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on qualitative methods and behavioural science to other members of the group. The post holders will also work closely with IRAC team members to develop new projects within the group and establish their own area of
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programming skills and expertise with computational methods for neural/behavioural data analysis. You will have experience in conducting task-based functional neuroimaging and/or behavioural experiments, and
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computational methods. The post holder will be supported to develop their research portfolio, with a potential to work towards a postdoctoral research degree (DPhil, i.e., PhD). The postholder will lead the
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of the clinical neuroimaging portion of the GPS study. It is ideally suited for a research-minded clinician looking to broaden their research experience in cognitive neuroscience and computational methods. The post
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Are you passionate about taking a lead role in a cutting-edge project at the intersection of genomics, computational biology, and haematological cancer? We have an exciting opportunity for a Senior
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We are seeking a full-time Postdoctoral Research Assistant in Computer Vision to join the Visual Geometry Group (Central Oxford). The post is funded by ERC and is fixed-term for 1.5 years with a
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, calcium imaging, optogenetics and/or behavioural methods. The project is part of a broader research programme designed to use cross-species research to uncover mechanisms for memory in both health and
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The Oxford Martin Programme on the Future of Development is looking for a predoctoral Research Assistant to join our team and contribute to our mission of creating more and better economic
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computational, statistical and social data science approaches to expand knowledge on gender inequalities in digital connectivity, as well as the impacts of digital gender inequalities on social, demographic, and
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candidate will participate in research relating to the improvement of diagnosis and clinical risk stratification of patients with blood cancer using computational pathology, machine learning and spatial