Asymptotically Stable Koopman Representations of Dynamic Systems
Offered By: Fields Institute via YouTube
Course Description
Overview
Explore an insightful conference talk on asymptotically stable Koopman representations of dynamic systems, presented by James Forbes from McGill University at the Fourth Symposium on Machine Learning and Dynamical Systems. Delve into the intersection of machine learning and dynamical systems theory, gaining valuable knowledge about advanced mathematical concepts and their applications. Learn how Koopman operator theory can be applied to analyze and represent complex dynamic systems, with a focus on achieving asymptotic stability. Discover the potential implications of this research for fields such as control theory, signal processing, and predictive modeling.
Syllabus
Asymptotically Stable Koopman Representations of Dynamic Systems
Taught by
Fields Institute
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