Shuchen Xue
Shuchen Xue is a Research Scientist in the Efficient AI team at NVIDIA Research, working with Dr. Enze Xie and Prof. Song Han. His research lies at the intersection of generative model theory, efficient training and inference, and reinforcement learning for generative models.
He received his Ph.D. in Statistics from the University of Chinese Academy of Sciences (UCAS) in 2026, with research conducted at the Academy of Mathematics and Systems Science (AMSS), Chinese Academy of Sciences (CAS), advised by Prof. Zhi-Ming Ma. He received his B.S. degree in Mathematics from UCAS in 2021.
Before joining NVIDIA, he was a research intern at ByteDance Seed, working with Tao Yang and Yuxin Fang; at Adobe Research, working with Chongjian Ge; and at Huawei Noah’s Ark Lab, working with Mingyang Yi, Tianyang Hu, and Zhaoqiang Liu. He was also a visiting student at Columbia University.
news
| May 25, 2026 | Started as a Research Scientist at NVIDIA Research. |
|---|---|
| May 01, 2026 | Three papers were accepted by ICML 2026. One paper was selected as an Oral Presentation. |
| Jan 26, 2026 | Three papers were accepted by ICLR 2026. |
| Nov 10, 2025 | Thrilled to begin my internship at Bytedance Seed. |
| Sep 29, 2025 | Advantage Weighted Matching, a principled RL method for diffusion and flow models, is released. Check out our paper and code. |
| Jul 23, 2025 | One paper was selected as Highlight by ICCV 2025. |
| Jul 07, 2025 | One paper was selected as Oral Presentation by ICML 2025 (ES-FoMo workshop) (Top 3.42%). |
| Jun 25, 2025 | Two papers were accepted by ICCV 2025. |
| Jun 16, 2025 | Thrilled to begin my internship at Adobe Research. |
| May 01, 2025 | One paper was accepted by ICML 2025. |
| Jan 22, 2025 | One paper was accepted by ICLR 2025. |
| May 01, 2024 | One paper was accepted by ICML 2024. |
| Feb 26, 2024 | One paper was accepted by CVPR 2024. |
| Sep 21, 2023 | One paper was accepted by NeurIPS 2023. |
selected publications
- ICML
Oral Any-Order GPT as Masked Diffusion Model: Decoupling Formulation and ArchitectureInternational Conference on Machine Learning (Oral Presentation, Top 0.70%), 2026Abridged in the ICML 2025 ES-FoMo workshop Oral Presentation (Top 3.42%)
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