Tensorflow Tutorials

From: pkmital/tensorflow_tutorials

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, style net, and recurrent networks: https://www.kadenze.com/courses/creative-applications-of-deep-learning-with-tensorflow-i/info

TensorFlow Tutorials

You can find.mdthon source code under the .mdthondirectory, and associated notebooks undernotebooks`.

Source code Description
1 basics Setup with tensorflow and graph computation.
2 linear_regression Performing regression with a single factor and bias.
3 polynomial_regression Performing regression using polynomial factors.
4 logistic_regression Performing logistic regression using a single layer neural network.
5 basic_convnet Building a deep convolutional neural network.
6 modern_convnet Building a deep convolutional neural network with batch normalization and leaky rectifiers.
7 autoencoder Building a deep autoencoder with tied weights.
8 denoising_autoencoder Building a deep denoising autoencoder which corrupts the input.
9 convolutional_autoencoder Building a deep convolutional autoencoder.
10 residual_network Building a deep residual network.
11 variational_autoencoder Building an autoencoder with a variational encoding.

Installation Guides

For Ubuntu users using.mdthon3.4+ w/ CUDA 7.5 and cuDNN 7.0, you can find compiled wheels under the wheels directory. Use pip3 install tensorflow-0.8.0rc0.md3-none-any.whl to install, e.g. and be sure to add: export LD_LIBRARY_PATH="$LD_LIBRARY_PATH:/usr/local/cuda/lib64" to your .bashrc. Note, this still requires you to install CUDA 7.5 and cuDNN 7.0 under /usr/local/cuda.

Resources

Author

Parag K. Mital, Jan. 2016.

http://pkmital.com

License

See LICENSE.md

results matching ""

    No results matching ""