Data Preparation for Data Mining in Chemical Plants using Big Data

Reuben Borrison, Benjamin Kloepper, Jennifer Mullen
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Abstract

Data preparation for data mining in industrial applications is a key success factor which requires considerable repeated efforts. Although the required activities need to be repeated in very similar fashion across many projects, details of their implementation differ and require both application understanding and experience. As a result, data preparation is done by data mining experts with a strong domain background and a good understanding of the characteristics of the data to be analyzed. Experts with these profiles usually have an engineering background and no strong expertise in distributed programming or big data technology. Unfortunately, the amount of data can be so large that distributed algorithms are required to allow for inspection of results and iteration of preparation steps. This contribution introduces an interactive data preparation workflow for signal data from chemical plants enabling domain experts without background in distributed computing and extensive programming experience to leverage the power of big data technologies.
基于大数据的化工厂数据挖掘的数据准备
在工业应用中,数据挖掘的数据准备是成功的关键因素,需要大量的重复努力。尽管所需的活动需要在许多项目中以非常相似的方式重复,但其实现的细节是不同的,并且需要应用程序理解和经验。因此,数据准备是由具有强大领域背景和对要分析的数据特征有很好理解的数据挖掘专家完成的。这些专家通常具有工程背景,但在分布式编程或大数据技术方面没有很强的专业知识。不幸的是,数据量可能非常大,以至于需要分布式算法来检查结果和迭代准备步骤。这一贡献为化工厂的信号数据引入了一个交互式数据准备工作流程,使没有分布式计算背景和丰富编程经验的领域专家能够利用大数据技术的力量。
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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