Scalable Abstractions for Parallel Programming

W. Griswold, G. Harrison, D. Notkin, L. Snyder
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引用次数: 36

Abstract

Writing parallel programs that scale-that is, that naturally and efficiently adapt to the size of the problem and the number of processors available-is difficult for two reasons. First, the overhead of multiplexing the processing of data points assigned to a given processor is often great. Second, to achieve scaling in asymptotic performance, the algorithm that uses the interprocessor communication structure may need to differ from the algorithm used to process points located within an individual processor. We present abstractions intended to overcome these problems, making it straightforward to define scalable parallel program. The central abstraction is an ensemble,. which gives programmers a global view of physically distributed data, computation, and communication. We demonstrate the application of these ensembles to two variants of Batcher’s sort, describing how the concepts apply to other parallel programs.
并行编程的可伸缩抽象
编写可伸缩的并行程序(即自然而有效地适应问题的大小和可用处理器的数量)很困难,原因有两个。首先,将分配给给定处理器的数据点进行多路复用处理的开销通常很大。其次,为了实现渐近性能的缩放,使用处理器间通信结构的算法可能需要与用于处理位于单个处理器内的点的算法不同。我们提出的抽象是为了克服这些问题,使定义可扩展的并行程序变得简单。中心抽象是一个集合。它为程序员提供了物理分布数据、计算和通信的全局视图。我们演示了这些集成在Batcher排序的两个变体中的应用,描述了这些概念如何应用于其他并行程序。
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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