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The Kennedy Institute are seeking a Postdoctoral Researcher with experience in bioinformatics/computational biology and a strong interest in human genetics and the microbiome. You will be a member
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/research/units-and-centres/mrc-translational-immune-discovery-unit), working on collaborative projects with Dr Agne Antanaviciute and her team in the TIDU Computational Biology Group. The Translational Lung
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We are seeking two full-time Postdoctoral Research Assistants in Computer Vision to join the Visual Geometry Group (Central Oxford). The posts are funded by ERC or EPSRC and are fixed-term for 2
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the office per week. The Digital Transformation Programme is a major change initiative which is delivering change across five portfolios, Technology, Education, Research, Administration and Engagement
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We are recruiting for a Data Engineer to join to our multi-skilled Research Informatics team at the Centre for Medicines Discovery (CMD) here at the Nuffield Department of Medicine. The team
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Programme (OUBEP) and the Oxford University Economics Summer Schools Programmes (OUESS) represent a growing opportunity for the Department of Economics to generate revenue and demonstrate research impact and
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We are seeking a full-time Programme Manager to support the EEBio Programme Grant (https://eebio.web.ox.ac.uk/) and other activities at the intersection of Control Engineering and Engineering
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We are seeking an enthusiastic Postdoctoral Research Assistant in Medical Statistics, with an interest in Artificial Intelligence (AI), to join the Computational Health Informatics (CHI) Laboratory
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We are seeking a part-time (20 hours per week) Research Assistant to join the Computing Infrastructure research group at the Department of Engineering Science (central Oxford). The post is funded
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PhD in engineering, computer science, statistics, or closely related field, either completed or “near completed” before starting. You should also hold sufficient specialist knowledge in deep learning