Ph.D. Program in Operations Research
The Ph.D. Program in Operations Research stresses optimization techniques leading to decision-making algorithms and the development of new models for management science applications.
The Tepper School's doctoral program in operations research (OR) is designed to encourage students to make contributions toward basic scientific knowledge in the area. This knowledge can take several forms including:
- The derivations of fundamental results of an analytical or mathematical nature that lead to the development of algorithms for aiding decision-making
- The development of new analytical models appropriate for management science applications in areas such as Marketing, Operations, and Finance
- Controlled experimentation that leads to empirical results that make efficiency comparisons possible among algorithms
A major goal of the program is to train students to recognize operations research problems in real-world situations, and to give them the opportunity to learn about the deployment of operations research models in one or more of these substantive areas. Towards this goal, the program provides the opportunity to develop knowledge of functional areas of business to which optimization can be applied such as Marketing, Operations and Finance. There is a rich tradition of graduates from the program going on to successful careers in these areas both in academia (in business schools, engineering schools in IE and OR departments as well as in Math and Computer Science departments) and industry.
Course of Study
The basic operations research courses offered include: linear, nonlinear, integer and dynamic programming; graph theory and network optimization; convex optimization and convex analysis; and stochastic models. Each course is taught by a faculty member who is actively pursuing research in the subject area. Since classes are usually small, students frequently meet informally with their instructors. The third semester competence examination is based on the areas covered in these courses.
The research papers assigned for the first and second summers of graduate study are designed to give students an early introduction to research work. The paper may be done individually or jointly with other students or faculty members. Easy interaction in the Tepper School with researchers in the other areas of business and economics and in such related areas as computer science, machine learning, and statistics encourages the application of operations research in imaginative new directions.
In many cases, work on these papers leads to the work on the Ph.D. dissertation, which can begin as soon as the student has passed the third-semester qualifying examination.
Almost invariably, by the end of their second year, if not earlier, students have already worked on professional problems with some of the faculty. For this reason, student working papers written in collaboration with a faculty member are common.
Carnegie Mellon has pioneered several important developments in both theoretical and applied operations research. Geometric programming, chance constrained programming, and the applications of linear programming to capital budgeting and cost management were among the accomplishments of the '50s and early '60s. Since 1968, when the doctoral program in operations research was started, the Tepper School has initiated several new developments in integer and nonconvex programming, enumerative methods, cutting plane theory, disjunctive programming, constraint programming, network design, algorithm design, machine learning, data mining, and scheduling models.
Recently, the group has pioneered advances in Approximation Algorithms for Network Design, as well as theory and applications of Modern Convex Optimization. Examples on the Selected Research Topics page illustrate the basic research currently in progress, and examples of new operations research applications can be found elsewhere on the Doctoral Program website.
- Mixed-Integer Programming
- Convex Optimization
- Benders Decomposition
- Branch and Price
- Approximation and Online Algorithms
- Network Design
- Analytical Models in Marketing and Operations
- Connections with Artificial Intelligence
- Interplay between Estimation and Optimization
- Bayesian Optimization
- Massively Distributed and Parallel Algorithm Design
- Machine Learning
- Cultural Factors
- Ethics of Artificial Intelligence
Many of our students are very active in the Carnegie Mellon INFORMS Student Chapter.
To learn about the joint PhD program in Algorithms, Combinatorics and Optimization, please visit the webpage http://aco.math.cmu.edu/
Please visit our Ph.D. Student Profiles page to view the profiles of our current doctoral candidates.