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Modules and Circuits. Applications are invited for a Research Associate/Fellow positions within the Power Electronics Machines and Control (PEMC) research group, University of Nottingham, UK. The successful
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View All Vacancies Physics & Astronomy Location: University Park Salary: £30,487 to £37,099 per annum (pro rata if applicable), depending on skills and experience (minimum £33966 with relevant PhD
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, next generation sequencing and microbiology. The successful candidate will work closely with an interdisciplinary team of academics at University of Nottingham. The role will include data analysis via
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progression beyond this scale is subject to performance. Closing Date: Thursday 04 July 2024 Reference: ENG206924 The University of Nottingham seeks applications for a Research Associate/Fellow to develop a
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Electronics, Machines and Drives Research Group (PEMC) at the University of Nottingham group and become a core member of a team researching power electronic converter design, control, construction and testing
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Revolution Industrialisation Centre at the University of Nottingham and contribute to the Power Electronics, Machines and Drives Research Group (PEMC). Your research will focus on electrical machines, drives
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Researcher to be a part of the Power Electronics and Machines Centre (PEMC) at the University of Nottingham and become a core member of a team working on electrical machines, electromagnetic design, magnetic
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Engineering and Data Science, to work in School of Medicine, University of Nottingham. The role is funded as part of the Biomedical Research Centre Nottingham Program. The overall aim of the project is to
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of the School of Physics and Astronomy, University of Nottingham, to be supervised by Kay Brandner and Juan P. Garrahan. Topics of interest include but are not limited to: non-equilibrium dynamics of quantum and
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Research (https://www.rothamsted.ac.uk/) and the Earlham Institute (https://www.earlham.ac.uk/). The candidate should have (or nearly have completed) a PhD in a computer vision or a deep learning-related