Deep Generative Models - Diffusion Models for Discrete Data - Lecture 18
Offered By: Stanford University via YouTube
Course Description
Overview
Explore the application of diffusion models to discrete data in this lecture from Stanford University's CS236: Deep Generative Models course. Delve into advanced concepts presented by Associate Professor Stefano Ermon as he discusses the adaptation of diffusion models, typically used for continuous data, to handle discrete data structures. Gain insights into the challenges and solutions for implementing these powerful generative models in discrete domains, expanding your understanding of deep learning techniques. Follow along with the course materials on the official website and discover how this knowledge fits into the broader context of artificial intelligence and machine learning.
Syllabus
Stanford CS236: Deep Generative Models I 2023 I Lecture 18 - Diffusion Models for Discrete Data
Taught by
Stanford Online
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