Position: Prospective of Autonomous Driving - Multimodal LLMs, World Models, Embodied Intelligence, AI Alignment, and Mamba
Yunsheng Ma(Purdue University West Lafayette), Xu Cao(University of Illinois Urbana-Champaign), Burhaneddin Yaman(Robert Bosch (India)), Hamid Rezatofighi(Australian Regenerative Medicine Institute), Can Cui, Manmohan Chandraker(Universidad Católica Santo Domingo), Shuo Xing(Texas A&M University), Tianjiao He(University of Toronto), Wenqian Ye(University of Virginia), Fucai Ke(Australian Regenerative Medicine Institute), Chao Zheng(Tencent (China)), Zhen Li(First Affiliated Hospital of Kunming Medical University), Xin Ye(Robert Bosch (India)), Hang Zhao(Tsinghua University), Jinhong Wang(Zhejiang University), Haiming Zhang(University of Hong Kong), Jintai Chen(Entrust), Chenglin Miao(Iowa State University), Guangtao Zheng(University of Virginia)
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