Logo
Loading...
期刊
专家
人气专家
安波 President's Chair Professor College of Computing and Data Science Nanyang Technological University, Head, Division of Artificial Intelligence, College of Computing & Data Science, President’s Chair in Computer Science and Engineering, Professor, College of Computing & Data Science, Assistant Chair (Innovation), School of Computer Science and Engineering (SCSE)
Bo An is a Professor in the College of Computing & Data Science, and Co-Director of Artificial Intelligence Research Institute (AI.R) at Nanyang Technological University, Singapore. He received the Ph.D degree in Computer Science from the University of Massachusetts, Amherst. His current research interests include artificial intelligence, multiagent systems, computational game theory, reinforcement learning, and optimization. His research results have been successfully applied to many domains including infrastructure security and e-commerce. He has published over 100 referred papers at AAMAS, IJCAI, AAAI, ICAPS, KDD, UAI, EC, WWW, ICLR, NeurIPS, ICML, JAAMAS, AIJ and ACM/IEEE Transactions. Dr. An was the recipient of the 2010 IFAAMAS Victor Lesser Distinguished Dissertation Award, an Operational Excellence Award from the Commander, First Coast Guard District of the United States, the 2012 INFORMS Daniel H. Wagner Prize for Excellence in Operations Research Practice, and 2018 Nanyang Research Award (Young Investigator). His publications won the Best Innovative Application Paper Award at AAMAS’12, the Innovative Application Award at IAAI’16, and the best paper award at DAI’20. He was invited to give Early Career Spotlight talk at IJCAI’17. He led the team HogRider which won the 2017 Microsoft Collaborative AI Challenge. He was named to IEEE Intelligent Systems' "AI's 10 to Watch" list for 2018. He is PC Co-Chair of AAMAS’20 and will be General Co-Chair of AAMAS’23. He is a member of the editorial board of JAIR and is the Associate Editor of AIJ, JAAMAS, IEEE Intelligent Systems, ACM TAAS, and ACM TIST. He was elected to the board of directors of IFAAMAS, senior member of AAAI, and Distinguished member of ACM.
仉尚航 北京大学计算机学院助理教授, 北京智源人工智能研究员具身多模态大模型中心负责人
仉尚航现为北京大学计算机学院任长聘系列助理教授(研究员),博士生导师。于2018年博士毕业于美国卡内基梅隆大学,后于2020年初加入加州大学伯克利分校 Berkeley AI Research Lab (BAIR) 从事博士后研究。其研究方向为开放环境泛化机器学习理论与系统,同时在计算机视觉和类脑智能方向拥有丰富研究经验。在人工智能顶级期刊和会议上发表论文50余篇,并申请5项美中专利。荣获世界人工智能顶级会议AAAI’2021 最佳论文奖,该工作曾列世界最大学术源代码仓库Trending Research 榜单第一,受到十余家媒体报道推广,开源代码被访问7万余次、2600余次Star。作为编辑和作者由Springer Nature出版英文书籍《Deep Reinforcement Learning》,至今电子版全球下载量超十二万次,入选中国作者年度高影响力研究精选,并出版中文译本。Google Scholar引用数3100次,h-index 23, i10-index 35。于2018年入选美国“EECS Rising Star”,曾获得Adobe学术合作基金,Qualcomm创新奖提名。获国际人脑多模态计算模型响应预测竞赛第一名,NeurIPS 2021 Visual Domain Adaptation 竞赛第三名。曾多次在国际顶级会议NeurIPS、ICML上组织Workshop,多次作为国际顶级期刊和会议的审稿人或程序委员,担任AAAI 2022/2023 高级程序委员。 Dr. Shanghang Zhang is a Tenure Track Assistant Professor at the School of Computer Science, Peking University. She has been the postdoc research fellow at Berkeley AI Research Lab (BAIR), UC Berkeley. Her research focuses on OOD Generalization that enables the machine learning systems to generalize to new domains, categories, and modalities using limited labels, with applications to autonomous driving and robotics, as reflected in her over 50 papers on top-tier journals and conference proceedings (Google Scholar Citations: 4321, H-index: 28, I10-index: 38). She has also been the author and editor of the book “Deep Reinforcement Learning: Fundamentals, Research and Applications” published by Springer Nature. This book is selected to Annual High-Impact Publications in Computer Science by Chinese researchers and its Electronic Edition has been downloaded 150,000 times worldwide. Her recent work “Informer: Beyond Efficient Transformer for Long Sequence Time-Series Forecasting” has received the AAAI 2021 Best Paper Award. It ranks the 1st place of Trending Research on PaperWithCode and its Github receives 3,300+ Stars. Shanghang has been selected to “2018 Rising Stars in EECS, USA”. She has also been awarded the Adobe Academic Collaboration Fund, Qualcomm Innovation Fellowship (QInF) Finalist Award, and Chiang Chen Overseas Graduate Fellowship. Her research outcomes have been successfully productized into real-world machine learning solutions and filed 5 patents. Dr. Zhang has been the chief organizer of several workshops on ICML/NeurIPS, and the special issue on ICMR. Dr. Zhang received her Ph.D. from Carnegie Mellon University in 2018, and her Master's from Peking University.
段楠 京东探索研究院视觉与多模态实验室负责人
Dr. Nan Duan is the head of the Vision and Multimodal Lab at JD Explore Academy, where he leads a research team focused on vision and multimodal foundation models. Prior to this, he served as the Technical Fellow at StepFun (2024-2025) and as a Senior Principal Researcher and Research Manager in the Natural Language Computing Group at Microsoft Research Asia (2012-2024). Dr. Duan is a world-renowned expert in natural language processing (NLP), code intelligence, multilingual multimodal foundation models, and AI agents. He has authored over 200 research papers in top-tier conferences and journals, accumulating more than 27,000 citations (h-index 74) and holds over 20 patents. His contributions to the field have been recognized with several prestigious awards, including the Runner-Up Best Paper Award at NeurIPS 2024 and the Best Demo Award at CVPR 2022. He is an adjunct professor and Ph.D. supervisor at the University of Science and Technology of China, Xi’an Jiaotong University, and Tianjin University. Dr. Duan earned his B.S. and Ph.D. in Computer Science from Tianjin University in 2004 and 2011, respectively. In 2019, he was named the CCF-NLPCC Distinguished Young Scientist for his contributions to NLP, and in 2023, he was listed among the DeepTech Intelligent Computing Innovators in China for his work on AI foundation models. 段楠博士,现任京东探索研究院视觉与多模态实验室负责人,带领研究团队研发视觉和多模态基础模型。此前,他曾任阶跃星辰Technical Fellow(2024-2025)和微软亚洲研究院自然语言计算团队资深首席研究员和研究经理(2012-2024)。段博士是自然语言处理(NLP)、代码智能、多语言多模态基础模型和AI智能体领域的世界知名专家。他在顶级会议和期刊上发表了超过200篇研究论文,累积引用超过27,000次(h-index 74),并拥有20多项专利。他在该领域的贡献得到了多个重要奖项的认可,包括2024年NeurIPS最佳论文亚军奖和2022年CVPR最佳演示奖。段博士是中国科学技术大学、西安交通大学和天津大学的兼职教授及博士生导师。段博士于2004年和2011年分别获得天津大学计算机科学学士和博士学位。2019年,他因在自然语言处理领域的贡献被评为CCF-NLPCC杰出青年科学家,2023年,他因在人工智能基础模型方面的贡献被列为中国DeepTech智能计算创新人物之一。
张伟楠 Department of Computer Science & Engineering Shanghai Jiao Tong University
张伟楠博士现任上海交通大学计算机系教授、博士生导师、副系主任,科研领域包括强化学习和数据科学,相关研究成果在CCF-A类国际会议和期刊上发表100余篇学术论文,谷歌学术引用2万余次,爱思唯尔中国高被引学者,获得5个最佳论文奖项,出版教材《动手学强化学习》和《动手学机器学习》。张伟楠长期担任NeurIPS、ICML、ICLR、KDD等会议的领域主席和TPAMI、FCS等期刊的编委,作为负责人承担国家自然科学基金优秀青年项目和科技部2030新一代人工智能重大项目课题,入选中国科协青年人才托举工程和上海市科委英才扬帆计划,获得吴文俊人工智能优秀青年奖和达摩院青橙奖。张伟楠于2011年获得上海交通大学计算机系ACM班学士学位,于2016年获得伦敦大学学院计算机系博士学位。 Weinan Zhang is now a professor at the department of computer science and engineering, Shanghai Jiao Tong University. His research interests include reinforcement learning and data science with various real-world applications of robotic control, game AI, recommender systems, etc. He has published over 200 research papers at prestigious international conferences and journals, accumulating over 20k citations on Google Scholar, been selected as Elsevier China Highly Cited Researcher. He has been serving as an area chair at ICML, NeurIPS, ICLR, KDD, etc. and an associate editor at TPAMI and FCS. He was granted the ACM Rising Star Award 2017 and the Alibaba DAMO Young Scholar Award 2018. His research won five best paper awards at international conferences and workshops, including the Best Paper Honorable Mention Award at SIGIR 2017 and the Best System Paper Award at CoRL 2020. Weinan earned his Ph.D. from the Computer Science Department of University College London in 2016 and his B.E. from the ACM Honored Class of Shanghai Jiao Tong University in 2011.
全部专家
安波 President's Chair Professor College of Computing and Data Science Nanyang Technological University, Head, Division of Artificial Intelligence, College of Computing & Data Science, President’s Chair in Computer Science and Engineering, Professor, College of Computing & Data Science, Assistant Chair (Innovation), School of Computer Science and Engineering (SCSE)
Bo An is a Professor in the College of Computing & Data Science, and Co-Director of Artificial Intelligence Research Institute (AI.R) at Nanyang Technological University, Singapore. He received the Ph.D degree in Computer Science from the University of Massachusetts, Amherst. His current research interests include artificial intelligence, multiagent systems, computational game theory, reinforcement learning, and optimization. His research results have been successfully applied to many domains including infrastructure security and e-commerce. He has published over 100 referred papers at AAMAS, IJCAI, AAAI, ICAPS, KDD, UAI, EC, WWW, ICLR, NeurIPS, ICML, JAAMAS, AIJ and ACM/IEEE Transactions. Dr. An was the recipient of the 2010 IFAAMAS Victor Lesser Distinguished Dissertation Award, an Operational Excellence Award from the Commander, First Coast Guard District of the United States, the 2012 INFORMS Daniel H. Wagner Prize for Excellence in Operations Research Practice, and 2018 Nanyang Research Award (Young Investigator). His publications won the Best Innovative Application Paper Award at AAMAS’12, the Innovative Application Award at IAAI’16, and the best paper award at DAI’20. He was invited to give Early Career Spotlight talk at IJCAI’17. He led the team HogRider which won the 2017 Microsoft Collaborative AI Challenge. He was named to IEEE Intelligent Systems' "AI's 10 to Watch" list for 2018. He is PC Co-Chair of AAMAS’20 and will be General Co-Chair of AAMAS’23. He is a member of the editorial board of JAIR and is the Associate Editor of AIJ, JAAMAS, IEEE Intelligent Systems, ACM TAAS, and ACM TIST. He was elected to the board of directors of IFAAMAS, senior member of AAAI, and Distinguished member of ACM.
孙宇 Professor in the Department of Computer Science and Engineering of USF
I am a Professor in the Department of Computer Science and Engineering, and the Director of the Center for Innovation, Technology, and Aging at the University of South Florida (Assistant Professor 2009-2015, Associate Professor 2015-2020, Associate Chair of Graduate Affairs 2018-2020). I was a Visiting Associate Professor at Stanford University from 2016 to 2017. I received his Ph.D. degree in Computer Science from the University of Utah in 2007. Then I had his Postdoctoral training at Mitsubishi Electric Research Laboratories (MERL), Cambridge, MA (2007-2008) and the University of Utah (2008-2009). I initiated the IEEE RAS Technical Committee on Robotic Hands, Grasping, and Manipulation and served as its first co-Chair. I have also served on several editorial boards as an Associate Editor and Senior Editor, including IEEE Transactions on Robotics, IEEE Robotics and Automation Letters (RA-L), ICRA, and IROS.
李淼 Professor
My research interests are in robotics, machine learning and applied nonlinear control. They encompass robot learning and control, object grasping and manipulation, human-robot interaction, robotic hand and tactile sensing, and neuroscience. I am particularly interested in finding the deep connections between dynamics of intelligent systems and learning algorithms (learning from humans or from optimizations), which enables adaptive, efficient and robust control design for complex systems. The goal of my research is to enable robots to perform skills with the level of dexterity and flexibility that humans demonstrate in similar tasks. I am also particularlly interested in finding the novel application of robotic grasping and manipulation in the real world. Short Bio: Before joining Wuhan University as an associate professor, I was a PhD student at the Learning Algorithms and Systems Laboratory (LASA) at EPFL in Switzerland, with Professor Aude Billard, working on dynamic grasp adaptation- from humans to robots. Before that, I spent several years of my undergraduate and graduate studies at Huazhong University of Science and Technology, China.
俞扬 Professor in the School of Artificial Intelligence, Nanjing University, China.
Yang Yu is a Professor in the School of Artificial Intelligence, Nanjing University, China. His research interest is in machine learning, focusing on real-world reinforcement learning and general intelligence for decision-making. He has published more than 40 papers in Artificial Intelligence, TPAMI, TKDE, NeurIPS, IJCAI, AAAI, KDD, etc. He has been granted several conference best paper awards including IDEAL'16, GECCO'11 (theory track), PAKDD'08, etc. He was in the Champion Team of 2021 ICAPS L2RPN Challenge with Trust, 2018 OpenAI RetroContest, and the Grand Champion Team of PAKDD 2006 Data Mining Competition. He received CCF-IEEE Early Career Award in 2020, was recognized as one of the “AI’s 10 to Watch” by IEEE Intelligent Systems in 2018, and received the PAKDD Early Career Award in 2018. He was invited to give an Early Career Spotlight Talk in IJCAI'18. He has served as an Area Chair of NeurIPS, IJCAI, AAAI, and ACML for multiple years. He was a Publicity Co-chair of IJCAI'16/17 and IEEE ICDM'16; a Workshop Co-chair of ACML'16 and PRICAI’18. He co-founded the International Conference on Distributed Artificial Intelligence (DAI) and the Asian Workshop on Reinforcement Learning (AWRL).
郝建业 天津大学软件学院副教授 , 华为诺亚方舟决策推理实验室主任
郝建业博士,现任天津大学软件学院副教授。香港中文大学(CUHK)计算机科学与工程专业博士,麻省理工学院(MIT)计算机科学与人工智能实验室(CSAIL)博士后研究员。 郝建业教授主持参与了国内、香港及国际地区科研项目10余项, 与国际上多个顶尖科研团队(包括麻省理工学院(MIT), 帝国理工学院,香港中文大学,新加坡国立大学等)具有良好的长期合作关系, 并取得了多项国际领先的研究成果。在人工智能领域具有丰富的研究经验,目前已在多智能体系统、 人工智能、 软件工程等领域的多个顶级国际期刊(Journal of Autonomous Agents and Multiagent Systems (JAAMAS), ACM Transactions on Autonomous and Adaptive Systems(TAAS)等) 和国际会议 (IJCAI, AAMAS, FSE, ICSE等)上发表论文30余篇,专著一部。 郝建业教授获得过多个香港地区和国际学术奖项(包括ANAC国际谈判比赛2012年度冠军、2015年度亚军、澳大利亚教育部Endeavor Fellowship、香港中文大学全球杰出研究者)。同时担任多个顶级期刊(包括JAAMAS, TAAS,TOSEM等)审稿人,美国国家科学基金委物联网项目评审专家。
许华哲 清华大学交叉信息研究院助理教授
博士毕业于美国加州大学伯克利分校,博后曾就职于美国斯坦福大学。研究方向为具身智能与机器人学、强化学习、模仿学习等。围绕具身人工智能的关键环节,系统性地研究了视觉深度强化学习、模仿学习和机器人操作,对解决具身人工智能领域中数据效率低和泛化能力弱等核心问题做出多项贡献。发表顶级会议论文五十余篇,代表性工作曾被MIT Tech Review,Stanford HAI等媒体报道。 I am a Tenure-Track Assistant Professor at Institute for Interdisciplinary Information Sciences (IIIS), Tsinghua University. I am leading the Tsinghua Embodied AI Lab (TEA Lab, logo), where we build robots and then bring intelligence to robots. I was a postdoctoral researcher at Stanford Vision and Learning Lab (SVL) advised by Prof. Jiajun Wu. I obtained my Ph.D. in Berkeley AI Research (BAIR) advised by Prof. Trevor Darrell. I obtained my bachelor degree from Tsinghua University (major in EE, minor in Management). My research focuses on modeling the dynamics of the world, leveraging/finding human priors for policy learning, and further enabling algorithms to learn in a sample-efficient manner and generalize to unseen scenarios. I am also interested in solving complex real robot applications with deep learning and reinforcement learning.
程建林 Curators' Distinguished Professor, AAAS Fellow, Director of Bioinformatics and Machine Learning Lab (BML)
Jianlin (Jack) Cheng is a Curators’ Distinguished Professor in the Department of Electrical Engineering and Computer Science at the University of Missouri. He received his PhD in information and computer science from the University of California, Irvine in 2006. His research is focused on developing machine learning and artificial intelligence (AI) methods and tools for big biomedical data analysis. His research group has developed numerous bioinformatics tools for analyzing protein structure and function, biological networks, and 3D genome structure, which are used by scientists around the world. His research has been supported by the National Institutes of Health (NIH), the National Science Foundation (NSF), and the U.S. Department of Energy (DOE). Cheng was a recipient of the NSF CAREER award and the MU College of Engineering’s junior and senior faculty research awards.
杨建益 山东大学特聘教授, 博导, 国家杰出青年科学基金获得者
2011年博士毕业于新加坡南洋理工大学,2011-2014在美国密歇根大学从事博士后研究工作。2015年初加入南开大学数学科学学院,担任副教授职位,2017年底破格晋升为教授。研究方向为生物信息学,主要研究内容包括蛋白质结构与功能预测,深度学习算法的应用等。已在Nature Methods等期刊发表SCI论文40多篇,其中一作或通讯作者论文26篇。论文被SCI他引2500多次,3篇论文入选ESI高被引论文。主持国家自然科学基金项目2项,2018年获得霍英东教育基金会青年教师基金资助。
郑伟 南开大学统计与数据科学学院教授
郑伟,南开大学统计与数据科学学院教授,国家级青年人才,南开大学百名青年学科带头人,传染病溯源预警与智能决策全国重点实验室成员。蛋白质预测结构文件存储格式ModelCIF的国际标准制定委员会委员。该委员会成员还包括诺贝尔化学奖得主DeepMind课题组、诺贝尔化学奖得主华盛顿大学David Baker教授课题组。 研究领域为基于深度学习及统计能量函数的生物分子及其互作的结构预测,郑伟主持开发的C-I-TASSER、C-QUARK、D-I-TASSER、DMFold等蛋白质单体结构预测算法、蛋白质-蛋白质互作复合物结构预测算法、核酸-核酸互作复合物结构预测算法、蛋白质-核酸复合物结构预测算法、生物分子多构象预测算法等,累计获得被誉为“蛋白质结构预测领域的奥林匹克竞赛”的国际赛事(CASP)的十项冠军,领先包括AlphaFold2、AlphaFold3在内的全球80余个学术界及工业界的课题组。5次受邀在世界蛋白质结构预测大赛赛后国际会议、世界生物医药与人工智能大会做特邀报告。累计在Nature Biotechnology、Nature Methods、Nature Communications、Nature Protocols、Science Advances、Nature Computational Science、Nucleic Acids Research、PNAS等高水平SCI期刊发表文章50余篇。据Google Scholar记录,郑伟的相关研究成果已累计获得3400余次引用。研究成果受诺奖得主、Nature、纽约时报等媒体报道,阅读量超过百万次。担任SCI期刊Molecules杂志特约编辑及Nature Communications、Nature Machine Intelligence、Nature Computational Science等SCI期刊审稿人。郑伟主导开发的算法已经累计服务了超过100个国家的近10万名用户。主持并参与了多个国家级、天津市级人才项目及重点交叉项目。
赵俊博 Assistant Professor at Zhejiang University
Junbo Zhao is a Assistant Professor at Zhejiang University, participating in the 100-Young Professor Program. He earned his Ph.D. in Computer Science from New York University in 2019 under the mentorship of Turing Award laureate Yann LeCun. From 2016 to the end of 2018, He worked as a contracted researcher at Meta Foundational AI Research (formerly Facebook AI Research - FAIR). He also worked at NVIDIA in 2015 and contributed to the development of the first end-to-end self-driving car project, which was showcased at GTC 2017 by Jensen Huang. Junbo Zhao has published numerous highly-cited papers in top-tier journals and conferences . He also serves as an area chair or a reviewer for many top-tier AI conferences, including NeurIPS, ICML, ICLR, CVPR, ACL, and ICCV, as well as a few AI+X journals. He has received multiple awards, including the Zhejiang Province Science and Technology Progress First Prize, two WAIC SAIL Awards, and the cover figure of Forbes 30-under-30 in 2022.
赵昊 清华大学电子工程系学士/博士
赵昊,清华大学电子工程系学士/博士,曾任英特尔中国研究院研究员和北京大学联合博士后。赵昊博士专注于几何与认知层面的场景理解及其在机器人中的应用,于计算机视觉与机器人国际期刊和会议(CVPR,ICCV,ECCV,IJCV,CVIU,ISPRS,T-IP,T-MM,NeurIPS,ICLR,RA-L,ICRA,IROS)上发表近30篇论文。赵昊博士是清华大学最大的机器人社团“天空工场”的创始人和负责人之一,曾参与孵化10余家高新技术创业公司。赵昊博士曾获得LSUN, Holistic3D, LID等多项学术竞赛冠军
仉尚航 北京大学计算机学院助理教授, 北京智源人工智能研究员具身多模态大模型中心负责人
仉尚航现为北京大学计算机学院任长聘系列助理教授(研究员),博士生导师。于2018年博士毕业于美国卡内基梅隆大学,后于2020年初加入加州大学伯克利分校 Berkeley AI Research Lab (BAIR) 从事博士后研究。其研究方向为开放环境泛化机器学习理论与系统,同时在计算机视觉和类脑智能方向拥有丰富研究经验。在人工智能顶级期刊和会议上发表论文50余篇,并申请5项美中专利。荣获世界人工智能顶级会议AAAI’2021 最佳论文奖,该工作曾列世界最大学术源代码仓库Trending Research 榜单第一,受到十余家媒体报道推广,开源代码被访问7万余次、2600余次Star。作为编辑和作者由Springer Nature出版英文书籍《Deep Reinforcement Learning》,至今电子版全球下载量超十二万次,入选中国作者年度高影响力研究精选,并出版中文译本。Google Scholar引用数3100次,h-index 23, i10-index 35。于2018年入选美国“EECS Rising Star”,曾获得Adobe学术合作基金,Qualcomm创新奖提名。获国际人脑多模态计算模型响应预测竞赛第一名,NeurIPS 2021 Visual Domain Adaptation 竞赛第三名。曾多次在国际顶级会议NeurIPS、ICML上组织Workshop,多次作为国际顶级期刊和会议的审稿人或程序委员,担任AAAI 2022/2023 高级程序委员。 Dr. Shanghang Zhang is a Tenure Track Assistant Professor at the School of Computer Science, Peking University. She has been the postdoc research fellow at Berkeley AI Research Lab (BAIR), UC Berkeley. Her research focuses on OOD Generalization that enables the machine learning systems to generalize to new domains, categories, and modalities using limited labels, with applications to autonomous driving and robotics, as reflected in her over 50 papers on top-tier journals and conference proceedings (Google Scholar Citations: 4321, H-index: 28, I10-index: 38). She has also been the author and editor of the book “Deep Reinforcement Learning: Fundamentals, Research and Applications” published by Springer Nature. This book is selected to Annual High-Impact Publications in Computer Science by Chinese researchers and its Electronic Edition has been downloaded 150,000 times worldwide. Her recent work “Informer: Beyond Efficient Transformer for Long Sequence Time-Series Forecasting” has received the AAAI 2021 Best Paper Award. It ranks the 1st place of Trending Research on PaperWithCode and its Github receives 3,300+ Stars. Shanghang has been selected to “2018 Rising Stars in EECS, USA”. She has also been awarded the Adobe Academic Collaboration Fund, Qualcomm Innovation Fellowship (QInF) Finalist Award, and Chiang Chen Overseas Graduate Fellowship. Her research outcomes have been successfully productized into real-world machine learning solutions and filed 5 patents. Dr. Zhang has been the chief organizer of several workshops on ICML/NeurIPS, and the special issue on ICMR. Dr. Zhang received her Ph.D. from Carnegie Mellon University in 2018, and her Master's from Peking University.