12月18日 Yew-soon Ong⛈:Towards General Optimization Intelligence

    时间:2019-12-10浏览👨‍🔬👮🏼:455设置


    讲座题目:Towards General Optimization Intelligence

    主讲人:Yew-soon Ong

    主持人👱‍♂️😡:周爱民  副院长

    开始时间:2019-12-18 13:00:00

    讲座地址👮‍♀️:中北校区理科大楼B504

    主办单位:计算机科学与技术学院

     

    报告人简介:

    Yew-soon, Ong received a PhD degree for his work on Artificial Intelligence in complex design from the University of Southampton, United Kingdom in 2003. He is currently a President’s Chair Professor of Computer Science, Professor (Cross Appointment) with School of  Physical and Mathematical Science at the Nanyang Technological University,  Singapore, and holds the position of Chief Artificial Intelligence Scientist   at the Agency for Science, Technology and Research of Singapore. Concurrently   he is Director of the Data Science and Artificial Intelligence Research   Center, co-Director of the Singtel-NTU Cognitive & Artificial   Intelligence Joint Lab and co-Director of the A*Star SIMTECH-NTU Joint Lab on  Complex Systems. He was Chair of the School of Computer Science and   Engineering, Nanyang Technological University from 2016-2018, Lead of the   Data Analytics & Complex System Programme in the Rolls-Royce@NTU   Corporate Lab from 2013-2016 and Director of the Centre for Computational   Intelligence from 2008-2015. His research interest lies in artificial &  computational Intelligence, mainly optimization intelligence and machine  learning. He is a Fellow of the IEEE and Editor-In-Chief of the IEEE   Transactions on Emerging Topics in Computational Intelligence. He was listed among   the World's Most Influential Scientific Minds and a Thomson Reuters Highly   Cited Researcher.  Several of his  research publications have received IEEE outstanding paper awards.


    报告内容:

    Traditional Optimization tends to start the   search from scratch by assuming zero prior knowledge about the task at hand.   Generally speaking, the capabilities of optimization solvers do not   automatically grow with experience. In contrast however, humans routinely  make use of a pool of knowledge drawn from past experiences whenever faced   with a new task. This is often an effective approach in practice as   real-world problems seldom exist in isolation. Similarly, practically useful   artificial systems are expected to face a large number of problems in their   lifetime, many of which will either be repetitive or share domain-specific  similarities. This view naturally motivates advanced optimizers that can   replicate human cognitive capabilities, leveraging on lessons learned from   the past to accelerate the search towards optimal solutions of never before   seen tasks. With the above in mind, this talk aims to shed light on recent   research advances in the field of global black-box optimization that champion   the general theme of ‘General Optimization Intelligence’. A brief overview of  associated algorithmic developments in memetic computation and Bayesian   optimization shall be considered, with illustrative examples of adaptive   knowledge transfer across problems from diverse areas, including, operations   research, engineering design, and machine learning problems.

     


    返回原图
    /

     

    光辉娱乐专业提供:光辉娱乐👧、等服务,提供最新官网平台、地址、注册、登陆、登录、入口、全站、网站、网页、网址、娱乐、手机版、app、下载、欧洲杯、欧冠、nba、世界杯、英超等,界面美观优质完美,安全稳定,服务一流🧙🏿‍♂️,光辉娱乐欢迎您。 光辉娱乐官网xml地图
    光辉娱乐 光辉娱乐 光辉娱乐 光辉娱乐 光辉娱乐 光辉娱乐 光辉娱乐 光辉娱乐 光辉娱乐 光辉娱乐