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Applications are invited for a Postdoctoral Research Assistant in Data processing for the MIGHTEE survey. This is a senior role funded through the UKRI Frontier Research Grant of Prof. Matthew
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samples and disease models. Working closely with a dynamic and multidisciplinary team of clinicians and scientists, you will help generate and interpret high-resolution datasets that reveal new insights
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Demographic and Health Surveys, the Generations and Gender Survey, the International Public Use Microdata Series, and the Human Fertility Database, among others, and linking these data with other databases
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(British Geological Survey) and Helen Webster (UK Met Office and University of Exeter), as well as projects partners from the UK, France, USA and Italy. The key responsibility of the post-holder will be
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strategic programme. Through multiomic and spatial biology exploration of temporally distinct samples from clinical trials and advanced biological models, an international consortium of leading colorectal
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of blood and mucosal samples from clinical studies. Training will be provided but previous experience in microbiology is expected. You will also participate in developing and establishing methodologies
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organisational skills that might include, sample management, electronic lab books, working with collaborators. Ability to work supportively in a laboratory environment, and to supervise and educate junior co
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volcanoes in the eastern Caribbean. Research will include analysis of materials from pre-existing sample collections, and also collaborative fieldwork to collect new samples. About you You will hold or be
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for a fixed term (funded until 31 March 2026) You will coordinate of survey studies across all partner institutions, including design, delivery and evaluation of a Mental Health Literacy Course and
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an industry partnered project for translational drug discovery. The role will involve analysing large scale omics and spatial datasets from both primary patient samples and advanced in vitro model systems