IFP Energies nouvelles
Rueil-Malmaison

Internship in Computer Vision and Machine Learning for Fault Detection and Diagnosis

Computer Visionmachine learningFault DetectionData Science & IAartificial intelligence

Publié il y a 7 mois

Stage
⏱️4-6 mois
💼Hybride
💰Rémunéré
📅Expiré il y a 7 mois
Reste lisible (ATS friendly).

Description du poste

Project Context

  • IFPEN is a key player in the energy transition, focusing on ecological and digital solutions.
  • The internship involves developing intelligent monitoring systems for chemical pilot plants to ensure safe and efficient operations.

Internship Objectives

  • Conduct a literature review on fault detection techniques, emphasizing machine learning and computer vision.
  • Implement and adapt computer vision techniques for anomaly detection using synthetic pilot plant data.
  • Validate the developed methods with real plant data to ensure effectiveness.

Ideal Candidate Profile

  • Candidates should have an engineering degree or be pursuing a Master's (M2) in Applied Mathematics, AI, Data Science, or Computer Science.
  • Strong foundation in machine learning and computer vision is required, along with proficiency in Python and experience with deep learning frameworks (TensorFlow/PyTorch).
  • Familiarity with time series analysis and real-time systems is a plus.

Additional Information

  • Duration: 4-6 months (February - November 2025)
  • Location: IFPEN – LYON, accessible by public transport.
  • Compensation: This is a remunerated internship.
  • Application Process: Interested candidates should send their CVs and motivation letters to Rayane AMMAR KHODJA with the subject line "Application - Anomaly Detection Computer Vision & FDD Internship 2025".