This repository contains machine learning models implemented in TensorFlow. The models are maintained by their respective authors. To propose a model for inclusion, please submit a pull request.

Neal Wu 2af8c3d2b6 Switch to the new FileWriter API 9 years ago
.github dc7791d01c Create ISSUE_TEMPLATE.md (#124) 9 years ago
autoencoder 052e5e8b6e Converted the models repo to TF 1.0 using the upgrade script 9 years ago
compression 052e5e8b6e Converted the models repo to TF 1.0 using the upgrade script 9 years ago
differential_privacy 052e5e8b6e Converted the models repo to TF 1.0 using the upgrade script 9 years ago
im2txt 00ffa603f2 Manually fixed many occurrences of tf.concat 9 years ago
inception 2af8c3d2b6 Switch to the new FileWriter API 9 years ago
learning_to_remember_rare_events 6a9c0da962 add learning to remember rare events 9 years ago
lm_1b fdc4ce37a4 Fix README 9 years ago
namignizer 74ae822126 Remove leading space from namignizer code 9 years ago
neural_gpu 5c53534305 Manually fixed many occurrences of tf.split 9 years ago
neural_programmer 052e5e8b6e Converted the models repo to TF 1.0 using the upgrade script 9 years ago
next_frame_prediction 052e5e8b6e Converted the models repo to TF 1.0 using the upgrade script 9 years ago
real_nvp 5c53534305 Manually fixed many occurrences of tf.split 9 years ago
resnet 64254ad355 Modify the README to reflect changes 9 years ago
slim 546fd48ecb Additional upgrades to 1.0 and code fixes 9 years ago
street b41ff7f1bf Remove name arguments from tf.summary.scalar 9 years ago
swivel 00ffa603f2 Manually fixed many occurrences of tf.concat 9 years ago
syntaxnet 00ffa603f2 Manually fixed many occurrences of tf.concat 9 years ago
textsum 546fd48ecb Additional upgrades to 1.0 and code fixes 9 years ago
transformer 052e5e8b6e Converted the models repo to TF 1.0 using the upgrade script 9 years ago
tutorials 0b2c5ba296 Merge pull request #1112 from zym1010/issue1083 9 years ago
video_prediction 052e5e8b6e Converted the models repo to TF 1.0 using the upgrade script 9 years ago
.gitignore 3e6caf5ff0 Add a .gitignore file. (#164) 9 years ago
.gitmodules 32ab5a58dd Adding SyntaxNet to tensorflow/models (#63) 9 years ago
AUTHORS 41c52d60fe Spatial Transformer model 10 years ago
CONTRIBUTING.md d84df16bc3 fixed contribution guidelines 10 years ago
LICENSE 7c41e653dc Update LICENSE 10 years ago
README.md 727418e4ae One more tiny change 9 years ago
WORKSPACE ac0829fa2b Consolidate privacy/ and differential_privacy/. 9 years ago

README.md

TensorFlow Models

This repository contains machine learning models implemented in TensorFlow. The models are maintained by their respective authors.

To propose a model for inclusion please submit a pull request.

Models

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