DocumentCode
474479
Title
Statistical diagnosis of unmodeled systematic timing effects
Author
Bastani, Pouria ; Callegari, Nicholas ; Wang, Li.-C. ; Abadir, Magdy S.
Author_Institution
California Univ., Santa Barbara, CA
fYear
2008
fDate
8-13 June 2008
Firstpage
355
Lastpage
360
Abstract
Explaining the mismatch between predicted timing behavior from modeling and simulation, and the observed timing behavior measured on silicon chips can be very challenging. Given a list of potential sources, the mismatch can be the aggregate result caused by some of them both individually and collectively, resulting in a very large search space. Furthermore, observed data are always corrupted by some unknown statistical random noises. To overcome both challenges, this paper proposes a statistical diagnosis framework that formulates the diagnosis problem as a regression learning problem. In this diagnosis framework, the objective is to rank a set of features corresponding to the list of potential sources of concern. The rank is based on measured silicon path delay data such that a feature inducing a larger unexpected timing deviation is ranked higher. Experimental results are presented to explain the learning method. Diagnosis effectiveness will be demonstrated through benchmark experiments and on an industrial design.
Keywords
integrated circuit modelling; random noise; regression analysis; silicon; timing; Si; regression learning; silicon chips; silicon path delay data; statistical diagnosis; statistical random noises; unmodeled systematic timing; very large search space; Aggregates; Delay; Histograms; Permission; Predictive models; Semiconductor device measurement; Semiconductor device noise; Silicon; Testing; Timing; Delay test; Learning; Statistical diagnosis; Timing;
fLanguage
English
Publisher
ieee
Conference_Titel
Design Automation Conference, 2008. DAC 2008. 45th ACM/IEEE
Conference_Location
Anaheim, CA
ISSN
0738-100X
Print_ISBN
978-1-60558-115-6
Type
conf
Filename
4555843
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