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Ryan Teehan
About Me
Interests
- Generative Models
- Language as a Knowledge Representation
- Program Synthesis
- Compositionality
- Emergence and Self-Organization
- Reinforcement Learning
Education
- MS in Computer Science, 2018
The University of Chicago - BA in Mathematics, 2018
The University of Chicago
I am a current PhD student at NYU’s Center for Data Science, advised by Professor Mengye Ren. I am broadly interested in questions related to abstraction and reasoning in deep learning models. Prior to my PhD, I was involved in open-source deep learning research, contributing to Eleuther AI and serving as the Co-Chair of the Interpretability and Visualization Working Group in the HuggingFace BigScience program.