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Chenxin Li | 李宸鑫
Hi! I'm Chenxin "Jason" Li, a final-year Ph.D. candidate at The Chinese University of Hong Kong (CUHK).
I work on multimodal LLM, reasoning/agent via RL, and world model.
I am currently interning at ByteDance Seed, scaling VLM via reasoning/agentic RL.
I built hands-on experience in (i) scaling multimodal models (data, architecture, training, benchmarking) and (ii) post-training via RL (reasoning, multi-turn agent, reward modeling and shaping). Previously, I did internships at Tencent AI, Ant Ling and Hedra AI etc., and research visits with UT Austin and UMD.
I anticipate graduating in the summer of 2026 and am interested in industrial positions (Profile). Please feel free to reach out via email (chenxinli@link.cuhk.edu.hk) or WeChat (jasonchenxinli).
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Selected Publications
* Equal contribution, † Project Leader, ‡ Corresponding author
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Selected Experience
- ByteDance Seed: VLM scaling via reasoning/agentic RL
- Tencent AI: World model simulation via Blender agent
- Ant Ling: Long-context memory RL, hallucination verifiers
- Hedra AI: Omnimodal (audio, image, pose) injection for video generation
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ScholaGO (Co-founder): LLM-backend Education Startup
Co-founded ScholaGO Education Technology Company Limited (学旅通教育科技有限公司) to build LLM-powered education products that turn static content into immersive, interactive, multimodal learning experiences. Grateful to receiving funding from HKSTP, HK Tech 300, and Alibaba Cloud.
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Professional Activities
- Workshop Organizer: AIM-FM: Advancements In Foundation Models Towards Intelligent Agents (NeurIPS 2024)
- Talks: "UKAN" at VALSE Summit (Jun 2025) and DAMTP, University of Cambridge (Jul 2024)
- Conference Reviewer: ICLR, NeurIPS, ICML, CVPR, ICCV, ECCV, EMNLP, AAAI, ACM MM, MICCAI, BIBM
- Journal Reviewer: Nature Machine Intelligence, PAMI, TIP, DMLR, PR, TNNLS
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Beyond Work
Reading: I dedicate substantial time to reading, especially history, philosophy, and sociology, which shapes my perspective on what AGI should be from first principles.
Investment: Investment is real-world RL: returns provide fast feedback to iteratively improve individual decision policy. Recently, I am fascinated by the idea that how to (i) build benchmarks for LLMs that quantify real-world investment utility (in the similar spirit of GPT-5.2's gdpeval benchmark), and (ii) extending quantitative financial metrics to more general event and trend forecasting.
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