新利18体育新

 首页 Home  |  新利体育客户端网址  |  人员 People  |  科学研究 Science  |  科研设备 Facilities  |  新利18最新体育娱乐  |  人才培养 Education  |  国际合作 Collaborations  |  科学普及 Outreach  |  诚聘英才 Recruitment  |  访问指南 For Visitors 
 
 首页 Home 
 新利体育客户端网址 
 人员 People 
 科学研究 Science 
 新利18最新体育娱乐 
 人才培养 Education 
 科学普及 Outreach 
 诚聘英才 Recruitment 
 访问指南 For Visitors 
 内部链接 Internal 
 
  过往活动 Past Events
当前位置: 首页 Home>>过往活动 Past Events>>正文
 

Colloquium on Sep. 5, 2024

Differentiable and symbolic modeling of the Universe in the age of machine learning


Speaker: Yin Li (Peng Cheng Laboratory)

Venue: SWIFAR Building 2111

Time: 16:00 PM, Thursday, Sep. 5, 2024

Abstract:

Rapid advances in machine learning have brought not only myriad powerful neural network models, but also breakthroughs that can potentially benefit established scientific research. This talk focuses on two such applications in cosmology. The first one aims at optimal inference of physical information from cosmological surveys, by differentiable forward modeling of the Universe. Using the adjoint method, we've developed a memory and computation efficient differentiable simulation framework on GPUs, upon which we are adding various cosmological probes. One most important probe is gravitational lensing, for which we have developed a novel Hamiltonian, post-Born, three-dimensional, on-the-fly ray tracing algorithm. The end goal is a field-level forward model of all probes of the whole observable Universe, with which we can jointly infer physics of interest and/or the initial conditions of the Universe, while marginalizing over others. In the other application, we symbolically model cosmic reionization to simplify the standard ΛCDM cosmology, from a 6-parameter model to a 5-parameter one. Using symbolic regression, we distill analytic expressions from numerical simulations and discover that the Gompertz function, discovered 200 years ago to model human mortality, also well describes the mortality of neutral hydrogen in the Universe. This simulation-based symbolic approach is key to multiple important cosmological and astrophysical results that I will present.


Report PPT:  SWIFAR_Yin Li.pdf

附件【SWIFAR_Yin Li.pdf已下载
关闭窗口

版权所有:新利18体育新 

新利体育平台怎么样

Baidu
map