从经验中学习:将机器学习应用于模拟电路设计

K. Kunal, Tonmoy Dhar, Yaguang Li, Meghna Madhusudan, Jitesh Poojary, A. Sharma, Wenbin Xu, S. Burns, R. Harjani, Jiang Hu, P. Mukherjee, S. Sapatnekar
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摘要

模拟设计自动化问题已经困扰了几代电子设计自动化研究者。从本质上讲,这个问题的困难在于机器生成的设计无法与人类设计师的质量相匹配。人类设计师通常从网表中识别模块,并根据自己的经验将这些模块转化为在硅中布局的电路。在电路的原理图或网络列表级描述中注释块的能力是整个过程的关键,但由于每种电路类型的大量变体,这是一个充满复杂性的过程。例如,操作跨导放大器(OTAs)的拓扑数量很容易达到数百种。设计师通过将这一大组变体划分为不同的类别来管理这种复杂性(例如,ota可能是可伸缩的,折叠的cascode等)。即便如此,每个类中细微的变化还是很多。模拟设计自动化的早期方法试图使用基于规则的方法来捕获这些变化,但这个规则数据库需要格外小心:每个新变体都可能需要一个新规则。随着基于机器学习(ML)的替代方案变得更加可行,人们开始探索解决这一问题的其他形式。我们的努力是ALIGN (Analog Layout, intelligent Generated from Netlists)项目[2,3]的一部分,该项目正在开发模拟/混合信号电路布局的开源软件[1]。我们的具体目标是将网络列表转化为物理布局,24小时周转,没有人在循环中。ALIGN流输入一个拓扑结构和晶体管尺寸已经选定的网表、一组性能规范和一个定义工艺技术的工艺设计套件(PDK)。ALIGN的输出是GDSII格式的布局。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from Experience: Applying ML to Analog Circuit Design
The problem of analog design automation has vexed several generations of researchers in electronic design automation. At its core, the difficulty of the problem is related to the fact that machinegenerated designs have been unable to match the quality of the human designer. The human designer typically recognizes blocks from a netlist and draws upon her/his experience to translate these blocks into a circuit that is laid out in silicon. The ability to annotate blocks in a schematic or netlist-level description of a circuit is key to this entire process, but it is a process fraught with complexity due to the large number of variants of each circuit type. For example, the number of topologies of operational transconductance amplifiers (OTAs) easily numbers in the hundreds. A designer manages this complexity by dividing this large set of variants into classes (e.g., OTAs may be telescopic, folded cascode, etc.). Even so, the number of minor variations within each class is large. Early approaches to analog design automation attempted to use rule-based methods to capture these variations, but this database of rules required tender care: each new variant might require a new rule. As machine learning (ML) based alternatives have become more viable, alternative forms of solving this problem have begun to be explored. Our effort is part of the ALIGN (Analog Layout, Intelligently Generated from Netlists) project [2, 3], which is developing opensource software for analog/mixed-signal circuit layout [1]. Our specific goal is to translate a netlist into a physical layout, with 24-hour turnaround and no human in the loop. The ALIGN flow inputs a netlist whose topology and transistor sizes have already been chosen, a set of performance specifications, and a process design kit (PDK) that defines the process technology. The output of ALIGN is a layout in GDSII format.
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