DocumentCode :
123072
Title :
Automated Shmoo data analysis: A machine learning approach
Author :
Wei Wang
Author_Institution :
Intel Corp., Santa Clara, CA, USA
fYear :
2014
fDate :
3-5 March 2014
Firstpage :
212
Lastpage :
218
Abstract :
In silicon testing, a Shmoo plot is commonly used to give us an insight into the silicon manufacturing development health. Shmoo plots and other silicon characterization data has high value, however, analysis of them is a time-consuming work. This paper establishes a machine learning based model to improve and automate the procedure in silicon data analysis for HVM test content development. Our experiment shows that the supervised learning model has good accuracy on VMIN estimation across various kinds of Shmoo issues (crack/sprinkle/ceiling). The accuracy attained is greatly improved over previous tools. The framework can be easily integrated into any automated tester software and would save time to market during first silicon characterization. Additionally, the methodology discussed in this work can be extended to the HVM test flow for silicon behavior.
Keywords :
electronic engineering computing; elemental semiconductors; learning (artificial intelligence); semiconductor device manufacture; semiconductor device testing; silicon; HVM test content development; HVM test flow; Shmoo plot; VMIN estimation; automated Shmoo data analysis; automated tester software; machine learning approach; silicon characterization; silicon characterization data; silicon data analysis; silicon manufacturing development health; silicon testing; supervised learning model; Accuracy; Algorithm design and analysis; Classification algorithms; Decision trees; Prediction algorithms; Silicon; Training; HVM; Machine Learning; Shmoo experiment; Silicon Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Quality Electronic Design (ISQED), 2014 15th International Symposium on
Conference_Location :
Santa Clara, CA
Print_ISBN :
978-1-4799-3945-9
Type :
conf
DOI :
10.1109/ISQED.2014.6783327
Filename :
6783327
Link To Document :
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