Client-Centric Benchmarking of Eventual Consistency for Cloud Storage Systems

W. Golab, Muntasir Raihan Rahman, Alvin AuYoung, K. Keeton, J. Wylie, Indranil Gupta
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引用次数: 55

Abstract

Eventually-consistent key-value storage systems sacrifice the ACID semantics of conventional databases to achieve superior latency and availability. However, this means that client applications, and hence end-users, can be exposed to stale data. The degree of staleness observed depends on various tuning knobs set by application developers (customers of key-value stores) and system administrators (providers of key-value stores). Both parties must be cognizant of how these tuning knobs affect the consistency observed by client applications in the interest of both providing the best end-user experience and maximizing revenues for storage providers. Quantifying consistency in a meaningful way is a critical step toward both understanding what clients actually observe, and supporting consistency-aware service level agreements (SLAs) in next generation storage systems. This paper proposes a novel consistency metric called Gamma that captures client-observed consistency. This metric provides quantitative answers to questions regarding observed consistency anomalies, such as how often they occur and how bad they are when they do occur. We argue that Gamma is more useful and accurate than existing metrics. We also apply Gamma to benchmark the popular Cassandra key-value store. Our experiments demonstrate that Gamma is sensitive to both the workload and client-level tuning knobs, and is preferable to existing techniques which focus on worst-case behavior.
以客户为中心的云存储系统最终一致性基准测试
最终一致的键值存储系统牺牲了传统数据库的ACID语义,以实现更好的延迟和可用性。但是,这意味着客户机应用程序以及最终用户可能会暴露于过时的数据。观察到的过时程度取决于应用程序开发人员(键值存储的客户)和系统管理员(键值存储的提供者)设置的各种调优旋钮。双方都必须认识到这些调优旋钮如何影响客户端应用程序所观察到的一致性,以提供最佳的最终用户体验并最大化存储提供商的收入。以有意义的方式量化一致性是理解客户端实际观察到的内容和支持下一代存储系统中具有一致性意识的服务水平协议(sla)的关键一步。本文提出了一种新的一致性度量,称为Gamma,用于捕获客户观察到的一致性。这个度量为观察到的一致性异常提供了定量的答案,比如它们发生的频率和发生时的严重程度。我们认为Gamma比现有的度量标准更有用、更准确。我们还应用Gamma对流行的Cassandra键值存储进行基准测试。我们的实验表明,Gamma对工作负载和客户级调优旋钮都很敏感,并且比专注于最坏情况行为的现有技术更优选。
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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