大数据频繁错误的实时管理模型:ACR (Automatic Clean Repository for Big Data)

Sidi Mohamed Snineh, M. Youssfi, O. Bouattane, Abdelaziz Daaif, O. Abra
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引用次数: 4

摘要

本文提出了一种实时管理大数据流频繁出错的解决方案。在这个模型中,我们提出了一个存储库,其中存储了给定领域的元数据、错误和清理纠正算法。在第一步,系统由一个顾问监督,该顾问根据获得的结果估计给定上下文的相应错误清除算法。第二步,系统通过其学习模块在选择算法过程中实现自主。为了实现此功能,建议的方法是在策略模式的基础上设计和构建的。这种模式带来了构建一系列算法的可能性,封装每个算法,使它们可互换,并允许它们独立于使用的上下文而发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time management model for frequent Big Data errors : Automatic Clean Repository For Big Data (ACR)
In this paper we present a solution that manages in real time the frequent errors of big data flows. In this model, we propose a repository in which the metadata, errors, and cleaning correction algorithms are stored for a given domain. In the first step, the system is supervised by an advisor that estimates the corresponding errors cleaning algorithm for a given context, according to the obtained results. At the second step, the system, thanks to its learning module, becomes autonomous in the selection algorithm procedure. To allow this capability, the proposed approach is designed and built on the basis of the Strategy Pattern. This pattern brings the possibility of building a family of algorithms, encapsulate each one, make them interchangeable and allow them to evolve independently of used context.
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