Johns Hopkins University Baltimore, MD
Ph.D. in Computer Science, Advisors: Vladimir Braverman, Alex Szalay; Ph.D. in Physics & Astronomy, Advisor: Alex Szalay; MS.E. in Computer Science (GPA 4.0/4.0)
Ph.D.
University of California, Los Angeles
Dr. Lin Yang is currently an Associate Professor (tenured) in the Electrical and Computer Engineering Department and Computer Science Department at the University of California, Los Angeles.
His research focuses on the foundations of modern machine learning and data science. He develops fast algorithms with provable guarantees, especially in reinforcement learning, large language model acceleration, compression, and quantization, non-convex optimization, and streaming algorithms. He is particularly interested in safe and efficient decision-making under uncertainty, bridging theoretical insights with real-world impact in areas such as healthcare, robotics, and scientific discovery.
Dr. Yang is a recipient of an Amazon Faculty Award, the Simons Research Fellowship, Dean Robert H. Roy Fellowship, and the JHU MINDS Best Dissertation Award. Prior to joining UCLA, he was a postdoctoral researcher at Princeton University working with Prof. Mengdi Wang. He received dual Ph.D. degrees in Computer Science and in Physics & Astronomy from Johns Hopkins University, advised by Alex Szalay and Vova Braverman.
[Last updated Jun. 2026]
I study the foundations and systems principles behind reliable learning and decision-making. My recent interests connect reinforcement learning, agentic AI frameworks, LLM fine-tuning, and LLM compression and quantization.
Reinforcement learningprovable sample efficiency, safe exploration, and robust decision-making under uncertainty
Agentic frameworksAI agents that plan, use tools, remember context, and learn from feedback
LLM fine-tuningtask adaptation while preserving reliability, efficiency, and evaluation rigor
LLM compression and quantizationlower memory and compute costs for faster, broader deployment
Featured work: Winning Gold at IMO 2025 with a Model-Agnostic Verification-and-Refinement Pipeline, with Yichen Huang. We study how verification and iterative refinement can turn strong general-purpose LLMs into reliable mathematical reasoning agents.
Publication records: Google Scholar / DBLP
Senior Area ChairNeurIPS 2026
Area ChairICLR, AISTATS, ICML, NeurIPS
Senior Program CommitteeAAAI
Conference ReviewingAAAI, ICML, NeurIPS, STOC, FOCS, COLT, PODS, ITCS, ACML, AISTATS, ICALP, RANDOM, ESA, LATIN, KAIS, FSTTCS
Journal ReviewingTheoretical Computer Science, QIC, JCSS, OPRE, TMLR
Ph.D. in Computer Science, Advisors: Vladimir Braverman, Alex Szalay; Ph.D. in Physics & Astronomy, Advisor: Alex Szalay; MS.E. in Computer Science (GPA 4.0/4.0)
B.S. in Math & Physics with High Honors