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This application note explains how Cognex deep learning-based image analysis software simplifies the automated inspection of electro-luminescence (EL) images. The Defect Detection Tool, in supervised mode, trains itself on the different defect types (most commonly micro-cracks) and known good samples and identifies and reports defective areas of the cells.