keras-multiprocess-image-data-generator - Accelerating Deep Learning with Multiprocess Image Augmentation in Keras

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Accelerating Deep Learning with Multiprocess Image Augmentation in Keras

http://blog.stratospark.com/multiprocess-image-augmentation-keras.html
https://github.com/stratospark/keras-multiprocess-image-data-generator

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