121 web-programmer-developer-"U"-"Washington-University-in-St" positions at University of Newcastle
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Research Institutes here:https://www.ncl.ac.uk/medical-sciences/research/institutes/ As part of our commitment to career development for research colleagues, the University has developed 3 levels of research
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: https://www.ncl.ac.uk/medical-sciences/research/institutes/ As part of our commitment to career development for research colleagues, the University has developed 3 levels of research role profiles
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researcher development training as part of multi-institution cohorts. Additionally, there is financial support to attend national and international conferences. The position is available immediately on a full
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developed an interactive map showing the areas we cover and patrol and to give you some insight into the full breadth of the University Campus https://www.ncl.ac.uk/students/campus_map/ Our Security Team play
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• Experience in developing wave or tidal energy or similar field • Simulation experience in finite element analysis and/or hydrodynamics and/or time domain simulation such as Matlab SIMULINK • Ability
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interns to be physically based in or nearby Newcastle - fully remote opportunities are not available, although hybrid work patterns are permitted. The Internship programme is led from the Newcastle
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ResTOrES project will develop, test, and demonstrate a prototype resilience assessment toolkit for offshore energy systems. The toolkit will enable the quantification of resilience in terms of appropriate
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well as vascular and cancer researchers based in Newcastle, Leeds and Sheffield. This project will provide an opportunity to develop and expand the fast-growing research area of cardio-oncology, with a unique angle
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funding remit https://www.ukri.org/councils/epsrc/guidance-for-applicants/epsrc-remit/ As well as undertaking significant new work the fellowship aims to develop independent researchers with applicants
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work on the development and implementation of machine learning models aimed at detecting urban drainage infrastructure components (such as stormwater drains, sewers, and manholes) from publicly available