Jongha Jon Ryu
Room 36-677
50 Vassar St
Cambridge, MA 02139
I am a Postdoctoral Associate at MIT EECS/RLE, hosted by Gregory W. Wornell.
My research develops the mathematical and statistical foundations of scientific machine learning, with the aim of enabling scalable and reliable methods for scientific inference and modeling. I translate these foundations into tools for scientific discovery and large-scale engineering systems by designing algorithms for operator learning, generative modeling, and uncertainty quantification that scale to high-dimensional scientific problems.
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 [arXiv’25]
- 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
| 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!) |
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| 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. |
| Sep 25, 2024 | One paper accepted at NeurIPS 2024! |
| Aug 21, 2024 | One paper accepted at IEEE Transactions on Information Theory! |