Predicting Tipping Points with Reservoir Computing
Offered By: Fields Institute via YouTube
Course Description
Overview
Explore a cutting-edge lecture on predicting tipping points using reservoir computing, delivered by Ying-Cheng Lai from Arizona State University at the Fourth Symposium on Machine Learning and Dynamical Systems. Delve into the intersection of machine learning and complex systems as the speaker presents innovative approaches to anticipating critical transitions in dynamical systems. Gain insights into how reservoir computing techniques can be applied to forecast tipping points, potentially revolutionizing our understanding and management of various natural and artificial systems prone to sudden, dramatic changes.
Syllabus
Predicting tipping point with reservoir computing
Taught by
Fields Institute
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