A Distributed Parallel Random Walk Algorithm for Large-Scale Capacitance Extraction and Simulation

Mingye Song, Zhezhao Xu, Wei Xue, Wenjian Yu
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引用次数: 6

Abstract

Due to the advantages on scalability and reliability, the floating random walk (FRW) algorithm has been widely adopted for calculating the capacitances among three-dimensional (3-D) conductors. This is evidenced by the industrial practice of interconnect capacitance extraction during the design of high-performance very large-scale integrated (VLSI) circuits. In this work, the FRW algorithm is enhanced through the distributed parallel computing. With an efficient and adaptive task allocation scheme, the communication among different computer nodes is largely reduced. A distributed algorithm for accelerating the space management is also proposed. They have been implemented with Message Passing Interface (MPI) and applied to the high-precision capacitance simulation for touchscreen design and the interconnect capacitance extraction of VLSI circuits. Experiments on a computer cluster show that the proposed techniques achieve up to 114X speedup while using 120 cores, and build up the space management structure for a VLSI case including two million conductor blocks in just 22 seconds (37X parallel speedup on 60 cores).
大规模电容提取与仿真的分布式并行随机游走算法
浮动随机漫步(FRW)算法由于具有可扩展性和可靠性等优点,被广泛应用于三维导体间的电容计算。在高性能超大规模集成电路(VLSI)设计过程中,互连电容提取的工业实践证明了这一点。本文通过分布式并行计算对FRW算法进行了改进。通过高效、自适应的任务分配方案,大大减少了计算机节点间的通信。提出了一种加快空间管理的分布式算法。它们已与消息传递接口(MPI)一起实现,并应用于触摸屏设计的高精度电容仿真和VLSI电路的互连电容提取。在计算机集群上的实验表明,所提出的技术在使用120核时实现了高达114X的加速,并在22秒内建立了包含200万个导体块的VLSI机箱的空间管理结构(60核时并行加速37X)。
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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