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27.02.2026, Academic staff We are now seeking a highly qualified and motivated postdoctoral fellow (f/m/d) to drive the development of novel optical technologies addressing significant biological
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multimodal vision-language models for prompt-based 3D medical image segmentation Work with large-scale clinical CT datasets and scalable deep learning pipelines Validate models in close collaboration with
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Package: Actively participate in a participant-driven co-design process to develop a framework for returning molecular and imaging data to study participants Contribute scientific content to patient
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Postdoctoral fellow (m/f/d) – LG-2026-1 The position is available starting immediately and is initially limited until October 31, 2027, with the possibility of extension. Position Description The successful
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, imaging). • Solid foundations in signal processing and statistics. • Experience with machine learning for regression (e.g., tree-based methods, neural networks) • Hands-on experimental skills: ability and
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Work group: Institute of Metallic Biomaterials Area of research: Scientific / postdoctoral posts Starting date: 21.11.2025 Job description: Postdoctoral Researcher - Automated Correlative Image
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be extended. Equal opportunity is an important part of our personnel policy. We would therefore strongly encourage qualified women to apply for the position. As a postdoctoral researcher at P05 Imaging
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. Postdoctoral Researcher – Automated Correlative Image Analysis for BlueMaterials Reference code: 992 Work location: Rostock Join the Cluster of Excellence “BlueMat: Water-Driven Materials” (www.tuhh.de/bluemat
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world with increasing digitalization and medical needs. Our research integrates materials chemistry, biological processes, physical analysis, process engineering and data science. We collaborate with
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), proteomics (LC-MS/MS), (epi)genomic data processing, multi-omics integration, machine learning approaches for high-dimensional data, confocal / two-photon imaging, tissue clearing and light-sheet microscopy