1. IE browser is NOT supported anymore. Please use Chrome, Firefox or Edge instead.
2. If you are a new user, please register to get an IHEP SSO account through https://login.ihep.ac.cn/registlight.jsp Any questions, please email us at helpdesk@ihep.ac.cn or call 88236855.
3. If you need to create a conference in the "Conferences, Workshops and Events" zone, please email us at helpdesk@ihep.ac.cn.
4. The max file size allowed for upload is 100 Mb.
PKU HEP Seminar and Workshop (北京大学高能物理组)

Deep Learning for Inverse Problems in Physics

by Dr Kai Zhou (FIAS)

Asia/Shanghai
S408

S408

Description
Inverse Problems occur in almost all research areas. Due to the indirect noisy observation or even 'ill-posedness', it's usually challenging to handle the inverse problem. In this talk I will introduce some projects that utilizing deep learning techniques for solving inverse problems in high energy nuclear physics, especially in the context of basic research for the exploration of matter under extreme conditions. Specifically I will talk about early time physics identification from heavy-ion collisions, heavy-quark potential inference from lattice measurements, spectral function reconstruction from correlator, and learning Neutron Star Equation of State from observatory. Biography: Dr. Kai Zhou received his B.Sc. degree in Physics from Xi'an Jiaotong University in 2009, and his PhD degree in physics from Tsinghua University (Superviser: Prof. Pengfei Zhuang) with "Wu You Xun" Honors in 2014 . Afterwards he went to Goethe University for his Postdoctoral research in the Institute for Theoretical Physics (ITP). Since 2017, he joined FIAS as Research Fellow and lead the group "Deepthinkers" focusing on Deep Learning (DL) for physics and beyond, and since 2021 he became fellow at FIAS. Dr. Zhou has a very broad interest in physics and AI/DL application in different fields, particularly developing data-driven and physics-informed deep learning methods for physics research. Tecent Meeting: https://meeting.tencent.com/dm/QdIerBUbJzry Meeting ID:303-837-195