Deep Generative Models - Maximum Likelihood Learning - Lecture 4
Offered By: Stanford University via YouTube
Course Description
Overview
Explore the principles of Maximum Likelihood Learning in this lecture from Stanford University's CS236: Deep Generative Models course. Delve into advanced concepts of artificial intelligence and machine learning as Associate Professor Stefano Ermon guides you through this critical topic. Gain insights into the foundations of deep generative models and their applications in AI. Follow along with the course materials on the official website and discover how this knowledge can be applied to real-world scenarios. Perfect for students, researchers, and professionals looking to deepen their understanding of generative AI techniques and their implementation in various fields.
Syllabus
Stanford CS236: Deep Generative Models I 2023 I Lecture 4 - Maximum Likelihood Learning
Taught by
Stanford Online
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