科学研究
报告题目:

Efficient Sampling of Quantum Thermal Averages

报告人:

周珍楠 助理教授(北京大学国际数学研究中心)

报告时间:

报告地点:

理学院东北楼三楼报告厅(302)

报告摘要:

The calculation of thermal averages plays a central role in equilibrium statistical mechanics. For interacting quantum systems, these averages are challenging to compute due to the high dimensionality and the need to capture quantum effects. Path integral methods offer a route to transform these quantum averages into equivalent classical averages by introducing an extended coordinate space. However, the computational cost grows rapidly with the number of path integral beads. This talk will present two complementary strategies to enable more efficient sampling of quantum thermal averages. First, we investigate the continuum limit as the number of beads approaches infinity, providing algorithms that have exponential ergodicity with respect to the number of beads. Second, we introduce a random batch method that greatly reduces the per-timestep complexity for simulating multiple interacting particles. For both approaches, we establish rigorous error estimates demonstrating improved accuracy and efficiency.