基于网格搜索和并行计算的晶圆级封装可靠性寿命预测AI训练时间缩短

C. Y. Chang, C. H. Lee, K. Chiang
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引用次数: 1

摘要

电子封装技术在进入市场之前要经过加速热循环测试(ACTC)。有限元分析常用来建立电子封装产品的模型。然而,由于研究人员在物理概念和考虑因素上的差异,可能会产生模拟误差。为了克服这一挑战,我们通过验证的有限元模型创建了一个数据库,并将其与机器学习相结合。在机器学习模型领域,训练时间是一个重要的研究焦点。然而,网格搜索时间经常被忽视,尽管它对机器学习模型的效率有重大影响。为了解决这个问题,本研究利用并行计算来探索在晶圆级芯片规模封装(WLCSP)背景下优化超参数的搜索作为案例研究。此外,利用定制经验公式来提高网格搜索方法的效率,从而提高包装产品的上市时间和竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Grid Search Methods and Parallel Computing to Reduce AI Training Time for Reliability Lifetime Prediction of Wafer-Level Packaging
Electronic packaging technology undergoes Accelerated Thermal Cycling Test (ACTC) before hitting the market. Finite element analysis is commonly used to build models for electronic packaging products. However, simulation errors may arise due to differences in physical concepts and considerations among researchers. To overcome this challenge, we create a database through validated finite element models and combine it with machine learning. In the domain of machine learning models, training time is a crucial research focus. Nevertheless, grid search time is often overlooked, despite its significant impact on machine learning model efficiency. To address this issue, this study utilizes parallel computing to explore the search for optimized hyperparameters in the context of the Wafer Level Chip Scale Package (WLCSP) as a case study. Additionally, custom empirical formulas are utilized to enhance the efficiency of grid search methods, thereby improving the time-to-market and competitiveness of packaged products.
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