Prerequisites: IME605A
3-0-0-9
Course Contents
Review of linear and integer linear programming. Multistage decision models: Dynamic programming. Network flow problems: Shortest path, maximum flow and minimum cost flow problems; Network optimization. Multi objective decision models: Analytic hierarchy and network processes. Nonlinear programming: Un constrained optimization; Lagrangian relaxation and KKT conditions; Convex optimization; Search, gradient and penalty based methods; Quadratic programming. Metaheauristics and their applications to combinatorial optimization problems such as scheduling and allocation problems. Stochastic decision models: Markov chains; Queues and queuing networks.
Topics
Current Course Information
Instructor(s):
Number of sections:
Tutors for each section:
Schedule for Lectures:
Schedule for Tutorial:
Schedule for Labs: