Weiyang Liu

 

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The Chinese University of Hong Kong

Max Planck Institute for Intelligent Systems

About Me

I am an assistant professor of Computer Science and Engineering at The Chinese University of Hong Kong, heading the Scalable Principles for Learning and Reasoning Lab (SphereLab). I am also affiliated as a researcher with Max Planck Institute for Intelligent Systems. Previously, I did my postdoc at Max Planck Institute for Intelligent Systems with Bernhard Schölkopf. I have received a Ph.D. in Machine Learning from University of Cambridge, and a Ph.D. in Computer Science from Georgia Tech. My advisors were Adrian Weller, Bernhard Schölkopf and Le Song. I have also spent wonderful time at Google and Nvidia.

I work primarily on principled modeling of inductive bias in learning algorithms. My research seeks to understand how inductive bias affects generalization, and to develop "light-yet-sweet" learning algorithms: (i) light: conceptually simple in methodology and easy to implement in practice, (ii) sweet: having clear intuitions and non-trivial theoretical guarantees.

Over the years, I always find myself fascinated by geometric invariance, symmetry, structures and how they can benefit generalization as guiding principles. Recently, I start rethinking inductive bias for foundation models, and develop a deep interest in large language models and generative modeling across different modalities. My current research focuses on

Throughout my research journey, I have long been drawn to

I always believe in two principles in my research: (i) insight must precede application, and (ii) everything should be made as simple as possible, but not simpler. I try to follow certain research values.

    - Focus on creating novel ideas, not publishing papers
    - Follow curiosity and passion, not trends
    - Ideas are not owned, but come with debts to those who came before
    - Ideas become stronger when shared, discussed and criticized
    - Life is surprisingly short, so solve problems that interest and excite you most
    - It is good to be quick, but it is more important to be deep
    - Think like an amateur, do as an expert
    - This is not only about how to do research, but also how to live your life

SphereLab

I take great pleasure to work with a group of highly motivated students. Interested in joining? Make sure to read this first.

     - Thanks for your interest in joining us! See our group's recent focus.
     - I am always looking for motivated Postdoc, PhD students (2027 incoming only) and visitors/interns.
     - Due to the high volume of emails, I apologize if I haven't responded to your email.
     - Solid math/engineering and good communication skills are necessary.
     - NO need to email me. Fill out this form and directly apply here (and mention my name).

Postdocs

    - Siyuan Wang

PhD students

    - Zeju Qiu (with Bernhard Schölkopf)

    - He Guo

    - Yangyi Huang

    - Kexuan Shi

    - Zhouliang Yu

    - Haoquan Zhang

    - Yunlong Deng

    - Hanqing Gao

    - Yifan Guo

    - Hanxuan Li

    - Luocheng Liang

    - Zihang Liu

    - Siyuan Ma (with Yandong Wen)

    - Zihao Wang

    - Sihan Yang

    - Xinlin Zhuang

Affiliates

    - Tim Z. Xiao

    - Jiacheng Chen

    - Xinyue Xu

    - Xianliang Li

    - Jiale Kang

    - Lijun Cai

Alumni

     - Jinxiu Liu (2025-2026): research intern
         - B.S. student at South China University of Technology
         - Next: Ph.D. offers from Georgia Tech, UPenn, JHU, UCSD
     - Yamei Chen (2024): research intern
         - M.S. student at Technical University of Munich
     - Gege Gao (2023 - 2024): research intern
         - Ph.D. student at University of Tübingen
     - Zeju Qiu (2022 - 2024): master thesis student
         - M.S. at Technical University of Munich
         - Next: Ph.D. student in my group
     - Longhui Yu (2022 - 2024): research intern
         - M.S. at Peking University, Ph.D. offers from Caltech, University of Toronto
         - Next: Researcher at Kimi AI
     - Zhen Liu (2017 - 2019, 2022 - 2024): research intern
         - M.S. at Georgia Tech → Ph.D. at Mila & University of Montreal
         - Next: Assistant Professor at The Chinese University of Hong Kong, Shenzhen

Recent Highlight

Orbit: Stable and Efficient Reinforcement Learning for Trillion-Parameter LLMs
Zeju Qiu*, Le Chen*, Lixin Liu*, Tim Z. Xiao, Yao Feng, Yangyi Huang, Zhen Liu, Han Shi, Yandong Wen, Zhouliang Yu, Bernhard Schölkopf, Weiyang Liu
Open-source Project
code | blog | bib

  @article{spherelab2026orbit,
      author = {Qiu, Zeju and Chen, Le and Liu, Lixin and Xiao, Tim Z. and Feng, Yao and Huang, Yangyi and Liu, Zhen and Shi, Han
        and Wen, Yandong and Yu, Zhouliang and Sch{\"o}lkopf, Bernhard and Liu, Weiyang},
      title={Orbit: Stable and Efficient Reinforcement Learning for Trillion-Parameter LLMs},
      journal={SphereLab Blog},
      year={2026},
      note={https://spherelab.ai/orbit}}

PEFT-Arena: Understanding Parameter-Efficient Finetuning from a Stability-Plasticity Perspective
Yangyi Huang*, Ruotian Peng*, Zeju Qiu, Jiale Kang, Yandong Wen, Bernhard Schölkopf, Weiyang Liu
Preprint 2026
arXiv | code | project | bib

  @article{huang2026peftarena,
      title={PEFT-Arena: Understanding Parameter-Efficient Finetuning from a Stability-Plasticity Perspective},
      author={Huang, Yangyi and Peng, Ruotian and Qiu, Zeju and Kang, Jiale and Wen, Yandong and Sch\"olkopf, Bernhard and Liu, Weiyang},
      journal={arXiv preprint arXiv:2605.28819},
      year={2026}}

Pion: A Spectrum-Preserving Optimizer via Orthogonal Equivalence Transformation
Kexuan Shi*, Hanxuan Li*, Zeju Qiu, Yandong Wen, Simon Buchholz, Weiyang Liu
Preprint 2026
arXiv | code | project | bib

  @article{shi2026pion,
      title={Pion: A Spectrum-Preserving Optimizer via Orthogonal Equivalence Transformation},
      author={Shi, Kexuan and Li, Hanxuan and Qiu, Zeju and Wen, Yandong and Buchholz, Simon and Liu, Weiyang},
      journal={arXiv preprint arXiv:2605.12492},
      year={2026}}

XYZFlow: Scaling Multidimensional Shortcut Flows for Efficient Generative Modeling
Jinxiu Liu*, Xuanming Liu*, Kangfu Mei, Yandong Wen, Weiyang Liu
ICML 2026
arXiv | code | project | bib

  @InProceedings{liu2026xyzflow,
      title={XYZFlow: Scaling Multidimensional Shortcut Flows for Efficient Generative Modeling},
      author={Liu, Jinxiu and Liu, Xuanming and Mei, Kangfu and Wen, Yandong and Liu, Weiyang},
      booktitle={ICML},
      year={2026}}

POET-X: Memory-efficient LLM Training by Scaling Orthogonal Transformation
Zeju Qiu, Lixin Liu, Adrian Weller, Han Shi, Weiyang Liu
ICML 2026   Oral
arXiv | code | project | bib

  @InProceedings{qiu2026poetx,
      title={POET-X: Memory-efficient LLM Training by Scaling Orthogonal Transformation},
      author={Qiu, Zeju and Liu, Lixin and Weller, Adrian and Shi, Han and Liu, Weiyang},
      booktitle={ICML},
      year={2026}}

Orthogonal Model Merging
Sihan Yang, Kexuan Shi, Weiyang Liu
ICML 2026
arXiv | code | project | bib

  @InProceedings{yang2026orthomerge,
      title={Orthogonal Model Merging},
      author={Yang, Sihan and Shi, Kexuan and Liu, Weiyang},
      booktitle={ICML},
      year={2026}}

Streaming Autoregressive Video Generation via Diagonal Distillation
Jinxiu Liu*, Xuanming Liu*, Kangfu Mei, Yandong Wen, Ming-Hsuan Yang, Weiyang Liu
ICLR 2026
arXiv | code | project | bib

  @InProceedings{liu2026diagdistill,
      title={Streaming Autoregressive Video Generation via Diagonal Distillation},
      author={Liu, Jinxiu and Liu, Xuanming and Mei, Kangfu and Wen, Yandong and Yang, Ming-Hsuan and Liu, Weiyang},
      booktitle={ICLR},
      year={2026}}

Publication

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