可扩展数据管理:NoSQL数据存储的研究和实践

Felix Gessert, N. Ritter
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引用次数: 20

摘要

如今,数据消费和生成的空前规模显示出对可扩展数据管理的巨大需求,并催生了非关系型、分布式的“NoSQL”数据库系统。两个核心问题触发了这个过程:1)现代应用程序中大量用户生成的内容以及由此产生的请求负载和数据量2)开发人员社区希望使用特定于问题的数据模型进行存储和查询。为了满足这些需求,工业界和研究人员开发了各种数据存储,认为一刀切数据库系统的时代已经结束。这些系统(现在通常称为NoSQL数据存储)的异构性和绝对数量使得为给定应用程序选择最合适的系统变得越来越困难。因此,这些系统经常组合在多语言持久性架构中,以在各自的最佳位置利用每个系统。本教程对最相关的NoSQL数据库进行了深入的调查,以提供比较分类并强调开放的挑战。为此,我们分析了每个系统的方法,得出了其可扩展性、可用性、一致性、数据建模和查询特性。我们展示了每个系统的设计是如何由一组对不可调和的系统属性进行权衡的中心控制的。然后,我们介绍了分布式数据管理方面的最新研究成果,以说明NoSQL系统的一些缺点已经可以在实践中得到解决,而其他NoSQL数据管理问题则提出了有趣的和未解决的研究挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable data management: NoSQL data stores in research and practice
The unprecedented scale at which data is consumed and generated today has shown a large demand for scalable data management and given rise to non-relational, distributed “NoSQL” database systems. Two central problems triggered this process: 1) vast amounts of user-generated content in modern applications and the resulting requests loads and data volumes 2) the desire of the developer community to employ problem-specific data models for storage and querying. To address these needs, various data stores have been developed by both industry and research, arguing that the era of one-size-fits-all database systems is over. The heterogeneity and sheer amount of these systems - now commonly referred to as NoSQL data stores - make it increasingly difficult to select the most appropriate system for a given application. Therefore, these systems are frequently combined in polyglot persistence architectures to leverage each system in its respective sweet spot. This tutorial gives an in-depth survey of the most relevant NoSQL databases to provide comparative classification and highlight open challenges. To this end, we analyze the approach of each system to derive its scalability, availability, consistency, data modeling and querying characteristics. We present how each system's design is governed by a central set of trade-offs over irreconcilable system properties. We then cover recent research results in distributed data management to illustrate that some shortcomings of NoSQL systems could already be solved in practice, whereas other NoSQL data management problems pose interesting and unsolved research challenges.
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