Aktiviere Job-Benachrichtigungen per E-Mail!

Postdoctoral Researcher in Atomistic Machine Learning

TN Germany

München

Vor Ort

EUR 50.000 - 80.000

Vollzeit

Vor 12 Tagen

Erhöhe deine Chancen auf ein Interview

Erstelle einen auf die Position zugeschnittenen Lebenslauf, um deine Erfolgsquote zu erhöhen.

Zusammenfassung

Join a forward-thinking team at a prestigious university in Munich as a Postdoctoral Researcher in Atomistic Machine Learning. You'll engage in groundbreaking research, applying AI to materials science, while collaborating with a diverse group of experts. This role offers a unique opportunity to influence the green and digital transition, enhancing your career in a vibrant academic environment. With access to cutting-edge resources and a supportive community, you will push the boundaries of computational materials design and contribute to innovative applications in future technologies.

Leistungen

International Collaboration Opportunities
Access to Cutting-Edge Research Facilities
Diversity and Academic Outreach Programs
Support for Career Development

Qualifikationen

  • PhD in computational physics, chemistry, or materials science required.
  • Experience with machine learning and coding is essential.

Aufgaben

  • Develop and apply machine learning techniques for atomistic materials science.
  • Manage large-scale supercomputer simulations and lead software development.

Kenntnisse

Machine Learning
Programming
Data Analytics
Scripting
Computational Physics
Materials Science

Ausbildung

PhD in Computational Physics
PhD in Chemistry
PhD in Materials Science

Tools

Supercomputer Simulations
AI Algorithms
Electronic Structure Theory

Jobbeschreibung

Social network you want to login/join with:

Postdoctoral Researcher in Atomistic Machine Learning, Munich

col-narrow-left

Client:

Technical University of Munich

Location:
Job Category:

Other

-

EU work permit required:

Yes

col-narrow-right

Job Reference:

856b7eae073c

Job Views:

1

Posted:

09.05.2025

Expiry Date:

23.06.2025

col-wide

Job Description:

Postdoctoral Researcher in Atomistic Machine Learning

We are looking for a Postdoctoral Researcher to join the AI-Based Material Science group in the Physics Department at Technical University Munich.

In this position, you will have a chance to make an impact on the green and digital transition by developing and applying tools from artificial intelligence (AI) to physics, chemistry, and materials science. Our objective is to facilitate atomistic materials science with machine learning to gain insight into fundamental processes on the atomic scale and accelerate materials development.

YOUR ROLE AND GOALS

You will build, maintain, and apply machine learning techniques for atomistic problems in materials science. Techniques and problem settings range from machine-learned interatomic potentials to multimodal regression, generative models, and Bayesian optimization. You will also carry out electronic structure theory (e.g. density-functional or Green’s function theory) calculations to generate data for machine learning and investigate materials properties and processes on the atomic scale. You will manage large-scale supercomputer simulations alongside AI algorithms and data analytics tools, lead machine-learning software development and supervise team members.

YOUR EXPERIENCE AND AMBITIONS

We welcome candidates with a PhD in computational physics, chemistry or materials science who are curious about applied machine learning in the natural sciences. Prior machine learning experience is required. We seek colleagues who enjoy coding, scripting and analytics, and are keen to push the boundaries of computational materials design. This project requires creative thinking and programming, as well as technical expertise in materials simulations and a broad understanding of electronic phenomena in materials. We further appreciate willingness to travel, teach and mentor, collaborate, and communicate science.

WHAT WE OFFER

In the AI-Based Materials Science group, led by Prof. Patrick Rinke, we advance electronic structure theory and machine learning to pursue innovative applications towards future technologies. We are a multi-cultural and cross-disciplinary team, with complementary subgroups and talents. You will train in machine learning applications with experienced developers, meet our global network of collaborators, join us at scientific meetings, help us organize research workshops and get involved in academic and diversity outreach. We will help you grow a competitive and international career profile. You will also be part of the materials science ecosystem at TU Munich (e-conversion excellence cluster, Munich Data Science Institute, Atomistic Modelling Center) and join a vibrant community at the crossroads of AI research, physics, materials science, and renewable energy technologies. TUM has continuously been rated as one of the top universities in Germany and one of the best universities for studying physics in Europe, while Munich is among the cities with the highest quality of living worldwide.

READY TO APPLY?

If you want to join our community, please email your application to Prof. Patrick Rinke at . The application material should include:

CV including list of publications
A one-page proposal for an (imaginary) atomistic machine learning project
Degree certificates and academic transcripts
Contact details of at least two referees (or letters of recommendation, if already available)

The position will be filled as soon as a suitable candidate is identified. For additional information, kindly contact Prof. Patrick Rinke. TU Munich reserves the right for justified reasons to leave the position open, to extend the application period, reopen the application process, and to consider candidates who have not submitted applications during the application period.

Hol dir deinen kostenlosen, vertraulichen Lebenslauf-Check.
eine PDF-, DOC-, DOCX-, ODT- oder PAGES-Datei bis zu 5 MB per Drag & Drop ablegen.