Statistical Mechanics of Deep Learning - Haim Sompolinsky, Hebrew University
Offered By: Kavli Institute for Theoretical Physics via YouTube
Course Description
Overview
Explore the intersection of statistical mechanics and deep learning in this 65-minute lecture by Haim Sompolinsky from Hebrew University. Delve into the theoretical physics behind neural networks and machine learning algorithms. Gain insights into how concepts from statistical mechanics can be applied to understand the behavior and performance of deep learning systems. Discover cross-disciplinary connections between physics and artificial intelligence. Engage with cutting-edge research presented as part of the Kavli Institute for Theoretical Physics' Blackboard Talk series, designed to foster communication between different scientific programs and maintain the unity of theoretical physics.
Syllabus
Statistical Mechanics of Deep Learning ▸ Haim Sompolinsky, Hebrew Univ.
Taught by
Kavli Institute for Theoretical Physics
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