Dr. Daniel Muthukrishna

Postdoctoral Associate

Primary DLC

MIT Kavli Institute for Astrophysics and Space Research

MIT Room: 37-420

Research Summary

Dr. Muthukrishna's research primarily focuses on leveraging advanced machine-learning techniques to analyze and interpret astronomical data. His work ranges from modeling supernovae to classifying exoplanets using deep learning and Bayesian methods. At MIT, he is a key member of the Transiting Exoplanet Survey Satellite (TESS) team, where he leads the effort to classify exoplanets using neural networks. His current research involves applying state-of-the-art machine learning approaches, including diffusion models, transformers, and recurrent neural networks, to better understand the universe.

In addition to his research, Muthukrishna lectures a public course on “Data-Driven Astronomy: Machine Learning and Statistics for Modern Astrophysics” and supervises both graduate and undergraduate students. He regularly presents his work at academic conferences and public science events, contributing to the dissemination of knowledge in the rapidly evolving intersection of astrophysics and machine learning.

Dr. Muthukrishna's work aims to advance our understanding of the cosmos through innovative applications of artificial intelligence, positioning him at the forefront of modern astrophysical and machine learning research.

Recent Work