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Toward Reinforcement Learning-based Rectilinear Macro Placement Under Human Constraints

Machine Learning 2023-11-08 v1 Artificial Intelligence Hardware Architecture Human-Computer Interaction

Abstract

Macro placement is a critical phase in chip design, which becomes more intricate when involving general rectilinear macros and layout areas. Furthermore, macro placement that incorporates human-like constraints, such as design hierarchy and peripheral bias, has the potential to significantly reduce the amount of additional manual labor required from designers. This study proposes a methodology that leverages an approach suggested by Google's Circuit Training (G-CT) to provide a learning-based macro placer that not only supports placing rectilinear cases, but also adheres to crucial human-like design principles. Our experimental results demonstrate the effectiveness of our framework in achieving power-performance-area (PPA) metrics and in obtaining placements of high quality, comparable to those produced with human intervention. Additionally, our methodology shows potential as a generalized model to address diverse macro shapes and layout areas.

Keywords

Cite

@article{arxiv.2311.03383,
  title  = {Toward Reinforcement Learning-based Rectilinear Macro Placement Under Human Constraints},
  author = {Tuyen P. Le and Hieu T. Nguyen and Seungyeol Baek and Taeyoun Kim and Jungwoo Lee and Seongjung Kim and Hyunjin Kim and Misu Jung and Daehoon Kim and Seokyong Lee and Daewoo Choi},
  journal= {arXiv preprint arXiv:2311.03383},
  year   = {2023}
}

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