Minimum Operating Voltage Prediction in Production Test Using Accumulative Learning
Journal
Proceedings - International Test Conference
Pages
47-52
Date Issued
2021
Author(s)
Abstract
We propose a new methodology to predict minimum operating voltage (Vmin) for production chips. In addition, we propose two new key features to improve the prediction accuracy. Our proposed accumulative learning can reduce the impact of lot-to-lot variations. Experimental results on two 7nm industry designs (about 1.2M chips from 142 lots) show that we can achieve above 95% good prediction. Our methodology can save 75% test time compared with traditional testing. To implement this method, we will need to have a separate test flow for the initial training and accumulative training. ? 2021 IEEE.
Subjects
Chip Performance Prediction
Machine Learning
Process variation
Machine learning
Chip performance
Chip performance prediction
Key feature
Machine-learning
Minimum operating voltages (Vmin)
Operating voltage
Performance prediction
Process Variation
Production test
Voltage prediction
Forecasting
Type
conference paper