大数据在半导体封装腐蚀因素识别方法中的应用

K. Hamid, M. A. Bakar, A. Jalar, A. H. Badarisman
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引用次数: 0

摘要

半导体封装行业受到封装复杂性和产品小型化的驱动。因此,半导体工业中的问题识别方法是一个关键的兴趣,也是持续改进的基础,其中吸取的教训是其不可分割的一部分。然而,问题识别方法仍停留在传统的方法上,如基于统计的方法。通过六西格玛方法和统计方法对半导体问题识别过程进行了一些研究,但范围仅限于推断统计。因此,本文的重点是提出基于信息论的大数据方法。大数据分析方法是利用算法和数据可视化。大数据方法,如MINE和聚类被应用于数百个变量的数据,这些变量包含重要的和未发现的关系。通过大数据分析,可以发现导致根本原因的潜在因素,并为实验设计和可靠性分析提供重要信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporation of Big Data in Methodology of Identifying Corrosion Factors in the Semiconductor Package
The semiconductor packaging industry driven by packaging complexity and product miniaturization. Hence, the problem identification methodology in semiconductor industries is a critical interest, and a basis of continuous improvement where the lesson learned is an integral part of it. Nevertheless, the problem identification approach is stagnant at the traditional method, such as the statistical-based methodology. There are several studies on the problem identification process in semiconductor through the six-sigma methodology and statistical approach, however, the scope is limited to the inferential statistic. Therefore, the focus of this paper is proposing using big data approach which grounded on the information theory. The big data analysis approach is utilizing the algorithm and data visualization. Big data methods, such as MINE and clustering was applied to data from hundreds of variables that contain essential and undiscovered relationship. The big data analysis enables the potential factors that contributed to the root causes and provided significant input to the design of experiment and reliability analysis.
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