Ph.D. in Statistics 2017-2023
Stern School of Business, New York University
I am a Postdoctoral Research Fellow from the Schmidt AI in Science Fellowship program at University of Michigan, mentored by Professor Yixin Wang from Department of Statistics, and Professor Bryan R. Goldsmith from Department of Chemical Engineering.
I completed Ph.D. in Statistics at New York University in 2023, advised by Professor Halina Frydman, with my dissertation focused on adapting machine-learning models to address challenging problems in medical and physical sciences. Before that, I completed M.A. in Statistics at Columbia University in 2017, and B.A. in Finance and Applied Mathematics at Wuhan University in 2015.
My research interests include probabilistic generative modeling and their applications in materials discovery. See my CV.
As a Schmidt AI in Science Fellow,
I was a Science Intern in Amazon Development Center, Germany from December 2022 to May 2023 working on transfer learning with deep tabular models.
I was a Research Intern in the Applied Machine Learning Team, TikTok at ByteDance from May 2022 to August 2022, working on deriving Maximum likelihood estimation with full-likelihood formulation for click-through rate prediction on nonuniform subsampled data.
I was the Course Instructor of STAT-UB1.001 Statistics for Business Control at NYU Stern in Summer 2020.
I was a teaching fellow at New York University for
I was a rearch assistant with Professor Liam Paninski at Grossman Center for the Statistics of Mind, Columbia University, from 2016 to 2017. We worked on projects that develop statistical methodology for understanding how neurons encode information.
Stern School of Business, New York University
Graduate School of Arts and Sciences, Columbia University