Sum of Tensor Trace Invariants for Spin Glass Landscapes Optimization
Institut des Hautes Etudes Scientifiques (IHES) via YouTube
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Explore a research lecture examining the application of random tensor theory techniques to study spin glass models, particularly focusing on the spherical p-spin glass model and its landscape optimization. Delve into how theoretical tools developed in high energy physics by Gurau, Rivasseau, and collaborators have been applied to spherical p-spin glass problems, including ground state analysis and planted spike detection. Learn about recent developments in computational algorithms based on random tensor theory framework, specifically investigating optimal methods for summing tensor trace invariants to locate local maxima in spin glass landscapes. Understand the connection between this work and previous research by Evnin (2020) and Gurau (2020), while exploring the collaborative findings of Ouerfelli, Radpay, Tamaazousti, and Rivasseau in developing more practical approaches to theoretical challenges in spin glass optimization.
Syllabus
Mohamed Ouerfelli - Sum of Tensor Trace Invariants for Spin Glass Landscapes Optimisation
Taught by
Institut des Hautes Etudes Scientifiques (IHES)