EC | 8 |
Location | Vrije Universiteit |
Weeks | 6 - 21 |
Lecture | Thursday, 14:00 - 16:45 |
Provider | Discrete Mathematics, Algebra and Number Theory (Diamant) |
Links | Course page (requires login) |
Prerequisites
Good knowledge of linear algebra is required (particularly basic notions about matrices, eigenvalues, and eigenvectors, positive semidefinite matrices; e.g., Gilbert Strang's linear algebra lecture http://ocw.mit.edu/courses/mathematics/18-06-linear-algebra-spring-2010/video-lectures/). Some knowledge about linear programming and convex optimization would be helpful (particularly basic notions about convex sets, convex functions, optimality conditions, and duality theory in linear programming).
Aim of the course
The course aims at students with an interest in optimization, combinatorics, geometry, and algebra. The purpose of the course is to give an introduction to the theory, computational techniques, and applications of semidefinite optimization. In particular, after successful participation in the course, students will be able to: explain the theory and algorithmic approach to solve semidefinite optimization problems, give examples of problems in optimization, combinatorics, geometry, and algebra to which semidefinite optimization is applicable, solve semidefinite optimization problems with the help of solvers, and recognize problems that can be tackled using semidefinite optimization.
Lecturers
Monique Laurent (CWI & Tilburg University)
Fernando Oliveira (TU Delft)
Teaching assistant and co-lecturer
Alexander Taveira Blomenhofer (CWI)