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DNN-Opt: An RL Inspired Optimization for Analog Circuit Sizing using Deep Neural Networks

Ahmet F. Budak, Prateek Bhansali, Bo Liu, Nan Sun, David Z. Pan, Chandramouli Kashyap

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Abstract

Analog circuit sizing takes a significant amount of manual effort in a typical design cycle. With rapidly developing technology and tight schedules, bringing automated solutions for sizing has attracted great attention. This paper presents DNN-Opt, a Reinforcement Learning (RL) inspired Deep Neural Network (DNN) based black-box optimization framework for analog circuit sizing. The key contributions of this paper are a novel sample-efficient two-stage deep learning optimization framework leveraging RL actor-critic algorithms, and a recipe to extend it on large industrial circuits using critical device identification. Our method shows 5—30x sample efficiency compared to other black-box optimization methods both on small building blocks and on large industrial circuits with better performance metrics. To the best of our knowledge, this is the first application of DNN-based circuit sizing on industrial scale circuits.

Topics & Concepts

SizingComputer scienceArtificial neural networkBlack boxArtificial intelligenceDeep learningReinforcement learningElectronic circuitAnalogue electronicsComputer engineeringMachine learningEngineeringElectrical engineeringVisual artsArtVLSI and FPGA Design TechniquesAdvancements in Semiconductor Devices and Circuit DesignLow-power high-performance VLSI design