125 data-"https:" "https:" "https:" "https:" "https:" "https:" "https:" "Dr" "FEUP" positions at Ulster University
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and spatial conditions influence energy performance and thermal comfort. By combining spatial mapping, data modelling, and fuel poverty metrics, the project will identify where health risks are most
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Apply and key information This project is funded by: Department for the Economy (DfE) Summary Hypertension is the leading risk factor contributing to all-cause mortality and is estimated to affect
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innovation. Passive Sensing and Adaptive Interventions for Managing Cognitive Fatigue in Everyday Contexts Supervisor Names: Dr George Moore Building on prior work detecting cognitive fatigue in mobile
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expertise in multimodal data integration (Dr Ross Murphy), nutrition and diet with a particular focus on B-vitamins, one-carbon metabolism and related polymorphisms in hypertension prevention (Dr Leane Hoey
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applicants who are interested in projects in the following areas: Clinical Form Automation Using Large Language Models and Explainable NLP Supervisor Names: Dr Naveed Ejaz This PhD project aims to reduce
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. Epidemiological study: Using data from approximately 500,000 UK Biobank participants, the project will model relationships among folate status, genetic factors, and breast cancer risk. AI/ML platforms will be
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Summary Financial markets must assess how valuable a company's innovations are, but this is difficult. Patents contain rich information about innovation quality, but extracting meaningful signals
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, Security and Justice (contact Brandon Hamber ) For more information about this competition for postgraduate funding with the ESRC-NINE, please visit the Ulster University website , and the ESRC-NINE website
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difficult to interpret and require vast amounts of data to perform well. This PhD will investigate how AI can become more adaptable, efficient, and understandable by integrating people directly into the
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Apply and key information This project is funded by: Department for the Economy (DfE) Summary AML investigators must recognise diverse money laundering typologies, but training is constrained by