A Scalable Matrix-Free Iterative Eigensolver for Studying Many-Body Localization

R. Beeumen, Gregory D. Kahanamoku-Meyer, N. Yao, Chao Yang
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引用次数: 7

Abstract

We present a scalable and matrix-free eigensolver for studying two-level quantum spin chain models with nearest-neighbor XX +YY interactions plus Z terms. In particular, we focus on the Heisenberg interaction plus random on-site fields, a model that is commonly used to study the many-body localization (MBL) transition. This type of problem is computationally challenging because the vector space dimension grows exponentially with the physical system size, and the solve must be iterated many times to average over different configurations of the random disorder. For each eigenvalue problem, eigenvalues from different regions of the spectrum and their corresponding eigenvectors need to be computed. Traditionally, the interior eigenstates for a single eigenvalue problem are computed via the shift-and-invert Lanczos algorithm. Due to the extremely high memory footprint of the LU factorizations, this technique is not well suited for large number of spins L, e.g., one needs thousands of compute nodes on modern high performance computing infrastructures to go beyond L = 24. The new matrix-free approach, proposed in this paper, does not suffer from this memory bottleneck and even allows for simulating spin chains up to L = 24 spins on a single compute node. We discuss the OpenMP and hybrid MPI--OpenMP implementations of matrix-free block matrix-vector operations that are the key components of the new approach. The efficiency and effectiveness of the proposed algorithm is demonstrated by computing eigenstates in a massively parallel fashion, and analyzing their entanglement entropy to gain insight into the MBL transition.
研究多体定位的可伸缩无矩阵迭代特征解
我们提出了一个可扩展的无矩阵特征解算器,用于研究具有最近邻XX +YY相互作用和Z项的二能级量子自旋链模型。我们特别关注了海森堡相互作用加随机场场,这是一个通常用于研究多体局部化(MBL)跃迁的模型。这种类型的问题在计算上具有挑战性,因为向量空间维度随着物理系统的大小呈指数增长,并且必须多次迭代求解以对随机无序的不同配置进行平均。对于每个特征值问题,需要计算来自频谱不同区域的特征值及其对应的特征向量。传统上,单个特征值问题的内部特征态是通过移位-反转Lanczos算法计算的。由于LU分解的内存占用非常大,这种技术不太适合大量的旋转L,例如,在现代高性能计算基础设施上需要数千个计算节点才能超过L = 24。本文提出的新的无矩阵方法不受这种内存瓶颈的影响,甚至允许在单个计算节点上模拟多达L = 24个自旋的自旋链。我们讨论了OpenMP和混合MPI- OpenMP实现的无矩阵块矩阵向量操作,它们是新方法的关键组件。通过大规模并行计算特征态,并分析其纠缠熵来深入了解MBL跃迁,证明了该算法的效率和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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