Hang Guo (郭航)

PhD student@EPFL

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Hi, there 👋

I am currently a PhD student in Computer Science at EPFL, advised by Prof. Maria Brbić. I also work closely with Prof. Yawei Li at NTU and Prof. Tao Dai at SZU. Prior to that, I received my master’s degree from Tsinghua University under the supervision of Prof. Shu-Tao Xia, and my dual bachelor’s degrees in Engineering and Economics from Nankai University.


My research focuses on building generalizable and efficient AI systems for real world. Specifically, generalizability refers to developing AI models and training paradigms that can robustly adapt to diverse tasks, domains, and data distributions beyond their training distribution, moving toward more flexible and general intelligence. Efficiency focuses on reducing the computational, memory, latency, and energy costs of AI systems, enabling practical deployment across both cloud and edge environments. I believe these two directions should be jointly optimized, since future AI systems must not only generalize well across diverse scenarios, but also remain sustainable and accessible in eage applications.

My current research interests include:

  • Efficient AI. My work covers a broad range of model compression and acceleration techniques for LLMs and Diffusion models, including efficient model design (MambaIR family), pruning (FastVAR), caching (Dummy-Forcing), quantization (OBR), parameter-efficient adaptation (AdaptIR), knowledge distillation (KD-LTR, CALF), and tensor decomposition (IntLoRA). All the above-mentioned works are my first-author works published at top-tier CV&ML conferences.

  • AI for Science. I am also interested in generalizable and efficient AI systems for biology. Biological data presents unique challenges: diverse omics modalities require strong generalization across heterogeneous sources, while ultra-long sequences such as whole genomes demand efficient algorithms. My recent research explores the regulatory relationships among DNA, RNA, and proteins along the central dogma of molecular biology, aiming to develop generalizable and efficient virtual cell models that unify different omics modalities. My long-term goal is to build AI systems that can drive future biological discovery and biomedical research.

Looking for academic collaborations!
I am always open to potential collaborations on the above research topics, and welcome motivated students to work with me on projects targeting top-tier conferences. Feel free to reach out 🤗

Contact

email: cshguo[at]gmail[dot]com

News

June 2026 I graduated from Tsinghua University and was honored as the Outstanding Master Graduate.
May 2026 My master's work was selected as the Outstanding Master Thesis at Tsinghua University.
Feb 2026 I served as the co-organizer of the CVPR 2026 NTIRE Workshop on Efficient Super-Resolution, Image Denoising, and AI-Flash Portrait tracks.
Jan 25, 2026 The LLM inference speedup work OBR during my internship at ETH Zürich has been accepted by ICLR 2026!
June 26, 2025 Our FastVAR has been accepted by ICCV25🥳.
June 03, 2025 I start my summer internship at EPFL in Lausanne:D
May 02, 2025 Our IntLoRA has been accepted by ICML2025! Check our paper here :D
Apr 29, 2025 Two papers have been accepted by IJCAI2025.
Mar 28, 2025 We release FastVAR, a new cached token pruning method for 2.7x faster Visual Auto-regressive Modeling.
Feb 27, 2025 Congrats! Our MambaIRv2 has been accepted by CVPR2025!
Feb 08, 2025 We are organizing the CVPR25 Workshop NTIRE 2025 Challenge on Image Denosing.
Feb 07, 2025 We are organizing the CVPR25 Workshop NTIRE 2025 Challenge on Efficient Super-Resolution.
Dec 22, 2024 Our work CALF, a LLM-based time series foundation models, has been accepted by AAAI2025!
Nov 30, 2024 Big News! MambaIRv2 has been Arxived with huge performance leap! Check our paper here.
Nov 15, 2024 Congratulations! I have been honored as the Top Reviewer by NeurIPS24 PCs!
Oct 15, 2024 We release IntLoRA, which allows LoRA tuning on quantized models. Check our paper here :D
Sep 30, 2024 Two first-author works, AdaptIR and ReFIR, have been accepted by NeurIPS2024!
Jul 03, 2024 Important! We have released the Awesome-Mamba-in-LLV, collecting recent Mamba-based methods!
Jul 01, 2024 The first Mamba-based image restoration backbone, MambaIR, has been accepted by ECCV2024!
Aug 04, 2023 One knowledge distillation based OCR for real-world degraded scene was accepted by MM2023!
Apr 15, 2023 One text image super-resolution work has been accepted by IJCAI2023!

Selected Publications

  1. arXiv
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    Efficient Autoregressive Video Diffusion with Dummy Head
    Hang Guo ,  Zhaoyang Jia ,  Jiahao Li , and 5 more authors
    arXiv preprint arXiv:2601.20499, 2026
  2. ICLR
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    Optimal Brain Restoration for Joint Quantization and Sparsification of LLMs
    Hang Guo ,  Yawei Li ,  and  Luca Benini
    The International Conference on Learning Representations (ICLR), 2026
  3. ICCV
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    FastVAR: Linear Visual Autoregressive Modeling via Cached Token Pruning
    Hang Guo ,  Yawei Li ,  Taolin Zhang , and 4 more authors
    The IEEE International Conference on Computer Vision (ICCV), 2025
  4. CVPR
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    MambaIRv2: Attentive State Space Restoration
    Hang Guo* ,  Yong Guo* ,  Yaohua Zha , and 5 more authors
    The IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 2025
  5. ICML
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    IntLoRA: Integral Low-rank Adaptation of Quantized Diffusion Models
    Hang Guo ,  Yawei Li ,  Tao Dai , and 2 more authors
    The International Conference on Machine Learning (ICML), 2025
  6. NeurIPS
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    Parameter Efficient Adaptation for Image Restoration with Heterogeneous Mixture-of-Experts
    Hang Guo ,  Tao Dai ,  Yuanchao Bai , and 4 more authors
    Conference on Neural Information Processing Systems (NeurIPS), 2024
  7. NeurIPS
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    ReFIR: Grounding Large Restoration Models with Retrieval Augmentation
    Hang Guo ,  Tao Dai ,  Zhihao Ouyang , and 4 more authors
    Conference on Neural Information Processing Systems (NeurIPS), 2024
  8. ECCV
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    MambaIR: A Simple Baseline for Image Restoration with State-Space Model
    Hang Guo* ,  Jinmin Li* ,  Tao Dai , and 3 more authors
    Proceedings of the European Conference on Computer Vision (ECCV), 2024
  9. AAAI
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    Taming Pre-trained LLMs for Generalised Time Series Forecasting via Cross-modal Knowledge Distillation
    Peiyuan Liu* ,  Hang Guo* ,  Tao Dai , and 5 more authors
    Association for the Advancement of Artificial Intelligence (AAAI), 2025