Fast and Efficient Constraint Evaluation of Analog Layout Using Machine Learning Models

Tonmoy Dhar, Jitesh Poojary, Yaguang Li, K. Kunal, Meghna Madhusudan, A. Sharma, Susmita Dey Manasi, Jiang Hu, R. Harjani, S. Sapatnekar
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引用次数: 6

Abstract

Placement algorithms for analog circuits explore numerous layout configurations in their iterative search. To steer these engines towards layouts that meet the electrical constraints on the design, this work develops a fast feasibility predictor to guide the layout engine. The flow first discerns rough bounds on layout parasitics and prunes the feature space. Next, a Latin hypercube sampling technique is used to sample the reduced search space, and the labeled samples are classified by a linear support vector machine (SVM). If necessary, a denser sample set is used for the SVM, or if the constraints are found to be nonlinear, a multilayer perceptron (MLP) is employed. The resulting machine learning model demonstrated to rapidly evaluate candidate placements in a placer, and is used to build layouts for several analog blocks.
基于机器学习模型的模拟布局快速有效约束评估
模拟电路的布局算法在其迭代搜索中探索许多布局配置。为了使这些引擎朝着满足设计电气约束的布局方向发展,本工作开发了一个快速可行性预测器来指导布局引擎。该流程首先识别布局寄生的粗略边界,并对特征空间进行修剪。其次,采用拉丁超立方体采样技术对约简后的搜索空间进行采样,并利用线性支持向量机对标记后的样本进行分类。如果有必要,支持向量机使用更密集的样本集,或者如果发现约束是非线性的,则使用多层感知器(MLP)。由此产生的机器学习模型被证明可以快速评估砂矿中的候选位置,并用于构建多个模拟块的布局。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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