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interdisciplinary domains and exploring emerging areas of research. The ability to review and synthesise complex scientific, policy and/or legal literature and develop new concepts that integrate insights across
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at Imperial College. The post offers a unique opportunity to develop advanced skills in epidemiological and statistical methods, working with large-scale electronic health record data to address important
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provision fully supports the Department's ambitious research and teaching strategies. You will drive a culture of safety, professional development and continuous improvement, champion technical staff
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science in the context of the wider world and to develop interdisciplinary approaches to learning and thinking. This programme includes a range of modules in the fields of Languages, the Humanities and
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of governments, businesses and researchers. CADI is supported by the UK Department for Science, Innovation and Technology with a remit to develop science-policy interfaces to aid the adoption of transformative AI
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Do you want to lead one of Imperial’s most ambitious deep-science entrepreneurship programmes? We are seeking a Programme Lead to deliver and develop Creative Destruction Lab (CDL) London, working
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projects. You will contribute to the development of structured datasets derived from publicly available NHS data and policy documents. This role offers hands-on experience across the full data science
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sits broadly within the area of engineering biology and, more specifically, the development of alternative antimicrobials, including peptide and protein-based biotherapeutics. The post is also in
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Trainee, you will work closely with analysts and researchers in the Centre for Health Policy to support ongoing analytical and data science projects. You will contribute to the development of structured
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at the intersection of theory, computation, and high‑fidelity simulation, the successful candidate will contribute to the development of a novel ensemble-based framework for analysing driven perturbations in wall