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assistant if required. Applicants should have a relevant PhD, significant postdoctoral experience, a clear, feasible and relevant research plan and be an author of high impact papers. The position is full
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provided to support research programme costs. Applicants should have, or have submitted a relevant PhD by the start date, have a clear, feasible and relevant research proposal and the ability to manage their
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research by engaging with insurers, regulators and tech developers. Publish in top-tier journals and present at leading conferences. Mentor PhD students and research assistants and collaborate with other
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scientists or PhD students in final stages of their studies (submit thesis before appointment) for this Fellowship, which offers: • full salary support for the successful applicant • a budget for
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students. Selection criteria: • PhD/DPhil in a relevant field (or near completion). • Strong project management and communication skills. • Multidisciplinary and collaborative mindset
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students and generally engaging proactively in the College’s diverse interdisciplinary activities. To be considered, you will hold a PhD/DPhil or equivalent with significant postdoctoral research experience
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colleagues engaged in experimental measurements and will provide guidance to junior members of the research group, including research assistants and PhD students. The role is open to candidates with suitable
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of the research group including research assistants, PhD students and project volunteers. You will hold, or be close to completion of, a PhD in a relevant discipline together with experience of doing research
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individuals whose PhD was granted more than 10 years before their application. The theme chosen for 2025-26 is the historical relationship between Religion and the State, and the Centre welcomes applications
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duration of 30 months, and is full-time. Applicants will be close to completion or hold a relevant PhD/DPhil with post-qualification research experience in the areas of deep learning or large language models