Workload Characterization of Nondeterministic Programs Parallelized by STATS

E. A. Deiana, Simone Campanoni
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引用次数: 1

Abstract

Chip Multiprocessors (CMP) are everywhere, from mobile systems, to servers. Thread Level Parallelism (TLP) is the characteristic of a program that makes use of the parallel cores of a CMP to generate performance. Despite all efforts for creating TLP, multiple cores are still underutilized even though we have been in the multicore era for more than a decade. Recently, a new approach called STATS has been proposed to generate additional TLP for complex and irregular nondeterministic programs. STATS allows a developer to describe application-specific information that its compiler uses to automatically generate a new source of TLP. This new source of TLP increases with the size of the input and it has the potential to generate scalable performance with the number of cores. Even though STATS obtains most of its potential, some of it is still unreached. This paper identifies and characterizes the sources of overhead that are currently blocking STATS parallelized programs to achieve their full potential. To this end, we characterized the workloads generated by the STATS compiler on a 28 core Intel-based machine (dual-socket). This paper shows that the performance loss is due to a combination of factors: some can be optimized via engineering efforts and some require a deeper evolution of STATS. We also highlight potential solutions to significantly reduce most of this overhead. Exploiting these insights will unblock scalable performance for the parallel binaries generated by STATS.
用STATS并行化的不确定性程序的工作负载表征
从移动系统到服务器,芯片多处理器(CMP)无处不在。线程级并行性(TLP)是程序利用CMP的并行核来产生性能的特性。尽管我们已经在多核时代工作了十多年,但尽管为创建TLP付出了所有努力,多核仍然没有得到充分利用。最近,一种名为STATS的新方法被提出,用于为复杂和不规则的不确定性程序生成额外的TLP。STATS允许开发人员描述其编译器用于自动生成新的TLP源的特定于应用程序的信息。这种新的TLP来源随着输入的大小而增加,并且有可能随着内核的数量而产生可扩展的性能。尽管STATS发挥了它的大部分潜力,但仍有一些潜力尚未实现。本文确定并描述了当前阻碍STATS并行程序实现其全部潜力的开销来源。为此,我们描述了STATS编译器在28核基于intel的机器(双插槽)上生成的工作负载。本文表明,性能损失是由多种因素共同造成的:有些因素可以通过工程努力进行优化,有些则需要对STATS进行更深入的改进。我们还强调了可以显著减少大部分开销的潜在解决方案。利用这些见解将为STATS生成的并行二进制文件打开可伸缩性能的障碍。
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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