AnalogFed: Federated Discovery of Analog Circuit Topologies with Generative AI
Qiufeng Li, Shu Hong, Jian Gao, Xuan Zhang, Tian Lan, and Weidong Cao

TL;DR
AnalogFed leverages federated learning and generative AI to collaboratively discover novel analog circuit topologies without sharing proprietary data, enabling scalable, privacy-preserving analog design automation.
Contribution
This work introduces a federated learning framework tailored for analog circuit topology discovery, addressing data privacy and heterogeneity challenges in collaborative AI-driven analog design.
Findings
Achieves performance comparable to centralized models
Demonstrates scalability with varying client counts
Maintains strict data privacy during collaboration
Abstract
Recent breakthroughs in AI/ML offer exciting opportunities to revolutionize analog design automation through data-driven approaches. In particular, researchers are increasingly fascinated by harnessing the power of generative AI to automate the discovery of novel analog circuit topologies. Unlocking the full potential of generative AI in these data-driven discoveries requires access to large and diverse datasets.Yet, there is a significant barrier in the analog domain--Analog circuit design is inherently proprietary, involving not only confidential circuit structures but also the underlying commercial semiconductor processes. As a result, current generative AI research is largely confined to individual researchers who construct small, narrowly focused private datasets. This fragmentation severely limits collaborative innovation and impedes progress across the research community. To…
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