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power systems – specifically voltage sourced converter based HVDC. The work will involve developing and analysing models of VSC-HVDC, their associated controls, and network connection, in PSCAD and Matlab
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and transformative innovation policy. What you will get in return: Fantastic market leading Pension scheme Excellent employee health and wellbeing services including an Employee Assistance Programme
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This 3-year research associate position forms part of an EPSRC Prosperity Partnership between The University of Manchester and healthcare provider Bupa. The research programme aims to address
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Creative Manchester is one of three University of Manchester Research Platforms. It is a University-wide development for advancing inter-disciplinary research in creativity and creative practices
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, which you will lead, under the supervision of Prof David Wedge. Collectively, the team has expertise in the analysis of multilevel omic and imaging data; data integration and machine learning; and risk
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Frank, in collaboration with Prof Daniela Montaldi, Dr Paul Warren, Dr Rajiv Mohanraj (Northern Care Alliance NHS), and Prof Nelson Trujillo-Barreto (Manchester Metropolitan University). The project
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The School of Engineering has an opportunity for a Research Associate, working with Prof Cise Unluer, to make a leading contribution to ongoing projects involving the integration of industrial
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Gastroenterology, Hepatology & Nutrition Tissue Repair, Fibrosis & Organ Regeneration You will be expected to undertake teaching on biological sciences and medical programmes, and to conduct high quality, REF
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-computed tomography (microCT) analysis methods that reveal the 3D structure and evolution of microstructure of concrete non-destructively will be developed within the National X-ray Computed Tomography
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this project we will develop a novel experimental system that is complex yet tractable, enabling rich, coordinated multi-omics analysis coupled with computational modelling to deliver deep mechanistic insight