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About Fidle

This repository contains all the documents and links of the Fidle Training .
Fidle (for Formation Introduction au Deep Learning) is a 3-day training session co-organized
by the 3IA MIAI institute, the CNRS, via the Mission for Transversal and Interdisciplinary
Initiatives (MITI) and the University of Grenoble Alpes (UGA).

The objectives of this training are :

  • Understanding the bases of Deep Learning neural networks
  • Develop a first experience through simple and representative examples
  • Understanding Tensorflow/Keras and Jupyter lab technologies
  • Apprehend the academic computing environments Tier-2 or Tier-1 with powerfull GPU

For more information, see https://fidle.cnrs.fr :

For more information, you can contact us at :

Current Version : 2.4.0

Course materials


Course slides

The course in pdf format

Notebooks

    Get a Zip or clone this repository     

Datasets

All the needed datasets

Videos

    Our Youtube channel    
 

Have a look about How to get and install these notebooks and datasets.

Jupyter notebooks

Linear and logistic regression

Perceptron Model 1957

BHPD regression (DNN), using Keras

BHPD regression (DNN), using PyTorch

Wine Quality prediction (DNN), using Keras

Wine Quality prediction (DNN), using PyTorch

MNIST classification (DNN,CNN), using Keras

MNIST classification (DNN,CNN), using PyTorch

MNIST classification (DNN,CNN), using Lightning

Images classification with Convolutional Neural Networks (CNN)

Sentiment analysis with word embedding

Time series with Recurrent Neural Network (RNN)

Sentiment analysis with transformer

Unsupervised learning with an autoencoder neural network (AE)

Generative network with Variational Autoencoder (VAE)

Generative Adversarial Networks (GANs)

Diffusion Model (DDPM)

Training optimization

Deep Reinforcement Learning (DRL)

Miscellaneous things, but very important!

Installation

Have a look about How to get and install these notebooks and datasets.

Licence


[en] Attribution - NonCommercial - ShareAlike 4.0 International (CC BY-NC-SA 4.0)
[Fr] Attribution - Pas d’Utilisation Commerciale - Partage dans les Mêmes Conditions 4.0 International
See License.
See Disclaimer.