Algorithmic Information Theory and Machine Learning in Dynamical Systems
Offered By: Fields Institute via YouTube
Course Description
Overview
Explore the intersection of Algorithmic Information Theory (AIT) and Machine Learning for Dynamical Systems (MLDS) in this 28-minute conference talk by Boumediene Hamzi from the California Institute of Technology. Delivered at the Fourth Symposium on Machine Learning and Dynamical Systems, gain insights into cutting-edge research and applications in these fields. Discover how AIT principles are being applied to enhance machine learning techniques for analyzing and predicting complex dynamical systems.
Syllabus
AIT and MLDS
Taught by
Fields Institute
Related Courses
Introduction to Dynamical Systems and ChaosSanta Fe Institute via Complexity Explorer Nonlinear Dynamics 1: Geometry of Chaos
Georgia Institute of Technology via Independent Linear Differential Equations
Boston University via edX Algorithmic Information Dynamics: From Networks to Cells
Santa Fe Institute via Complexity Explorer Nonlinear Differential Equations: Order and Chaos
Boston University via edX