需求驱动型大数据精细化数据需求简化规范

J. Data Intell. Pub Date : 2022-08-01 DOI:10.26421/jdi3.3-5
Christoph Stach, Julia Bräcker, Rebecca Eichler, Corinna Giebler, B. Mitschang
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引用次数: 0

摘要

数据已经成为现代社会最宝贵的资源之一。由于数字化程度的提高和物联网的日益普及,可以捕获当今生活任何方面的数据。与实物资源类似,数据在成为可盈利的资产之前必须经过提炼。然而,这样的数据准备带来了全新的挑战:例如,在处理数据时不使用数据,因此需要管理的可用数据量稳步增加。此外,数据准备必须针对预期用例进行调整,以获得最佳结果。然而,这需要领域专家的知识。由于这些专家通常不是IT专家,因此他们需要能够以用户友好的方式指定用例数据需求的工具。此数据准备的目标是为任何新出现的用例提供需求驱动的数据。{考虑到这一点,我们为数据湖设计了一个可定制的数据准备区,称为BARENTS\@。它为领域专家提供了一种简化的方法来指定如何为他们的用例预处理数据,然后自动应用这些数据准备步骤。数据需求通过一种非it专家也能理解的基于本体的方法来指定。通过将BARENTS作为数据湖的专用区域,实现了数据准备和发放的资源节约。通过这种方式,BARENTS可以无缝嵌入到已建立的大数据基础设施中。{本文是对会议论文《数据湖中需求驱动的数据供应:BARENTS\,—\,A tailored Data Preparation Zone》的扩展和修订版本,作者:Stach等人~\cite{Stach2021}。与我们最初的会议论文相比,我们对手头的论文中的相关工作进行了更详细的研究。然而,这个扩展和修订版本的重点是提高BARENTS性能和增强其功能的策略。为此,我们深入讨论了原型的实现细节,并在BARENTS中引入了一个新颖的推荐系统,该系统可以帮助用户指定数据准备步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simplified Specification of Data Requirements for Demand-Actuated Big Data Refinement
Data have become one of the most valuable resources in modern society. Due to increasing digitalization and the growing prevalence of the Internet of Things, it is possible to capture data on any aspect of today's life. Similar to physical resources, data have to be refined before they can become a profitable asset. However, such data preparation entails completely novel challenges: For instance, data are not consumed when being processed, whereby the volume of available data that needs to be managed increases steadily. Furthermore, the data preparation has to be tailored to the intended use case in order to achieve an optimal outcome. This, however, requires the knowledge of domain experts. Since such experts are typically not IT experts, they need tools that enable them to specify the data requirements of their use cases in a user-friendly manner. The goal of this data preparation is to provide any emerging use case with demand-actuated data.}{With this in mind, we designed a tailorable data preparation zone for Data Lakes called BARENTS\@. It provides a simplified method for domain experts to specify how data must be pre-processed for their use cases, and these data preparation steps are then applied automatically. The data requirements are specified by means of an ontology-based method which is comprehensible to non-IT experts. Data preparation and provisioning are realized resource-efficient by implementing BARENTS as a dedicated zone for Data Lakes. This way, BARENTS is seamlessly embeddable into established Big Data infrastructures.}{This article is an extended and revised version of the conference paper ``Demand-Driven Data Provisioning in Data Lakes: BARENTS\,---\,A Tailorable Data Preparation Zone'' by Stach~et~al.~\cite{Stach2021}. In comparison to our original conference paper, we take a more detailed look at related work in the paper at hand. The emphasis of this extended and revised version, however, is on strategies to improve the performance of BARENTS and enhance its functionality. To this end, we discuss in-depth implementation details of our prototype and introduce a novel recommender system in BARENTS that assists users in specifying data preparation steps.
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