Knowledge Transfer for Diagnosis Outcome Preview with Limited Data

Qicheng Huang, Chenlei Fang, R. D. Blanton
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Abstract

Logic diagnosis aims to identify defects in falling integrated circuits (ICs) and thus plays an essential role in yield learning. Previous research has demonstrated that diagnosis outcome (defect number, resolution, etc.) can be accurately predicted using features derived from the data collected from failing ICs. This capability allows practitioners to better allocate resources during yield learning. However, a significant number of diagnosis must be conducted to obtain sufficient training data for building an accurate prediction model. To reduce the data collection cost, we utilize some prior knowledge through transfer learning. Specifically, a prior model is constructed from a correlated dataset and then adapted to very limited training samples from the current design of interest. Experiments performed using real industrial examples demonstrate that transfer learning can significantly improve prediction performance and save training data when a suitable prior knowledge exists.
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有限数据下诊断结果预览的知识转移
逻辑诊断旨在识别集成电路的缺陷,因此在良率学习中起着至关重要的作用。先前的研究表明,可以使用从故障ic收集的数据中获得的特征来准确预测诊断结果(缺陷数量,解决方案等)。这种能力允许从业者在产量学习期间更好地分配资源。然而,必须进行大量的诊断,以获得足够的训练数据,以建立准确的预测模型。为了降低数据收集成本,我们通过迁移学习利用了一些先验知识。具体来说,从相关数据集构建先验模型,然后适应当前感兴趣设计的非常有限的训练样本。使用实际工业实例进行的实验表明,当存在合适的先验知识时,迁移学习可以显着提高预测性能并保存训练数据。
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