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Diagnostics (DCD) at JU offers three different undergraduate programs: the X-ray Nurse Program, and the Biomedical Analyst with two specializations (Laboratory Medicine and Clinical Physiology). It is a dynamic
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The Department of Technology Management and Economics seeks a highly motivated and ambitious postdoctoral researcher whose work bridges scholarly rigor with real-world impact at the nexus
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A 2-year funded postdoctoral fellowship position in understanding the molecular mechanisms and behavioral consequences of normal and abnormal mouse spinal cord development has become available
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Department of Crop Production Ecology We are now looking for a postdoctoral researcher to work on resilience and stability of forage cultivars, species, and crop rotations in Northern Sweden, with a
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build the sustainable companies and societies of the future. The Robotics and Artificial Intelligence subject (RAI) (www.ltu.se/robotics) at the Department of Computer Science, Electrical and Space
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, advanced light and electron microscopy, and computational life sciences Guidance on relocating and settling in KTH and in Sweden Qualifications Requirements A doctoral degree or an equivalent foreign degree
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postdoc fellow at the AMBER programme you will get unprecedented medical, biological, and methodological capabilities, with a profound potential impact for Europe’s next generation of research and
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application! Work assignments Subject area: Computational studies of the influence of microstructural features on the structural integrity of metallic materials using machine learning Subject area description