Performance challenges in modular parallel programs

Umut A. Acar, V. Aksenov, A. Charguéraud, Mike Rainey
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引用次数: 2

Abstract

Over the past decade, many programming languages and systems for parallel-computing have been developed, including Cilk, Fork/Join Java, Habanero Java, Parallel Haskell, Parallel ML, and X10. Although these systems raise the level of abstraction at which parallel code are written, performance continues to require the programmer to perform extensive optimizations and tuning, often by taking various architectural details into account. One such key optimization is granularity control, which requires the programmer to determine when and how parallel tasks should be sequentialized. In this paper, we briefly describe some of the challenges associated with automatic granularity control when trying to achieve portable performance for parallel programs with arbitrary nesting of parallel constructs. We consider a result from the functional-programming community, whose starting point is to consider an "oracle" that can predict the work of parallel codes, and thereby control granularity. We discuss the challenges in implementing such an oracle and proving that it has the desired theoretical properties under the nested-parallel programming model.
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模块化并行程序的性能挑战
在过去的十年中,已经开发了许多用于并行计算的编程语言和系统,包括Cilk、Fork/Join Java、Habanero Java、Parallel Haskell、Parallel ML和X10。尽管这些系统提高了编写并行代码的抽象级别,但性能仍然需要程序员执行广泛的优化和调优,通常需要考虑各种体系结构细节。其中一个关键的优化是粒度控制,它要求程序员决定何时以及如何对并行任务进行排序。在本文中,我们简要地描述了当试图实现具有任意并行结构嵌套的并行程序的可移植性能时,与自动粒度控制相关的一些挑战。我们考虑一个来自函数式编程社区的结果,它的出发点是考虑一个“oracle”,它可以预测并行代码的工作,从而控制粒度。我们讨论了实现这种oracle的挑战,并证明了它在嵌套并行编程模型下具有所需的理论性质。
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