395 computer-programmer-"IMPRS-ML"-"IMPRS-ML"-"IMPRS-ML" positions at University of Sheffield
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the recruitment process It is anticipated that the selection process will take place mid November 2025. This will consist of Portfolio review and Interview. We plan to let candidates know if they have progressed
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of a technical activity. We plan to let candidates know if they have progressed to the selection stage on the week commencing August 2025. Contact Emma Kenny-Levick, e.l.kenny-levick@sheffield.ac.uk
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/smph For informal enquiries about this job contact Viren Ranawana at v.ranawana@sheffield.ac.uk Next steps in the recruitment process We plan to let candidates know if they have progressed
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practical assessment. We plan to let candidates know if they have progressed to the selection stage on the week commencing 29th September. Contact Laura Haslam (l.haslam@sheffield.ac.uk ) if you require any
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of an interview and a practical assessment. We plan to let candidates know if they have progressed to the selection stage on the week commencing 29th September. Contact Laura Haslam (l.haslam@sheffield.ac.uk
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barrier physiology. Main duties and responsibilities Develop a quantitative multimodal neuroimaging method for tissue oxygenation analysis. Plan pulse sequences and acquisition parameters. Communicate
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process It is anticipated that the selection process will take place on Wednesday 1st October. This will consist of an interview and a practical assessment. We plan to let candidates know if they have
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the other network activities as required, in particular supporting workshops, contributing to their write up and engaging with the co-design group who meet monthly. Main duties and responsibilities Plan
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Interplay between Algorithms and Combinatorics School of Computer Science PhD Research Project Directly Funded Students Worldwide Prof Parinya Chalermsook Application Deadline: 31 July 2025 Details
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preferences for them using birds as a model system. Capitalising on recent advances in computational neuroscience and machine learning, specific objectives are to (1) quantify common design features of avian