Oil and Water Can Mix: An Integration of Polyhedral and AST-Based Transformations

J. Shirako, L. Pouchet, Vivek Sarkar
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引用次数: 30

Abstract

Optimizing compilers targeting modern multi-core machines require complex program restructuring to expose the best combinations of coarse- and fine-grain parallelism and data locality. The polyhedral compilation model has provided significant advancements in the seamless handling of compositions of loop transformations, thereby exposing multiple levels of parallelism and improving data reuse. However, it usually implements abstract optimization objectives, for example "maximize data reuse", which often does not deliver best performance, e.g., The complex loop structures generated can be detrimental to short-vector SIMD performance. In addition, several key transformations such as pipeline-parallelism and unroll-and-jam are difficult to express in the polyhedral framework. In this paper, we propose a novel optimization flow that combines polyhedral and syntactic/AST-based transformations. It generates high-performance code that contains regular loops which can be effectively vectorized, while still implementing sufficient parallelism and data reuse. It combines several transformation stages using both polyhedral and AST-based transformations, delivering performance improvements of up to 3× over the PoCC polyhedral compiler on Intel Nehalem and IBM Power7 multicore processors.
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油和水可以混合:多面体和基于ast的转换的集成
优化针对现代多核机器的编译器需要复杂的程序重构,以暴露粗粒度和细粒度并行性和数据局部性的最佳组合。多面体编译模型在无缝处理循环转换组合方面取得了重大进展,从而暴露了多层并行性并改进了数据重用。然而,它通常实现抽象的优化目标,例如“最大化数据重用”,这通常不会提供最佳性能,例如,生成的复杂循环结构可能对短向量SIMD性能有害。此外,在多面体框架中难以表达管道并行化和展开卡塞等关键变换。在本文中,我们提出了一种新的优化流程,该流程结合了多面体和基于语法/ ast的转换。它生成高性能代码,其中包含可以有效向量化的规则循环,同时仍然实现足够的并行性和数据重用。它结合了使用多面体和基于ast的转换的几个转换阶段,在Intel Nehalem和IBM Power7多核处理器上提供了比PoCC多面体编译器高达3倍的性能改进。
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