Personal profile
Personal profile
Professor Chi Harold Liu receives a Ph.D. degree in Electronic Engineering from Imperial College, UK in 2010, and a B.Eng. degree in Electronic and Information Engineering from Tsinghua University, China in 2006.
He is currently a Changjing Scholar Distinguished Professor, Vice Dean at the School of Computer Science and Technology, China. Before that, he worked for IBM Research - China and Deutsche Telekom Laboratories, Berlin, Germany, and IBM T. J. Watson Research Center, USA. He received the IBM First Plateau Invention Achievement Award in 2012, IEEE DataCom Best Paper Award in 2016, ACM SigKDD Best Paper Runner-up Award in 2021, ACM MobiCom Best Community Paper Runner-up Award in 2021, First Class Scientific Award of China Institute of Electronics in 2023, Gold Medal for Invention Performance Award Nuremburg in 2025, and First Class Teaching Award of China Institute of Electronics in 2025. His current research interests include the Industrial Big Data and Embodied AI.
Professor Liu is a Fellow of IEEE, IET, British Computer Society and Royal Society of the Arts.
Research Interests
Artificial Intelligence, Internet of Things, Big Data, Edge Computing
Research Achievement
see Google Scholar link: Chi Harold Liu - Google Scholar
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AoI-Aware Air-Ground Mobile Crowdsensing by Multi-Agent Curriculum Learning With Collaborative Observation Augmentation
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Semantic Correlation Transfer for Heterogeneous Domain Adaptation
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Energy-Efficient Ground-Air-Space Vehicular Crowdsensing by Hierarchical Multi-Agent Deep Reinforcement Learning with Diffusion Models
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Ensuring Threshold AoI for UAV-Assisted Mobile Crowdsensing by Multi-Agent Deep Reinforcement Learning with Transformer
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FedViT: Federated continual learning of vision transformer at edge
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