English

GNN-based Path-aware multi-view Circuit Learning for Technology Mapping

Emerging Technologies 2026-01-22 v1 Machine Learning

Abstract

Traditional technology mapping suffers from systemic inaccuracies in delay estimation due to its reliance on abstract, technology-agnostic delay models that fail to capture the nuanced timing behavior behavior of real post-mapping circuits. To address this fundamental limitation, we introduce GPA(graph neural network (GNN)-based Path-Aware multi-view circuit learning), a novel GNN framework that learns precise, data-driven delay predictions by synergistically fusing three complementary views of circuit structure: And-Inverter Graphs (AIGs)-based functional encoding, post-mapping technology emphasizes critical timing paths. Trained exclusively on real cell delays extracted from critical paths of industrial-grade post-mapping netlists, GPA learns to classify cut delays with unprecedented accuracy, directly informing smarter mapping decisions. Evaluated on the 19 EPFL combinational benchmarks, GPA achieves 19.9%, 2.1% and 4.1% average delay reduction over the conventional heuristics methods (techmap, MCH) and the prior state-of-the-art ML-based approach SLAP, respectively-without compromising area efficiency.

Keywords

Cite

@article{arxiv.2601.14286,
  title  = {GNN-based Path-aware multi-view Circuit Learning for Technology Mapping},
  author = {Wentao Jiang and Jingxin Wang and Zhang Hu and Zhengyuan Shi and Chengyu Ma and Qiang Xu and Weikang Qian and Zhufei Chu},
  journal= {arXiv preprint arXiv:2601.14286},
  year   = {2026}
}

Comments

7pages, 4figures

R2 v1 2026-07-01T09:12:57.558Z