HARP:增强数据近时性,最终实现一致的数据存储

Yu Tang, Hailong Sun, Xu Wang, Xudong Liu
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引用次数: 1

摘要

为了获得高性能并在网络分区或节点故障期间保持可用性,现代分布式系统经常牺牲近时性保证,这可以为不同的客户机提供关于数据项最新版本的统一视图。在这项工作中,我们考虑了在最终一致的数据存储之上保持低响应延迟和保持高可用性的同时增加数据最近的概率的问题。为了解决这个问题,我们提出了一种可以以高可用性的方式提高数据近时性的方法——HARP。在此基础上,我们实现了一个代理层来检测过期读取并解决冲突,并利用广泛部署的数据存储技术构建了一个数据存储系统。我们将原型系统与Cassandra进行了比较,并通过实验证明,基于最终一致的配置,我们的方法产生了较低的开销(小于10%),并且对于大多数工作负载,实现了比Cassandra强大的“读你写”配置更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HARP: Towards enhancing data recency for eventually consistent data stores
To attain high performance and remain available during network partitions or node failures, modern distributed systems often sacrifice recency guarantees, which can provide a uniform view on recent versions of data items for different clients. In this work, we consider the problem of increasing the probability of data recency while preserving low response latency and maintaining high availability on top of an eventually consistent data store. To solve the problem, we propose HARP, an approach that can enhance data recency in a highly available way. Based on HARP, we implement an agent layer to detect stale reads and resolve the conflicts, and by leveraging widely deployed data store technologies, we build a data storage system. We compare the prototype system to Cassandra, and experimentally prove that our method produces low overhead (less than 10%) based on the eventually consistent configuration and, for most workloads, achieves better performance than the Cassandra's strong “read your writes” configurations.
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