Vectorisation avoidance

G. Keller, M. Chakravarty, Roman Leshchinskiy, B. Lippmeier, S. Jones
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引用次数: 17

Abstract

Flattening nested parallelism is a vectorising code transform that converts irregular nested parallelism into flat data parallelism. Although the result has good asymptotic performance, flattening thoroughly restructures the code. Many intermediate data structures and traversals are introduced, which may or may not be eliminated by subsequent optimisation. We present a novel program analysis to identify parts of the program where flattening would only introduce overhead, without appropriate gain. We present empirical evidence that avoiding vectorisation in these cases leads to more efficient programs than if we had applied vectorisation and then relied on array fusion to eliminate intermediates from the resulting code.
避免矢量化
扁平化嵌套并行是一种向量化代码转换,它将不规则的嵌套并行转换为扁平的数据并行。虽然结果具有良好的渐近性能,但扁平化彻底地重构了代码。引入了许多中间数据结构和遍历,这些可能会被后续的优化消除,也可能不会。我们提出了一种新颖的程序分析,以确定程序中扁平化只会引入开销而没有适当增益的部分。我们提出的经验证据表明,在这些情况下,避免向量化比我们应用向量化然后依靠数组融合来消除结果代码中的中间部分更有效。
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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