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David D. Gamarnik
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David Gamarnik is a Nanyang Technological University Professor of Operations Research at the Operations Research and Statistics Group, at the MIT Sloan School of Management. He received a BA in mathematics from New York University in 1993 and a PhD in operations research from MIT in 1998. He was a research staff member of IBM T.J. Watson Research Center before joining MIT in 2005.
His research interests include discrete probability, optimization and algorithms, quantum computing, statistics, machine learning, and stochastic processes. He is a Fellow of the Institute for Mathematical Statistics, the Institute for Operations Research and Management Science, and the American Mathematical Society. He is a recipient of the Erlang Prize and the Best Publication Award from the Applied Probability Society of INFORMS, and was a finalist in Franz Edelman Prize competition of INFORMS.
He currently serves as an area editor for the Mathematics of Operations Research journal. In the past he served as an area editor of the Operations Research journal, and as an associate editor of the Mathematics of Operations Research, the Annals of Applied Probability, Queueing Systems and the Stochastic Systems journals.
Honors
Gamarnik receives two honors
Publications
Gamarnik, David, Eren C. Kızıldağ, and Ilias Zadik. Mathematics of Operations Research. Forthcoming. arXiv Preprint.
Gamarnik, David, and Ilias Zadik. Annals of Applied Probability. Forthcoming.
Gamarnik, David, Aukosh Jagannath, and Alexander S. Wein. SIAM Journal on Computing Vol. 53, No. 1 (2024): 22M150263X. arXiv Preprint.
Gamarnik, David, and Eren C. Kızıldağ. Annals of Applied Probability Vol. 33, No. 68 (2023): 5497-5563. arXiv Preprint.
Gamarnik, David. Proceedings of the National Academy of Sciences Vol. 120, No. 46 (2023): 0231409212.
David Gamarnik, Eren C Kizildag ̆, Will Perkins, and Changji Xu. In Proceedings of the Thirty Sixth Annual Conference on Learning Theory, Bangalore, India: July 2023. arXiv Preprint.