Using a Complementary Emulation-Simulation Co-Design Approach to Assess Application Readiness for Processing-in-Memory Systems

George Stelle, Stephen L. Olivier, Dylan T. Stark, Arun Rodrigues, K. Hemmert
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引用次数: 6

Abstract

Disruptive changes to computer architecture are paving the way toward extreme scale computing. The co-design strategy of collaborative research and development among computer architects, system software designers, and application teams can help to ensure that applications not only cope but thrive with these changes. In this paper, we present a novel combined co-design approach of emulation and simulation in the context of investigating future Processing in Memory (PIM) architectures. PIM enables co-location of data and computation to decrease data movement, to provide increases in memory speed and capacity compared to existing technologies and, perhaps most importantly for extreme scale, to improve energy efficiency. Our evaluation of PIM focuses on three mini-applications representing important production applications. The emulation and simulation studies examine the effects of locality-aware versus locality-oblivious data distribution and computation, and they compare PIM to conventional architectures. Both studies contribute in their own way to the overall understanding of the application-architecture interactions, and our results suggest that PIM technology shows great potential for efficient computation without negatively impacting productivity.
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使用互补的仿真-仿真协同设计方法来评估内存处理系统的应用准备情况
计算机架构的颠覆性变化为极端规模计算铺平了道路。计算机架构师、系统软件设计人员和应用程序团队之间的协作研究和开发的协同设计策略可以帮助确保应用程序不仅能够应对这些变化,而且能够适应这些变化。在本文中,我们提出了一种新的结合仿真和仿真的协同设计方法,以研究未来的内存处理(PIM)体系结构。PIM支持数据和计算的协同定位,以减少数据移动,与现有技术相比,提供内存速度和容量的增加,并且对于极端规模来说,可能最重要的是提高能源效率。我们对PIM的评估主要集中在代表重要生产应用程序的三个迷你应用程序上。仿真研究考察了位置感知与位置无关的数据分布和计算的影响,并将PIM与传统架构进行了比较。这两项研究都以各自的方式促进了对应用程序-体系结构相互作用的全面理解,我们的结果表明,PIM技术在不对生产力产生负面影响的情况下显示出高效计算的巨大潜力。
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