Researcher (f/m/d) in Computer Science "Machine Learning for Materials Science and Chemistry"
Researcher (f/m/d) in Computer Science "Machine Learning for Materials Science and Chemistry"
Researcher (f/m/d) in Computer Science "Machine Learning for Materials Science and Chemistry"
Researcher (f/m/d) in Computer Science "Machine Learning for Materials Science and Chemistry"
KIT-Karlsruher Institut für Technologie
Forschung
Karlsruhe
- Art der Anstellung: Vollzeit
- 49.500 € – 72.500 € (von XING geschätzt)
- Vor Ort

Researcher (f/m/d) in Computer Science "Machine Learning for Materials Science and Chemistry"
Über diesen Job
Personalservice (PSE)
Researcher (f/m/d) in Computer Science "Machine Learning for Materials Science and Chemistry"
Stelle ist zu besetzen ab: 01.02.2026
Beschreibung
Beschreibung
As a successful candidate, you will work on the development of machine learning methods in the AI for Materials Science (AiMat) group of Prof. Dr. Pascal Friederich.
Your responsibilities will include:
- Development of machine learning methods in collaboration with partners of the DFG Excellence Cluster "3D Matter Made to Order,” with a focus on ML potentials for complex atomistic simulations of laser 3D printing processes
- Research in the areas of accelerated atomistic simulations, universal ML potentials, and model distillation
- Collaboration with experimental partners in the 3DMM2O project to apply and validate the developed ML potentials
- Preparation of scientific manuscripts and presentation of research results at workshops and conferences
In addition to scientific work, there is the opportunity of pursuing a PhD.
Persönliche Qualifikation
- A Master’s degree in Computer Science or a Natural Science from an internationally recognized academic institution
- Theoretical and practical experience in the fields of machine learning and deep learning Experience in applying machine learning methods in an interdisciplinary context is an advantage
- Experience in the field of machine-learned potentials and/or molecular dynamics simulations and/or density functional theory is an advantage
- Experience in developing and training large models or performing simulations on high-performance computing systems is desirable
- Ideally, practical research experience as well as experience with publications in relevant scientific fields
- Experience in programming with Python, especially with libraries such as PyTorch
- Fluent English skills
- Strong communication and presentation skills
Organisationseinheit
Eggenstein-Leopoldshafen (und Karlsruhe)Salary
Salary category 13 TV-L, depending on the fulfillment of professional and personal requirements.
Gehalts-Prognose
Unternehmens-Details

KIT-Karlsruher Institut für Technologie
Forschung