566 machine-learning "https:" "https:" "https:" "https:" "https:" "https:" "U.S" positions at University of Sheffield
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, - with a minimum of 14 hours worked on campus. Line manager Office Coordinator Our website https://sheffield.ac.uk/disability-dyslexia-support For informal enquiries about this job contact Mary Jacques
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that are necessary for bioscience research and related non-academic careers. https://www.yorkshirebiosciencedtp.ac.uk Project Description: By the year 2050, it is estimated that antimicrobial resistance will generate
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areas as well as equip you with core data analysis and professional skills that are necessary for bioscience research and related non-academic careers. https://www.yorkshirebiosciencedtp.ac.uk Project
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biological, biotechnology and biochemical areas as well as equip you with core data analysis and professional skills that are necessary for bioscience research and related non-academic careers. https
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to apply: Please complete a University Postgraduate Research Application form available here: http://www.shef.ac.uk/postgraduate/research/apply Please clearly state the prospective main supervisor in
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must have an International English Language Testing System (IELTS) average of 6.5 or above with at least 6.0 in each component, or equivalent. Please see this link for further information: https
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Overview We are seeking a Research Associate to join our world-leading Electrical Machines and Power group in the University of Sheffield. You will join a team of three leading academics to address
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reports n/a Our website https://sheffield.ac.uk/alumni/welcome-car For informal enquiries about this job contact Paula Gould,Associate Director of Campaign Management: on p.gould@sheffield.ac.uk . Next
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with core data analysis and professional skills that are necessary for bioscience research and related non-academic careers. https://www.yorkshirebiosciencedtp.ac.uk Project Description: The oestrogen
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Feedback control of tokamak plasmas via deep learning policies with robustness guarantees (S3.5-ELE-Drummond) School of Electrical and Electronic Engineering PhD Research Project Competition Funded