Publication date : 10/01/2025

Course : Deep Learning in practice

Practical course - 3d - 21h00 - Ref. DPL
Price : 2030 € E.T.

Deep Learning in practice




Artificial neural networks facilitate machine learning and are revolutionizing many sectors of the economy. During this training course, you will use the most widely used tools in the field to build and train different types of deep neural networks on a variety of datasets.


INTER
IN-HOUSE
CUSTOM

Practical course in person or remote class
Available in English on request

Ref. DPL
  3d - 21h00
2030 € E.T.




Artificial neural networks facilitate machine learning and are revolutionizing many sectors of the economy. During this training course, you will use the most widely used tools in the field to build and train different types of deep neural networks on a variety of datasets.


Teaching objectives
At the end of the training, the participant will be able to:
Understand the evolution of neural networks and the reasons behind the current success of deep learning.
Use the most popular deep learning libraries
Understand the principles of design, diagnostic tools and the effects of different locks and levers
Gain practical experience on a number of real-life problems

Intended audience
AI engineers/project managers, AI consultants and anyone wishing to discover deep learning techniques in industrial problem solving.

Prerequisites
Good knowledge of statistics and machine learning, equivalent to that provided by the course "Machine learning, methods and solutions". Experience required.

Course schedule

1
Introduction

  • Create a first graph and run it in a session.
  • Life cycle of a node's value.
  • Handling matrices. Linear regression. Gradient descent.
  • Provide data to the training algorithm.
  • Save and restore models. View graph and learning curves.
Demonstration
Presentation of machine learning examples in classification and regression.

2
Introduction to artificial neural networks

  • Train a PMC (multilayer perceptron) with a high-level TensorFlow API.
  • Train a PMC (multilayer perceptron) with basic TensorFlow.
  • Fine-tune the hyperparameters of a neural network.

3
Training deep neural networks

  • Problems of disappearing and exploding gradients.
  • Reuse pre-trained diapers.
  • Faster optimizers.
  • Avoid over-adjustment with regularization.
  • Practical recommendations.
Hands-on work
Implementation of a neural network using the TensorFlow framework.

4
Convolutional neural networks

  • The architecture of the visual cortex.
  • Convolution layer.
  • Pooling layer.
  • CNN architectures.
Hands-on work
Implementation of Convolutional Neural Networks (CNN) using a variety of datasets.

5
Deep learning with Keras

  • Logistic regression with Keras.
  • Perceptron with Keras.
  • Convolutional neural networks with Keras.
Hands-on work
Implementation of Keras using a variety of data sets.

6
Recurrent neural networks

  • Recurrent neurons. Basic RNR with TensorFlow.
  • Training RNR. Deep RNR.
  • Long-term memory cell (LSTM). Closed recurrent unit (GRU) cell.
  • Automatic natural language processing.
Hands-on work
Implementation of recurrent neural networks (RNN) using a variety of datasets.

7
Autoencoders

  • Efficient data representation.
  • Principal component analysis (PCA) with a sub-complete linear autoencoder.
  • Stacked autoencoders. Unsupervised pre-training.
  • Scattered autoencoders. Sparse autoencoders. Variational autoencoders. Other autoencoders.
Hands-on work
Implement autoencoders using a variety of data sets.


Customer reviews
4,3 / 5
Customer reviews are based on end-of-course evaluations. The score is calculated from all evaluations within the past year. Only reviews with a textual comment are displayed.
SOLENE M.
23/02/26
5 / 5

A very interesting course that elucidates the black block that is the deep learning block while applying it in practice.
NICOLAS C.
23/02/26
5 / 5

As expected, the emphasis on practicality is central and very well developed.
VINCENT V.
06/10/25
5 / 5

Very good and concrete!



Dates and locations
Select your location or opt for the remote class then choose your date.
Remote class

Last places available
Guaranteed date, in person or remotely
Guaranteed session

REMOTE CLASS
2026 : 27 Apr., 15 June, 24 Aug., 21 Sep., 4 Nov.

PARIS LA DÉFENSE
2026 : 27 Apr., 15 June, 24 Aug., 21 Sep., 4 Nov.