325 algorithm-development-"Prof"-"Prof"-"Prof" positions at University of Sheffield in United Kingdom
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, and a confident communicator. This job is part of a 48-month apprenticeship where you will engage in on and off the job learning and development activities that will lead to degree qualification. To be
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innovation and development Relevant IT skills including Google and Microsoft packages Desirable Criteria Understanding of the demographic of applicants to the University and a range of student recruitment
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, assessment and evaluation of research-led teaching programmes. Undertake academic tutor responsibilities for undergraduate and postgraduate students. Contribute to the design and development of programmes
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methods and evidence synthesis is desirable. The postholder will work primarily on the following two projects: A study to identify the most pressing research priorities in digital care and develop a co
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/interview Ability to support both undergraduate and postgraduate student projects Essential Application/interview Ability to contribute to research proposal development Essential Application/interview Ability
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are committed to supporting professional development and advancing gender equality in engineering. Main duties and responsibilities As a Thermal Processing Engineer, you will play a vital role in supporting our
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-destructive and in-situ method to measure soil moisture, density, and elemental composition. This project aims to develop advanced sensors for neutron and gamma ray sensing, tailored for agricultural
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on disrupting bacterial virulence rather than targeting bacterial viability are considered promising for drug development. Antivirulence compounds exert low selective pressure on pathogens and hence have lower
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stars are rare, but nevertheless influence the evolution of galaxies through their mechanical, chemical and radiative feedback. Recent space missions (notably Spitzer, Herschel, JWST) permit mid-infrared
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and people who drop out prematurely, again using machine learning methods. Important outcomes from the project include developing and validating tools that can identify service users who require