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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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learning, at the intersection of reinforcement learning, deep learning and computer vision, in order to train effective robotic agents in simulation. You should hold a relevant PhD/DPhil (or near completion
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Medicine, University of Oxford is to re-programme immune cells as part of a larger programme to develop novel therapeutics (viral vector and/or extracellular vesicle-based) for myocardial regeneration. Key
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of Computer Science (20%). Under the joint supervision of the project co-leads, Dr. Carina Prunkl (Institute for Ethics in AI) and Dr. Jun Zhao (Human Centred Computing), the postholder will contribute
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applications. In this role, you will take the lead on an independent project within our broader research programme. Your work will centre on identifying and characterising novel regulators of the immune response
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Postdoctoral Research Associate (Research Fellow) Our team at the University of Oxford’s Department of Biology, Oxford Martin School and Pandemic Sciences Institute is looking to hire one Pandemic
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We are seeking a full-time or part-time PDRA in Energy Demand Observation to join the Energy Demand Observatory and Laboratory (EDOL) at the Department of Engineering Science in central Oxford
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We are seeking a Postdoctoral Research Associate to join the Ghafari Research Group in the Department of Biology, University of Oxford. The group focuses on studying the mode and tempo of pathogen
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supporting data management and computational workflows in a research setting. Applicants should hold a relevant Bachelor’s degree (or equivalent) in computer science, software engineering, or a related field
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PhD in Chemistry or a relevant subject area, (or be close to completion) prior to taking up the appointment. The research requires experience in computational chemistry, including machine learning