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Franck Pigeonneau

Professor

MINES Paris - PSL

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France

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Research Interests

Fluid Mechanics

10%

Artificial Intelligence

10%

Mathematics

10%

Mechanical Engineering

10%

Physics

10%

Simulation Training

10%

Digital Twin Technology

10%

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Positions1

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Elie Hachem

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Mines Paris - PSL

PhD in AI-Driven Digital Twins for Energy-Efficient Glass Furnaces

PhD opportunity at CEMEF, Mines Paris - PSL - CNRS within the ANR Industrial Chair TwinHeat project. The project is titled AI-Driven Digital Twins for Energy-Efficient Glass Furnaces and focuses on the intersection of artificial intelligence , reinforcement learning , simulation-based learning , industrial data analytics , heat transfer , and thermo-fluid dynamics . The research aims to develop AI-powered digital twins for industrial glass furnaces to support monitoring, prediction, optimization, and process control under real operating conditions. The PhD will be hosted at CEMEF in Sophia-Antipolis, France, in close collaboration with industrial partners including major glass manufacturers, furnace designers, and software developers. The work combines physics-based modeling with machine learning and access to real industrial data, high-performance computing, and advanced simulation tools. Research themes include reinforcement learning for process control and optimization and data-driven modeling from industrial production data . The candidate will work on intelligent methods for furnace operation, anomaly detection, pattern extraction, and expert-system support for decision-making. Eligibility highlights: Master’s degree completed or in progress in fluid mechanics , thermal engineering , applied mathematics , computational science , or AI . Strong skills in heat transfer, fluid mechanics, numerical methods, Python and/or C++, and English communication are preferred. Experience with machine learning, reinforcement learning, HPC, or industrial data analysis is an asset. Funding details: 3-year PhD starting Fall 2026 , with a listed gross annual salary of approximately €27,000 before tax . Contacts listed in the post: Elie Hachem and Franck Pigeonneau at Mines Paris - PSL / CEMEF.

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