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graduates to join its world-class research environment as PhD researchers. Our doctoral programmes offer the opportunity to work at the forefront of chemical research while contributing to solutions for some
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propulsion. Who we are looking for We are looking for enthusiastic, self-motivated applicants with first-class degree in Electrical Engineering, Control Engineering or Computer Science with good electrical
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This exciting opportunity is based within the Advanced Manufacturing Technology Research Group (AMTRG), which leads cutting-edge manufacturing research with a world-unique Omnifactory facility
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components are designed and produced. This PhD project focuses on Molten Metal Jetting (MMJ), an emerging metal 3D printing technology that enables the precise fabrication of multi-material metallic structures
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programme combining research-led innovation with real-world industry application. Keyword Search: Consumer sensory science, immersive technology, virtual reality, emotional profiling Award Start Date: 01/10
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in Chemistry, Physics or related subject. The selected PhD candidate will work with Prof Elena Besley on computational modelling of next-generation semiconductors made from atomically thin materials in
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international conferences in the UK and worldwide. The skills and expertise developed during this PhD will prepare you for careers in academic research, high-technology industries, power electronics
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essential and training will be provided during the PhD. Funding support Subject to a competitive selection process, the successful candidate will be supported for funding by the University of Nottingham
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for the next generation of thermal barrier coatings (TBCs) for aero-engines. The PhD Project Advanced TBCs are used in critical aeroengine components (e.g., Ni superalloy turbine blades) to ensure a reliable and
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repair and maintenance of gas turbine engines. Applicants are invited to undertake a fully funded three-year PhD programme in partnership with Rolls-Royce to address key challenges in soft robotics