ISOP-Yield: Yield-Aware Stack-Up Optimization for Advanced Package using Machine Learning

Hyunsu Chae,Keren Zhu, Bhyrav Mutnury,Zixuan Jiang,Daniel De Araujo, Douglas Wallace, Douglas Winterberg,Adam Klivans,David Z. Pan

2024 29th Asia and South Pacific Design Automation Conference (ASP-DAC)(2024)

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摘要
High-speed cross-chip interconnects and packaging are critical for the overall performance of modern heterogeneous integrated computing systems. Recent studies have developed automatic stack-up design optimization methods for high-density interconnect (HDI) printed circuit board (PCB). However, few have considered the impact of manufacturing variation and the resulting yield issue in high-volume manufacturing (HVM). In this paper, we propose a novel framework for automatic stack-up design, optimizing the interconnect performance with a given yield requirement. The proposed framework utilizes the smooth and gradient-available machine learning surrogate model, employing a first-order Taylor expansion to approximate the output performance distribution. Experimental results demonstrate that our method effectively boosts the yield rate compared to the existing stack-up optimization framework. In addition, the proposed yield-aware algorithm shows an average of 49.96% efficiency improvement in yield-aware figure of merits compared to the state-of-the-art input noise-aware Bayesian optimization algorithm for high yield targets.
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关键词
Optimization Method,Alternative Models,Optimization Algorithm,Design Optimization,Taylor Expansion,Printed Circuit Board,Yield Rate,Bayesian Optimization,Bayesian Optimization Algorithm,Smoothing,Optimization Problem,Local Search,Design Parameters,Search Space,Multilayer Perceptron,Transmission Line,Hyperparameter Tuning,Solution Space,Baseline Methods,Lipschitz Continuous,ML Models,Spray Nozzle,Design Points,Optimal Output,Output Distribution,Inverse Design,Design Solutions,Distribution Of Resistance,Suboptimal Solution,Design Quality
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