Michael Hersche, Mustafa Zeqiri, et al.
Nature Machine Intelligence
Identifying upstream processes potentially responsible for wafer defects is challenging due to the inherent variability in processing routes, which arises from factors such as reworks, the randomness of process waiting times, etc. This paper presents a novel framework for root cause analysis, called Partial Trajectory Regression (PTR), which leverages recent advances in representation learning and explainable AI. PTR is designed to handle variable-length process trajectories and timestamp sequences. We demonstrate its effectiveness on real wafer history data from the NY CREATES fab in Albany.
Michael Hersche, Mustafa Zeqiri, et al.
Nature Machine Intelligence
Amit Dhurandhar, Karthikeyan Shanmugam, et al.
ICML 2020
Grace Guo, Lifu Deng, et al.
FAccT 2024
Dirk Fahland, Fabiana Fournier, et al.
IJCAI 2023