Project Name | Stars | Downloads | Repos Using This | Packages Using This | Most Recent Commit | Total Releases | Latest Release | Open Issues | License | Language |
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Pytorch Kaldi | 2,138 | 2 years ago | 24 | Python | ||||||
pytorch-kaldi is a project for developing state-of-the-art DNN/RNN hybrid speech recognition systems. The DNN part is managed by pytorch, while feature extraction, label computation, and decoding are performed with the kaldi toolkit. | ||||||||||
Speech Recognition Neural Network | 128 | 7 years ago | 6 | HTML | ||||||
This is the end-to-end Speech Recognition neural network, deployed in Keras. This was my final project for Artificial Intelligence Nanodegree @Udacity. | ||||||||||
Cs224n_project | 65 | 6 years ago | 1 | mit | Jupyter Notebook | |||||
Neural Image Captioning in TensorFlow. | ||||||||||
Multi Stage Convstar Network | 53 | 8 months ago | Python | |||||||
[RSE 2021] Crop mapping from image time series: deep learning with multi-scale label hierarchies | ||||||||||
Rnn_sent | 34 | 7 years ago | 1 | Python | ||||||
Recurrent neural networks and Dynamic memory networks for sentiment classification | ||||||||||
Generativelstm | 24 | a year ago | 2 | apache-2.0 | Python | |||||
Learning Accurate Generative Models of Business Processes With LSTM Neural Networks | ||||||||||
Tensorflow Sentiment Analysis On Amazon Reviews Data | 23 | 5 years ago | Python | |||||||
Implementing different RNN models (LSTM,GRU) & Convolution models (Conv1D, Conv2D) on a subset of Amazon Reviews data with TensorFlow on Python 3. A sentiment analysis project. | ||||||||||
Stackable Recurrent Network | 14 | 3 years ago | n,ull | Python | ||||||
[PAMI 2021] Gating Revisited: Deep Multi-layer RNNs That Can Be Trained | ||||||||||
Neural Network | 7 | 6 months ago | 1 | Jupyter Notebook | ||||||
Deep Learning, Attention, Transformers, BERT, GPT-2, GTP-3 | ||||||||||
Pokerai | 6 | 3 years ago | gpl-3.0 | Python | ||||||
AI algorithm that plays Texas hold 'em poker (part of university research in imperfect information games) |