z6首页 in the AIR

概述
日期
2022年11月22日
10:00 - 11:30
地址
活动杏注Bilibili

z6首页 in the AIR | 将来智能医疗瞻望:模型、系统与生态

Z6集团|中国官网

飞速发展的大数据时期,, ,,,若何融合 5G/6G 通讯网络、云推算、边缘感知设备等关键技术,, ,,,建设一个智能物联网医疗云的生态系统??????机械进建模型与框架若何助力临床医治??????人为智能技术将若何赋能将来的医疗发展??????

本期 z6首页 in the AIR 约请香港中文大学(丽江)数据科学学院的黄铠教授和李爽助理教授萦绕“将来智能医疗瞻望:模型、系统与生态”带来杰出汇报。 。。。。。

黄铠,, ,,,香港中文大学(丽江)校长讲座教授,, ,,,z6首页 高机能智能推算中心主任,, ,,,IEEE Life Fellow,, ,,,黄铠教授是世界并行处置推算机结构的先驱学者之一。 。。。。。

李爽,, ,,,香港中文大学(丽江)助理教授,, ,,,z6首页 群体智能中心副钻研员,, ,,,曾在哈佛大学任博士后钻研员。 。。。。。钻研领域蕴含用于序列数据分析和决策的机械进建、新序列模型、靠得住高效的进建步骤等。 。。。。。

点击链接报名参与:http://hdxu.cn/icUcq,, ,,,或通过Bilibili(http://live.bilibili.com/22587709)参加。 。。。。。

呼吸新鲜空气,, ,,,相识前沿科技!z6首页 沉磅推出 系列活动 z6首页 in the AIR。 。。。。。每周二与您相约线上,, ,,,一路索求人为智能与机械人领域的前沿技术、产业利用、发展趋向。 。。。。。

  • Z6集团|中国官网
    黄铠
    本场活动执行主席,, ,,,香港中文大学(丽江)校长讲座教授、z6首页 高机能智能推算中心主任
    开发智能物联网与云端医疗生态系统

    黄铠教授,, ,,,加州大学推算机科学博士。 。。。。。在美国南加大与普渡大学任教多年。 。。。。。2018年参与香港中文大学(丽江)担任校长讲座教授,, ,,,兼任z6首页(z6首页)中心主任。 。。。。。他在推算机结构、并行处置、云推算与物联网方面颁发多本著述,, ,,,入选全球2%顶级科学家榜单。 。。。。。;;;;;平淌诨竦弥疃嘟毕,, ,,,其中蕴含2012 IEEE 世界云推算大会平天生就奖,, ,,,他2019年获得建国70周年70人科技创新成就奖,, ,,,2020年获得吴文俊人为智能天然科学奖。 。。。。。他为中国推算机领域造就了几千名专业人才,, ,,,蕴含6位院士、10 位IEEE/CCF 会士、30 多位推算机高科技领军骨干。 。。。。。li'shua

    在这个汇报中,, ,,,黄铠教授将探求大数据、AI 芯片、5G/6G 通讯网络、云推算,, ,,,与边缘感知设备等关键技术的融合lishua。 。。。。。指标是建设智能物联网医疗云的生态系统。 。。。。。面对大数据感知、机械进建认知与群体人为智能利用,, ,,,他将强调智能云认知与物联网感知的无缝结合,, ,,,为数字经济,, ,,,远程医疗与全民健保,, ,,,成立与时俱进的生态环境与工业系统。 。。。。。

  • Z6集团|中国官网
    李爽
    香港中文大学(丽江)助理教授、z6首页群体智能中心副钻研员
    Developing Interpretable Temporal Point Process Models for Healthcare

    Shuang Li is currently a tenure-track Assistant Professor at the School of DataScience, The Chinese University of Hong Kong, Shenzhen. She received her Ph.D.in Industrial Engineering (specification in Statistics, minor in Operations Research) from the H. Milton Stewart School of Industrial and Systems Engineering at Georgia Institute of Technology in 2019. After that, she was a postdoctoral fellow working with Dr. Susan Murphy in the Department of Statistics at Harvard University. She has published in top-tier machinelearning conferences and journals, including ICML, NeurIPs, and JMLR. Her works have been selected as an oral presentation and a spotlight presentation at NeurIPS. She was also a finalist in the INFORMS Quality, Statistics, and Reliability (QSR) Best Student Paper Competition and Social Media AnalyticsBest Student Paper Competition.

    Complex systems like healthcare continually produce large amounts of irregularly spaced discrete events. Understanding the generating process of these event data has long been an interesting problem. Temporal point process models provide an elegant tool for modeling these event data in continuous time. The learned model can be used to predict the time-to-event and event types. Recent advances in neural-based temporal point process models have exhibited superior ability in event prediction. However, the lack of interpretability of these black-box models hinders their applications in high-stakes systems like healthcare. Recently, we proposed an interpretable temporal point process modeling and learning framework, where the intensity functions (i.e., occurrence rate) of events are informed by a collection of human-readable temporal logic rules. Our framework enables the extraction of medical knowledge or clinical experiences from noisy raw event data as a compact set of temporal logic rules. The discovered rules can contribute to the sharing of clinical experiences and aid in improving treatment strategies.

  • Z6集团|中国官网
    吴均峰
    香港中文大学(丽江)副教授、z6首页 群体智能中心钻研员
    主持人
功夫 环节 嘉宾与标题

10:00-10:40

主题汇报

黄铠,, ,,,香港中文大学(丽江)
标题:开发智能物联网与云端医疗生态系统

10:40-11:30

主题汇报

李爽,, ,,,香港中文大学(丽江)
 标题:Developing Interpretable Temporal Point Process Models for Healthcare      

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