Cambridge Yang
My research interests lie in the theoretical formulation and practical understandings of AI systems, integrating engineering, formal methods, and machine learning. I am particularly motivated by building intelligent systems that are safe, reliable, and interpretable, and by exploring how rigorous theory can be combined with empirical research to achieve practical impact.
Most recently, I was a Research Scientist at Basis. I completed my PhD in Computer Science at MIT, advised by Michael Carbin. My graduate work focused on a theoretical framework for reinforcement-learning objectives beyond conventional rewards. At MIT, I have also worked on probabilistic programming, polyhedral-model compilers, probabilistic inference, and neural-based compilers. I hold a BS in EECS from UC Berkeley, where I worked with Michael Lustig on accelerating numerical computations and with Koushik Sen and Sanjit Seshia on program verification for parallel systems.
Outside of research, I enjoy building things — from 3D printers to home automation projects — including a hydroponics system for growing lettuce.
latest posts
selected publications
- NeurIPSCompiler Auto-vectorization with Imitation LearningIn Advances in Neural Information Processing Systems, 2019
teaching
I was teaching assistants for the following classes:
- [MIT 6.4110/16.420] Representation, Inference, and Reasoning in AI (Fall 22).
- [Berkeley CS164] Programming Languages and Compilers (Spring 16, Spring 17).