Re$^{\text{2}}$MaP: Macro Placement by Recursively Prototyping and Packing Tree-based Relocating
PositiveArtificial Intelligence
On November 12, 2025, the Re²MaP method was introduced, marking a significant advancement in macro placements for chip design. This innovative approach utilizes multi-level macro grouping and PPA-aware cell clustering to create a unified connection matrix that effectively captures wirelength and dataflow among macros. By employing DREAMPlace for mixed-size placement prototyping, Re²MaP establishes reference positions for macros and clusters. The method further incorporates ABPlace, which optimizes macro positions on an ellipse to ensure uniform distribution near the chip periphery while minimizing wirelength and dataflow. The packing tree-based relocating procedure enhances the adjustment of macro group locations, guided by an expertise-inspired cost function. The iterative nature of Re²MaP allows for continuous refinement, leading to notable improvements in performance metrics, with WNS improving by up to 22.22% and TNS by up to 97.91%. These enhancements are pivotal for the efficienc…
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