64 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"UCL"-"UCL"-"UCL" positions at Ulster University
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Apply and key information This project is funded by: Department for the Economy (DfE) Summary Serious musculoskeletal (MSK) injuries sustained during sport—such as fractures, dislocations, and
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Apply and key information This project is funded by: Department for the Economy (DfE) Summary Transform how we determine biomolecular structures. This PhD develops generative AI tools that use
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. et al. (2019) 'Big Data‐Savvy teams’ skills, Big Data‐Driven actions and business performance,' British Journal of Management, 30(2), pp. 252–271. https://doi.org/10.1111/1467-8551.12333. Cyfert, S. et
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Apply and key information This project is funded by: Department for the Economy (DfE) Summary Hip replacement is one of the most successful surgical procedures, with over 100,000 operations carried
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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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nutrition, genetic, lifestyle and environmental data; Aim 2. Utilise AI and advanced machine learning approaches to identify novel gene-nutrient interactions to inform personalised nutrition solutions
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Apply and key information This project is funded by: Department for the Economy (DfE) Summary This novel project aims to investigate the benefits of a newly developed PUFA Omega-3 fish oil
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machine learning with spectral data to enable rapid, non-destructive detection of food adulteration and fraud. Machine learning combined with spectral data can play a vital role in combating food fraud by
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Apply and key information This project is funded by: Department for the Economy (DfE) Summary PhD Opportunity: Market Intelligence for Global Growth in Northern Ireland’s Spirits Sector Are you
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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