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combining imaging techniques and data analysis to provide a more integrated picture of life processes in the context of health and disease. To be a postdoc fellow at the AMBER programme you will get
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work aimed at combining imaging techniques and data analysis to provide a more integrated picture of life processes in the context of health and disease. To be a postdoc fellow at the AMBER programme you
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growth by metalorganic vapor phase epitaxy and developing AI approaches for deterministic synthesis to achieve n- and p-type conductive AlN and related UWBG Al containing alloys. Doping and processing
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optical systems to generate temperature gradients, as well as imaging solutions such as FLIM and Schlieren imaging, in close collaboration with experts in lasers and optics. Co-supervision of undergraduate
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. Eligibility requirements To be eligible for a postdoctoral position, you must have a PhD or a foreign degree deemed equivalent to a PhD. This requirement must be fulfilled at the time of the employment decision
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forests and marine environment and pest surveillance in aquafarming. Our group will comprise a handful of PhD candidates, and several researchers and MSc students and also a broad interdisciplinary network
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researcher will contribute to exploring how logistics and packaging innovations can improve food system preparedness and sustainability. The work integrates multiple tensions: the need for resilience versus
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beamline is dedicated to X-ray absorption spectroscopy (XAS) and X-ray emission spectroscopy (XES) experiments in the medium and hard X-ray energy range, 2.4 - 40 keV. The beamline is in user operation since
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strategies for XR/VR task offloading and migration. Build fast, modular components that support scalability, repeatability, and robust service operation. Validate solutions in the LISA 6G testbed and document
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environment project, we will develop automated species and community recognition, particularly focusing on pathogenic soil fungi, with help of deep-learning algorithms fed with microscopic image and Raman