Title
Statistical Learning in Chip (SLIC)
Abstract
Despite best efforts, integrated systems are "born" (manufactured) with a unique `personality' that stems from our inability to precisely fabricate their underlying circuits, and create software a priori for controlling the resulting uncertainty. It is possible to use sophisticated test methods to identify the best-performing systems but this would result in unacceptable yields and correspondingly high costs. The system personality is further shaped by its environment (e.g., temperature, noise and supply voltage) and usage (i.e., the frequency and type of applications executed), and since both can fluctuate over time, so can the system's personality. Systems also "grow old" and degrade due to various wear-out mechanisms (e.g., negative-bias temperature instability), and unexpectedly due to various early-life failure sources. These "nature and nurture" influences make it extremely difficult to design a system that will operate optimally for all possible personalities. To address this challenge, we propose to develop statistical learning in-chip (SLIC). SLIC is a holistic approach to integrated system design based on continuously learning key personality traits on-line, for self-evolving a system to a state that optimizes performance hierarchically across the circuit, platform, and application levels. SLIC will not only optimize integrated-system performance but also reduce costs through yield enhancement since systems that would have before been deemed to have weak personalities (unreliable, faulty, etc.) can now be recovered through the use of SLIC.
Year
DOI
Venue
2015
10.1109/ICCAD.2015.7372633
International Conference on Computer-Aided Design
Keywords
Field
DocType
Integrated system design,low-power design,statistical and machine learning
Data modeling,Computer science,A priori and a posteriori,Systems design,Chip,Electronic engineering,Software,Statistical learning,Electronic circuit,Personality
Conference
ISSN
ISBN
Citations 
1933-7760
978-1-4673-8389-9
1
PageRank 
References 
Authors
0.36
24
8
Name
Order
Citations
PageRank
Ronald D. Blanton125326.57
Xin Li226418.95
Ken Mai31406104.75
Diana Marculescu42725223.87
Radu Marculescu54366267.69
Jeyanandh Paramesh611022.97
Jeff G. Schneider71616165.43
Donald E. Thomas812736.89