The impact of data integration on yield enhancement

S. Smith, C. Gondran
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引用次数: 1

Abstract

Yield enhancement engineering usually focuses on three areas of interest: investigation of low yielding lots (or lots with abnormal fail signatures), elimination of in-line defect process excursions and improvement of baseline product yield. These tasks require that engineers digest the data necessary to lead them to what needs to be done to find root cause for a given yield issue. The process of gathering and digesting the data necessary to arrive at the root cause of a yield problem can take a significant period of time (i.e., days or, in some cases, weeks.) There are many reasons why it takes so long to gather the necessary data needed for yield analysis, among them are: (1) data often needs to be extracted through many different software interfaces each of which may require a different language knowledge, (2) the data extract itself may require access to a particular machine and require a custom (i.e., new) database call to be written, (3) the multiplicity of database extracts require a significant portion of time to complete (i.e., a relational database is not always used), (4) once extracts are completed data must be formatted for analysis, (5) data overlay from several sources is often not available and manual methods must be employed. It is very clear to anyone who has faced the aforementioned data "islands" that integration of data sources into one database which is easily and quickly accessible through one user interface will significantly reduce time to root cause for many yield issues.
数据整合对产量提高的影响
良率提高工程通常关注三个领域:低良率批次(或具有异常失效特征的批次)的调查、在线缺陷工艺偏差的消除和基线产品良率的提高。这些任务要求工程师消化必要的数据,从而找到给定产量问题的根本原因。收集和消化数据以找到产量问题的根本原因的过程可能需要很长一段时间(即几天或在某些情况下,几周)。收集产量分析所需的必要数据需要这么长时间的原因有很多,其中包括:(1)数据通常需要通过许多不同的软件接口提取,每个软件接口都可能需要不同的语言知识;(2)数据提取本身可能需要访问特定的机器,并需要编写自定义(即新的)数据库调用;(3)数据库提取的多样性需要大量的时间来完成(即,并不总是使用关系数据库);(4)一旦提取完成,数据必须格式化以供分析。(5)多个来源的数据叠加往往不可用,必须采用人工方法。任何面对过上述数据“孤岛”的人都很清楚,将数据源集成到一个数据库中,通过一个用户界面可以轻松快速地访问该数据库,这将大大减少解决许多产量问题的根本原因的时间。
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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