Optimal Transport

545 views Live Report

I will propose in this mini tutorial an overview of novel approaches to compute optimal transport between measures, using a blend of recent techniques. After starting with the basics, describing the Monge and Kantorovich problems, I will show how convex optimization (using for instance regularization), automatic differentiation and neural networks can all prove useful to approximate optimal transport at scale, for various cost structures, and in high dimensional regimes. MT7: Computational Optimal Transport Organizer: Marco Cuturi Apple, Inc., U.S. This talk was given at the 2022 SIAM Conference on Mathematics of Data Science in San Diego, California, U.S. Learn more about SIAM Conferences at

Deep Dive

Data is compiled from public records and verified media reports.

Last Updated: May 22, 2026

Final Thoughts

For 2026, Computational Optimal Transport remains one of the most talked-about profiles. Check back for the latest updates.

Disclaimer: