What are some of the best practices for data preprocessing and augmentation for deep learning?

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Data preprocessing and augmentation are essential steps for improving the performance and robustness of deep learning models. They involve transforming, cleaning, and expanding the input data to make it more suitable and diverse for training and testing. In this article, you will learn some of the best practices for data preprocessing and augmentation for deep learning, such as:

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