Foundations of Machine Learning and Artificial Intelligence

Lecture, three hours. Requisites: courses 115A, 131A, or equivalent. Introduction to mathematical and theoretical aspects of machine learning and artificial intelligence. Topics include probability and high-dimensional statistics, neural networks, deep learning, artificial intelligence, modern architectures, approximation theory, optimization, and error estimates. S/U or letter grading.

Review Summary

Clarity
N/A
Organization
N/A
Time
N/A
Overall
N/A

Course

Instructor
Schaeffer, H.K.
Previously taught
24F

Previous Grades

Grade distributions not available.