170 machine-learning "https:" "https:" "https:" "https:" "RAEGE Az" positions at Cardiff University
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, development, and wellbeing, and some of the facilities and services on offer to staff at Cardiff University please visit https://www.cardiff.ac.uk/jobs/what-we-can-offer Closing date: Wednesday, 5 November 2025
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. For more information on the School please visit its website: https://www.cardiff.ac.uk/mathematics This position, which is to cover a period of secondment, is full-time (35 hours per week) and fixed term
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, and wellbeing, and some of the facilities and services on offer to staff at Cardiff University please visit https://www.cardiff.ac.uk/jobs/what-we-can-offer Date advert posted: Thursday, 30 October 2025
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Roldan Martinez https://www.cardiff.ac.uk/people/view/102465-roldan-martinez-alberto and www.roldan-group.com For informal enquiries about the role and the Cardiff School of Chemistry, please contact Dr
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across the social sciences and beyond. Further details of the School's activities may be found on our home page: http://www.cardiff.ac.uk/socsi . Job Category Academic - Research
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, with various start dates. If you have difficulty accessing a computer, please call 029 2087 6137. Benefits We offer a leading and rewarding staff benefits package: 32 days holiday per year plus 8 bank
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play a leading role in the analysis of large and complex genetic and electronic health records datasets with a range of Statistical and Machine Learning approaches, whilst leading a broad range of
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technology (post-editing machine translation and the University translation memory output) and software to ensure accuracy, consistency, and value for money in relation to translations. Instruct and guide
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. Willingness to learn complex statistical analyses of fMRI data (this might include analysis methods such as multivariate data analysis, machine learning or computational modelling) Desirable CriteriaExperience
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play a leading role in the analysis of large and complex genetic and electronic health records datasets with a range of Bioinformatics tools, Statistical and Machine Learning approaches, whilst leading a