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LaMAGIC2: Advanced Circuit Formulations for Language Model-Based Analog Topology Generation

11 June 2025
Chen-Chia Chang
Wan-Hsuan Lin
Yikang Shen
Yiran Chen
Xin Zhang
ArXiv (abs)PDFHTML
Main:8 Pages
9 Figures
5 Tables
Appendix:2 Pages
Abstract

Automation of analog topology design is crucial due to customized requirements of modern applications with heavily manual engineering efforts. The state-of-the-art work applies a sequence-to-sequence approach and supervised finetuning on language models to generate topologies given user specifications. However, its circuit formulation is inefficient due to O(|V |2) token length and suffers from low precision sensitivity to numeric inputs. In this work, we introduce LaMAGIC2, a succinct float-input canonical formulation with identifier (SFCI) for language model-based analog topology generation. SFCI addresses these challenges by improving component-type recognition through identifier-based representations, reducing token length complexity to O(|V |), and enhancing numeric precision sensitivity for better performance under tight tolerances. Our experiments demonstrate that LaMAGIC2 achieves 34% higher success rates under a tight tolerance of 0.01 and 10X lower MSEs compared to a prior method. LaMAGIC2 also exhibits better transferability for circuits with more vertices with up to 58.5% improvement. These advancements establish LaMAGIC2 as a robust framework for analog topology generation.

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@article{chang2025_2506.10235,
  title={ LaMAGIC2: Advanced Circuit Formulations for Language Model-Based Analog Topology Generation },
  author={ Chen-Chia Chang and Wan-Hsuan Lin and Yikang Shen and Yiran Chen and Xin Zhang },
  journal={arXiv preprint arXiv:2506.10235},
  year={ 2025 }
}
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