Operations, Information & Technology

In the Operations, Information, and Technology field we use mathematical models to improve technological systems.

We develop new methods, improve the use of emerging technologies, study a wide variety of systems, and impact practice, using tools from operations research, game theory, econometrics, computer science, probability and statistics.

Our faculty research interests include health care systems, product design and manufacturing processes, supply networks, information systems, energy and environmental systems, homeland security systems, financial systems, social networks, and online markets. Our faculty-student ratio is approximately one-to-one allowing for personalized attention to students.

Preparation and Qualifications

The program is intended for students with strong training in relevant mathematical methods and models who are interested in academic careers. Students who enroll in this program must have strong preparation in advanced calculus, linear algebra, or probability. Competence in optimization, programming, real analysis, and statistics is also helpful. Recent admits have majored in Computer Science, Economics, Electrical Engineering, Industrial Engineering, Mathematics, Physics, and Statistics.

Faculty in Operations, Information & Technology

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Recent Publications in Operations, Information & Technology

Publication Search

Redesigning VolunteerMatch’s Search Algorithm: Toward More Equitable Access to Volunteers

Vahideh Manshadi, Scott Rodilitz, Daniela Saban, Akshaya Suresh
Management Science December2025

The Consumer Welfare Effects of Online Ads: Evidence from a Nine-Year Experiment

Erik Brynjolfsson, Avinash Collis, Daniel Deisenroth, Haritz Garro, Daley Kutzman, Asad Liaqat, Nils Wernerfelt
American Economic Review: Insights December2025 Vol. 7 Issue 4

Evaluating Transparency in AI/ML Model Characteristics for FDA-Reviewed Medical Devices

Viraj Mehta, Abhinav Komanduri, Rishabh Singh Bhadouriya, Vilina Mehta, Michael David Johnson, Priyanka Shrestha, Margaret Nikolov, Bhav Jain, Nigam Shah, Kevin A. Schulman
npj Digital Medicine November2025 Vol. 8

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