43 parallel-and-distributed-computing Fellowship positions at University of Birmingham in United Kingdom
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matter. The successful candidate will develop the necessary theoretical models and perform computational calculations to explore various scenarios of quantum dynamical behaviour. This project involves a
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contribute to the creation of knowledge by undertaking a specified range of activities within an established research programme and/or specific research project. The School of Chemistry at the University
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management/administration processes Contribute to the planning and organising of the research programme and/or specific research project Co-ordinate own work with others to avoid conflict or duplication
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spaces for academics and their collaborators. In addition, the University of Birmingham offers exceptional High Performance Computing facilities, including through the Tier-2 Baskerville system. Summary
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, as well as a PhD (or near to completion) or equivalent qualification in Computer Science, STEM (Science, Technology, Engineering and Maths), Psychology, Neuroscience, or related subjects. Candidates
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to contribute to broader management/administration processes Contribute to the planning and organising of the research programme and/or specific research project Co-ordinate own work with others to avoid conflict
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ability to contribute to broader management/administration processes Contribute to the planning and organising of the research programme and/or specific research project Co-ordinate own work with others
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Understanding of and ability to contribute to broader management/administration processes Contribute to the planning and organising of the research programme and/or specific research project Co-ordinate own work
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processes Contribute to the planning and organising of the research programme and/or specific research project Co-ordinate own work with others to avoid conflict or duplication of effort Knowledge
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conditions frequently relies on predictive equations which compute likely resting energy expenditure on the basis of simple measures such as age, gender, height and weight. The populations from which this data