Tepper School of Business


Courses
- 36-701 Intermediate Probability
- 36-753/54 Probability Theory and Stochastic Processes
- 47-830 Integer Programming
- 47-834 Linear Programming
- 47-835 Graph Theory
- 47-840 Dynamic Programming
- 47-936 Convex Polytopes
- 47-831 Advanced Integer Programming
- 47-832 Nonlinear Programming
- 47-836 Networks and Matchings
- 47-844 Optimization, Logical and Constraint Satisfaction:
This course develops integer programming, constraint programming, and global optimization from a unified point of view that sees these fields as special cases of a single problem-solving technology. The focus is on methods used in major general-purpose solvers. Topics covered include constraint propagation, filtering and relaxation for global constraints,
domain consistency, cutting planes, convexification, branch-infer-and-relax methods, logic-based Benders methods, and modeling. The course presupposes no knowledge of optimization other than linear programming.
- 47-846 Analysis and Heuristics
- 47-848 Network Design Algorithms
- 47-856 Theory and Algorithms for Linear Programming
- 47-860 Convex Analysis

