Physical Systems That Can Learn by Themselves
Offered By: Stanford Physics via YouTube
Course Description
Overview
Explore a groundbreaking lecture on self-learning physical systems presented by Andrea Liu from the University of Pennsylvania's Physics Department. Delve into the concept of "More is different" in condensed matter physics and discover how it applies to systems like artificial neural networks. Examine the energy-efficient learning capabilities of brains and how they differ from traditional computer simulations. Learn about a novel approach to learning that utilizes physics principles, allowing analog components to update their properties using local rules. Investigate how this method has been implemented in laboratory settings, creating physical systems that can perform machine learning tasks autonomously with minimal energy consumption. Consider the implications of this research for studying scalable learning and its potential applications in various biological processes. Gain insights into the future of physical systems that can learn by themselves and their impact on the field of physics and beyond.
Syllabus
Andrea Liu - "Physical systems that can learn by themselves"
Taught by
Stanford Physics
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