A configurable algorithm for parallel image-compositing applications

T. Peterka, David Goodell, R. Ross, Han-Wei Shen, R. Thakur
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引用次数: 79

Abstract

Collective communication operations can dominate the cost of large-scale parallel algorithms. Image compositing in parallel scientific visualization is a reduction operation where this is the case. We present a new algorithm called Radix-k that in many cases performs better than existing compositing algorithms. It does so through a set of configurable parameters, the radices, that determine the number of communication partners in each message round. The algorithm embodies and unifies binary swap and direct-send, two of the best-known compositing methods, and enables numerous other configurations through appropriate choices of radices. While the algorithm is not tied to a particular computing architecture or network topology, the selection of radices allows Radix-k to take advantage of new supercomputer interconnect features such as multiporting. We show scalability across image size and system size, including both powers of two and nonpowers-of-two process counts.
并行图像合成应用的可配置算法
集体通信操作可以支配大规模并行算法的成本。在并行科学可视化中,图像合成是一种简化操作。我们提出了一种叫做Radix-k的新算法,它在许多情况下比现有的合成算法表现得更好。它通过一组可配置的参数(根)来实现,这些参数决定了每个消息轮中通信伙伴的数量。该算法体现并统一了二进制交换和直接发送这两种最著名的合成方法,并通过适当选择基数支持许多其他配置。虽然该算法没有绑定到特定的计算体系结构或网络拓扑,但基数的选择允许Radix-k利用新的超级计算机互连功能,如多端口。我们展示了跨映像大小和系统大小的可伸缩性,包括2的幂和非2的幂进程计数。
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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