Chisel: Reshaping Queries to Trim Latency in Key-Value Stores

R. Birke, Juan F. Pérez, Sonia Ben Mokhtar, N. Rameshan, L. Chen
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引用次数: 1

Abstract

It is challenging for key-value data stores to trim user (tail) latency of requests as the workloads are observed to have skewed number of key-value pairs and commonly retrieved via multiget operation, i.e., all keys at the same time. In this paper we present Chisel, a novel client side solution to efficiently reshape the query size at the data store by adaptively splitting big requests into chunks to reap the benefits of parallelism and merge small requests into a single query to amortize latency overheads per request. We derive a novel layered queueing model that can quickly and approximately steer the decisions of Chisel. We extensively evaluate Chisel on memcached clusters hosted on a testbed, across a large number of scenarios with different workloads and system configurations. Our evaluation results show that Chisel can overturn the inherent high variability of requests into a judicious operational region, showcasing significant gains for the mean and 95th percentile of user perceived latency, compared to the state-of-art query processing policy.
凿:重塑查询以减少键值存储中的延迟
对于键值数据存储来说,减少请求的用户(尾)延迟是一项挑战,因为观察到工作负载具有倾斜的键值对数量,并且通常通过multiget操作检索,即同时检索所有键。在本文中,我们介绍了Chisel,这是一种新颖的客户端解决方案,通过自适应地将大请求分成块来获得并行性的好处,并将小请求合并到单个查询中来分摊每个请求的延迟开销,从而有效地重塑数据存储中的查询大小。我们推导了一种新的分层排队模型,该模型可以快速、近似地引导Chisel的决策。我们在测试平台上托管的memcached集群上广泛评估了Chisel,涵盖了具有不同工作负载和系统配置的大量场景。我们的评估结果表明,与最先进的查询处理策略相比,Chisel可以将请求固有的高可变性转化为明智的操作区域,在用户感知延迟的平均值和第95百分位数上显示出显著的收益。
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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