论文标题
循环专家:基于深度学习的条件变量选择,用于加速后硅后分析
Experts in the Loop: Conditional Variable Selection for Accelerating Post-Silicon Analysis Based on Deep Learning
论文作者
论文摘要
后硅验证是现代半导体制造中最关键的过程之一。具体而言,对制造设备的测试案例的正确和深刻理解是实现后硅的调整和调试的关键。该分析通常由经验丰富的人类专家进行。但是,随着半导体行业的快速发展,测试用例可以包含数百个变量。由此产生的高维度对专家构成了巨大的挑战。因此,最近一些先前的工作引入了数据驱动的变量选择算法来解决这些问题并取得了显着的成功。然而,对于这些方法,专家不参与培训和推论阶段,这可能导致由于缺乏先验知识而导致偏见和不准确。因此,这项工作首次旨在设计一种新颖的条件变量选择方法,同时将专家保持在循环中。这样,我们希望我们的算法可以受到更有效和有效的培训,以确定某些专家知识的最关键变量。已经进行了来自行业的合成和现实世界数据集的广泛实验,并显示了我们方法的有效性。
Post-silicon validation is one of the most critical processes in modern semiconductor manufacturing. Specifically, correct and deep understanding in test cases of manufactured devices is key to enable post-silicon tuning and debugging. This analysis is typically performed by experienced human experts. However, with the fast development in semiconductor industry, test cases can contain hundreds of variables. The resulting high-dimensionality poses enormous challenges to experts. Thereby, some recent prior works have introduced data-driven variable selection algorithms to tackle these problems and achieved notable success. Nevertheless, for these methods, experts are not involved in training and inference phases, which may lead to bias and inaccuracy due to the lack of prior knowledge. Hence, this work for the first time aims to design a novel conditional variable selection approach while keeping experts in the loop. In this way, we expect that our algorithm can be more efficiently and effectively trained to identify the most critical variables under certain expert knowledge. Extensive experiments on both synthetic and real-world datasets from industry have been conducted and shown the effectiveness of our method.