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Effective Analog ICs Floorplanning with Relational Graph Neural Networks and Reinforcement Learning

Authors :
Basso, Davide
Bortolussi, Luca
Videnovic-Misic, Mirjana
Habal, Husni
Publication Year :
2024

Abstract

Analog integrated circuit (IC) floorplanning is typically a manual process with the placement of components (devices and modules) planned by a layout engineer. This process is further complicated by the interdependence of floorplanning and routing steps, numerous electric and layout-dependent constraints, as well as the high level of customization expected in analog design. This paper presents a novel automatic floorplanning algorithm based on reinforcement learning. It is augmented by a relational graph convolutional neural network model for encoding circuit features and positional constraints. The combination of these two machine learning methods enables knowledge transfer across different circuit designs with distinct topologies and constraints, increasing the \emph{generalization ability} of the solution. Applied to $6$ industrial circuits, our approach surpassed established floorplanning techniques in terms of speed, area and half-perimeter wire length. When integrated into a \emph{procedural generator} for layout completion, overall layout time was reduced by $67.3\%$ with a $8.3\%$ mean area reduction compared to manual layout.<br />Comment: 7 pages, 7 figures, Accepted at DATE25

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.15212
Document Type :
Working Paper