图算法铁律

S. Beamer, K. Asanović, D. Patterson
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引用次数: 7

摘要

随着图算法新应用的出现,人们对改进图处理产生了极大的兴趣。然而,通常很难理解这些新的贡献是如何提高性能的。执行时间是最常报告的指标,它区分了哪个替代方案是最快的,但没有给出任何原因。一个新的贡献可能有一个算法创新,允许它检查更少的图边。它还可以具有减少通信的实现优化。它甚至可以进行优化,以提高内存带宽利用率。更有趣的是,一个新的创新可能同时影响这三个因素(算法工作、通信量和内存带宽利用率)。我们提出了图算法铁律(GAIL)来量化这些权衡,以帮助理解图算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GAIL: the graph algorithm iron law
As new applications for graph algorithms emerge, there has been a great deal of research interest in improving graph processing. However, it is often difficult to understand how these new contributions improve performance. Execution time, the most commonly reported metric, distinguishes which alternative is the fastest but does not give any insight as to why. A new contribution may have an algorithmic innovation that allows it to examine fewer graph edges. It could also have an implementation optimization that reduces communication. It could even have optimizations that allow it to increase its memory bandwidth utilization. More interestingly, a new innovation may simultaneously affect all three of these factors (algorithmic work, communication volume, and memory bandwidth utilization). We present the Graph Algorithm Iron Law (GAIL) to quantify these tradeoffs to help understand graph algorithm performance.
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