GrAPE

Graphical Assistant for Prerequisite Enrollment

SIO department

SIOC 228. Machine Learning for Physical Applications (4 units)

Link to catalog page: https://catalog.ucsd.edu/courses/SIO.html#sioc228

Description

Machine learning has received enormous interest. To learn from data we use probability theory, which has been the mainstay of statistics and engineering for centuries. The class will focus on implementations for physical problems. Topics include Gaussian probabilities, linear models for regression, linear models for classification, neural networks, kernel methods, support vector machines, graphical models, mixture models, sampling methods, and sequential estimation. Students may not receive credit for both SIOC 228 and ECE 228. Prerequisites: graduate standing or consent of instructor.

Prerequisite courses

SIOC 228 has no prerequisite courses.

Successor courses

No courses have SIOC 228 as a prerequisite.