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Journal ArticleDOI

High Performance Lithography Hotspot Detection With Successively Refined Pattern Identifications and Machine Learning

TLDR
This work proposes a high performance hotspot detection methodology consisting of a fast layout analyzer; 2) powerful hotspot pattern identifiers; and 3) a generic and efficient flow with successive performance refinements that achieves higher prediction accuracy for hotspots that are not previously characterized.
Abstract
Under the real and evolving manufacturing conditions, lithography hotspot detection faces many challenges. First, real hotspots become hard to identify at early design stages and hard to fix at post-layout stages. Second, false alarms must be kept low to avoid excessive and expensive post-processing hotspot removal. Third, full chip physical verification and optimization require very fast turn-around time. Last but not least, rapid technology advancement favors generic hotspot detection methodologies to avoid exhaustive pattern enumeration and excessive development/update as technology evolves. To address the above issues, we propose a high performance hotspot detection methodology consisting of: 1) a fast layout analyzer; 2) powerful hotspot pattern identifiers; and 3) a generic and efficient flow with successive performance refinements. We implement our algorithms with industry-strength engine under real manufacturing conditions and show that it significantly outperforms state-of-the-art algorithms in false alarms (2.4X to 2300X reduction) and runtime (5X to 237X reduction), meanwhile achieving similar or better hotspot accuracies. Compared with pattern matching, our method achieves higher prediction accuracy for hotspots that are not previously characterized, therefore, more detection generality when exhaustive pattern enumeration is too expensive to perform a priori. Such high performance hotspot detection is especially suitable for lithography-friendly physical design.

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Citations
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Proceedings ArticleDOI

EPIC: Efficient prediction of IC manufacturing hotspots with a unified meta-classification formulation

TL;DR: EPIC is an efficient and effective predictor for IC manufacturing hotspots in deep sub-wavelength lithography and proposes a unified framework to combine different hotspot detection methods together, such as machine learning and pattern matching, using mathematical programming/optimization.
Journal ArticleDOI

Accurate lithography hotspot detection using deep convolutional neural networks

TL;DR: This approach is the first CNN-based lithography HS detection using convolutional neural networks and makes additional technical efforts to improve the performance of the framework, including inspection region reduction, data augmentation, DBSCAN clustering, modified batch normalization, and fast image scanning.
Proceedings ArticleDOI

Machine learning and pattern matching in physical design

TL;DR: This paper will discuss key techniques and recent results of machine learning and pattern matching, with their applications in physical design.
Proceedings ArticleDOI

Faster Region-based Hotspot Detection

TL;DR: A new end-to-end framework that can detect multiple hotspots in a large region at a time and promise a better hotspot detection performance is developed and Experimental results show that this framework enables a significant speed improvement over existing methods with higher accuracy and fewer false alarms.
Journal ArticleDOI

Experience of Data Analytics in EDA and Test—Principles, Promises, and Challenges

TL;DR: This paper begins by introducing several key concepts in machine learning and data mining, followed by a review of different learning approaches, and describes the experience of developing a practical data mining application.
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Proceedings ArticleDOI

RADAR: RET-aware detailed routing using fast lithography simulations

TL;DR: Guided by the EPE map, effective RET-aware detailed routing (RADAR) techniques are developed that can handle full-chip capacity to enhance the overall printability while maintaining other design closure.
Proceedings ArticleDOI

Machine learning based lithographic hotspot detection with critical-feature extraction and classification

TL;DR: This paper presents a fast and accurate lithographic hotspot detection flow with a novel MLK (Machine Learning Kernel), based on critical feature extraction and classification, which achieves over 90% detection accuracy on average and much smaller false alarms.
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