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provide the essential human-state awareness required for trustworthy autonomy. The second area centres on trust-adaptive autonomous behaviour design. Here, the candidate will develop embodied vehicles
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to identify the material degradation and coatings applications details in extreme environments. A novel techniques/method will be developed with focus on better prediction and more accurate measurement of
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prospects: Develop highly sought-after skills and make an individual contribution to industries including, but not limited to, aerospace, automotive, energy, and manufacturing. You will benefit from being
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, Aberystwyth University, University of Lincoln and Brunel University London. Our vision is to develop a diverse cohort of scientists and innovators, with in-depth scientific knowledge, advanced technical
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contract Fixed Term Period For 36 months Salary £35,000 to £42,000 per annum, dependent upon qualifications and experience (40 hours per week), plus £2,000 personal development budget We welcome applications
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of a delamination can seriously reduce the strength and stiffness of a laminate especially under compressive buckling loads, potentially leading to catastrophic failure. We have developed new generation
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sampled. This PhD study will address this research challenge. Cranfield is the largest academic centre for postgraduate studies in Science and Technology in the UK. Focused on developing applied research to
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of activities and knowledge. A tailored programme of seminars and events, alongside our Doctoral Researchers Core Development programme (transferable skills training), provide those studying a research degree
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across the University. This is a fantastic opportunity for those early in their digital career to build their software development skills, but you’ll need to be passionate to learn and determined
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identification of cracking risk, even where experimental data are limited. Project Overview This EngD will develop a thermodynamic modelling framework to predict the formation of damaging liquid phases in turbine