165 parallel-and-distributed-computing-phd Postdoctoral positions at University of Oxford
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hold, or be close to completion of, a PhD/DPhil in accelerator physics, particle physics or a related field and have a solid background in beam dynamics, lattice design and beam transport studies
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members of the research group including research assistants, PhD students, 3rd/4th year students, and/or project volunteers. This role is offered with full time hours, on a fixed-term basis for 1 year with
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Gabriele Hegerl in Edinburgh and Prof Ted Shepherd in Reading for both positions combined (Contact for Oxford: Weisheimer; for Edinburgh: Hegerl). Applicants should hold a PhD (or close to completion
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with an international reputation for excellence. The Department has a substantial research programme, with major funding from Medical Research Council (MRC), Wellcome Trust and National Institute
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be close to the completion of a DPhil/PhD in Neuroscience, Psychology or a closely related discipline and you will bring in-depth knowledge of cognitive and computational neuroscience including
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This 36-month postdoctoral position is part of the project ENLIGHT (Enabling a Lifecycle Approach to Graphite for Advanced Modular Reactors) consortium, a £13.2 million, five-year programme
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to develop a personal research programme in observational or theoretical cosmology, with a particular emphasis on ultra-large-scale cosmology (including primordial non-Gaussianity and horizon-sized effects
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researcher with a PhD/DPhil (or near completion) in a relevant discipline such as biomedical sciences, tumour immunology, molecular biology, cancer biology, or computational bioinformatics. You will have
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overseeing ethical approvals and participant recruitment as required. About You You will have or be close to the completion of a PhD/DPhil in computational neuroscience with experience in contemplative
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with the possibility of renewal. This project addresses the high computational and energy costs of Large Language Models (LLMs) by developing more efficient training and inference methods, particularly