Jingfeng Wu  |  吴京风

I am a postdoc fellow at the Simons Institute at UC Berkeley hosted by Peter Bartlett and Bin Yu. I am a part of the NSF/Simons Collaboration on the Theoretical Foundations of Deep Learning.

I obtained my Ph.D. in Computer Science at Johns Hopkins University, advised by Vladimir Braverman, and B.S. and M.S. at Peking University. I was selected as a 2023 Rising Star in Data Science by UChicago and UCSD.

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JW

Research

My research focuses on bridging the gap between theory and practice in machine learning by developing efficient algorithms to solve real-world problems and providing a deep understanding of the underlying theoretical principles.

I work on the theory and algorithms of deep learning, and related topics in algorithms, machine learning, optimization, and statistical learning theory.

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* indicates equal contribution, † indicates alphabetical order.

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Recent Student Collaborators

Yuhang Cai    Licong Lin    Ruiqi Zhang   

Collaborators

Amir Abedsoltan    Peter L. Bartlett    Mikhail Belkin    Vladimir Braverman    Zixiang Chen    Yihe Deng    Udaya Ghai    Quanquan Gu    Peter Kairouz    Sham M. Kakade    Jason D. Lee    Haoran Li    Xuheng Li    Michael Lindsey    Song Mei    Depen Morwani    Adit Radhakrishnan    Matus Telgarsky    Nikhil Vyas    Lin F. Yang    Bin Yu    Hanlin Zhang    Wennan Zhu    Dongruo Zhou    Difan Zou