Frugal Machine Learning and Density Functional Theory for the Design of Sustainable Catalytic Materials (M/F)

Updated: 8 days ago
Location: Nancy, LORRAINE
Job Type: FullTime
Deadline: 02 May 2026

12 Apr 2026
Job Information
Organisation/Company

CNRS
Department

Institut Jean Lamour
Research Field

Mathematics
History » History of science
Researcher Profile

First Stage Researcher (R1)
Application Deadline

2 May 2026 - 23:59 (UTC)
Country

France
Type of Contract

Temporary
Job Status

Full-time
Hours Per Week

35
Offer Starting Date

1 Oct 2026
Is the job funded through the EU Research Framework Programme?

Not funded by a EU programme
Is the Job related to staff position within a Research Infrastructure?

No

Offer Description

The Institute Jean Lamour (IJL) is a joint research unit of CNRS and Université de Lorraine.
Focused on materials and processes science and engineering, it covers: materials, metallurgy, plasmas, surfaces, nanomaterials and electronics.
By 2026, IJL has 258 permanent staff (33 researchers, 133 teacher-researchers, 92 IT-BIATSS) and 389 non-permanent staff (146 doctoral students, 43 post-doctoral students / contractual researchers and more than 200 trainees), from some seventy different nationalities.
Partnerships exist with 150 companies and our research groups collaborate with more than XX countries throughout the world.
Its exceptional instrumental platforms are spread over 4 sites ; the main one is located on Artem campus in Nancy.
The thesis will take place within Research Group 102, "Plasmas, Processes, and Surfaces."

Scientific context : The catalytic conversion of carbon dioxide into methanol is widely recognized as a key route for carbon valorization and greenhouse gas mitigation. When coupled with renewable hydrogen, this reaction offers a promising pathway toward sustainable fuel production and long-term decarbonization of the chemical industry. In recent years, catalysts based on oxide–metal and oxide–intermetallic interfaces have emerged as particularly promising systems, as these interfaces can strongly influence CO₂ activation and methanol selectivity. However, the atomic-scale structure of these interfaces and the mechanisms governing their catalytic activity remain poorly understood. Their structural heterogeneity and chemical complexity make accurate atomistic modeling particularly challenging.

Recent advances in machine learning approaches provide a powerful framework to model complex catalytic materials with near ab initio accuracy while enabling simulations at significantly larger spatial and temporal scales than conventional electronic structure methods. However, these development typically requires very large training datasets generated from computationally expensive calculations, which represents a major bottleneck for the study of complex catalytic interfaces.

Objectives : The objective of the thesis is to develop data-efficient machine learning strategies for CO₂ hydrogenation to methanol, catalyzed by oxide-metal interfaces. Key ideas include the consideration of transfer learning, machine learning interaction potentials, and existing knowledge from experimental studies.

Techniques/methods in use: Density Functional Theory, Machine Learning

Applicant skills: Strong background in chemistry, physical chemistry, materials science, or condensed matter physics. Experience in data science, Python programming, high-performance computing and/or quantum chemistry will be considered an asset. Excellent communication skills are essential,
with the ability to work and exchange ideas effectively both orally and in writing. English speaking is required. The application should include a statement of research interest, a CV and Master's degree transcript.


Where to apply
Website
https://emploi.cnrs.fr/Offres/Doctorant/UMR7198-MELDOG-040/Default.aspx

Requirements
Research Field
Mathematics
Education Level
PhD or equivalent

Research Field
History
Education Level
PhD or equivalent

Languages
FRENCH
Level
Basic

Research Field
Mathematics
Years of Research Experience
None

Research Field
History » History of science
Years of Research Experience
None

Additional Information
Website for additional job details

https://emploi.cnrs.fr/Offres/Doctorant/UMR7198-MELDOG-040/Default.aspx

Work Location(s)
Number of offers available
1
Company/Institute
Institut Jean Lamour
Country
France
City
NANCY
Geofield


Contact
City

NANCY
Website

http://ijl.univ-lorraine.fr

STATUS: EXPIRED

  • X (formerly Twitter)
  • Facebook
  • LinkedIn
  • Whatsapp

  • More share options
    • E-mail
    • Pocket
    • Viadeo
    • Gmail
    • Weibo
    • Blogger
    • Qzone
    • YahooMail



Similar Positions