| Ligeng Zhu ligeng (dot) zhu [at] gmail.com (dot) com (add [plus] notAI to bypass spam filter) I am a Researcher at NVIDIA, fortunately working with Prof. Song Han. Before NVIDIA, I was at MIT (freezing Boston), Simon Fraser University (warmful Vancouver), and Zhejiang University (beautiful Hangzhou). My research current interests focus on agentic, efficient, and multi-modal LLMs. During my studies, I worked with Prof. Song Han on efficient machine learning, Prof. Brian Funt on colour vision, and Prof. Ping Tan on attribute recognition. If you find any research interests that we might share, feel free to drop me an email. I am always open to potential collaborations. Email / Google Scholar / GitHub / Résumé Latest update on Jan 20 2026. | | | News | Publications
Enable deep learning on mobile devices: Methods, systems, and applications Han Cai*, Ji Lin*, Yujun Lin*, Zhijian Liu*, Haotian Tang*, Hanrui Wang*, Ligeng Zhu*, Song Han (* denotes equal contribution, sorted in aplhabetic order) ACM Transactions on Design Automation of Electronic Systems (TODAES), 2022 Paper Distributed Training across the World Ligeng Zhu, Yao Lu, Yujun Lin, Song Han Neural Information Processing Systems (NeurIPS) Workshop on Systems for ML (MLSys), 2019 Paper / Poster Scale Synchronous SGD across the world, without loss of speed and accuracy! Media coverage: Zhihu | | Students Collaborated with | Talks & Presentations - [08/2019] AutoML for Efficient Neural Architecture Design (Slides)
@ OpenPower Summit, Polarr Tech - [08/2019] Scalable and Secure Machine Learning for Edge Devices @ Qualcomm
- [05/2019] Neural Architecture Designs @ UIUC IFP Group (Slides)
- [12/2018] Proxylessly Specialize CNN for Hardware @ IBM-MIT Watson Events (Poster)
- [01/2018] Sparsely Aggregated Convolutional Networks (Slides)
@ UBC Vision Group, Deephi Tech, Sensetime Inc - [11/2017] Invited lectures about deep learning (Lecture1, Lecture2)
@ SFU Computer Vision Course (CMPT-412), ZJU Programming Group | | Open-source Projects (Selected) My life (both academic and daily) is greatly powered by open source projects. To thank their selfless effort, I embrace open source as much as possible. Please refer to my github for a complete list of projects. | | Services Review papers for: 2025: CVPR, ICLR, ICCV 2024: CVPR, ICLR, ICML 2023: NeurIPS, CVPR, ICLR, ICML 2022: NeurIPS, CVPR 2021: NeurIPS, ICCV, ICML, ACL 2020: NeurIPS, CVPR, AAAI 2019: NeurIPS, ICCV, CVPR Journals: T-PAMI, IEEE Micro | |