Skip to main content
Princeton Mobile homeCourses home
Detail

Computing and Optimization for the Physical and Social Sciences

ORF 363/COS 323

1234
Info tab content
An introduction to several fundamental and practically-relevant areas of modern optimization and numerical computing. Topics include computational linear algebra, first and second order descent methods, convex sets and functions, basics of linear and semidefinite programming, optimization for statistical regression and classification, and techniques for dealing with uncertainty and intractability in optimization problems. Extensive hands-on experience with high-level optimization software. Applications drawn from operations research, statistics and machine learning, economics, control theory, and engineering.
Instructors tab content
Sections tab content

Section L01