Jongha Jon Ryu
Room 36-677
50 Vassar St
Cambridge, MA 02139
Starting in Fall 2026, I will join Penn State as a tenure-track Assistant Professor in the Department of Computer Science and Engineering, with a joint appointment in the Institute for Computational and Data Sciences, while holding the Wormley Family Early Career Professorship.
I am a Postdoctoral Associate at MIT EECS and RLE, hosted by Gregory W. Wornell. My first name is pronounced Jong-ha (Korean: 종하).
My research develops the mathematical and statistical foundations of scientific machine learning, with the goal of enabling scalable and reliable methods for scientific inference and modeling. I design algorithms for operator learning, generative modeling, and uncertainty quantification that scale to high-dimensional problems in science and engineering.
research focus
- neural spectral methods for scalable operator learning
- NestedLoRA for compact operators [ICML’24a]
- NestedOMM for positive definite operators [NeurIPS’25b]
- Koopman analysis via NestedLoRA for dynamical systems [NeurIPS’25a]
- principled methods for probabilistic and generative modeling
- Score-of-Mixture generative modeling framework [ICML’25a, Spotlight]
- unified NCE-based lens for energy-based models [ICML’25b]
- corrected InfoNCE for density-ratio estimation [ICLR’26]
- reliable techniques for uncertainty quantification
- time-uniform confidence sets for:
- bounded random variables [TransIT’24]
- bounded random vectors [ICML’24b, Spotlight]
- nonnegative random variables [COLT’25] (applied to off-policy contextual bandits)
- diagnosis of evidential deep learning [NeurIPS’24]
- time-uniform confidence sets for:
background
Before MIT, I received my Ph.D. in Electrical Engineering from UC San Diego, advised by Young-Han Kim and Sanjoy Dasgupta, supported by the Kwanjeong Educational Foundation. I hold dual B.S. degrees in Electrical and Computer Engineering and Mathematical Sciences, with a minor in Physics, from Seoul National University, graduating with the highest distinction.
news
| Jan 26, 2026 | One paper on information estimation is accepted at ICLR 2026! |
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| Dec 16, 2025 | I gave a talk on off-policy contextual bandits at the RL Theory Seminar: [video], [slides]. |
| Sep 19, 2025 | Two papers [1, 2] on parametric spectral decomposition got accepted at NeurIPS 2025! (Update on 10/17/2025: also recognized as a Top Reviewer!) |
| May 03, 2025 | Two papers, one Spotlight (top 2.6%) and one poster, accepted at ICML 2025, and one paper accepted at COLT 2025! |
| Oct 23, 2024 | In this fall, I have given talks on NeuralSVD at MERL, KAIST, KIAS, and Flatiron Institute. |