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Transforming Lindblad Equations into Systems of Real-Valued Linear Equations: Performance Optimization and Parallelization of an Algorithm

机译:将Lindblad方程转换为实值线性方程的系统:算法的性能优化和并行化

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摘要

With their constantly increasing peak performance and memory capacity, modern supercomputers offer new perspectives on numerical studies of open many-body quantum systems. These systems are often modeled by using Markovian quantum master equations describing the evolution of the system density operators. In this paper, we address master equations of the Lindblad form, which are a popular theoretical tools in quantum optics, cavity quantum electrodynamics, and optomechanics. By using the generalized Gell–Mann matrices as a basis, any Lindblad equation can be transformed into a system of ordinary differential equations with real coefficients. Recently, we presented an implementation of the transformation with the computational complexity, scaling as O(N5logN) for dense Lindbaldians and O(N3logN) for sparse ones. However, infeasible memory costs remains a serious obstacle on the way to large models. Here, we present a parallel cluster-based implementation of the algorithm and demonstrate that it allows us to integrate a sparse Lindbladian model of the dimension N=2000 and a dense random Lindbladian model of the dimension N=200 by using 25 nodes with 64 GB RAM per node.
机译:由于他们不断提高了峰值性能和内存能力,现代超级计算机提供了关于开放许多型量子系统的数值研究的新观点。这些系统通常是通过使用描述系统密度运算符的演进的Markovian Quantum Master方程来建模。在本文中,我们解决了Lindblad形式的主架构,这是量子光学,空腔量子电动电动和光学力学的流行理论工具。通过使用广义的Gell-Mann矩阵作为基础,可以用真实系数转换为具有实际系数的常微分方程的系统。最近,我们介绍了使用计算复杂性的转换的实现,为稀疏的Lindbaldian和O(N3Logn)进行缩放为O(N5Logn)。然而,在大型模型的途中,不可行的记忆成本仍然是一个严重的障碍。在这里,我们介绍了基于群体的并行群集的实现,并证明我们允许我们通过使用64 GB的25个节点集成维度n = 2000的稀疏LINDBLADIA模型和维度n = 200的密集随机LINDBLADIA模型每个节点的RAM。

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