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AI & Data Science - Predictive Maintenance

Wattnow

StageSur site4 à 6 moisDate limite : 29 déc. 2025
Predictive MaintenanceAnomaly detectioncondition monitoringMachine Learning / XAIMachine Learning (LLM)IA / Deep Learningweb dashboardsBackend Development (Python, Node.js)AI / Machine Learning (scikit-learn, PyTorch)TensorFlowStreamlitdashboard development

Postuler

Description

Build predictive maintenance models for industrial machinery using sensor data to detect faults, predict failures, and enable data-driven maintenance planning.

Scope and datasets:

  • Industrial machinery sensor data
  • Appliance states (ON/OFF), multi-class defect labels

Models and methods:

  • ML/DL models for anomaly/fault detection and classification
  • Benchmarking and accuracy evaluation
  • XAI integration for interpretability

Expected deliverables:

  • Deployed PdM model
  • Web dashboard for monitoring and alerting
  • Research paper-quality write-up

Technical environment:

  • Python, PyTorch, TensorFlow, scikit-learn
  • Streamlit, Dash, Plotly, Gradio
  • Git, Jupyter; cloud deployment optional

Profile:

  • Final-year engineering student (AI, Data Science, CS, Energy, Automation)
  • Solid Python and ML/DL skills; time-series modeling experience is a plus
  • Dashboard development experience is a plus
  • Good communication, teamwork, curiosity, autonomy

What we offer:

  • Real-world Industry 4.0 and energy-tech projects
  • Mentorship from an experienced AI/Data Science team
  • Opportunity to co-author a scientific publication
  • Immersion in a fast-growing scale-up; potential for future collaboration

How to apply:

  • Email your CV/Resume and (optional) GitHub/Portfolio
  • Important: mention the project title in the email subject

📧 Pour postuler: feres.jerbi@wattnow.io