bi-lab / Deeplearning_tutorial
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BI Lab Deep Learning Tutorial
This repository consists of IPython notebooks of basic and advanced examples of deep learning tools such as Caffe, Tensorflow and Theano.
MNIST data
MNIST data is not ours. You can find the license info and the original data uploads here: http://yann.lecun.com/exdb/mnist/
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