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Forschungszentrum Jülich GmbH

Forschungszentrum Jülich GmbH
Vollzeit
Jülich
Jetzt bewerben

PhD Position - Representation and Active Learning for Multi-Scale Scientific Imaging

The Institute for Materials Data Science and Informatics (IAS-9) develops advanced Machine Learning & Artificial Intelligence methods tailored to challenges in the physical sciences and engineering, bridging data-driven approaches with domain knowledge to push the boundaries of scientific discovery. Our group brings together ML engineers, AI researchers, data scientists, research software engineers, and domain scientists with a shared focus on scientific machine learning. Together, we develop and apply ML methods to tackle key challenges in the physical sciences and engineering: from accelerating simulations with surrogate models to extracting insights from complex imaging data, and building approaches that transfer across domains.

In addition, we benefit from a strong connection to the Ernst-Ruska-Centre for Electron Microscopy and to the Jülich Supercomputing Center. We are particularly interested in advancing foundational machine learning methods for scientific imaging, with a focus on representation learning and data-efficient decision-making across heterogeneous data sources.

Your Job

The PhD project is methodologically independent and embedded in a multidisciplinary research environment at the interface of artificial intelligence, scientific imaging, and materials research. You will strengthen the data science and machine learning activities of IAS-9 by developing core AI methods with applications to electron microscopy and materials discovery. You will work in a team of data scientists, software engineers, and experimental researchers on topics including:

  • Developing multi-scale and multi-modal representation learning methods for scientific imaging data (e.g., SEM, TEM, EBSD).
  • Learning representations that are robust to scale changes, modality shifts, and domain differences across instruments and laboratories.
  • Designing active learning and experimental design strategies that use learned representations to guide data acquisition under cost and uncertainty constraints.
  • Building surrogate models that connect imaging-derived representations with downstream physical or functional properties.
  • Collaborating closely with experimental partners to integrate decision-making algorithms into real scientific workflows.
  • Publishing results in high-impact machine learning and interdisciplinary journals and conferences, and contributing to open-source research software.

The developed methods will be validated using large-scale electron microscopy data from collaborative research projects, including an EU-funded project on sustainable steel development, while maintaining a clear focus on fundamental AI research questions.

Your Profile

We are looking for a highly motivated candidate with a strong interest in foundational machine learning research and its application to real-world scientific problems. You should bring:

  • A completed university degree (Master or equivalent) in computer science, data science, applied mathematics, physics, materials science, or a related field.
  • Solid background in machine learning and/or computer vision.
  • Interest in representation learning, active learning, uncertainty modeling, or decision-making under constraints.
  • Experience with Python and modern ML frameworks such as PyTorch or TensorFlow.
  • Curiosity for interdisciplinary research; prior experience with scientific or microscopy data is welcome but not required.
  • Strong analytical skills, scientific creativity, and the ability to work independently while collaborating in a team environment.

Our Benefits for You

We work on the very latest issues that impact our society and are offering you the chance to actively help in shaping the change! We support you in your work with:

  • The opportunity to conduct exciting research in an international and multidisciplinary environment with outstanding infrastructure and to strengthen your reputation in a dynamic and highly active research field
  • A creative work environment at a leading research facility, located on an attractive research campus at the and the Forschungszentrum Jülich
  • The opportunity to attend national and international conferences
  • Further development of your personal strengths, e.g. through an extensive range of training courses; a structured program of continuing education and networking opportunities specifically for doctoral researchers via JuDocS, the Jülich Center for Doctoral Researchers and Supervisors:
  • Flexible working hours in a full-time position with the option of slightly reduced working hours and 30 days of annual leave
  • Ideal conditions for balancing work and private life, as well as a family-friendly corporate policy
  • Targeted services for international employees, e.g. through our International Advisory Service

To apply, please submit a complete CV, letter of motivation, university degree records and certificates.

We offer you an exciting and varied role in an international and interdisciplinary working environment. The position is for a fixed term of 3 years. Pay in line with 80% of pay group 13 of the Collective Agreement for the Public Service (TVöD-Bund). Further information on doctoral degrees at Forschungszentrum Jülich including our other locations is available at:

We welcome applications from people with diverse backgrounds, e.g. in terms of age, gender, disability, sexual orientation / identity, and social, ethnic and religious origin. A diverse and inclusive working environment with equal opportunities in which everyone can realize their potential is important to us.

The following links provide further information on diversity and equal opportunities: and on specific support options:

Place of Employment: Aachen

**Start Date:**To the next possible date

Salary: Pay group 13 (80%) TVöD-Bund

**Application Deadline:**The job will be advertised until the position has been successfully filled.