Dimitris Bertsimas

Faculty

Dimitris Bertsimas

Support Staff

Get in Touch

Title

About

Affiliated MIT Sloan Group

MIT Department

Dimitris Bertsimas is the Boeing Leaders for Global Operations Professor of Management, a Professor of Operations Research, and the Associate Dean for the Master of Business Analytics at MIT. He was named Vice Provost for Open Learning in September 2024.

A faculty member since 1988, his research interests include optimization, stochastic systems, machine learning, and their application. In recent years, he has worked in robust optimization, statistics, healthcare, transportation and finance. Bertsimas was a cofounder of Dynamic Ideas, LLC, which developed portfolio management tools for asset management.  In 2002, the assets of Dynamic Ideas were sold to American Express. He is also the founder of Dynamic Ideas Press, a publisher of scientific books, the cofounder of Benefits Science, a company that designs health care plans for companies, of Dynamic Ideas Financial, a company that provides financial advice to customers, of Alpha Dynamics, an asset management company, P2 Analytics, an analytics  consulting company and of MyA health, a personalized health care advice company. 

Bertsimas has coauthored more than 200 scientific papers and the following books: Introduction to Linear Optimization (with J. Tsitsiklis, Athena Scientific and Dynamic Ideas, 2008); Data, Models, and Decisions (with R. Freund, Dynamic Ideas, 2004);  Optimization over Integers (with R. Weismantel, Dynamic Ideas, 2005); and The Analytics Edge (with A. O'Hair and W. Pulleyblank, Dynamic Ideas, 2016).   He is former department editor of Optimization for Management Science and  of Operations Research in Financial Engineering. Bertsimas has supervised 59 doctoral and 31 Master students. He is currently  supervising 22 doctoral students. A member of the National Academy of Engineering and an INFORMS fellow, he has received numerous research awards, including the Harold Larnder Prize (2016), the Philip Morse Lecturship prize (2013), the William Pierskalla best paper award in health care (2013), best paper award in Trapsoration (2013), the Farkas Prize (2008), the Erlang Prize (1996), the SIAM Prize in Optimization (1996), the Bodossaki Prize (1998), and the Presidential Young Investigator Award (1991–1996). He has also received recognition for his educational contributions: The Jamieson prize (2013) and the Samuel M. Seegal prize (1999). 

Bertsimas holds a BS in electrical engineering and computer science from the National Technical University of Athens, Greece, as well as an MS in operations research and a PhD in applied mathematics and operations research from MIT.

Honors

Bertsimas and Jacquillat win Harold W. Kuhn Award

November 14, 2024

INFORMS honors Trichakis with multiple awards, including one with Bertsimas

November 27, 2023

Bertsimas and Jacquillat win Pierskalla Best Paper Award

November 20, 2020

Dimitris Bertsimas named Distinguished Lecturer

Bertsimas wins Jamieson Prize

Bertsimas and team win first place INFORMS award

Dimitris Bertsimas receives 2016 Harold Larnder Prize

INFORMS honors Bertsimas twice

Dimitris Bertsimas’s class is honored

University of Athens presents Bertsimas with honorary doctorate

Dimitris Bertsimas was awarded the 2008 Farkas Prize of the INFORMS Optimization Society

Publications

"An Exact Solution to Wordle."

Bertsimas, Dimitris and Alex Paskov. Operations Research. Forthcoming. Download Preprint.

"Decarbonizing OCP."

Bertsimas, Dimitris, Ryan Cory-Wright, and Vassilis Digalakis. Manufacturing & Service Operations Management. Forthcoming. Supplemental Materials.

"Finding Neurons in a Haystack: Case Studies with Sparse Probing."

Gurnee, Wes, Neel Nanda, Matthew Pauly, Katherine Harvey, Dmitrii Troitskii, and Dimitris Bertsimas. Transactions in Machine Learning Research. Forthcoming.

"Frequency Estimation in Data Streams: Learning the Optimal Hashing Scheme."

Bertsimas, Dimitris, and Vassilis Digalakis. IEEE Transactions on Knowledge and Data Engineering. Forthcoming. Download Paper.

"Hospital-Wide Inpatient Flow Optimization."

Bertsimas, Dimitris, and Jean Pauphilet. Management Science. Forthcoming. Supplementary Materials.

"Mixed-Integer Optimization with Constraint Learning."

Maragno, Donato, Holly Wiberg, Dimitris Bertsimas, Ş. İlker Birbil, Dick den Hertog, and Adejuyigbe O. Fajemisin. Operations Research. Forthcoming. arXiv Preprint. Supplemental Materials.

Load More

Recent Insights

Ideas Made to Matter

AI Expert Spotlight: Dimitris Bertsimas

Dimitris Bertsimas has worked in artificial intelligence for more than 20 years, spanning fields from health care to climate. He's optimistic that AI will be multimodal and multitasking, but he also sees challenges ahead.

Read More
Press

Researchers use data analytics for national lung transplant allocation

Dimitris Bertsimas and Nikolaos Trichakis modeled a points-based framework called continuous distribution (CD) based on AI and machine learning to aid in allocating lung transplants.

Read Article
Load More

Media Highlights

Press Source: The New York Times

8 MIT AI experts to know now

We asked 8 MIT Sloan faculty members about their new projects and what they see as the most exciting — and concerning — aspects of the AI boom.

Read Article
Load More

Executive Education

Executive Education Course

Applied Business Analytics

The goal of business analytics is to determine which datasets are useful and how they can be leveraged to solve problems and increase efficiency, productivity, and revenue. In this non-technical online program, you will learn a practical framework that will enable you to use data to improve decision-making.

  • Oct 31-Dec 19, 2023
  • Mar 26-May 14, 2024
  • Oct 24-Dec 10, 2024
  • Aug 13-Oct 1, 2024
  • Oct 22-Dec 10, 2024
  • Jun 4-Jul 23, 2024
  • Jan 16-Mar 5, 2024
  • Jun 10-Jul 29, 2025
  • Jan 14-Mar 4, 2025
  • Mar 25-May 13, 2025
  • Jun 12-Jul 29, 2025
  • Jan 16-Mar 4, 2025
  • Mar 27-May 13, 2025
View Course
Executive Education Course

Artificial Intelligence in Pharma and Biotech

Over the course of six weeks, dive into the existing and potential applications of AI and ML in the pharmaceutical and biotech industry. Guided by expert MIT faculty, you’ll gain insight into the optimal AI tools for this industry and explore how they can be leveraged for early drug discovery.

  • Oct 11-Nov 28, 2023
  • Nov 22, 2023-Jan 30, 2024
  • Apr 10-May 28, 2024
  • Aug 7-Sep 17, 2024
  • Oct 9-Nov 26, 2024
  • Jul 31-Sep 17, 2024
  • May 29-Jul 16, 2024
  • Feb 14-Apr 2, 2024
  • Nov 13, 2024-Jan 15, 2025
  • Apr 9-May 21, 2025
  • May 28-Jul 9, 2025
  • Jul 30-Sep 10, 2025
  • Feb 12-Mar 26, 2025
  • Oct 8-Nov 19, 2025
View Course
Load More