445 web-programmer-developer-"https:"-"https:"-"https:"-"UCL" positions at University of Sheffield in United Kingdom
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of an efficient and effective technical service. ● Design and develop specialist control and instrumentation solutions in support of equipment installation or manufacture. Plan, design, develop, construct and
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Overview Our postgraduate research student community plays a central role in the research life of the University. PGR students undertake their own programme of research, supervised by an academic
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Overview As the Apprenticeship Compliance Officer you will be involved in ensuring the quality and compliance of our apprenticeships programmes are met and is to a high standard. This includes
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and Responsibilities Project Coordination and Operational Delivery Provide day-to-day project management across all five work packages, ensuring activities progress on time and to plan. Coordinate
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acceleration, capable of simulation up to 100 million nodes per GPU. The solver is by far the most capable and most downloaded solver in SPH. The supervisor is a co-developer and project leader of DualSPHysics
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Faculty of Engineering. Demonstrate and train new users in the safe and effective operation of specialised university research equipment, maintaining full compliance with Health and Safety procedures. Take
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Project and Data Co-ordinator Department/School: National Technician Development Centre Contract type: Permanent/ Hybrid/Flexible options considered. Overview We have an exciting opportunity within
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BBSRC Yorkshire Bioscience DLA Programme: Deciphering proton shuttling on the surface of biological membranes toward proton translocating channels
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has industrial collaboration, and is co-supervised by a member of staff at the UK Atomic Energy Authority (UKAEA). This project aims to develop a high-fidelity modelling framework to predict key thermal
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treatment window may already have passed. Project Aim: This project proposes the development of an innovative approach that applies computer vision and machine learning to detect early signs of stroke through