Semester:
- Spring 2023
Course Level:
- Graduate, Undergraduate
The theory of random magnetic systems, spin-glasses, has transformed our understanding of the impact of disorder and complexity in many areas such as physics, biology, computer science, statistics, neuroscience, and AI. The purpose of the course is to survey advanced spin glass theoretical approaches, including Replica Theory, Dynamic Mean Field Theory, the cavity method, and belief propagation. Applications include the physics of spin glasses, combinatorial optimization, random matrices, chaos in random recurrent networks, associative memory, and learning in deep neural networks.
Course level: primarily for graduate students. Advanced undergraduate students accepted by permission of course instructor.