Transformations for High-Performance Computing

Jonice Oliveira
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Abstract

In the last three decades a large number of compiler transformations for optimizing programs have been implemented. Most optimizations for uniprocessors reduce the number of instructions executed by the program using transformations based on the analysis of scalar quantities and data-flow techniques. In contrast, optimizations for high-performance superscalar, vector, and parallel processors maximize parallelism and memory locality with transformations that rely on tracking the properties of arrays using loop dependence analysis. This survey is a comprehensive overview of the important high-level program restructuring techniques for imperative languages such as C and Fortran. Transformations for both sequential and various types of parallel architectures are covered in depth. We describe the purpose of each transformation, explain how to determine if it is legal, and give an example of its application.
高性能计算的转换
在过去的三十年中,已经实现了大量用于优化程序的编译器转换。针对单处理器的大多数优化使用基于标量量分析和数据流技术的转换来减少程序执行的指令数量。相反,针对高性能超标量处理器、矢量处理器和并行处理器的优化,通过依赖于使用循环依赖分析跟踪数组属性的转换,最大限度地提高了并行性和内存局部性。本调查是对命令式语言(如C和Fortran)中重要的高级程序重构技术的全面概述。本文将深入讨论顺序和各种类型的并行体系结构的转换。我们将描述每个转换的目的,解释如何确定它是否合法,并给出其应用的示例。
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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