arunsinghbabal/Automated-Defective-Substrate-Identification-for-Expedited-Manufacturing
Identifies the faulty wafer before it can be used for the fabrication of integrated circuits and, in photovoltaics, to manufacture solar cells. The project retrains itself after every prediction, making it more robust and generalized over time.
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Python
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Last pushed
Feb 02, 2023
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