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A software reference architecture for semantic-aware big data systems

机译:用于语义感知大数据系统的软件参考架构

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摘要

Context: Big Data systems are a class of software systems that ingest, store, process and serve massive amounts of heterogeneous data, from multiple sources. Despite their undisputed impact in current society, their engineering is still in its infancy and companies find it difficult to adopt them due to their inherent complexity. Existing attempts to provide architectural guidelines for their engineering fail to take into account important Big Data characteristics, such as the management, evolution and quality of the data. Objective: In this paper, we follow software engineering principles to refine the ¿-architecture, a reference model for Big Data systems, and use it as seed to create Bolster, a software reference architecture (SRA) for semantic-aware Big Data systems. Method: By including a new layer into the ¿-architecture, the Semantic Layer, Bolster is capable of handling the most representative Big Data characteristics (i.e., Volume, Velocity, Variety, Variability and Veracity). Results: We present the successful implementation of Bolster in three industrial projects, involving five organizations. The validation results show high level of agreement among practitioners from all organizations with respect to standard quality factors. Conclusion: As an SRA, Bolster allows organizations to design concrete architectures tailored to their specific needs. A distinguishing feature is that it provides semantic-awareness in Big Data Systems. These are Big Data system implementations that have components to simplify data definition and exploitation. In particular, they leverage metadata (i.e., data describing data) to enable (partial) automation of data exploitation and to aid the user in their decision making processes. This simplification supports the differentiation of responsibilities into cohesive roles enhancing data governance.
机译:上下文:大数据系统是一类软件系统,可以从多个来源提取,存储,处理和服务大量的异构数据。尽管它们在当今社会中受到了无可争议的影响,但它们的工程技术仍处于起步阶段,由于其固有的复杂性,公司难以采用它们。现有的为其工程设计提供架构指导的尝试都没有考虑到重要的大数据特征,例如数据的管理,演进和质量。目的:在本文中,我们遵循软件工程原理来完善??体系结构(大数据系统的参考模型),并将其用作种子以创建Bolster(一种用于语义感知大数据系统的软件参考体系结构(SRA))。方法:通过将新层包括到体系结构语义层中,Bolster能够处理最具代表性的大数据特征(即体积,速度,多样性,可变性和准确性)。结果:我们介绍了Bolster在三个涉及五个组织的工业项目中的成功实施。验证结果表明,所有组织的从业人员在标准质量因素方面均达成了高度共识。结论:作为SRA,Bolster允许组织设计针对其特定需求的具体架构。一个显着的特征是它在大数据系统中提供了语义意识。这些是大数据系统实现,具有一些简化数据定义和利用的组件。特别是,它们利用元数据(即描述数据的数据)来实现数据开发的(部分)自动化,并帮助用户进行决策。这种简化支持将职责区分为具有凝聚力的角色,从而增强数据治理。

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