awesome-rnn
Recurrent Neural Network - A curated list of resources dedicated to RNN
https://github.com/eric-erki/awesome-rnn
Last synced: 6 days ago
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Codes
- Torch - Lua
- Tensorflow - Python, C++
- Theano - Python
- Deep Learning Tutorials
- RNN for semantic parsing of speech
- LSTM network for sentiment analysis
- Pylearn2
- Oxford - Machine Learning 2015 Practicals
- RNNLIB
- RNNLM
- gist
- Neon
- Scikit Flow (skflow) - Simplified Scikit-learn like Interface for TensorFlow
- Brainstorm
- Lasagne
- Caffe - C++ with MATLAB/Python wrappers
- Notebook examples
- Tutorials
- Practical PyTorch tutorials
- Passage
- Recurrentjs
- Deep Learning For NLP In PyTorch
- char-rnn - layer RNN/LSTM/GRU for training/sampling from character-level language models
- neuraltalk2
- LSTM
- char-rnn-tensorflow - rnn in tensorflow
- rnn
- torch-rnn - much faster and memory efficient reimplementation of char-rnn
- neuraltalk - based RNN/LSTM implementation
- Theano-Lights
- faster-RNNLM
- theano-rnn
- LRCN
- RNNLM
- DARQN - Network
- torchnet
- Word-level RNN example
- DL4J
- Blocks
- Get started
- Recurrent Neural Network Tutorial
- Sequence-to-Sequence Model Tutorial
- tutorial on Theano
- rnn examples
- CGT
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Blogs
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Other
- Optimizing RNN Performance
- The Unreasonable Effectiveness of RNNs
- Understanding LSTM Networks
- LSTM Backpropogation
- LSTM Backpropogation
- Written Memories: Understanding, Deriving and Extending the LSTM
- Character Level Language modelling using RNN
- Implement an RNN in Python
- Introduction to Recurrent Networks in TensorFlow
- Variable Sequence Lengths in TensorFlow
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Datasets
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Other
- THUMOS - scale action recognition dataset
- Flickr 30k
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- OpenSLR
- Microsoft COCO
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- [Data
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- SQuAD - Stanford Question Answering Dataset : [[Paper](http://arxiv.org/pdf/1606.05250)]
- Image QA - based on MSCOCO images
- Multilingual Image QA - built from scratch by Baidu - in Chinese, with English translation
- MultiTHUMOS
- THUMOS - scale action recognition dataset
- MultiTHUMOS
- SQuAD - Stanford Question Answering Dataset : [[Paper](http://arxiv.org/pdf/1606.05250)]
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- VoxForge
- Flickr 8k
- LibriSpeech ASR corpus
- The bAbI Project - Dataset for text understanding and reasoning, by Facebook AI Research. Contains:
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Applications
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Multimodal (CV + NLP)
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- [Paper-arXiv - CVPR](http://www.cs.cmu.edu/~xinleic/papers/cvpr15_rnn.pdf)]
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- [Paper-arXiv - CVPR](http://www.cs.cmu.edu/~xinleic/papers/cvpr15_rnn.pdf)]
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Natural Language Processing
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- [Paper - Neural-Autoencoder)]
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- [Paper - Neural-Autoencoder)]
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Computer Vision
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Robotics
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Other
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Theory
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Lectures
- CS224d
- Lecture Note 3
- Lecture Note 4 - directional RNN, GRU, LSTM
- Machine Learning
- Lecture 12
- Lecture 13
- CS224d
- Lecture Note 3
- Lecture Note 4 - directional RNN, GRU, LSTM
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Books / Thesis
- Supervised Sequence Labelling with Recurrent Neural Networks
- Statistical Language Models based on Neural Networks
- Training Recurrent Neural Networks
- Recursive Deep Learning for Natural Language Processing and Computer Vision
- Recursive Deep Learning for Natural Language Processing and Computer Vision
- Supervised Sequence Labelling with Recurrent Neural Networks
- Training Recurrent Neural Networks
- The Deep Learning Book chapter 10
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Architecture Variants
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- [Paper-arXiv - ICML](http://jmlr.org/proceedings/papers/v37/chung15.pdf)] [[Supplementary](http://jmlr.org/proceedings/papers/v37/chung15-supp.pdf)]
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- [Paper - lstm)]
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- [Paper-arXiv - ICML](http://jmlr.org/proceedings/papers/v37/chung15.pdf)] [[Supplementary](http://jmlr.org/proceedings/papers/v37/chung15-supp.pdf)]
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Surveys
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Online Demos
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Contributing
Programming Languages
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