低精度加速器硬件上的快速有限元泊松求解器:Nvidia Tesla V100的概念验证研究

IF 3.5 3区 计算机科学 Q2 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
D. Ruda, S. Turek, D. Ribbrock, P. Zajác
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引用次数: 4

摘要

最近,图形卡形式的加速器硬件,包括专门用于人工智能的Tensor Core,在高性能计算领域获得了显著的重要性。例如,NVIDIA的Tesla V100承诺Tensor Cores可实现高达125 TFLOP/s的计算能力,但前提是使用半精度浮点格式。如果试图使用这种硬件进行数值模拟,即使用基于矩阵的有限元方法求解偏微分方程,我们将描述理论计算能力和实际计算能力之间的困难和差异,并提供数值示例。如果满足某些要求,即低条件数和许多密集矩阵运算,则可以在不过度损失精度的情况下达到所指示的高性能。基于层次有限元的“预处理”和附加的Schur补方法,提出并分析了一种求解二维泊松方程线性系统的新方法,该方法满足了这些要求。我们提供了数值结果,说明了该方法的计算性能,并将其与标准硬件上常用的(几何)多重网格求解器进行了比较。事实证明,与标准方法相比,我们几乎可以充分利用张量核的计算能力,并在不损失准确性的情况下实现显著的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Very fast finite element Poisson solvers on lower precision accelerator hardware: A proof of concept study for Nvidia Tesla V100
Recently, accelerator hardware in the form of graphics cards including Tensor Cores, specialized for AI, has significantly gained importance in the domain of high-performance computing. For example, NVIDIA’s Tesla V100 promises a computing power of up to 125 TFLOP/s achieved by Tensor Cores, but only if half precision floating point format is used. We describe the difficulties and discrepancy between theoretical and actual computing power if one seeks to use such hardware for numerical simulations, that is, solving partial differential equations with a matrix-based finite element method, with numerical examples. If certain requirements, namely low condition numbers and many dense matrix operations, are met, the indicated high performance can be reached without an excessive loss of accuracy. A new method to solve linear systems arising from Poisson’s equation in 2D that meets these requirements, based on “prehandling” by means of hier-archical finite elements and an additional Schur complement approach, is presented and analyzed. We provide numerical results illustrating the computational performance of this method and compare it to a commonly used (geometric) multigrid solver on standard hardware. It turns out that we can exploit nearly the full computational power of Tensor Cores and achieve a significant speed-up compared to the standard methodology without losing accuracy.
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来源期刊
International Journal of High Performance Computing Applications
International Journal of High Performance Computing Applications 工程技术-计算机:跨学科应用
CiteScore
6.10
自引率
6.50%
发文量
32
审稿时长
>12 weeks
期刊介绍: With ever increasing pressure for health services in all countries to meet rising demands, improve their quality and efficiency, and to be more accountable; the need for rigorous research and policy analysis has never been greater. The Journal of Health Services Research & Policy presents the latest scientific research, insightful overviews and reflections on underlying issues, and innovative, thought provoking contributions from leading academics and policy-makers. It provides ideas and hope for solving dilemmas that confront all countries.
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