一个整体数据流启发的系统设计

Stéphane Zuckerman, Haitao Wei, G. Gao, H. Wong, J. Gaudiot, A. Louri
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引用次数: 2

摘要

最近,计算机系统经历了一场根本性的转变,从单核处理器到在单个芯片内拥有越来越多核数的设备。半导体行业现在面临着臭名昭著的电力和利用墙。为了应对这些挑战,在架构和技术层面上设计的异构性将成为节能计算的主流方法,因为专用核心、加速器等可以消除通用同质核心的能源开销。然而,随着未来的技术挑战指向片上异构的方向,并且由于并行编程的传统困难,产生能够利用异构硬件的新系统软件堆栈变得势在必行。作为一个恰当的例子,每个芯片的内核数继续急剧增加,而每个内核可用的片上内存只是略微增加。因此,在高性能计算中已经必不可少的数据局部性,将随着内存技术的进步变得更加重要。反过来,这使得开发新的执行模型以更好地利用未来多核芯片中异构计算的趋势变得至关重要。为了解决这些问题,我们提出了一种横切跨层的方法来解决未来异构多核芯片带来的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Holistic Dataflow-Inspired System Design
Computer systems have undergone a fundamental transformation recently, from single-core processors to devices with increasingly higher core counts within a single chip. The semi-conductor industry now faces the infamous power and utilization walls. To meet these challenges, heterogeneity in design, both at the architecture and technology levels, will be the prevailing approach for energy efficient computing as specialized cores, accelerators, etc., can eliminate the energy overheads of general-purpose homogeneous cores. However, with future technological challenges pointing in the direction of on-chip heterogeneity, and because of the traditional difficulty of parallel programming, it becomes imperative to produce new system software stacks that can take advantage of the heterogeneous hardware. As a case in point, the core count per chip continues to increase dramatically while the available on-chip memory per core is only getting marginally bigger. Thus, data locality, already a must-have in high-performance computing, will become even more critical as memory technology progresses. In turn, this makes it crucial that new execution models be developed to better exploit the trends of future heterogeneous computing in many-core chips. To solve these issues, we propose a cross-cutting cross-layer approach to address the challenges posed by future heterogeneous many-core chips.
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