Deep Learning Techniques - 5-day training | The AI Institute

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Five Day Training Program

  • The AI Institute is proposing you a 5-days course on the most prominent Deep Learning techniques such as Neural Networks (NN), Convolutional NN, Recurrent NN & Time Series Analysis techniques .
  • This is a live course on video-conference with a teacher. 70% of the training time is devoted to practice with a real-time personalized support from an expert teacher.
  • Target Audience:
    • Students & professionals with outstanding backgrounds in Maths (Linear Algebra, statistics) and in Python


This course is letting you understand and practice on the most recent advances in Machine Learning techniques thanks to the neural networks:

  • A lecture & a workshop on Neural Networks & Deep Learning:

    Artificial Intelligence took inspiration from the functioning of the human brain, architecturing neurons together to form neural networks.

    Based on such architecture, Deep Learning has recently gained an impressive momentum thanks to new optimization techniques and the massive amount of data generated by software, Internet and connected devices.

    This course is teaching you the technical principles of Neural Networks and Deep Learning, and letting you practice on Keras, one of the most used Deep Learning frameworks.

  • Tensorflow is the most used & complete Deep Learning framework, letting you build at scale neural networks. After a short introduction, you will discover and practice on this powerful tool
  • The Convolutional Neural Networks (CNN) are a set of recent techniques enabling to handle images, videos but also natural language, as input of neural networks and let the neural networks consider the intrications the different input elements can have at different scale. It is so highly powerful that CNN have now widespread use in the industry, especially in fields such as Computer Vision and Facial Recognition. After a short introduction lecture, you will be quickly practicing using CNN and AI framework Keras.
  • The Recurrent Neural Networks (RNN) are embedding feedback loops inside the neural networks by letting outputs of neurons become inputs of neurons from upstream layers, functioning as memories. LSTM (Long Short Term Memory) is one particular RNN that we will be studying. These techniques are at the forefront of the recent advances in Natural Language Processing. Practice is also key to understanding how to leverage RNN in various situations and you will be using the most popular AI open source framework Google Tensorflow.
  • Auto-encoders are types of neural networks used to learn a representation (encoding) in an unsupervised manner, such as dimensionality reduction, by removing the signal “noise”. It also often includes a reconstructing part to generate from the reduced encoding a representation as close as possible to its original input. Auto-encoders are more and more used in NLP tasks and in image and text generation.
  • 5 days x 5 hours
  • Next session: 04/20-04/24
  • Western Europe & Western Africa: CET 3pm-8pm,
  • US East Coast: EST 9am-2pm, US West Coast PST 6am-12pm
  • Video-conference on Zoom
  • Language: English
  • Maximum of 20 students


  • 480 € / 550 $
    • First iteration -50%
  • Deducted from the bootcamp total price when enrolling in the bootcamp
  • Payment page (in Euro) here
  • Payment page (in US Dollar) here
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