Methodology for Evaluating the Potential of Disaggregated Memory Systems

Nan Ding, Samuel Williams, H. Nam, Taylor L. Groves, M. Awan, LeAnn Lindsey, C. Daley, Oguz Selvitopi, L. Oliker, N. Wright
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引用次数: 2

Abstract

Tightly-coupled HPC systems have rigid memory allocation and can result in expensive memory resource underutilization. As novel memory and network technologies mature, disaggregated memory systems are becoming a promising solution for future HPC systems. It allows workloads to use the available memory of the entire system. In this paper, we propose a design framework to explore the disaggregated memory system design space. The framework incorporates memory capacity, network bandwidth, and local and remote memory access ratio, and provides an intuitive approach to guide machine configurations based on technology trends and workload characteristics. We apply our framework to analyze eleven workloads from five computational scenarios, including AI training, data analysis, genomics, protein, and traditional HPC. We demonstrate the ability of our methodology to understand the potential and pitfalls on a disaggregated memory system and motivate machine configurations. Our methodology shows that the 10 out of our 11 applications/workflows can leverage disaggregated memory without affecting performance.
评估分解记忆系统潜力的方法学
紧密耦合的高性能计算系统具有严格的内存分配,并且可能导致昂贵的内存资源未充分利用。随着新的存储和网络技术的成熟,分解存储系统正在成为未来高性能计算系统的一个有前途的解决方案。它允许工作负载使用整个系统的可用内存。在本文中,我们提出了一个设计框架来探索分解存储系统的设计空间。该框架结合了内存容量、网络带宽、本地和远程内存访问比率,并提供了一种基于技术趋势和工作负载特征的直观方法来指导机器配置。我们应用我们的框架来分析来自5种计算场景的11种工作负载,包括人工智能训练、数据分析、基因组学、蛋白质和传统HPC。我们证明了我们的方法能够理解分解内存系统的潜在和缺陷,并激发机器配置。我们的方法表明,我们的11个应用程序/工作流中有10个可以在不影响性能的情况下利用分解内存。
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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