241 high-performance-quantum-computing-"https:"-"https:"-"https:"-"https:" positions at University of Nottingham
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priorities, particularly Advanced Materials, Quantum and Emergent Phenomena, and Digital Futures. It addresses the discovery and control of novel material functionalities, supports high-risk and high-reward
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This exciting opportunity is based within the Composites Research Group at Faculty of Engineering which conducts cutting edge research in advanced manufacturing of high-performance composites Vision
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Science at the University of Nottingham, UK, which is ranked among the top UK Computer Science departments (http://www.nottingham.ac.uk/computerscience/ ). The School at UNNC offers a full range of undergraduate and
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. Gordon Airey , Dr Anand Sreeram , Dr Nick Thom , Dr Richard Taylor Programme Length: Four years Contract Type: full time Prospective Start Date: Academic year: 2026/27 Key words: biogenic supply chains
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. You will lead a high-performing, multidisciplinary team and working collaboratively across the University to deliver strategic priorities. As an impactful leader, you will: • Lead an integrated
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are invited for a fully funded Industrial Doctoral Landscape Award in partnership with Siemens Digital Industry Software, focused on advancing the next generation of industrial Computational Fluid Dynamics (CFD
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, adaptability, and sustainability from the outset. By scientifically linking high-level performance objectives to system architecture and design decisions, this research aims to reduce costly late-stage redesign
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we are looking for The candidate should have a 1st or high 2:1 degree in mechanical/aerospace/manufacturing engineering, computer science, physics, mathematics, or related scientific disciplines
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learning, control theory, and embodied autonomous systems. The successful candidate will contribute to the development of learning-based control methods that are not only high-performing, but also safe
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, limited predictability and slow process optimisation. The PhD sits within an interdisciplinary research environment that combines laboratory experimentation with mechanistic and computational modelling