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Reducing EUV coating thickness errors by a factor of two using statistical inference and machine learning

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Abstract

We show how we identified the cause of EUV coating thickness fluctuations due to process variations using statistical inference and machine learning and in turn reduced the coating thickness errors by a factor of two.

© 2022 The Author(s)

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