Jingguang Li

Ph.D. Student from Cho Chun Shik Graduate School of Mobility, Korea Advanced Institute of Science and Technology

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Years may wrinkle the skin,

but to give up enthusiasm wrinkles the soul.

Hi! 👋 My name is Jingguang Li (李景光, 이경광). I am a Ph.D. student at the Cho Chun Shik Graduate School of Mobility, Korea Advanced Institute of Science and Technology, working under the supervision of Dr. Heye Huang.

I earned my M.Sc. in Artificial Intelligence in 2026 from the State Key Laboratory of IoTSC, University of Macau, under the guidance of Prof. Chengzhong Xu and Prof. Li Li. Before this, I received my B.Eng. in Software Engineering from Harbin Institute of Technology in 2024.

I am actively open to research discussions and industry connections! Feel free to email me if you are interested in collaborating 😊

My current research centers on Safety-Critical Embodied Systems Powered by LLM Agents. I aim to build safe, adaptive, and trustworthy embodied systems—such as autonomous vehicles and robots—that can perceive risk, reason under uncertainty, and make reliable decisions in complex, long-tail real-world scenarios. To this end, I explore memory-augmented and model-driven LLM/VLM agents for embodied intelligence and safety mechanisms for risk perception, cognition, and decision-making in Physical AI and Autonomous Driving.

Previously, my work focused on natural language processing and machine learning, with a particular emphasis on the efficient post-training of large language models (LLMs) under critical memory, communication, and compute constraints, as well as mitigating hallucinations in multimodal LLMs to address perceptual deficiencies. These foundations in efficient and reliable LLMs now underpin my move toward trustworthy embodied agents.

news

May 27, 2026 Honored with the Best of the Department of Computer and Information Science from the University of Macau
May 18, 2026 Our paper ChainFed is selected as Oral by ACL Main Conference 🎉
May 01, 2026 Our paper SmartFed is accepted by ICML 2026 as spotlight 🎉
Apr 29, 2026 Our paper Memory-Decoupled Layer-Wise Fine-Tuning for Efficient On-Device LLM Adaptation is accepted by ACM Symposium on Cloud Computing 2026 🎉
Apr 06, 2026 Our paper ChainFed is accepted by ACL Main Conference 🎉

selected publications

  1. ICML
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    Elastic Mixture of Rank-Wise Experts for Knowledge Reuse in Federated Fine-Tuning
    Yebo Wu*, Jingguang Li*, Zhijiang Guo, and 1 more author
    In ICML (Spotlight), 2026
  2. ACL
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    Beyond End-to-End: Dynamic Chain Optimization for Private LLM Adaptation on the Edge
    Yebo Wu*, Jingguang Li*, Chunlin Tian, and 3 more authors
    In ACL (Oral), 2026
  3. ICLR
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    Learning Like Humans: Resource-Efficient Federated Fine-Tuning through Cognitive Developmental Stages
    Yebo Wu*, Jingguang Li*, Zhijiang Guo, and 1 more author
    In ICLR, 2026
  4. TMLR
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    A Survey on Federated Fine-Tuning of Large Language Models
    Yebo Wu, Chunlin Tian, Jingguang Li, and 7 more authors
    In TMLR, 2026