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.