Simba: tunable end-to-end data consistency for mobile apps

Dorian Perkins, Nitin Agrawal, Akshat Aranya, Curtis Yu, Younghwan Go, H. Madhyastha, C. Ungureanu
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引用次数: 40

Abstract

Developers of cloud-connected mobile apps need to ensure the consistency of application and user data across multiple devices. Mobile apps demand different choices of distributed data consistency under a variety of usage scenarios. The apps also need to gracefully handle intermittent connectivity and disconnections, limited bandwidth, and client and server failures. The data model of the apps can also be complex, spanning inter-dependent structured and unstructured data, and needs to be atomically stored and updated locally, on the cloud, and on other mobile devices. In this paper we study several popular apps and find that many exhibit undesirable behavior under concurrent use due to inadequate treatment of data consistency. Motivated by the shortcomings, we propose a novel data abstraction, called a sTable, that unifies a tabular and object data model, and allows apps to choose from a set of distributed consistency schemes; mobile apps written to this abstraction can effortlessly sync data with the cloud and other mobile devices while benefiting from end-to-end data consistency. We build Simba, a data-sync service, to demonstrate the utility and practicality of our proposed abstraction, and evaluate it both by writing new apps and porting existing inconsistent apps to make them consistent. Experimental results show that Simba performs well with respect to sync latency, bandwidth consumption, server throughput, and scales for both the number of users and the amount of data.
Simba:移动应用的可调端到端数据一致性
云连接移动应用程序的开发人员需要确保跨多个设备的应用程序和用户数据的一致性。在不同的使用场景下,移动应用需要不同的分布式数据一致性选择。应用程序还需要优雅地处理间歇性连接和断开连接、有限带宽以及客户端和服务器故障。应用程序的数据模型也可能很复杂,跨越相互依赖的结构化和非结构化数据,并且需要在本地、云端和其他移动设备上自动存储和更新。在本文中,我们研究了几个流行的应用程序,发现由于数据一致性处理不当,许多应用程序在并发使用下表现出不良行为。由于这些缺点,我们提出了一种新的数据抽象,称为sTable,它统一了表格和对象数据模型,并允许应用程序从一组分布式一致性方案中进行选择;使用这种抽象编写的移动应用程序可以毫不费力地与云和其他移动设备同步数据,同时受益于端到端的数据一致性。我们构建了Simba,一个数据同步服务,来展示我们提出的抽象的效用和实用性,并通过编写新的应用程序和移植现有的不一致的应用程序来评估它,使它们一致。实验结果表明,Simba在同步延迟、带宽消耗、服务器吞吐量以及用户数量和数据量的可伸缩性方面表现良好。
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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