기술 문서

AI-guided reliability diagnosis for 5 nm and 7 nm automotive process

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Automotive semiconductor products demand high reliability. The current process of performing electrical test after fab-out may not be sufficient for efficient reliability management. This paper proposes an AI solution for improving the reliability of automotive semiconductor products. The solution includes two unique concepts: fab-data augmentation (FDA) to estimate missing values using partially available measurement data during the fabrication process and real-time prediction of reliability using machine learning (ML) models. The ML model is also used to identify and rank critical process steps that impact reliability, and to predict the reliability of wafers in real time. This allows low reliability wafers to be screened out early during the chip fabrication process, improving the overall reliability of the final product.

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디지털 트랜스포메이션 격차 해소

민첩성과 협업은 디지털 트랜스포메이션으로 인한 격차를 해소할 수 있는 두 가지 요소입니다. Tech-Charity의 최근 설문 조사 결과에서 자세히 알아보십시오.