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Large Reasoning Models for 3D Floorplanning in EDA: Learning from Imperfections

Authors :
Amin, Fin
Rouf, Nirjhor
Pan, Tse-Han
Shafi, Md Kamal Ibn
Franzon, Paul D.
Publication Year :
2024

Abstract

In this paper, we introduce Dreamweaver, which belongs to a new class of auto-regressive decision-making models known as large reasoning models (LRMs). Dreamweaver is designed to improve 3D floorplanning in electronic design automation (EDA) via an architecture that melds advancements in sequence-to-sequence reinforcement learning algorithms. A significant advantage of our approach is its ability to effectively reason over large discrete action spaces, which is essential for handling the numerous potential positions for various functional blocks in floorplanning. Additionally, Dreamweaver demonstrates strong performance even when trained on entirely random trajectories, showcasing its capacity to leverage sub-optimal or non-expert trajectories to enhance its results. This innovative approach contributes to streamlining the integrated circuit (IC) design flow and reducing the high computational costs typically associated with floorplanning. We evaluate its performance against a current state-of-the-art method, highlighting notable improvements.<br />Comment: Under review

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.10538
Document Type :
Working Paper