Custom Adaptive Kernel Strategies for Gaussian Process Regression in Wafer-Level Modeling and FPGA Delay Analysis
Listed in
This article is not in any list yet, why not save it to one of your lists.Abstract
The Gaussian Process Regression (GPR) has emerged as a state-of-the-art machine learning approach, offering significant potential for reducing testing costs in large-scale integrated circuits (LSIs) while maintaining high-quality standards. This study focuses on the wafer-level characteristic estimation, which measures a small subset of LSI circuits and estimates the characteristics of unmeasured ones. Additionally, it investigates the delay information estimation of field-programmable gate arrays (FPGAs) using ring oscillators (ROs) in look-up tables (LUTs). A key novelty of this work lies in addressing the critical challenge of kernel function selection, an essential factor in applying GPR to LSI testing and FPGA delay prediction. Through experimental analysis on mass-produced LSI industrial production data and actual measured silicon data, this research evaluates proposed adaptive custom kernel functions to identify optimal configurations. The findings reveal that, although hybrid and composite kernel architectures integrating multiple high-accuracy kernels outperform individual kernels in terms of accuracy, they are not consistent across different platforms. The proposed adaptive kernel consistently delivers improved prediction accuracy across multiple platforms, as demonstrated using industrial production data and actual measured silicon data.