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LHNN: Lattice Hypergraph Neural Network for VLSI Congestion Prediction (2203.12831v1)
Published 24 Mar 2022 in cs.LG
Abstract: Precise congestion prediction from a placement solution plays a crucial role in circuit placement. This work proposes the lattice hypergraph (LH-graph), a novel graph formulation for circuits, which preserves netlist data during the whole learning process, and enables the congestion information propagated geometrically and topologically. Based on the formulation, we further developed a heterogeneous graph neural network architecture LHNN, jointing the routing demand regression to support the congestion spot classification. LHNN constantly achieves more than 35% improvements compared with U-nets and Pix2Pix on the F1 score. We expect our work shall highlight essential procedures using machine learning for congestion prediction.
- Bowen Wang (76 papers)
- Guibao Shen (7 papers)
- Dong Li (429 papers)
- Jianye Hao (185 papers)
- Wulong Liu (38 papers)
- Yu Huang (176 papers)
- Hongzhong Wu (1 paper)
- Yibo Lin (35 papers)
- Guangyong Chen (55 papers)
- Pheng Ann Heng (24 papers)