Title :
Supervised learning based model for predicting variability-induced timing errors
Author :
Xun Jiao ; Rahimi, Abbas ; Narayanaswamy, Balakrishnan ; Fatemi, Hamed ; de Gyvez, Jose Pineda ; Gupta, Rajesh K.
Abstract :
Circuit designers typically combat variations in hardware and workload by increasing conservative guardbanding that leads to operational inefficiency. Reducing this excessive guardband is highly desirable, but causes timing errors in synchronous circuits. We propose a methodology for supervised learning based models to predict timing errors at bit-level. We show that a logistic regression based model can effectively predict timing errors, for a given amount of guardband reduction. The proposed methodology enables a model-based rule method to reduce guardband subject to a required bit-level reliability specification. For predicting timing errors at bit-level, the proposed model generation automatically uses a binary classifier per output bit that captures the circuit path sensitization. We train and test our model on gate-level simulations with timing error information extracted from an ASIC flow that considers physical details of placed-and-routed single-precision pipelined floating-point units (FPUs) in 45nm TSMC technology. We further assess the robustness of our modeling methodology by considering various operating voltage and temperature corners. Our model predicts timing errors with an average accuracy of 95% for unseen input workload. This accuracy can be used to achieve a 0%-15% guardband reduction for FPUs, while satisfying the reliability specification for four error-tolerant applications.
Keywords :
application specific integrated circuits; floating point arithmetic; integrated circuit reliability; learning (artificial intelligence); logic circuits; ASIC flow; TSMC technology; binary classifier; bit-level reliability specification; circuit designers; circuit path sensitization; error-tolerant applications; gate-level simulations; guardband reduction; logistic regression; model-based rule method; pipelined floating-point units; placed-and-routed single-precision; size 45 nm; supervised learning; synchronous circuits; variability-induced timing errors; Accuracy; Adders; Computational modeling; Integrated circuit modeling; Predictive models; Reliability; Timing;
Conference_Titel :
New Circuits and Systems Conference (NEWCAS), 2015 IEEE 13th International
Conference_Location :
Grenoble
DOI :
10.1109/NEWCAS.2015.7182029