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Correlating system test Fmax with structural test Fmax and process monitoring measurements

Published: 18 January 2010 Publication History

Abstract

System test has been the standard measurement to evaluate performance variability of high-performance microprocessors. The question of whether or not many of the lower-cost alternative tests can be used to reduce system test has been studied for many years. This paper utilizes a data-learning approach for correlating three test datasets, structural test, ring oscillator test, and scan flush test, with system test. With the data-learning approach, higher correlation can be found without altering test measurements or test conditions. Rather, the approach utilizes new optimization algorithms to extract more useful information in the three test datasets, with particular success using the structural test data. To further minimize test cost, process monitoring measurements (ring oscillator and scan flush tests) are used to reduce the need for high-frequency structural test. We demonstrate our methodology on a recent high-performance microprocessor design.

References

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B. D. Cory, R. Kapur, B. Underwood. Speed binning with path delay test in 150-nm technology. IEEE Design & Test of Computers, Volume 20, Issue 5, pp. 41--45.
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Jing Zeng et al. On correlating structural tests with functional tests for speed binning of high performance design. ITC, pp. 31--37, 2004.
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G. Keppel, S. Zedeck. Data analysis for research designs: analysis-of-variance and multiple regression/correlation approaches. Macmillan, 1989.
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Li-C Wang et al. Data learning techniques and methodology for Fmax prediction. ITC, 2009.
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D. Boning, S. Nassif, A. Gattiker, F. Lui, et al. Test Structures for Delay Variability. Proc. of the 85th ACM/IEEE International Workshop on Timing Issues in the Specification and Synthesis of Digital Systems, p. 109, 2002.
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M. Bhushan et al. Ring oscillator for CMOS process tuning and variability control. IEEE Trans. on Semiconductor Manufacturing Vol. 19, pp. 10--18, 2006.
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R. F. Rizzolo et al. System performance management for the S/390 Parallel Enterprise Server G5 1999. IBM Journal of Research and Development, Vol. 43(No. 5/6):651--660, 1999.
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Trevor Hastie, Robert Tibshirani, and Jerome Friedman. The Elements of Statistical Learning - Date Mining, Inference, and Prediction. Springer Series in Statistics, 2001.
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Carl E. Rasmussen and Christopher K. I. Williams. Gaussian Processes for Machine Learning. The MIT Press, 2005.

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cover image ACM Conferences
ASPDAC '10: Proceedings of the 2010 Asia and South Pacific Design Automation Conference
January 2010
920 pages
ISBN:9781605588377

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IEEE Press

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Published: 18 January 2010

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