MPS & PEPS algorithms in condensed matter physics
This course provide an comprehensible introduction to two pivotal tensor network states—the Matrix Product States (MPS) and the Projected Entangled Pair States (PEPS)—for simulating complex quantum systems in condensed matter physics. First originated from the density matrix renormalization group (DMRG) method, the MPS excels at modeling one-dimensional (1D) systems by efficiently representing ground states, excited states, and dynamics through low-rank tensor decomposition. Its computational tractability makes it ideal for studying spin chains, quantum phase transitions, and critical phenomena in 1D lattices.
PEPS extends these principles to two-dimensional (2D) and higher-dimensional systems, capturing intricate entanglement structures that evade traditional methods. PEPS utilizes tensor networks to simulate statistical models, topological order, quantum spin liquids, and anyonic excitations in high-dimensional lattices. However, PEPS also brings higher computational complexity to the algorithm and provides greater challenges to algorithm design.
PEPS extends these principles to two-dimensional (2D) and higher-dimensional systems, capturing intricate entanglement structures that evade traditional methods. PEPS utilizes tensor networks to simulate statistical models, topological order, quantum spin liquids, and anyonic excitations in high-dimensional lattices. However, PEPS also brings higher computational complexity to the algorithm and provides greater challenges to algorithm design.
讲师
日期
2025年10月13日 至 12月29日
位置
Weekday | Time | Venue | Online | ID | Password |
---|---|---|---|---|---|
周一 | 13:30 - 16:55 | A3-2a-302 | Zoom 15 | 204 323 0165 | BIMSA |
修课要求
quantum mechanics
课程大纲
After quickly supplementing the preliminary knowledge, we will introduce several representative tensor network algorithms of MPS and PEPS, such as DMRG, TEBD, TDVP, etc., and for the PEPS algorithms, we will talk about TRG, HOTRG, SRG, Loop-TNR, CTMRG, AutoDifferentiation, etc.
听众
Advanced Undergraduate
, Graduate
, 博士后
, Researcher
视频公开
不公开
笔记公开
不公开
语言
中文
讲师介绍
程嵩,现任北京雁栖湖应用数学研究院助理研究员,曾任鹏城实验室量子计算中心助理研究员,博士毕业于中科院物理所理论物理专业。他的研究方向是张量网络算法,研究兴趣主要集中于开发张量网络在凝聚态物理,机器学习,量子计算等方向的新算法。