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BOiLS: Bayesian Optimisation for Logic Synthesis

Authors :
Grosnit, Antoine
Malherbe, Cedric
Tutunov, Rasul
Wan, Xingchen
Wang, Jun
Ammar, Haitham Bou
Publication Year :
2021

Abstract

Optimising the quality-of-results (QoR) of circuits during logic synthesis is a formidable challenge necessitating the exploration of exponentially sized search spaces. While expert-designed operations aid in uncovering effective sequences, the increase in complexity of logic circuits favours automated procedures. Inspired by the successes of machine learning, researchers adapted deep learning and reinforcement learning to logic synthesis applications. However successful, those techniques suffer from high sample complexities preventing widespread adoption. To enable efficient and scalable solutions, we propose BOiLS, the first algorithm adapting modern Bayesian optimisation to navigate the space of synthesis operations. BOiLS requires no human intervention and effectively trades-off exploration versus exploitation through novel Gaussian process kernels and trust-region constrained acquisitions. In a set of experiments on EPFL benchmarks, we demonstrate BOiLS's superior performance compared to state-of-the-art in terms of both sample efficiency and QoR values.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2111.06178
Document Type :
Working Paper