21 high-performance-computing-postdoc Postdoctoral positions at University of London in Uk
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, to deliver the aims of the programme. The PDRA will join a team working on extracellular vesicles as well as other aspects of inflammation resolution, with close attention to the exploit this science for
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will perform the surgery for inducing osteoarthritis in mice and the post-holder will attend to the animal welfare and husbandry, assess pain, process the samples and perform the analysis including OARSI
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other demands About You We are looking for an experienced researcher to develop and deliver projects that leverage whole-genome sequencing at population-scale to identify rare, high-impact variants
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specific behaviors, analyzing and interpreting imaging data to support neuroscience research objectives, collaborating with interdisciplinary teams to develop and optimize imaging protocols, and performing
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researcher to work in collaboration with and under the supervision of Professor Michelle West to realise the objectives of a research programme into Epstein-Barr virus (EBV) mechanisms of transformation and
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degree and PhD (or close to completion) or research qualification/experience equivalent to PhD level in the relevant subject area for the research programme; with a productive track record and have
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research. It offers newly refurbished laboratories and a cutting-edge microscopy facility, making it ideal for high-impact research. The Charterhouse Square Campus is in the heart of the City of London and
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to work on a project investigating mechanosensing in flies (Diptera). This post will focus on using detailed wing geometry models and free flight kinematic measurements in computational fluid and structural
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, with result informing not only potential human work but also work performed in other veterinary species. The successful candidate will have a strong background in heart physiology and some background in
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of computational and behavioural neuroscience with modelling and domestic chicks’ data. This position is funded by a Leverhulme Trust project entitled “Generalisation from limited experience: how to solve