Publisher
source

Nidhal HNAIEN

2 weeks ago

Master's/Engineer Internship in Process Engineering and Data Sciences – PIML–TL Hybrid Model for Ammonia Production Kinetics University of Lorraine in France

Degree Level

Master's

Field of study

Computer Science

Funding

The position offers a statutory internship allowance of approximately 550 euros net per month. No additional funding or tuition coverage is specified.

Deadline

Feb 1, 2026

Country flag

Country

France

University

Université de Lorraine

Social connections

How do I apply for this?

Sign in for free to reveal details, requirements, and source links.

Continue in dashboard

Where to contact

Keywords

Computer Science
Data Science
Aerodynamics
Chemical Engineering
Heat Transfer
Transfer Learning
Process Engineering
Artificial Neural Network

About this position

The Reactions and Process Engineering Laboratory (LRGP) at the University of Lorraine is offering a Master's or Engineer internship focused on the development of a Physics-Informed Machine Learning (PIML)–Transfer Learning (TL) hybrid model for predicting ammonia production kinetics. The internship is based at the Grandville site in Nancy, France, and is ideal for students specializing in Process Engineering or Data Sciences.

The project involves tuning neural network hyperparameters, testing various modeling scenarios, evaluating multiple transfer learning methods, and validating the developed model using experimental results. This opportunity is particularly relevant for students interested in the intersection of chemical engineering, data science, and advanced modeling techniques.

The internship provides a statutory allowance of approximately 550 euros net per month, with a start date in February or March 2026. Applicants should have a background in process engineering or data sciences, and familiarity with neural networks and transfer learning is highly desirable. The position is supervised by Xiaoqian Huang at the University of Lorraine, with the announcement shared by Assistant Professor Nidhal HNAIEN from the University of Monastir.

To apply, interested candidates should contact Xiaoqian Huang via email at [email protected], including their CV and relevant academic records. This is an excellent opportunity for students seeking hands-on experience in cutting-edge research at the interface of engineering and data science.

Funding details

The position offers a statutory internship allowance of approximately 550 euros net per month. No additional funding or tuition coverage is specified.

What's required

Applicants should be pursuing a Master's or Engineer degree in Process Engineering or Data Sciences. Experience or coursework in neural networks, transfer learning, and modeling is preferred. No specific GPA or language requirements are mentioned.

How to apply

Contact Xiaoqian Huang by email at [email protected] with your application. Prepare your CV and relevant academic records. Mention your interest in the PIML–TL hybrid model internship. Apply as soon as possible for a February/March 2026 start.

Ask ApplyKite AI

Professors