I'm a fourth-year PhD student at MIT, advised by Phillip Isola. I am fortunate to be supported by the NSF Graduate Research Fellowship, and previously by the MIT HDTV Grand Alliance Fellowship. I'm broadly interested in synthetic data and self-improvement in deep learning.
Previously I got my bachelors in Computer Science and in Mathematics at MIT, working at the MIT Center for Brains, Minds, and Machines with Pawan Sinha and Xavier Boix. In the past I've also been fortunate to intern at at Meta AI, Google DeepMind, Apple, and D. E. Shaw. In my free time I enjoy hiking, running, and tennis.
* indicates equal contribution
|
|
Shobhita Sundaram, John Quan, Ariel Kwiatkowski, Kartik Ahuja, Yann Ollivier, Julia Kempe Preprint. Paper Blog Post |
|
|
Sharut Gupta, Shobhita Sundaram, Chenyu Wang, Stefanie Jegelka, Phillip Isola ICLR, 2026. Paper Website Code |
|
|
Netanel Y. Tamir*, Shir Amir*, Ranel Itzhaky, Noam Atia, Shobhita Sundaram, Stephanie Fu, Ron Sokolovsky, Phillip Isola, Tali Dekel, Richard Zhang, Miriam Farber CVPR Computer Vision for Metaverse Workshop, 2025. Paper |
|
|
Shobhita Sundaram*, Julia Chae*, Yonglong Tian, Sara Beery§, Phillip Isola§. ICLR, 2025. Paper Website Code Data |
|
|
Shobhita Sundaram*, Stephanie Fu*, Lukas Muttenthaler, Netanel Tamir, Lucy Chai, Simon Kornblith, Trevor Darrell, Phillip Isola. NeurIPS, 2024. Paper Website Code |
|
Stephanie Fu*, Netanel Tamir*, Shobhita Sundaram*, Lucy Chai, Richard Zhang, Tali Dekel, Phillip Isola. NeurIPS, 2023 (spotlight). Paper Website Code |
|
|
Shobhita Sundaram*, Darius Sinha*, Matthew Groth, Tomotake Sasaki, Xavier Boix Scientific Reports, 2022. Workshop on Generalization Beyond the Training Distribution in Brains and Machines, ICLR 2021. Paper Code Poster |
|
Shobhita Sundaram*, Neha Hulkund* Workshop on Applied Data Science for Healthcare, KDD 2021 |
|
|
Kimberly Villalobos*, Vilim Stih*, Amineh Ahmadinejad*, Shobhita Sundaram, Jamell Dozier, Andrew Francl, Frederico Azevedo, Tomotake Sasaki, Xavier Boix Neural Computation, 2021 |