QST Seminar - Operator Learning Renormalization Group for Quantum Simulation

2:00pm - 3:00pm
W1-102

Supporting the below United Nations Sustainable Development Goals:支持以下聯合國可持續發展目標:支持以下联合国可持续发展目标:

By generalizing Wilson's Numerical Renormalization Group (NRG) and Density Matrix Renormalization Group (DMRG) from a learning perspective, we find a new variational principle that allows one to use a more flexible ansätze in the DMRG style, which we term the "operator learning renormalization group" (OLRG). We first prove the general convergence condition called "scale consistency". Subsequently, we establish a theorem that demonstrates an area-law scaled error upper bound in instances of time evolution resulting from locality.  We then showcase this variational principle using some toy ansätze and models to illustrate its convergence. We believe this opens new opportunities in exploring the simulation of many-body systems by utilizing their locality and modern differentiable solvers on small systems. Additionally, we find this variational principle leads to new types of digital analog quantum simulation algorithms with adjustable digital resource requirements. Finally, we will discuss some open problems that arise from this new setup.

Event Format
Speakers / Performers:
Roger Luo (罗秀哲)
University of Waterloo, Perimeter Institute

Xiuzhe Luo is a Ph.D. candidate from the University of Waterloo and Perimeter Institute. His interests are in exploring the programmatic representation of quantum many-body physics using machine learning and modern methods of programming. He is one of the creators of the Yao framework and many other open-source packages in the Julia programming language.

Language
English
Recommended For
Faculty and staff
PG students
Organizer
Center of Quantum Science and Technology, HKUST(GZ)
Advacend Material Thrust, Function Hub, HKUST(GZ)
Post an event
Campus organizations are invited to add their events to the calendar.