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can be tackled. A video describing the project can be viewed here: https://www.youtube.com/watch?v=IzPuuBnrIDc . The successful candidate will be developing Bayesian models for estimating
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pattern including annualised hours, compressed working hours, part time, job share, term-time only and/or hybrid working. Details of preferred hours should be stated in the personal statement and will be
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applications from individuals who would prefer a flexible working pattern including annualised hours, compressed working hours, part time, job share, term-time only and/or hybrid working. Details of preferred
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people with disabilities and/or people from ethnic minority backgrounds. Flexible working, including part-time or reduced hours of work, opportunities to work from home for many posts, compressed hours and
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activities are required. Knowledge of aerospace aerodynamics, compressible flow, as well as engineering programming is essential. Experience in aerospace CFD aerodynamics, optimisation methods, high
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working will be considered, including compressed or part-time hours. Contract type: Fixed term contract Fixed Term Period: Until 31 July 2028 Salary: Full time starting salary is normally in the range
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project to reveal the interaction of galaxies and their cosmic web environment with hydrodynamic simulations based on our new SWIFT code and COLIBRE, a novel state-of-the-art galaxy formation model. You
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of physics/maths and biology is essential. Coding competency (in C, Python, Matlab or similar language) is essential. Applicants should demonstrate a publication record appropriate to their level of experience
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, quality-diversity optimisation, constrained optimisation Genetic programming, code evolution, neuroevolution Fitness landscape analysis and visualisation Machine learning for algorithm performance
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and show strong quantitative skills, proficiency in coding (e.g. Python or MATLAB), and experience handling large datasets. Knowledge in at least one of the following is essential: ocean interior