Memory optimization for parallel functional programs

Balaram Sinharoy , Boleslaw Szymanski
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引用次数: 3

Abstract

Parallel functional languages use single valued variables to avoid semantically irrelevant data dependence constraints. Programs containing iterations that redefine variables in a procedural language have the corresponding variables declared with additional dimensions in a single assignment language. This extra temporal dimension, unless optimized, requires an exorbitant amount of memory and in parallel programs imposes a large delay between the data producer and consumers. For certain loop arrangements, a window containing a few elements of the dimension can be created. Usually, there are many ways for defining a loop arrangement in an implementation of a functional program and a trade-off between the memory saving and the needed level of parallelism has to be taken into account when selecting the implementation. In this paper we prove that the problem of determining the best loop arrangement by partitioning the dependence graph is NP-hard. In addition, we describe a heuristic for solving this problem. Finally, we present examples of parallel functional programs in which the memory optimization results in reducing the local and shared memory requirements and communication delays.

并行函数程序的内存优化
并行函数式语言使用单值变量来避免语义上不相关的数据依赖约束。包含在过程语言中重新定义变量的迭代的程序具有在单一赋值语言中声明带有附加维度的相应变量。除非进行优化,否则这个额外的时间维度需要大量的内存,并且在并行程序中会在数据生产者和消费者之间施加很大的延迟。对于某些循环安排,可以创建包含该维度的几个元素的窗口。通常,在函数式程序的实现中有许多定义循环安排的方法,在选择实现时必须考虑在内存节省和所需的并行性级别之间进行权衡。本文证明了通过划分依赖图来确定最佳环路排列的问题是np困难的。此外,我们还描述了一种求解该问题的启发式算法。最后,我们给出了并行函数程序的示例,其中内存优化可以减少本地和共享内存需求以及通信延迟。
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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