A Quantitative Approach for Adopting Disaggregated Memory in HPC Systems

Jacob Wahlgren, Gabin Schieffer, M. Gokhale, I. Peng
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Abstract

Memory disaggregation has recently been adopted in data centers to improve resource utilization, motivated by cost and sustainability. Recent studies on large-scale HPC facilities have also highlighted memory underutilization. A promising and non-disruptive option for memory disaggregation is rack-scale memory pooling, where node-local memory is supplemented by shared memory pools. This work outlines the prospects and requirements for adoption and clarifies several misconceptions. We propose a quantitative method for dissecting application requirements on the memory system from the top down in three levels, moving from general, to multi-tier memory systems, and then to memory pooling. We provide a multi-level profiling tool and LBench to facilitate the quantitative approach. We evaluate a set of representative HPC workloads on an emulated platform. Our results show that prefetching activities can significantly influence memory traffic profiles. Interference in memory pooling has varied impacts on applications, depending on their access ratios to memory tiers and arithmetic intensities. Finally, in two case studies, we show the benefits of our findings at the application and system levels, achieving 50% reduction in remote access and 13% speedup in BFS, and reducing performance variation of co-located workloads in interference-aware job scheduling.
在高性能计算系统中采用分解存储器的定量方法
出于成本和可持续性的考虑,数据中心最近采用内存分解来提高资源利用率。最近对大型高性能计算设施的研究也强调了内存利用率不足。对于内存分解,一个很有前途且不会中断的选择是机架级内存池,其中节点本地内存由共享内存池补充。这项工作概述了采用的前景和要求,并澄清了一些误解。我们提出了一种定量的方法,从上到下分三个层次剖析内存系统上的应用程序需求,从一般内存系统到多层内存系统,然后到内存池。我们提供了一个多级分析工具和LBench来促进定量方法。我们在模拟平台上评估了一组具有代表性的HPC工作负载。我们的结果表明,预取活动可以显著影响内存流量配置文件。内存池中的干扰对应用程序有不同的影响,这取决于它们对内存层的访问比率和算法强度。最后,在两个案例研究中,我们展示了我们的发现在应用程序和系统级别的好处,实现了远程访问减少50%,BFS加速13%,并减少了干扰感知作业调度中同址工作负载的性能变化。
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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