264 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:" positions at University of Sheffield
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-edge adaptive mesh refinement techniques; a lightweight prediction tool developed upon the simulation data to predict key thermofluidic parameters for the design of high heat flux cooling components
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this behaviour, this project combines expertise in open quantum systems theory, quantum information, and chemistry. The successful candidate will be responsible for developing and applying non-perturbative open
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Application/ interview Further Information Grade: Grade 8£48,822 - £58,225 Duration:12 months, to start as soon as possible and no later than mid March 2026. Line manager: Programme Director Direct reports
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of these complexes, using the latest approaches at all stages, including making grids, data analysis and model building. Applicants must have a PhD (or equivalent experience) with a strong background in protein
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managers as required. Produce management information and data to inform the continuous improvement of our Wellbeing Services and Faculty and School action planning. Undertake project work specific to
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recognition (HTR), and other technologies to create valuable data sets for the research community. Coordinate and undertake digitisation projects, ensuring adherence to standards, and manage the upload of data
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clinical perfusion MRI data, get involved with image analysis ongoing clinical trials, work with clinical collaborators and take their methods all the way to deployment in active clinical research with a
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the physical laws governing blood motion. Unlike conventional AI, which depends solely on data, PINNs embed physiological principles such as pressure–flow relationships and mass conservation, producing
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the flask, whilst the impurities are simply washed away. For more information, please contact Dr Twyman (l.j.twyman@sheffield.ac.uk) and see Dr Lance J. Twyman | Chemistry | The University of Sheffield
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engineers to monitor and maintain shell structures in real time. By combining data from sensors with advanced computer models, a digital twin can continuously track how a shell responds to changing loads and