Convex sets, functions, and optimization problems. The basics of convex analysis and theory of convex programming: optimality conditions, duality theory, theorems of alternative, and applications. Least-squares, linear and quadratic programs, semidefinite programming, and geometric programming. Numerical algorithms for smooth and equality constrained problems; interior-point methods for inequality constrained problems. Applications to signal processing, communications, control, analog and digital circuit design, computational geometry, statistics, machine learning, and mechanical engineering. Prerequisite: linear algebra such as EE263, basic probability.
- Author
- Jacob Cole
- Status
- —
- Visibility
- (inherits public)
- Created
- 5/19/2026, 1:15:00 AM
- Updated
- 5/19/2026, 1:15:00 AM
- Permalink
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