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Fast Design Space Adaptation with Deep Reinforcement Learning for Analog Circuit Sizing

29 September 2020
Kai-En Yang
Chia-Yu Tsai
Hung-Hao Shen
Chen-Feng Chiang
Feng-Ming Tsai
Chunguang Wang
Yiju Ting
Chia-Shun Yeh
C. Lai
ArXiv (abs)PDFHTML
Abstract

We present a novel framework for design space search on analog circuit sizing using deep reinforcement learning (DRL). Nowadays, analog circuit design is a manual routine that requires heavy design efforts due to the absence of automation tools, motivating the urge to develop one. Prior approaches cast this process as an optimization problem. They use global search strategies based on DRL with complex network architectures. Nonetheless, the models are hard to converge and neglected various working conditions of PVT (process, voltage, temperature).In this work, we reduce the problem to a constraint satisfaction problem, where a local strategy is adopted. Thus, a simple feed-forward network with few layers can be used to implement a model-based reinforcement learning agent. To evaluate the value of the our framework in production, we cooperate with R&Ds in an IC design company. On circuits with TSMC advanced 5 and 6nm process, our agents can deliver PPA (performance, power, area) beyond human level. Furthermore, the product will be taped out in the near future.

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