276 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"IFM" positions at University of Sheffield
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on AI / machine learning approaches, data integration, and evaluation protocols, ensuring alignment with OMAIB’s open research principles and deployment-centric focus. Contribute to the creation, curation
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of effective & efficient healthcare interventions. You will design and deliver cost-effectiveness and budget impact analyses, analyse healthcare cost and outcomes data, and develop decision-analytic models
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, particularly gene and protein expression analysis in neurons and immunohistochemistry. Keep excellent scientific records and analyze and interpret experimental data, prepare reports and participate in conference
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series of qualitative and quantitative methods were used resulting in a significant data set which has informed a series of academic papers and reports. The team is now moving to the final output
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information and advice about how to tackle technical tasks, using in-depth knowledge of the University’s infrastructure. Maintain good relationships with contacts in departments to inform them about work being
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computer scientists how to process speech with computers and how to build speech-based technologies. Dr Anton Ragni of the SpandH group is responsible for teaching speech processing and speech technology
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field data, the research assistant will help assess the accuracy, robustness and operational value of these algorithms for large-scale forest inventories and the detection of endangered species
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an iterative approach where: Biomechanical Modelling: Data from observational and experimental work will inform and constrain comprehensive biomechanical models of nanostructure formation. These models will
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-supervise undergraduate research projects, including providing academic guidance on project design, data analysis, interpretation, and research communication. Contribute to quality assurance and enhancement
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challenge in the 2030s will be, first, to find these "needles in the haystack" in a noisy data stream; next, to accurately estimate their parameters (mass, spin, orbital inclination etc); and finally to use