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mathematical models with state-of-the-art machine learning techniques to develop forecasting models that are more accurate, efficient, and capable of incorporating complex atmospheric phenomena. This is a fixed
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remotely). You will have or be close to the completion of a PhD or equivalent in computational sciences (Mathematics, Engineering, Computer Science, Statistics), together with relevant research experience
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. Candidate Requirements Minimum 2.1 undergraduate honours degree or Master’s degree with Merit in a relevant discipline (such as Computer Science, Mathematics or others related to the PhD topic
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Job id: 089885. Salary: £43,205 - £50,585 per annum, including London Weighting Allowance. Posted: 20 May 2024. Closing date: 01 July 2024. Business unit: Natural, Mathematical & Engineering Sci
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Job id: 089866. Salary: £62,696 - £71,857 per annum, including London Weighting Allowance. Posted: 20 May 2024. Closing date: 17 June 2024. Business unit: Natural, Mathematical & Engineering Sci
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they are based on mathematical and statistical principles dating from the 1970s. Developing these pharmacometric models remains a laborious task where highly qualified staff spend large amounts of time. Aims
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excellence in imaging, microbiology, genomics, bioinformatics and mathematical modelling in understanding how bacteria exist and thrive as communities across the food chain. The Quadram Institute is a new
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Based in the Faculty of Science and Engineering, the School of Engineering, Computing and Mathematics is an innovative, creative and inspiring place to study and covers the subject areas of civil
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. This RCT will evaluate the effectiveness of the programme in improving young children’s mathematics outcomes, with a particular focus on economically disadvantaged children. A keen interest in developmental
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, including Engineering, Physics, Mathematics, and Computer Science – candidates with experience with Machine Learning and/or Crystallography would be particularly suited for this project. This project will