414 proof-checking-postdoc-computer-science-logic positions at University of Nottingham
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About the role - The role-holder will be proficient at quantitative analyses and be support the wider inter-disciplinary research team in analysing quantitative data captured from a variety of sources. The role also involves lots of international partnership management and so language skills...
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(Sutton Bonington Campus, University of Nottingham, UK). This research is part of a trilateral grant in Climate Proofing Agriculture, involving partners in the USA (Eric Lam’s group Rutgers) and Germany
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students, visitors, and staff. Your outstanding customer service skills are key to the team's success. You need to have a logical and practical approach to deal with our buildings and people. If you can
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, PhD fees (for UK home students only), and research costs) three-year full-time PhD is available to start on the 01/02/2026. Please check you meet UK home student requirements before applying. The
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, PhD fees (for UK home students only), and research costs) three-year full-time PhD is available to start on the 01/02/2026. Please check you meet UK home student requirements before applying. The
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under-represented in Mathematical Sciences and strives to maintain an environment where people can be their authentic selves. You will be able to carry out duties to the highest standard and to evidence
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computer science, mechanical engineering, or aerospace engineering. You should have programming experience applied to physics/engineering problems and/or experience with machine learning and ML. The University
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opportunities for collaboration. About You The candidate must have obtained a PhD degree within 3 years and in the the areas of Information Systems, FinTech / Financial Engineering, Data Science & Business
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computer science, mechanical engineering, or aerospace engineering. You should have programming experience applied to physics/engineering problems and/or experience with machine learning and ML. The University
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individual with a 1st or a 2:1 degree from Mechanical, Manufacturing, Mechatronics Engineering, Computer Science or other relevant field. The candidate should have excellent analytical and communications