Zhi Wang 

Associate Professor
Tsinghua Shenzhen International Graduate School
Tsinghua University

Room 1708, Information Building
Tsinghua Campus, University Town of Shenzhen

Phone: +86-755-26031113
Email: wangzhi@sz.tsinghua.edu.cn

Zhi Wang

🔬Research

With the rapid rise of large-scale pretrained models and autonomous intelligence, AI is increasingly moving from the digital realm into the physical world, catalyzing a new industrial transformation centered on industrial foundation models and embodied industrial intelligence. At mmlab@SIGS, we focus on cutting-edge interdisciplinary research at the intersection of autonomous multimedia intelligence, distributed machine learning, and industrial foundation models with embodied intelligence. Targeting real-world industrial settings, we investigate end-to-end intelligent systems spanning data perception, knowledge modeling, and decision-to-action execution. Building on our long-standing theoretical and technical foundations in large-scale networked multimedia systems, we extend the established framework of “cross-domain perception, integrated scheduling, and cloud–edge collaboration” into a new industrial paradigm characterized by “autonomous perception, intelligent generation, and self-organizing topology,” with the goal of enabling tightly integrated “perception–cognition–execution” industrial intelligence.

The group has achieved internationally recognized results in related areas, including multiple national and provincial-level science and technology awards, high-impact publications in leading venues such as NeurIPS, SIGCOMM, MobiCom, CVPR/ICCV, and ACM Multimedia, and demonstrated academic influence. Several core technologies have been deployed in mission-critical applications at major enterprises and further advanced through technology transfer and startup incubation. Supported by Tsinghua SIGS research platforms and strong computational resources, we provide students with a complete research pipeline covering large-model training, simulation-based validation, and practical industrial deployment. Through deep industry–academia collaboration and a dual-mentorship practice system, we aim to cultivate future leaders with both rigorous theoretical depth and strong engineering capabilities, and we welcome motivated students eager to pursue frontier research with real-world impact in industrial foundation models, embodied intelligence, and distributed learning.

👥Research Groups

🎓Join Us

We are actively recruiting!

We are looking for Ph.D. and Master students, Postdocs, and Undergraduate Interns with strong interests and motivation to work on frontier research topics including:

Candidates with hands-on systems building abilities and mathematical background are highly encouraged.

🏆Selected Honors and Awards  full list →

📚Selected Publications (2023–)  full list →

📖Teaching & Education

Courses

Textbook

Teaching Awards

📜Selected Patents  full list →

  1. 模型优化方法、电子设备以及计算机可读存储介质; 2026(SIGS A级核心高价值专利)
  2. 基于强化学习的动态多媒体数据部署方法; 2025(SIGS A级核心高价值专利)
  3. 一种用于生成图像的扩散模型混合精度量化方法; 2025
  4. 一种用于边缘设备的无需重训练量化领域自适应方法; 2025
  5. 基于强化学习的联合决策方法及装置; 2023
  6. 一种基于强化学习的图片动态自适应压缩方法; 2021
  7. 基于数据分布的机器深度学习方法; 2020
  8. 一种基于迁移学习的车流量预测方法和系统; 2022