Aryan Mokhtari
- Assistant Professor, Dept. of Electrical & Computer Engineering (ECE), UT Austin
- Jack Kilby/Texas Instruments Endowed Faculty Fellowship in Computer Engineering
- Affiliated with:
- Google Scholar / Twitter / CV
My current research focuses on the theory and applications of convex and non-convex optimization in large-scale machine learning and data science problems.
If you are interested in working with me: Please apply to the ECE graduate program and mention my name in your application. If you are already at UT Austin, please send me an email and we can arrange a time to meet.
Selected Recent News
-
- Apr. ’23: ECE Department Junior Faculty Excellence in Teaching Award.
- Jan. ’23: Paper at AISTATS 2023: “A Conditional Gradient-based Method for Simple Bilevel Optimization with Convex Lower-level Problem”
- Nov. ’22: Survey on “Conditional Gradient Methods”. The website for our monograph here.
- Oct. ’22: New talk at TILOS & OPTML++ Seminar Series at MIT on “The Power of Adaptivity in Representation Learning: From Meta-Learning to Federated Learning” at [Slides] [Video]
***(For the full list of news please check the News tab.)
Support
My research is supported by NSF Grants CCF-2007668 and ECCS-2127697, an ARO Early Career Program (ECP) Award, the Machine Learning Laboratory at UT Austin, and the NSF AI Institutes IFML and AI-EDGE.