Zhi Wang
|
Associate Professor, Nanjing University
Department of Control Science and Intelligent Engineering
22 Hankou Road, Gulou District, Nanjing, China
E-mail: zhiwang@nju.edu.cn
Reinforcement Learning, Meta / Offline / Multi-Agent RL, Robot Learning
|
About me
I am now an Associate Professor in Nanjing University. I received the Ph.D. degree (Advisor: Professor Han-Xiong Li) from City University of Hong Kong and the bachelor's degree from Nanjing University.
I was a visiting scholar at University of New South Wales (Visiting Advisor: Professor Daoyi Dong) and Institute of Automation, Chinese Academy of Sciences (Visiting Advisors: Professor Yuanheng Zhu, Dongbin Zhao).
My research interests include reinforcement learning (RL) algorithms and their applications on robot learning.
Specifically, I work on how learning algorithms can scale RL agents to (i) dynamic environments, (ii) offline settings, and (iii) multi-agent systems, allowing them to autonomously adapt to (i) non-stationary task distributions, (ii) non-interactive scenarios, and (iii) cooperative or competitive task assignments in real-world domains.
This includes a wide range of topics such as (i) meta-RL, lifelong/continual RL, transfer RL, (ii) offline RL, large models for RL, and (iii) multi-agent RL.
Academic Services
Associate Editor
Special Sessions, IEEE International Conference on Systems, Man, and Cybernetics (SMC), 2023, 2022, & 2021
Special Sessions, IEEE International Conference on Networking, Sensing, and Control (ICNSC), 2020
Reviewer
Journals: IEEE TPAMI, TNNLS, IEEE TCYB, IEEE TSYS, IEEE-ASME TMECH, IEEE-CAA JAS
Conferences: CVPR, AAAI, ECAI
Invited Talks
The 4th Conference on Distributed Artificial Intelligence (DAI), Lifelong reinforcement learning for dynamic environments, 2022.12
Institute of Automation, Chinese Academy of Sciences, Lifelong reinforcement learning for dynamic environments, 2022.12
Tongji University, Lifelong reinforcement learning for dynamic environments, 2022.12
University of Science and Technology of China, <Deep Reinforcement Learning>, Summer Course, Instructor, 2022.07
University of Electronic Science and Technology of China, Incremental reinforcement learning for dynamic environments, 2020.12
University of Science and Technology of China, Incremental reinforcement learning for dynamic environments, 2020.12
University of New South Wales, Incremental reinforcement learning for dynamic environments, 2019.04
Teaching
<Deep Reinforcement Learning>, for postgraduates
<Digital Circuits>, for undergraduates
|