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The University of Oxford is looking for a highly motivated and skilled Postdoctoral Research Assistant to join our dynamic and interdisciplinary imaging team. This position is part of an exciting
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Applications are invited for the position of Researcher in Microscopy Image Analysis. The position is available for a fixed term of 12 months and is full time. The post holder will develop
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are seeking a Research Assistant to join a team working at the intersection of medical imaging and machine learning at the University of Oxford. This is an exciting opportunity to work across disciplines
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We are seeking a full-time Postdoctoral Research Assistant to join a cross disciplinary research project to improve our understanding of colorectal cancer. Deep learning has revolutionised image
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of various polymer fluids through custom microfluidic flow cells by measuring macroscopic flow rates and pressure drops and performing micro-scale imaging, image analysis, and velocimetry. You should possess a
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). This collaborative Institute brings together leading researchers from the University of Oxford and GSK, with expertise across genetics, molecular biology, imaging, and computational science, to drive innovation in
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imaging. This includes exploring efficient network designs, contributing to the development of novel learning-based representations for geometric reconstruction, and integrating insights from neural
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The University of Oxford is seeking a highly motivated Postdoctoral Scientist with expertise in biostatistics, machine learning, and cardiac magnetic resonance imaging (MRI) to join Professor Betty
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MRI MRI experiment and analysis The post-holders will work closely together and with other members of the WIN physics group to create an MR physics-based framework for predicting imaging phenotypes from
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used in our work centre around optical imaging and spectroscopy and nanofabrication. The work also relies on theory and simulation, specifically focusing on numerical mean-field electrostatics