HybridNet: Dual-Branch Fusion of Geometrical and Topological Views for VLSI Congestion Prediction
2023 IEEE International Symposium of EDA Accurate early congestion prediction can prevent unpleasant surprises at the routing stage, playing a crucial character in assisting designers to iterate faster in VLSI design cycles. In this paper, we introduce a novel strategy to fully incorporate topologic...
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Zusammenfassung: | 2023 IEEE International Symposium of EDA Accurate early congestion prediction can prevent unpleasant surprises at the
routing stage, playing a crucial character in assisting designers to iterate
faster in VLSI design cycles. In this paper, we introduce a novel strategy to
fully incorporate topological and geometrical features of circuits by making
several key designs in our network architecture. To be more specific, we
construct two individual graphs (geometry-graph, topology-graph) with distinct
edge construction schemes according to their unique properties. We then propose
a dual-branch network with different encoder layers in each pathway and
aggregate representations with a sophisticated fusion strategy. Our network,
named HybridNet, not only provides a simple yet effective way to capture the
geometric interactions of cells, but also preserves the original topological
relationships in the netlist. Experimental results on the ISPD2015 benchmarks
show that we achieve an improvement of 10.9% compared to previous methods. |
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DOI: | 10.48550/arxiv.2305.05374 |