Yield Improvement Using Advanced Data Analytics

Armando Anaya, William Henning, Neeta Basantkumar, James Oliver
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引用次数: 1

Abstract

We are living in an era in which data is growing in an exponential pace and coming from multiple sources. This type of data has been called "Big Data". Big data has large volume, variety of formats, high dimensionality and the need for a high speed processing. Those features differentiates it from traditional datasets. Hence data management, analysis, visualization and results communications are getting more complex. The potential of obtaining greater knowledge and more actionable conclusions makes it very attractive. Therefore a data-driven mindset is emerging in different industries and the semiconductor industry is not an exception.This paper describes the results for yield improvement of our silicon carbide technology using advanced data analytics. In doing so, the paper outlines how the data was collected, managed and preprocessed to make it suitable for analysis. It explains which methods and algorithms were used to explore the data, uncover patterns and identify the most important features/predictors.At the end, challenges and conclusions are presented.
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使用先进的数据分析提高产量
我们生活在一个数据以指数级速度增长的时代,数据来源多种多样。这种类型的数据被称为“大数据”。大数据具有体量大、格式多、维度高、需要高速处理的特点。这些特征将其与传统数据集区分开来。因此,数据管理、分析、可视化和结果交流变得越来越复杂。它有可能获得更多的知识和更可行的结论,因此非常有吸引力。因此,数据驱动的思维正在不同的行业中兴起,半导体行业也不例外。本文描述了我们的碳化硅技术使用先进的数据分析提高良率的结果。在此过程中,论文概述了如何收集、管理和预处理数据以使其适合分析。它解释了使用哪些方法和算法来探索数据,揭示模式并确定最重要的特征/预测因子。最后,提出了挑战和结论。
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