260 phd-in-computational-mechanics-"St"-"FEMTO-ST" positions at University of Nottingham
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of £25,000 plus payment of their full-time home tuition fees. Additionally, £2,000 per annum is provided for consumables, travel to conferences, etc. Due to funding restrictions this PhD position is only
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Rolls-Royce University Technology Centre (UTC) in manufacturing and On-Wing Technology, The University of Nottingham. Applicants are invited to undertake a three-year PhD programme in partnership
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Rolls-Royce University Technology Centre (UTC) in Manufacturing and On-Wing Technology Applicants are invited to undertake a fully funded three-year PhD programme in partnership with industry
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United Kingdom Application Deadline 20 Oct 2025 - 22:59 (UTC) Type of Contract Temporary Job Status Part-time Is the job funded through the EU Research Framework Programme? Not funded by a EU programme Is the Job
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are invited to undertake a three-year PhD programme in partnership with industry to address key challenges in on-platform manufacturing engineering. The successful candidate will be based at the Rolls-Royce
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through health, retail, mobility, energy and communications. This exciting PhD programme will first use qualitative methods to investigate how the public access and use OTC medications for a range of common
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EPSRC Centre for Doctoral Training (CDT) PhD in Digital Metal with BAE Systems (Enhanced Stipend) Solid-state Additive Manufacturing of Nickel Aluminium Bronze alloys Background UK Applicants
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27 Sep 2025 Job Information Organisation/Company University of Nottingham Research Field Biological sciences » Other Engineering » Biomedical engineering Engineering » Mechanical engineering Physics
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on the optimisation of metal hydrides and/or the design of solid-state hydrogen stores and compressors. The candidate must be awarded a PhD by an internationally recognised university in Mechanical Engineering
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PhD studentship: Improving reliability of medical processes using system modelling and Artificial Intelligence techniques Supervised by: Rasa Remenyte-Prescott (Faculty of Engineering, Resilience