I am a postdoctoral fellow hosted by Dr. Zhangyang Wang in the VITA group, Institute for Foundations of Machine Learning (IFML) and Wireless Networking and Communications Group (WNCG) at UT Austin. I obtained my Ph.D. degree from Computer Science and Engineering at ILLIDAN Lab@Michigan State University (MSU), advised by Dr. Jiayu Zhou. Previously, I earned my B.S. in Physics and M.S. in Computer Science at University of Science and Technology of China (USTC).
My long-term research vision is to build a Holistic Trustworthy ML system, including fairness, robustness, security and privacy. My recent research centers around Privacy-Centric Trustworthy Machine Learning where I pursue trustworthiness under the privacy constraint, e.g., federated learning and differentially-private learning:
I am on the job market! Check my curricula vitae and feel free to drop me an email if you are interested.
PhD in CSE, 2023
Michigan State University
MSc in Computer Science, 2018
University of Science and Technology of China
BSc in Physics, minor in CS., 2015
University of Science and Technology of China
Instead of isolated properties, we target on a holistic trustworthiness covering every properties in one solution.
On the need of data privacy and more data, we strive to join the knowledge from a fair amount of users to train powerful deep neural networks without sharing data.
On the concern of data privacy, we aim to develop algorithms towards learning accurate models privately from data.
Supervised learning on subspace data which could model real data like skeleton motion.