物理学科Seminar第533讲 Machine Learning and Physics

创建时间:  2021/01/05  龚惠英   浏览次数:   返回

报告题目(Title):Machine Learning and Physics

报告人(Speaker):尤亦庄 Assistant Professor (UC San Diego)

报告时间(Time):2021年1月8日(周五)14:00

报告地点(Place):腾讯会议(会议ID:851 631 900)

https://meeting.tencent.com/s/uytFSiAYCpjL

邀请人(Inviter):吴绍锋 教授

摘要(Abstract):

In this talk, I will introduce our recent works on applying machine learning to uncover the holographic geometry from quantum entanglement, and to construct the optimal renormalization group transformation for quantum field theories. We employ unsupervised machine learning approaches that allows machine to generate observation data on the holographic boundary with variational models in the holographic bulk. By training the neural network to reproduce the observation data, the machine will be able to establish geometry/physics description for the bulk. More generally, this approach will be able to build theoretical models from observations.


欢迎老师、学生参加!

上一条:化学系学术报告 电池降解异构性的核心化学成像:从材料到器件

下一条:数学系Seminar第2071期 图和超图的反拉姆齐数


物理学科Seminar第533讲 Machine Learning and Physics

创建时间:  2021/01/05  龚惠英   浏览次数:   返回

报告题目(Title):Machine Learning and Physics

报告人(Speaker):尤亦庄 Assistant Professor (UC San Diego)

报告时间(Time):2021年1月8日(周五)14:00

报告地点(Place):腾讯会议(会议ID:851 631 900)

https://meeting.tencent.com/s/uytFSiAYCpjL

邀请人(Inviter):吴绍锋 教授

摘要(Abstract):

In this talk, I will introduce our recent works on applying machine learning to uncover the holographic geometry from quantum entanglement, and to construct the optimal renormalization group transformation for quantum field theories. We employ unsupervised machine learning approaches that allows machine to generate observation data on the holographic boundary with variational models in the holographic bulk. By training the neural network to reproduce the observation data, the machine will be able to establish geometry/physics description for the bulk. More generally, this approach will be able to build theoretical models from observations.


欢迎老师、学生参加!

上一条:化学系学术报告 电池降解异构性的核心化学成像:从材料到器件

下一条:数学系Seminar第2071期 图和超图的反拉姆齐数