Duration

 7,00 month(s)

Language(s) of service

EN

Who is organizing this training?

The Digital Learning Hub (DLH) is characterized, on the one hand, by an important flexibility to host trainings in the field of computer science and, on the other hand, by an alternative way of pedagogy compared to a traditional school, for example.

Who is the training for?

  • IT professionals (upskilling)
  • Young school graduates
  • Career switcher (reskilling)

Prerequisites

  • Registration is reserved exclusively for candidates who have successfully completed the selection process.
  • Applicants must have passed the assessment test and completed the interview with the Academy coordinator.
  • Registrations made without completing this process will be cancelled. If you need any help regarding this process, please contact us per email.

Goals

The AI Academy is a technical, project-oriented training programme structured around core modules, specialised tracks, and a final capstone project. It provides participants with a structured pathway to develop competencies in Artificial Intelligence through progressive learning and practical application. This programme is delivered full-time (40h/week) and combines theoretical foundations with practical application.

Contents

In this academy, you will work on hands-on projects covering the following topics:

Common Core Program (2 months / 40h per week)
  • Python Programming
  • Linear Algebra
  • Calculus
  • Probability
  • Data Manipulation

After the Common Core, you will have the opportunity to choose one of the following two specializations:

Machine Learning Specialization program (4 months / 40h per week)
  • Classical Machine Learning
  • Deep Learning Fundamentals
  • Advanced Deep Learning
  • Natural Language Processing (NLP)
  • Reinforcement Learning
Data Science specialization Program (3 months / 40h per week)
  • Data Handling
  • Supervised Learning
  • Unsupervised Learning
  • Advanced AI

Points covered

Common Core Program (2 months / 40h per week)
  • Python Programming
    • Python syntax, data types, and structures
    • Functions, loops, and conditionals
    • File handling and exceptions
    • Object-Oriented Programming
    • Modules and Packages
  • Linear Algebra
    • Scalars, Vectors and Matrices
    • Matrix Operations
    • Determinants
    • Eigenvalues and Eigenvectors
  • Calculus
    • Limits and Derivatives
    • Chain Rule and Partial Derivatives
    • Integration basics
  • Probability
    • Probability Distributions
    • Mean, variance, and standard deviation
    • Bayes’ theorem and conditional probability
  • Data Manipulation
    • Pandas workflow
    • Introduction to visualization

After the Common Core, you will have the opportunity to choose one of the following two specializations:

Machine Learning Specialization program (4 months / 40h per week)
  • Classical Machine Learning
    • Regression models
    • Classification models
  • Deep Learning Fundamentals
    • Neural Network Basics & Architectures
    • Training & Optimization
    • Regularization Techniques
  • Advanced Deep Learning
    • ransfer Learning
    • Autoencoders
    • Generative Models
  • Natural Language Processing (NLP)
    • Word embeddings
    • Sequence Modeling (RNN, LSTM, GRU)
    • Transformer architecture
  • Reinforcement Learning
    • Fundamentals of Reinforcement Learning
    • Value-Based Methods
    • Policy-Based Methods
Data Science specialization Program (3 months / 40h per week)
  • Data Handling
    • Data collection
    • Exploratory Data Analysis
    • Data Preprocessing
    • Working with databases
  • Supervised Learning
    • Regression and Classification overview
    • Linear Models
    • Tree-Based Models
    • Model evaluation and tuning
    • Pipeline building with Scikit-learn
  • Unsupervised Learning
    • Clustering
    • Dimensionality reduction
  • Advanced AI
    • Neural Networks
    • Computer Visi

Teaching methods

The AI Academy follows a project-oriented approach designed to provide hands-on experience while allowing flexibility for participants.

  • Project-Based Learning
  • Flexible Schedule
  • Mandatory On-Site Presence
  • Integrated Skills Development

Additional information

See the full programme and sign up online.

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