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-year, renewable, high-profile research initiative funded by the European Commission, bringing together leading research teams from across the Eurozone to develop state-of-the-art multimodal LLMs. This is
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the Office for National Statistics Covid Infection Survey. You will work within Prof Katrina Lythgoe’s Ecology and Evolution of Viruses Research Group based in the Department of Biology and affiliated with
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30 September 2028. This project is associated with an exciting new EPSRC/UKRI-funded Programme Grant entitled “Advanced Device Concepts for Next-Generation Photovoltaics.” This collaborative project
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to determine the activators of inflammation in atherosclerosis. You will identify and develop suitable techniques, and apparatus, for the collection and analysis of data (e.g. flow and mass cytometry, confocal
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specialist knowledge in the discipline to work within established research programmes. You will be able to work independently, and you must have the ability to manage your own academic research and associated
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and numerical modelling, as well as the development and construction of a new mm facility, The Africa Millimetre Telescope, in Namibia. The successful applicant will be based in Oxford and work
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researchers will extend and apply the ideas of active matter physics in biological contexts, developing theories and cell-scale and continuum computational models. The work will focus on identifying physical
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-ribosylation signalling in genome stability. The post-holder will be responsible for managing their own academic research, adapting existing and developing new scientific techniques and experimental protocols
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ubiquitylation signalling in regulation of immunity and genome stability. The post-holder will be responsible for managing their own academic research, adapting existing and developing new scientific techniques
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We are seeking to appoint a Senior Postdoctoral Researcher in Statistical Machine Learning and Deep Generative Modelling to apply and develop cutting-edge deep generative probabilistic models