Alt 2026 Apprenti(e) En Intelligence Artificielle Et Quantification D’incertitudes (h/f)

Airbus

Issy-Les-Moulineaux, France
Scientific machine learning models
Uncertainty quantification techniques
Python programming
This apprenticeship will consist in integrating probabilistic methods into Scientific Machine Learning (SciML) models

Job Summary

  • This apprenticeship will consist in integrating probabilistic methods into Scientific Machine Learning (SciML) models.
  • The objective is to quantify the confidence associated with predictions and, consequently, to strengthen the robustness of physical modeling in domains such as aerodynamics, mechanics, and electromagnetics.
  • You will join a globally recognized company, established on every continent and enriched by a diversity of backgrounds, expertise, and cultures.

Matching Summary

This apprenticeship will consist in integrating probabilistic methods into Scientific Machine Learning (SciML) models.

Skills & Requirements

Must-have

  • Scientific Machine Learning models
  • uncertainty quantification techniques
  • Python programming
  • Git version control

Nice-to-have

  • Bayesian Learning
  • multicultural environment
  • analytical mindset
  • scientific curiosity

Key Requirements

  • Master 1 (BAC+4) level training
  • 1 year apprenticeship duration
  • Advanced English language skills

Work Rights

Not specified

Tailored Resume

Cover Letter