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@@ -8,23 +8,24 @@ To propose a model for inclusion please submit a pull request.
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## Models
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-- [autoencoder](autoencoder) -- various autoencoders.
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-- [compression](compression) -- compressing and decompressing images using pre-trained Residual GRU network.
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-- [differential_privacy](differential_privacy) -- privacy-preserving student models from multiple teachers.
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-- [im2txt](im2txt) -- image-to-text neural network for image captioning.
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-- [lm_1b](lm_1b) -- language modelling on one billion word benchmark.
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-- [inception](inception) -- deep convolutional networks for computer vision.
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-- [namignizer](namignizer) -- recognize and generate names.
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-- [neural_gpu](neural_gpu) -- highly parallel neural computer.
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-- [neural_programmer](neural_programmer) -- neural network augmented with logic and mathematic operations.
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-- [next_frame_prediction](next_frame_prediction) -- probabilistic future frame synthesis via cross convolutional networks.
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-- [real_nvp](real_nvp) -- density estimation using real-valued non-volume preserving (real NVP).
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-- [resnet](resnet) -- deep and wide residual networks.
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-- [slim](slim) -- image classification models in TF-Slim.
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-- [street](street) -- identify the name of a street (in France) from an image using Deep RNN.
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-- [swivel](swivel) -- the Swivel algorithm for generating word embeddings.
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-- [syntaxnet](syntaxnet) -- neural models of natural language syntax.
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-- [textsum](textsum) -- sequence-to-sequence with attention model for text summarization.
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-- [transformer](transformer) -- spatial transformer network, which allows the spatial manipulation of data within the network.
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-- [tutorials](tutorials) -- models referenced to from the [TensorFlow tutorials](https://www.tensorflow.org/tutorials/).
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-- [video_prediction](video_prediction) -- predicting future video frames with neural advection.
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+- [autoencoder](autoencoder): various autoencoders.
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+- [compression](compression): compressing and decompressing images using pre-trained Residual GRU network.
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+- [differential_privacy](differential_privacy): privacy-preserving student models from multiple teachers.
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+- [im2txt](im2txt): image-to-text neural network for image captioning.
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+- [inception](inception): deep convolutional networks for computer vision.
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+- [learning_to_remember_rare_events](learning_to_remember_rare_events): a large-scale life-long memory module for use in deep learning.
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+- [lm_1b](lm_1b): language modeling on the one billion word benchmark.
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+- [namignizer](namignizer): recognize and generate names.
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+- [neural_gpu](neural_gpu): highly parallel neural computer.
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+- [neural_programmer](neural_programmer): neural network augmented with logic and mathematic operations.
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+- [next_frame_prediction](next_frame_prediction): probabilistic future frame synthesis via cross convolutional networks.
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+- [real_nvp](real_nvp): density estimation using real-valued non-volume preserving (real NVP) transformations.
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+- [resnet](resnet): deep and wide residual networks.
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+- [slim](slim): image classification models in TF-Slim.
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+- [street](street): identify the name of a street (in France) from an image using a Deep RNN.
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+- [swivel](swivel): the Swivel algorithm for generating word embeddings.
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+- [syntaxnet](syntaxnet): neural models of natural language syntax.
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+- [textsum](textsum): sequence-to-sequence with attention model for text summarization.
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+- [transformer](transformer): spatial transformer network, which allows the spatial manipulation of data within the network.
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+- [tutorials](tutorials): models described in the [TensorFlow tutorials](https://www.tensorflow.org/tutorials/).
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+- [video_prediction](video_prediction): predicting future video frames with neural advection.
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