668 data-"https:" "https:" "https:" "https:" "https:" "https:" "https:" "Univ" "Univ" positions at University of Sheffield
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an automatic image analysis pipeline to correlate learnings from AFM and super-resolution data. Work closely with collaborators to design an experimental set-up applying the previous tools above to test the
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is on mathematics and computation. At the heart of the project are value-based decision problems. Here, an agent receives noisy information about the value of several possible options. The agent must
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levels. Essential Application/Interview Further Information Grade Professorial Equivalent Band 1 Salary £71,566 - £90,603 Work arrangement Full-time Hybrid / Flexible on request Duration Permanent Line
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writing skills, enabling communication of strategic plans to all staff levels. Essential Application/Interview Further Information Grade Professorial Equivalent Band 1 Salary £71,566 - £90,603 Work
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. Assessment stage: Interview / Application Experience of running a workshop or similar technical facility. Assessment stage: Interview / Application Further Information Grade: 5 Salary: £27319 rising to £33951
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, breakthroughs increasingly depend on the ability to process vast amounts of information quickly and efficiently. But as our appetite for computing power grows, so does its cost both in terms of money and
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appropriate information and advice to callers, often helping determine who at the University callers need to liaise with. Using the University’s Finance systems and following budget approval, create and convert
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). This often means missed opportunities for earlier, more efficient intervention. The goal of this PhD is to change that by developing a data-driven framework that helps predict, prioritise, and prevent
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such as sports or rehabilitation exercises, our movements carry a wealth of information about health, intention, and interaction with the world around us. Being able to capture and interpret
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in Tanzania and Zambia. We will generate whole-genome data for thousands of individuals to estimate the frequency spectra of transferred genes, with the aim of inferring the distribution of fitness