LSTM-Human-Activity-Recognition in jtoy/awesome-tensorflow, guillaume-chevalier/Awesome-Deep-Learning-Resources

Human Activity Recognition example using TensorFlow on smartphone sensors dataset and an LSTM RNN. Classifying the type of movement amongst six activity categories - Guillaume Chevalier

created at May 18, 2016, 2 a.m.

Jupyter Notebook

160 +0

3,345 +0

938 +1

GitHub
seq2seq-signal-prediction in jtoy/awesome-tensorflow, ujjwalkarn/Machine-Learning-Tutorials, guillaume-chevalier/Awesome-Deep-Learning-Resources

Signal forecasting with a Sequence-to-Sequence (seq2seq) Recurrent Neural Network (RNN) model in TensorFlow - Guillaume Chevalier

created at March 31, 2017, 7:26 p.m.

Jupyter Notebook

41 +0

1,083 +0

293 +0

GitHub
Awesome-Deep-Learning-Resources (13) in sindresorhus/awesome

Rough list of my favorite deep learning resources, useful for revisiting topics or for reference. I have got through all of the content listed there, carefully. - Guillaume Chevalier

created at Nov. 27, 2016, 5:41 p.m.

sunglassesUnknown languages

119 +0

1,668 +0

292 +0

GitHub
HAR-stacked-residual-bidir-LSTMs in guillaume-chevalier/Awesome-Deep-Learning-Resources

Using deep stacked residual bidirectional LSTM cells (RNN) with TensorFlow, we do Human Activity Recognition (HAR). Classifying the type of movement amongst 6 categories or 18 categories on 2 different datasets.

created at Nov. 26, 2016, 2:41 p.m.

Python

19 +0

319 +0

100 +0

GitHub
Hyperopt-Keras-CNN-CIFAR-100 in guillaume-chevalier/Awesome-Deep-Learning-Resources

Auto-optimizing a neural net (and its architecture) on the CIFAR-100 dataset. Could be easily transferred to another dataset or another classification task.

created at May 27, 2017, 6:15 p.m.

Python

10 +0

106 +0

76 +0

GitHub
How-to-Grow-Neat-Software-Architecture-out-of-Jupyter-Notebooks in markusschanta/awesome-jupyter

Growing the code out of your notebooks - the right way.

created at Oct. 13, 2018, 9:13 a.m.

Unknown languages

12 +0

526 +3

30 +0

GitHub
filtering-stft-and-laplace-transform in guillaume-chevalier/Awesome-Deep-Learning-Resources

Simple demo of filtering signal with an LPF and plotting its Short-Time Fourier Transform (STFT) and Laplace transform, in Python.

created at Jan. 22, 2017, 6:03 a.m.

Jupyter Notebook

4 +0

66 +0

17 +0

GitHub
SGNN-Self-Governing-Neural-Networks-Projection-Layer in guillaume-chevalier/Awesome-Deep-Learning-Resources

Attempt at reproducing a SGNN's projection layer, but with word n-grams instead of skip-grams. Paper and more: http://aclweb.org/anthology/D18-1105

created at Dec. 20, 2018, 10:08 p.m.

Jupyter Notebook

3 +0

23 +0

3 +0

GitHub
Smoothly-Blend-Image-Patches in guillaume-chevalier/Awesome-Deep-Learning-Resources

Using a U-Net for image segmentation, blending predicted patches smoothly is a must to please the human eye.

created at Aug. 25, 2017, 8:33 p.m.

Python

3 +0

0 +0

1 +0

GitHub