Winston Haaswijk, A. Mishchenko, Mathias Soeken, G. Micheli
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SAT Based Exact Synthesis using DAG Topology Families
SAT based exact synthesis is a powerful technique, with applications in logic optimization, technology mapping, and synthesis for emerging technologies. However, its runtime behavior can be unpredictable and slow. In this paper, we propose to add a new type of constraint based on families of DAG topologies. Such families restrict the search space considerably and let us partition the synthesis problem in a natural way. Our approach shows significant reductions in runtime as compared to state-of-the-art implementations, by up to 63.43%. Moreover, our implementation has significantly fewer timeouts compared to baseline and reference implementations, and reduces this number by up to 61%. In fact, our topology based implementation dominates the others with respect to the number of solved instances: given a runtime bound, it solves at least as many instances as any other implementation.