Pareto Optimization of Analog Circuits Using Reinforcement Learning

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Abstract

Analog circuit optimization and design presents a unique set of challenges in the IC design process. Many applications require the designer to optimize for multiple competing objectives, which poses a crucial challenge. Motivated by these practical aspects, we propose a novel method to tackle multi-objective optimization for analog circuit design in continuous action spaces. In particular, we propose to (i) extrapolate current techniques in Multi-Objective Reinforcement Learning to continuous state and action spaces and (ii) provide for a dynamically tunable trained model to query user defined preferences in multi-objective optimization in the analog circuit design context.

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APA

Ns, K. S., & Li, P. (2024). Pareto Optimization of Analog Circuits Using Reinforcement Learning. ACM Transactions on Design Automation of Electronic Systems, 29(2). https://doi.org/10.1145/3640463

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