Fmax预测的数据学习技术和方法

Janine Chen, Li-C. Wang, Po-Hsien Chang, Jing Zeng, Stanley Yu, Michael Mateja
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引用次数: 35

摘要

结构测试测量是否可以用来预测功能或系统的Fmax,这个问题已经研究了很多年。本文提出了一种数据学习方法来研究这个问题。给定一组样本芯片上的Fmax值和结构延迟测量,我们提出了一种称为一致性检查的方法,其目标是选择适形样本的子集,以便建立更可靠的预测器。我们的预测器由两个模型组成,一个是确定给定芯片的Fmax是否可预测的保形模型,另一个是根据结构测试测量结果输出预测Fmax的预测模型。我们解释了数据学习方法,并使用高性能微处理器设计上收集的频率数据研究了各种数据学习技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data learning techniques and methodology for Fmax prediction
The question of whether or not structural test measurements can be used to predict functional or system Fmax, has been studied for many years. This paper presents a data learning approach to study the question. Given Fmax values and structural delay measurements on a set of sample chips, we propose a method called conformity check whose goal is to select a subset of conformal samples such that a more reliable predictor can be built on. Our predictor consists of two models, a conformal model that decides on a given chip if its Fmax is predictable or not, and a prediction model that outputs the predicted Fmax based on results obtained from structural test measurements. We explain the data learning methodology and study various data learning techniques using frequency data collected on a high-performance microprocessor design.
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