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versatile fabrication techniques and equipment are used. CFU are experts in synthetic aperture ultrasound imaging and has the SARUS experimental ultrasound scanner, which can acquire and process data from
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imaging the gut response in vivo at organism level, mice are phylogenetically closer to humans, and have a more complex gut microbiota. Researchers with experience in neuroscience, microbiology and
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supercontinuum sources for imaging and spectroscopy and within mid-IR biosensing using Surface Plasmon Resonance (SPR), then we have the ideal opportunity for you. Come and be a part of the “Table-Top Synchrotron
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, Aarhus University (AU-FOOD). AU-FOOD is in possession of the most advanced analytical research infrastructure, with well-integrated, high-tech prototype facilities. This world-leading infrastructure, will
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. literature searches and image processing. Qualifications Applicants are expected to have the following qualifications: An MA in Archaeology, History or a related discipline A strong interest in the academic
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position is open in the X-ray imaging group at the Technical University of Denmark. The postdoc is part of a larger inter-disciplinary effort (Biocomfert) aiming to enable 3D multiscale tomographic imaging
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is available at the Center for Fast Ultrasound Imaging (CFU), Department of Health Technology (DTU Health Tech) at DTU from May 2024 sponsored by the European Research Council (ERC). It is conducted in
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theoretical atomic-scale simulations, data scientific approaches, and experimental operando electron microscopy measurements of nanoparticle catalysis at the Center for Visualizing Catalytic Processes (VISION
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background in machine learning, along with hands-on experience in computer vision and image processing. Our commitment is to conduct research at a high international standard, publishing outcomes in top-tier
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focuses on two key challenges. The first is to create methods for an automated and efficient segmentation of computed tomography images of the abdomen region and converting these to computational meshes