English

A PPA-Driven 3D-IC Partitioning Selection Framework with Surrogate Models

Machine Learning 2026-04-22 v1 Hardware Architecture

Abstract

3D-IC netlist partitioning is commonly optimized using proxy objectives, while final PPA is treated as a costly evaluation rather than an optimization signal. This proxy-driven paradigm makes it difficult to reliably translate additional PPA evaluations into better PPA outcomes. To bridge this gap, we present DOPP (D-Optimal PPA-driven partitioning selection), an approach that bridges the gap between proxies and true PPA metrics. Across eight 3D-IC designs, our framework improves PPA over Open3DBench (average relative improvements of 9.99% congestion, 7.87% routed wirelength, 7.75% WNS, 21.85% TNS, and 1.18% power). Compared with exhaustive evaluation over the full candidate set, DOPP achieves comparable best-found PPA while evaluating only a small fraction of candidates, substantially reducing evaluation cost. By parallelizing evaluations, our method delivers these gains while maintaining wall-clock runtime comparable to traditional baselines.

Keywords

Cite

@article{arxiv.2604.18806,
  title  = {A PPA-Driven 3D-IC Partitioning Selection Framework with Surrogate Models},
  author = {Shang Wang and Shuai Liu and Owen Randall and Matthew E. Taylor},
  journal= {arXiv preprint arXiv:2604.18806},
  year   = {2026}
}
R2 v1 2026-07-01T12:27:09.386Z