Recent Activities

Machine Learning meets Quantum Many-body Physics

2024-02-18  

Title: Machine Learning meets Quantum Many-body Physics

Speaker: Luo DiMIT & Harvard University

Time: 9:00 am, Feb.18th2024

Tencent Meeting ID: 960-119-871

Abstract: The simulation of quantum many-body physics, pivotal in uncovering ground state properties and real-time dynamics, is essential in the study of quantum science. In this talk, I will focus on how neural network quantum states, enriched with symmetries and physics principles, provide new opportunities for tackling challenges in quantum many-body simulations. I will introduce the pioneering work of designing anti-symmetric and gauge equivariant neural wavefunctions, which provides new tools for exploring exotic phases of quantum matter in two-dimensional quantum materials and quantum gauge theories. Furthermore, I will discuss how neural network generative models can be used to simulate non-equilibrium quantum dynamics based on quantum information theory, and applied in quantum experiments and computation. I will conclude with a discussion on the new possibilities of AI for physics, as well as how physics theories can help advance AI.