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An overview of convolutional neural networks (cnns), a popular type of deep learning algorithm used for image recognition and processing. Cnns use a series of filters to extract features from images, which are then passed through a series of fully connected layers for classification. A detailed explanation of the architecture, advantages, and applications of cnns.
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