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AutoCkt: Deep Reinforcement Learning of Analog Circuit Designs

机译:AutoCkt:模拟电路设计的深度强化学习

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Domain specialization under energy constraints in deeply-scaled CMOS has been driving the need for agile development of Systems on a Chip (SoCs). While digital subsystems have design flows that are conducive to rapid iterations from specification to layout, analog and mixed-signal modules face the challenge of a long human-in-the-middle iteration loop that requires expert intuition to verify that post-layout circuit parameters meet the original design specification. Existing automated solutions that optimize circuit parameters for a given target design specification have limitations of being schematic-only, inaccurate, sample-inefficient or not generalizable. This work presents AutoCkt, a machine learning optimization framework trained using deep reinforcement learning that not only finds post-layout circuit parameters for a given target specification, but also gains knowledge about the entire design space through a sparse subsampling technique. Our results show that for multiple circuit topologies, AutoCkt is able to converge and meet all target specifications on at least 96.3% of tested design goals in schematic simulation, on average 40× faster than a traditional genetic algorithm. Using the Berkeley Analog Generator, AutoCkt is able to design 40 LVS passed operational amplifiers in 68 hours, 9.6× faster than the state-of-the-art when considering layout parasitics.
机译:在深度扩展的CMOS中,在能量约束下的领域专业化一直在推动对片上系统(SoC)进行敏捷开发的需求。尽管数字子系统的设计流程有利于从规格到布局的快速迭代,但模拟和混合信号模块面临着一个漫长的中间人迭代循环的挑战,这需要专家的直觉来验证布局后电路的参数符合原始设计规范。现有的针对给定目标设计规范优化电路参数的自动化解决方案具有局限性,即仅原理图,不准确,采样效率低或无法泛化。这项工作介绍了AutoCkt,这是一种使用深度强化学习进行训练的机器学习优化框架,它不仅可以找到给定目标规格的布局后电路参数,还可以通过稀疏的二次采样技术获得有关整个设计空间的知识。我们的结果表明,对于多电路拓扑,在原理图仿真中,AutoCkt能够收敛并满足至少96.3%的经过测试设计目标的所有目标规格,比传统遗传算法平均快40倍。使用Berkeley Analog Generator,AutoCkt能够在68小时内设计出40个通过LVS的运算放大器,考虑到布局寄生因素,其速度比最新技术快9.6倍。

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