398 engineering-computation-"https:"-"https:"-"https:"-"https:"-"https:" positions at University of Oxford
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We are seeking two full-time Postdoctoral Research Assistants in Machine Learning to join the Foerster Lab for AI Research group at the Department of Engineering Science (central Oxford). The post
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We are seeking a full-time Postdoctoral Research Assistant to join the Oxford Witt Lab for Trust in AI (OWL) at the Department of Engineering Science (Central Oxford). The post is funded by Schmidt
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or computational research in the area of quantum technologies, either in Physics or a related discipline (including Engineering, Materials, Chemistry, Computer Science or Mathematics) You will have a strong
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application of AI and machine learning models to interpret complex X-ray datasets, and the integration of experimental and computational insights to generate actionable knowledge that advances sustainable metal
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We are seeking a full-time Postdoctoral Research Assistant to work under the supervision of Professor Reece Oosterbeek and Dr Aaron Graham at the Department of Engineering Science (central Oxford
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on software engineering, computational infrastructure, and open-science support, working across multiple work packages. The postholder will play a central role in maintaining and improving the group’s
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We are seeking a full-time Postdoctoral Research Assistant to join the Oxford Witt Lab for Trust in AI (OWL) in the Department of Engineering Science (Central Oxford). The post is funded by Open
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uncertainty. This post is fixed-term and part time (20hours per week) until 30 September 2026 You will hold a relevant Bachelors or Master’s degree in statistics, computer science, information engineering, or
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Systems MSc (FT and PT) Engineering Science MSc by Research Environmental Change and Management MSc Financial Economics MSc Law and Finance MSc Major Programme Management MSc Mathematical and Computational
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collaborators across multiple disciplines including computational epidemiology, evolutionary biology, computer science, and software engineering to design, implement, and maintain benchmarks that will help shape