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Location: UK Other The Faculty of Science AI Doctoral Training Centre (DTC) invites applications from Home students for fully-funded PhD studentships to carry out multidisciplinary research in
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from different disciplines cutting across Arts, Engineering, Medicine and Health Sciences, Science and Social Sciences. The University of Nottingham Faculty of Science AI DTC offers the opportunity
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and online MST attendance options. As a doctoral student, you would by supervised by a world-leading team of experts in medical imaging technology, its application in clinical research and the
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) trainee with access to its broad-ranging training opportunities. You would also become a member of the Sir Peter Mansfield Imaging Centre - The University of Nottingham and have access to training from
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Funding EPSRC Doctoral Training Partnership Studentship offering the award of fees, together with a tax-free maintenance grant £19,237 per year for 3.5 years. Training and support will also be
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at the University of Nottingham funded by the EPSRC Doctoral Training Programme (DTP) in Advanced Medical Imaging. This DTP is a collaboration between Nottingham and the University of Queensland, Australia, both
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and travel. Please apply to the University of Nottingham . Informal enquiries may be sent to Dr Ying Zhang ([email protected]). Please note that applications sent directly to this email
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the academic requirements for enrolment for PhD research at the University of Nottingham. You will have a 1st class or good 2:1 honours degree and/or an MSc in a relevant subject, such as Human Factors
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Engineering design challenges. We are looking for an enthusiastic and self-motivated person who meets the academic requirements for enrolment for PhD research at the University of Nottingham. You will have a
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Structures Supervisors: Dr Negar Gilani and Professor Richard Hague The Centre for Additive Manufacturing (CfAM) Research Group within the Faculty of Engineering and the University of Nottingham, acknowledged