LLM-USO: Large Language Model-based Universal Sizing Optimizer
Karthik Somayaji N.S, Peng Li

TL;DR
LLM-USO leverages large language models and a structured knowledge representation to enhance analog circuit sizing optimization, enabling knowledge reuse and improved design efficiency over traditional methods.
Contribution
The paper introduces a novel LLM-based framework that encodes circuit design knowledge for reuse and integrates it with Bayesian Optimization for more efficient analog circuit sizing.
Findings
Outperforms traditional Bayesian Optimization in circuit sizing tasks.
Enables knowledge transfer across similar circuit sub-structures.
Improves design efficiency by incorporating domain-specific knowledge.
Abstract
The design of analog circuits is a cornerstone of integrated circuit (IC) development, requiring the optimization of complex, interconnected sub-structures such as amplifiers, comparators, and buffers. Traditionally, this process relies heavily on expert human knowledge to refine design objectives by carefully tuning sub-components while accounting for their interdependencies. Existing methods, such as Bayesian Optimization (BO), offer a mathematically driven approach for efficiently navigating large design spaces. However, these methods fall short in two critical areas compared to human expertise: (i) they lack the semantic understanding of the sizing solution space and its direct correlation with design objectives before optimization, and (ii) they fail to reuse knowledge gained from optimizing similar sub-structures across different circuits. To overcome these limitations, we propose…
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Taxonomy
TopicsNatural Language Processing Techniques
