88 structural-engineering "https:" "https:" "https:" "https:" "UCL" "UCL" positions at University of Leeds
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-time Skilled Worker visa applicants. Information on other visa options is available at: https://www.gov.uk/browse/visas-immigration/work-visas . What we offer in return 26 days holiday plus approx.16
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available at: https://www.gov.uk/browse/visas-immigration/work-visas Pre-employment Health Assessment Please see details of the University’s Pre-employment Health Assessment within the Candidate Brief. What
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at: https://www.gov.uk/browse/visas-immigration/work-visas  ; What we offer in return 26 days holiday plus approx. 16 Bank Holidays/days that the University is closed by custom (including Christmas
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/skilled-worker-visa . For research and academic posts, we will consider eligibility under the Global Talent visa. For more information please visit: https://www.gov.uk/global-talent . What we offer in
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technologies for real-world applications. Subject Area: Civil & Structural Engineering
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preparedness and refining projections of glacier evolution across High-Mountain Asia. You will contribute to creating systematic and open access glacial lake monitoring through our Glacial Lake Observatory (http
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the School of Mechanical Engineering. The project is part of a new £7M EPSRC funded Programme Grant that brings together a team of researchers from the universities of Leeds, Durham and Manchester
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of Medicine, which is internationally recognised for its work in cardiovascular science, thrombosis, fibrin clot structure and inflammation. The project will be based in the Leeds Institute of Cardiovascular
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of Medicine, which is internationally recognised for its work in cardiovascular science, thrombosis, fibrin clot structure and inflammation. The project will be based in the Leeds Institute of Cardiovascular
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Faculty of Engineering and Physical Sciences EPSRC Project Proposals 2026/27 (jobs.ac.uk) Project Link via the 'Apply' button above Project Title: Machine Learning Driven Corrosion Modelling in Bio