Postdoctoral Fellow
MIT Computational Biology Lab (Kellis Lab)
Computer Science and Artificial Intelligence Laboratory (CSAIL)
Massachusetts Institute of Technology (MIT)
Broad Institute of MIT and Harvard
Hello! I'm a postdoc at MIT CSAIL and the Broad Institute, advised by Manolis Kellis. I also work closely with Rich Caruana at MSR. I completed my PhD in Computer Science and MS in Machine Learning at Carnegie Mellon University, advised by Eric Xing. I received my BS in Computer Science and BS in Mathematics from Penn State in 2015.
I develop machine learning methods to understand complex diseases and advance precision medicine. See here for more details.
I am on the 2023-2024 academic job market.
Contact
Email Address:
Office: D-528 Stata Center, MIT
News
New talk: Excited to present "Contextualized learning for adaptive yet persistent AI in biomedicine" at NYU, UC San Diego, and Dartmouth!
New talk: Excited to present "Contextualized learning for adaptive yet persistent AI in biomedicine" at University of Southern California, University of Utah, ETH Zurich, and Purdue University!
New talk: Excited to present "Contextualized learning for adaptive yet persistent AI in biomedicine" at Duke University, University of Wisconsin, Penn State University, and University of Colorado!
New talk: Excited to present "Beyond Zero-to-One" at Mt Sinai's AI and Human Health Seminar Series!
New preprint: Our study of Contextualized Networks and implications in cancer is now available on Biorxiv!
New preprint: Contextualized Machine Learning is now available on Arxiv!
Research
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Context-Adaptive Systems (Meta- and Contextualized Learning): How do we build AI agents that adapt to context?
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Prior Knowledge as Context: Connecting Statistical Inference to Foundation Models
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Interpretable Representations of Complex and Nonlinear Systems: How can we build models that summarize complicated patterns in interpretable ways?
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Clinical Tools for Personalized Medicine: How can we analyze real-world evidence to improve care for every patient?
Popular Resources
- Blog posts. Subscribe here.
- Curated list of CompBio/ML datasets.
- Countdown page to track CompBio/ML conference submission deadlines. Open-source on [Github]
- DeepDoggo: Learning the Answer to "Who's a Good Dog?"