Design develop and train an AI model based on historical data from automotive thermal validation tests to predict key performance indicators (KPIs) for future vehicle lines. The ultimate goal is to reduce or eliminate physical testing accelerate time-to-market and optimize resource allocation
Main Responsibilities:
- Data Collection & Processing:
- Gather clean and structure historical test data from thermal validation campaigns (e.g. climatic chamber tests endurance tests).
- Ensure data consistency and quality from multiple sources (physical tests benches in-vehicle sensors etc.).
- AI / ML Model Development:
- Define the architecture of an AI model (e.g. deep learning machine learning hybrid models) dedicated to KPI prediction.
- Train the model using historical datasets including:
- Coolant circuits (battery e-motor HVAC heat losses)
- Refrigerant circuits (pressure drop IHX)
- Component thermal behavior (battery cells power electronics cabin etc.)
- Heat exchangers pumps valves actuators
- Interaction with ambient conditions and driving cycles
- Analysis & KPI Prediction:
- Identify correlations between physical parameters and the target KPIs.
- Generate predictions for new vehicle lines with no physical validation.
- Benchmark AI predictions against historical physical test results to validate the model.
- Documentation & Reporting:
- Document the modeling process assumptions and results.
- Present findings and recommendations to key stakeholders (validation teams design teams quality management).
Qualifications :
Education:
- Masters degree (or equivalent) in:
- Data Science / Artificial Intelligence
- Mechanical / Thermal / Energy Engineering
- Automotive or Embedded Systems Engineering
Experience:
- More than 1 year of experience in data science or AI applied to complex technical systems.
- Experience in the automotive sector or thermal validation is a strong advantage.
Technical Skills:
- Data Science & AI:
- Proficiency in Python (Pandas Scikit-learn TensorFlow or PyTorch)
- Knowledge of regression neural networks supervised learning models
- Experience with time-series data and predictive modeling
- Automotive Thermal Systems:
- Understanding of vehicle thermal systems (cooling loops HVAC electrified components)
- Familiarity with physical testing procedures and KPIs related to thermal performance
- Other Tools:
- Data visualization tools (Matplotlib Plotly Power BI etc.)
- Ability to communicate and document technical work in English and French
- Strong analytical mindset and autonomy
Soft Skills:
- Technological curiosity and innovation mindset
- Team player with the ability to collaborate across functions (data science validation design calibration)
- Strong problem-solving and critical thinking skills
- Results-oriented with a focus on optimization and efficiency
Remote Work :
Yes
Employment Type :
Full-time