Reinforcement Learning for Scalable Logic Optimization with Graph Neural Networks

4 May 2021  ·  Xavier Timoneda, Lukas Cavigelli ·

Logic optimization is an NP-hard problem commonly approached through hand-engineered heuristics. We propose to combine graph convolutional networks with reinforcement learning and a novel, scalable node embedding method to learn which local transforms should be applied to the logic graph. We show that this method achieves a similar size reduction as ABC on smaller circuits and outperforms it by 1.5-1.75x on larger random graphs.

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