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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.

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Authors (10)
  1. Bowen Wang (76 papers)
  2. Guibao Shen (7 papers)
  3. Dong Li (429 papers)
  4. Jianye Hao (185 papers)
  5. Wulong Liu (38 papers)
  6. Yu Huang (176 papers)
  7. Hongzhong Wu (1 paper)
  8. Yibo Lin (35 papers)
  9. Guangyong Chen (55 papers)
  10. Pheng Ann Heng (24 papers)
Citations (26)

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