25 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:"-"U.S" positions at Swansea University
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from working closely with its team of post-docs, associated researchers and partners (that range from Microsoft Research to the NHS). For this project you should have a strong interest in AI/Machine
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and partners (that range from Microsoft Research to the NHS). For this project you should have a strong interest in AI/Machine Learning as well as an ability to develop, build and test interactive
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. This creates a culture of professional training and interdisciplinary education. The successful candidate will join the Healthcare Science academic unit. The Clinical Learning Facilitator in Respiratory
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professional training and interdisciplinary education. The successful candidate will join the Healthcare Science academic unit. The Clinical Learning Facilitator in Clinical Engineering will be responsible
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nationally, statistics from 2019–2024 show that only around 26% progress beyond Entry level (CEFR A1; National Centre for Learning Welsh, 2025). Increasing these progression rates is a key aim of the Welsh
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refinement or a loss of fidelity in critical regions. Machine learning provides a promising route to capture these relationships more systematically by identifying how local geometric features determine the
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Wales, meaning most paediatric records are handwritten and unstructured. The project will prioritise digitising these records using natural language processing (NLP) and machine learning (ML) to create
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physics. This will include training and deploying machine-learning models that can recognise and classify geometric features critical to simulation accuracy, enabling the removal or simplification
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working 21 hours per week. The Gambling Research, Education and Treatment (GREAT) Centre is seeking a Research Officer for the Look Back to Move Forward study of pathways to gambling harm among Armed Forces
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post-quantum cryptography. The simulation of these case studies will enable the validation of their cyber resilience properties by employing appropriate AI approaches such as reinforcement learning