A. Feder Cooper, Ph.D.


Incoming Assistant Professor, Yale CS
Postdoctoral Researcher, Microsoft Research
Postdoctoral Affiliate, Stanford
afedercooper [AT] gmail [DOT] com || acoo [AT] microsoft [DOT] com

arxiv scholar
A. Feder Cooper

I research a variety of topics in reliable, scalable machine learning. I'm a co-founder of the GenLaw Center, a postdoctoral researcher at Microsoft Research and a postdoctoral affiliate at Stanford HAI, RegLab, and CRFM working with Percy Liang and Dan Ho. I am also a Faculty Associate at the Berkman Klein Center for Internet & Society at Harvard University. In 2026, I'll be appointed as an Assistant Professor of Computer Science at Yale University. I'll also be affiliated with the Information Society Project at Yale Law School, the Center for Algorithms, Data, and Market Design, and the Institute for Foundations of Data Science.

My research develops metrics for ML capabilities, and makes sure that we can effectively and reliably measure these metrics at scale and in practice. My contributions span uncertainty estimation, privacy and security of generative-AI systems, distributed training, hyperparameter optimization, and model selection. I also do work in tech policy and law, and spend a lot of time finding ways to effectively communicate the capabilities and limits of AI/ML to interdisciplinary audiences and the public.

In the past I interned at Microsoft Research and at Google Research, and was named a "Rising Star in EECS" by MIT. My doctoral work was generously supported by the John T. and Catherine D. MacArthur Foundation through AIPP. Prior to my research career, I worked for several years as a software engineer at companies both (really) big and (really) small. I specialized in designing, building, and monitoring large-scale backend data-processing systems.

(I am not recruiting students for Fall 2025 -- my appointment at Yale starts in 2026.)


Selected work

*First author; full list