Characterizing Performance and Energy-Efficiency of the RAMCloud Storage System

Y. Taleb, Shadi Ibrahim, Gabriel Antoniu, Toni Cortes
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引用次数: 4

Abstract

Most large popular web applications, like Facebook and Twitter, have been relying on large amounts of in-memory storage to cache data and offer a low response time. As the main memory capacity of clusters and clouds increases, it becomes possible to keep most of the data in the main memory. This motivates the introduction of in-memory storage systems. While prior work has focused on how to exploit the low-latency of in-memory access at scale, there is very little visibility into the energy-efficiency of in-memory storage systems. Even though it is known that main memory is a fundamental energy bottleneck in computing systems (i.e., DRAM consumes up to 40% of a server's power). In this paper, by the means of experimental evaluation, we have studied the performance and energy-efficiency of RAMCloud - a well-known in-memory storage system. We reveal that although RAMCloud is scalable for read-only applications, it exhibits non-proportional power consumption. We also find that the current replication scheme implemented in RAMCloud limits the performance and results in high energy consumption. Surprisingly, we show that replication can also play a negative role in crash-recovery.
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RAMCloud存储系统的性能和能效表征
大多数流行的大型web应用程序,如Facebook和Twitter,一直依赖于大量内存存储来缓存数据,并提供较低的响应时间。随着集群和云的主内存容量的增加,将大部分数据保存在主内存中成为可能。这促使了内存存储系统的引入。虽然先前的工作主要集中在如何利用大规模内存访问的低延迟,但对内存存储系统的能源效率的了解很少。尽管众所周知,主存储器是计算系统的基本能源瓶颈(即,DRAM消耗高达服务器功率的40%)。本文通过实验评估的方法,研究了RAMCloud -一个著名的内存存储系统的性能和能效。我们发现,尽管RAMCloud对于只读应用程序是可扩展的,但它显示出非比例的功耗。我们还发现,目前在RAMCloud中实现的复制方案限制了性能并导致高能耗。令人惊讶的是,我们发现复制也可以在崩溃恢复中发挥负面作用。
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