多面体数据流编程:一个案例研究

Romain Fontaine, L. Gonnord, L. Morel
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引用次数: 4

摘要

数据流语言自然地暴露了应用程序潜在的并行性,因此在过去的三十年中,数据流语言作为一种利用日益增长的硬件并行性的解决方案得到了研究和开发。然而,在为并行处理器生成代码时,当前的数据流编译器只考虑应用程序的整体数据流网络。这排除了从代理内部提取的潜在并行性,例如,通常当这些代理包含循环巢时,也排除了代理内部管道或任务分裂和重新调度的潜在应用。在这项工作中,我们研究了将多面体编译与数据流语言联合使用的好处。更准确地说,我们建议通过考虑描述程序代理内部行为的循环巢所暴露的并行性来扩展数据流程序的并行化。通过开发基于ΣC语言扩展版本的原型工具链,验证了这种方法。我们展示了这种方法的好处,以及在相关案例研究中进一步改进的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Polyhedral Dataflow Programming: A Case Study
Dataflow languages expose the application's potential parallelism naturally and have thus been studied and developped for the past thirty years as a solution for harnessing the increasing hardware parallelism. However, when generating code for parallel processors, current dataflow compilers only take into consideration the overall dataflow network of the application. This leaves out the potential parallelism that could be extracted from the internals of agents, typically when those include loop nests, for instance, but also potential application of intra-agent plpelining, or task spliting and rescheduling. In this work, we study the benefits of jointly using polyhedral compilation with dataflow languages. More precisely, we propose to expend the parallelization of dataflow programs by taking into account the parallelism exposed by loop nests describing the internal behavior of the program's agents. This approach is validated through the development of a prototype toolchain based on an extended version of the ΣC language. We demonstrate the benefit of this approach and the potentiality of further improvements on relevant case studies.
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