Exascale计算的机器模型和代理体系结构

J. Ang, R. Barrett, R. Benner, D. Burke, Cy Chan, Jeanine E. Cook, D. Donofrio, S. Hammond, K. Hemmert, Suzanne M. Kelly, H. Le, V. Leung, D. Resnick, Arun Rodrigues, J. Shalf, Dylan T. Stark, D. Unat, N. Wright
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引用次数: 64

摘要

为了实现百亿亿次计算,基本的硬件架构必须改变。这将显著影响运行在当前高性能计算(HPC)系统上的科学应用程序,其中许多系统编纂了多年的科学领域知识,并对当代计算机系统进行了改进。为了适应百亿亿级架构,开发人员必须能够对新硬件进行推理,并确定哪些编程模型和算法将在未来提供性能和能效的最佳组合。抽象机器模型被设计成只向应用程序开发人员和系统软件公开机器的重要方面或与性能和代码结构相关的方面。这些模型旨在帮助应用程序开发人员和硬件架构师在协同设计过程中进行沟通。代理体系结构是抽象机器模型的参数化版本,其中添加了参数以阐明关键硬件组件的潜在速度和容量。这些更详细的体系结构模型使分析模型和模拟器的开发人员以及计算机硬件架构师之间能够进行讨论,并且它们允许应用程序性能分析、系统软件开发和硬件优化机会。在本文中,我们提出了一组抽象的机器模型,并展示了如何使用它们来帮助软件开发人员为百亿亿级做准备。然后,我们将参数应用于其中一个模型,以演示代理体系结构如何能够更具体地探索应用程序代码如何映射到未来的体系结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abstract Machine Models and Proxy Architectures for Exascale Computing
To achieve exascale computing, fundamental hardware architectures must change. This will significantly impact scientific applications that run on current high performance computing (HPC) systems, many of which codify years of scientific domain knowledge and refinements for contemporary computer systems. To adapt to exascale architectures, developers must be able to reason about new hardware and determine what programming models and algorithms will provide the best blend of performance and energy efficiency in the future. An abstract machine model is designed to expose to the application developers and system software only the aspects of the machine that are important or relevant to performance and code structure. These models are intended as communication aids between application developers and hardware architects during the co-design process. A proxy architecture is a parameterized version of an abstract machine model, with parameters added to elucidate potential speeds and capacities of key hardware components. These more detailed architectural models enable discussion among the developers of analytic models and simulators and computer hardware architects and they allow for application performance analysis, system software development, and hardware optimization opportunities. In this paper, we present a set of abstract machine models and show how they might be used to help software developers prepare for exascale. We then apply parameters to one of these models to demonstrate how a proxy architecture can enable a more concrete exploration of how well application codes map onto future architectures.
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