University of Luxembourg

Postdoc in Federated Learning and Analysis for Health Research

2025-09-08 (Europe/Luxembourg)
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About us...

The Luxembourg Centre for Systems Biomedicine (LCSB) is an interdisciplinary research centre of the University of Luxembourg. We conduct fundamental and translational research in the field of Systems Biology and Biomedicine - in the lab, in the clinic and in silico. We focus on neurodegeneration and are especially interested in Alzheimer's and Parkinson's disease and their contributing factors.

The LCSB recruits talented scientists from various disciplines. Computer scientists, mathematicians, biologists, chemists, engineers, physicists and clinicians from more than 50 countries currently work at the LCSB. We excel because we are truly interdisciplinary and together, we contribute to science and society.

Successful candidates will join the Bioinformatics Core, led by Prof. Reinhard Schneider, which focuses on managing and analysing complex biomedical and clinical data. We are internationally recognized for our GDPR compliant data hosting solutions and data management systems. We develop innovative methodologies for data mining, federated data analysis, and data FAIRification. We strongly advocate following responsible and reproducible research (R3) principles and best practices in software development. For more information, please visit our website.

is integral part of the CLINNOVA project, an international initiative of leading clinicians and scientists from university hospitals, private clinics, and health research institutes across Luxembourg, France, Germany, and Switzerland. The project aims to revolutionize healthcare by harnessing the power of data federation, standardization, and interoperability to advance precision medicine for treatment decisions. To learn more about the CLINNOVA project and its objectives, visit: https://www.uni.lu/fr/news/clinnova-to-launch-precision-medicine-initiative-across-europe/

Your Role...

As a Postdoctoral Researcher, you will develop and implement federated analytical workflows tailored for health research. You will apply AI/ML algorithms to analyse a diverse range of data types, including clinical, molecular (-omics), and (sensor/mobile and PROMs/PREMs) within a federated environment. Additionally, you will innovate state-of-the-art federated AI/ML methods, to ensure privacy and data security in clinical research. To augment federated analysis, you will be generating synthetic data using ML techniques, such as Generative Adversarial Networks (GANs). Your workflows and methods will be incorporated by a multidisciplinary team into the CLINNOVA platform for federated data management and analysis. You will take an active role on project activities and effectively disseminating findings to the project members and the scientific community through project meeting, conferences and publications. Your main tasks will include:

  • Develop federated analytical workflows: integrate and adapt federated learning workflows specifically designed for health research, emphasizing scalability, efficiency, and privacy
  • Analyse diverse data sets with AI/ML: apply advanced AI/ML algorithms to a broad spectrum of health data, including clinical, molecular (-omics), and real-world data, in a federated context
  • Generate and use synthetic data: create synthetic data using methods like GANs for use in federated analysis, ensuring the data is both realistic and privacy compliant
  • Support the development of federated data management and analysis platform: actively engage and support the platform development team in implementing federated analytical workflows into the CLINNOVA platform
  • Take an active role on project activities: take charge of specific project activities, working in close harmony with a multidisciplinary team to meet project goals effectively
  • Disseminate research findings: actively share the ongoing work and findings with the project members, the scientific community and other stakeholders through project meetings, conferences and publications

What we expect from you…

Required qualifications:

  • A PhD in computer science, information technology, computational biology, bioinformatics, or a related field, with keen interest in health research and related IT infrastructure
  • Domain knowledge:
    • Good understanding of statistical analysis principles and AI/ML techniques in both centralized and federated environments
    • Hands-on experience in developing, deploying, and maintaining ML operations (MLOps) within IT infrastructure, including familiarity with virtualization and containerization technologies such as Docker and Kubernetes is considered advantageous
  • Technical skills:
    • Proficiency in Python programming language, including data manipulation libraries (e.g., Pandas), ML frameworks (e.g., scikit-learn), and visualization tools (e.g., Matplotlib, Seaborn)
    • Familiarity with federated technologies, such as Flower, NVIDIA FLARE, is considered advantageous
  • Additional skills:
    • Good ability to manage tasks effectively to meet project deadlines and reporting
    • Experience with authentication and authorization solutions (e.g., ELIXIR-AAI, OIDC, GA4GH), cloud-based AI/ML services, testing methodologies (unit, integration, e2e) is considered advantageous

Here's what awaits you at the LCSB...

  • Excellent work environment with state-of-the-art infrastructure, laboratory and administrative support
  • Truly connected. We work together with hospitals and research institutes on a national and international level as well as industrial partners. Connection between science and society is very important to us. From our school lab - the Scienteens Lab - to the different outreach activities and collaborative partnerships with patient associations, we love to listen to society's needs and share our passion for science
  • Be part of a multicultural team. At the LCSB we have more than 50 nationalities. Throughout the year, we organise team-building events, networking activities and more

Find out more about us!

How to apply...

Applications (in English) should be submitted online and include:

  • A detailed curriculum vitae (CV) including a list of publications and projects
  • A cover letter describing experience and future interests
  • Contact information and recommendation letters from at least three referees

Early application is highly encouraged, as the applications will be processed upon reception. Applications by email will not be considered.

The University of Luxembourg embraces inclusion and diversity as key values. We are fully committed to removing any discriminatory barrier related to gender, and not only, in recruitment and career progression of our staff.

General information:

  • Contract type: Fixed Term Contract 36 Month (extension possible)
  • Work hours: Full Time 40.0 Hours per Week
  • Location: Belval
  • Job reference: UOL06363

The yearly gross salary for every Postdoctoral Researcher at the UL is EUR 83099 (full time)

DESCRIPCIÓN DEL PUESTO

Título
Postdoc in Federated Learning and Analysis for Health Research
Ubicación
Luxemburgo, Luxemburgo
Publicado
2024-09-08
Fecha límite de aplicación
2025-09-08 23:59 (Europe/Luxembourg)
2025-09-08 23:59 (CET)
Tipo de trabajo
Guardar trabajo

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