Lithography Hotspot Detection via Heterogeneous Federated Learning with Local Adaptation
Xuezhong Lin, Jingyu Pan, Jinming Xu, Yiran Chen, Cheng Zhuo

TL;DR
This paper introduces a federated learning framework for lithography hotspot detection that enhances model robustness and personalization while preserving data privacy across design houses.
Contribution
It proposes a heterogeneous federated learning approach combining global knowledge sharing with local adaptation for improved hotspot detection.
Findings
Outperforms state-of-the-art methods in non-IID data scenarios
Achieves high detection accuracy and robustness
Ensures good convergence rate across different scenarios
Abstract
As technology scaling is approaching the physical limit, lithography hotspot detection has become an essential task in design for manufacturability. While the deployment of pattern matching or machine learning in hotspot detection can help save significant simulation time, such methods typically demand for non-trivial quality data to build the model, which most design houses are short of. Moreover, the design houses are also unwilling to directly share such data with the other houses to build a unified model, which can be ineffective for the design house with unique design patterns due to data insufficiency. On the other hand, with data homogeneity in each design house, the locally trained models can be easily over-fitted, losing generalization ability and robustness. In this paper, we propose a heterogeneous federated learning framework for lithography hotspot detection that can…
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Taxonomy
TopicsAdvancements in Photolithography Techniques · Industrial Vision Systems and Defect Detection · Injection Molding Process and Properties
