Disaggregated memory for expansion and sharing in blade servers

Kevin T. Lim, Jichuan Chang, T. Mudge, Parthasarathy Ranganathan, S. Reinhardt, T. Wenisch
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引用次数: 430

Abstract

Analysis of technology and application trends reveals a growing imbalance in the peak compute-to-memory-capacity ratio for future servers. At the same time, the fraction contributed by memory systems to total datacenter costs and power consumption during typical usage is increasing. In response to these trends, this paper re-examines traditional compute-memory co-location on a single system and details the design of a new general-purpose architectural building block-a memory blade-that allows memory to be "disaggregated" across a system ensemble. This remote memory blade can be used for memory capacity expansion to improve performance and for sharing memory across servers to reduce provisioning and power costs. We use this memory blade building block to propose two new system architecture solutions-(1) page-swapped remote memory at the virtualization layer, and (2) block-access remote memory with support in the coherence hardware-that enable transparent memory expansion and sharing on commodity-based systems. Using simulations of a mix of enterprise benchmarks supplemented with traces from live datacenters, we demonstrate that memory disaggregation can provide substantial performance benefits (on average 10X) in memory constrained environments, while the sharing enabled by our solutions can improve performance-per-dollar by up to 57% when optimizing memory provisioning across multiple servers.
在刀片服务器中用于扩展和共享的分解内存
对技术和应用趋势的分析表明,未来服务器的峰值计算与内存容量之比越来越不平衡。与此同时,在典型使用过程中,内存系统在数据中心总成本和功耗中所占的比例正在增加。为了响应这些趋势,本文重新审视了单一系统上传统的计算-内存协同定位,并详细介绍了一种新的通用架构构建块——内存刀片——的设计,它允许内存在整个系统集成中“分解”。这种远程内存刀片可用于内存容量扩展以提高性能,也可用于跨服务器共享内存以降低供应和电源成本。我们使用这个内存刀片构建块提出了两种新的系统架构解决方案——(1)虚拟化层的页面交换远程内存,(2)在一致性硬件支持下的块访问远程内存,从而在基于商品的系统上实现透明的内存扩展和共享。通过对企业基准测试的混合模拟,加上来自实时数据中心的跟踪,我们证明了内存分解可以在内存受限的环境中提供可观的性能优势(平均10倍),而我们的解决方案支持的共享在优化跨多个服务器的内存配置时,可以将每美元的性能提高高达57%。
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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