MetaCirc: A Meta-learning Approach for Statistical Leakage Estimation Improvement in Digital Circuits | IEEE Conference Publication | IEEE Xplore

MetaCirc: A Meta-learning Approach for Statistical Leakage Estimation Improvement in Digital Circuits


Abstract:

Aggressive scaling down of transistor dimensions has made process-aware circuit modeling a crucial task. Achieving accurate circuit modeling requires lengthy and resource...Show More

Abstract:

Aggressive scaling down of transistor dimensions has made process-aware circuit modeling a crucial task. Achieving accurate circuit modeling requires lengthy and resource-intensive simulations. Machine Learning-based surrogate models, offering computational efficiency and speed, are viable alternatives to traditional simulators. This paper introduces a meta-learning approach designed to accurately capture process-induced variations in the leakage power of VLSI circuits. The impact of a wide range of fluctuations in operating conditions, including temperature (-55°C to 125°C) and supply voltage (±10%) has also been incorporated for leakage modeling. The proposed meta-learning model is versatile, enhancing the performance of underlying baseline machine-learning models while eliminating the need for time-consuming hyperparameter optimization. Our experiments on leakage estimation using 16 and 7 nanometer FinFET technology nodes demonstrate an average improvement of up to 50% and 48% in Mean Absolute Percentage Error compared to stand-alone baseline models.
Date of Conference: 19-22 May 2024
Date Added to IEEE Xplore: 02 July 2024
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Conference Location: Singapore, Singapore

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