Jan. 1, 2023, midnight | Shaowu Pan, Steven L. Brunton, J. Nathan Kutz

JMLR www.jmlr.org

High-dimensional spatio-temporal dynamics can often be encoded in a low-dimensional subspace. Engineering applications for modeling, characterization, design, and control of such large-scale systems often rely on dimensionality reduction to make solutions computationally tractable in real time. Common existing paradigms for dimensionality reduction include linear methods, such as the singular value decomposition (SVD), and nonlinear methods, such as variants of convolutional autoencoders (CAE). However, these encoding techniques lack the ability to efficiently represent the complexity associated with spatio-temporal data, which often …

applications cae complexity control data design dimensionality dynamics encoding engineering flow geometry grid linear low mesh modeling paradigm scale solutions svd systems temporal uniform value variants

Founding AI Engineer, Agents

@ Occam AI | New York

AI Engineer Intern, Agents

@ Occam AI | US

AI Research Scientist

@ Vara | Berlin, Germany and Remote

Data Architect

@ University of Texas at Austin | Austin, TX

Data ETL Engineer

@ University of Texas at Austin | Austin, TX

Machine Learning Engineer - Sr. Consultant level

@ Visa | Bellevue, WA, United States