Deep Generative Models - Discrete Latent Variable Models - Lecture 17
Offered By: Stanford University via YouTube
Course Description
Overview
Explore discrete latent variable models in this lecture from Stanford University's CS236: Deep Generative Models course. Delve into advanced concepts presented by Associate Professor Stefano Ermon as he covers key aspects of these models within the field of artificial intelligence. Gain insights into the theoretical foundations and practical applications of discrete latent variable models, enhancing your understanding of deep generative modeling techniques. Follow along with the course materials available on the official website to maximize your learning experience. This lecture is part of Stanford's comprehensive AI program, offering valuable knowledge for students and professionals interested in cutting-edge machine learning approaches.
Syllabus
Stanford CS236: Deep Generative Models I 2023 I Lecture 17 - Discrete Latent Variable Models
Taught by
Stanford Online
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