From the basics to slightly more interesting applications of Tensorflow

UPDATE (July 12, 2016) New free MOOC course covering all of this material in much more depth, as well as much more including combined variational autoencoders + generative adversarial networks, visualizing gradients, deep dream,

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authuir Microsoft Beauty of Programming 2017 Task1 Show Requirement Python >=3.4 TensorFlow >=1.0 Numpy >=1.2 Usage shell> python .\train.py How to train