74 machine-learning-"https:"-"https:"-"https:"-"https:"-"https:" positions at Ulster University
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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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al. (2024) Photonics for Neuromorphic Computing: Fundamentals, Devices, and Opportunities. Advanced Materials. doi: 10.1002/adma.202312825. [6] K. Lee et al., “Secure Machine Learning Hardware
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vision systems addressing an urgent industrial challenge with immediate, large-scale impact. The project will take existing knowledge in computer vision and deep learning and apply it directly to a
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vast amounts of rich, complex data, unlocking their insights requires cutting-edge AI and machine learning (ML) techniques. Meanwhile, although artificial neural networks (ANNs) have powered recent AI
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- 2025 - Business Strategy and the Environment - Wiley Online Library Additive Manufacturing: A Comprehensive Review Big data, machine learning, and digital twin assisted additive manufacturing: A review
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system resilience under changing climatic and economic conditions. Traditional predictive models, such as regression and standard machine learning, capture correlations but not causal mechanisms—how
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-aligned investment, integrating sustainability metrics within transparent machine learning models. “An AI-Driven Connected Health System to Support Movement and Wellbeing during Preconception, Pregnancy and
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intelligence (AI) and machine learning (ML) to investigate the role of folate in breast cancer prevention across three interconnected aims spanning epidemiology, clinical biomarkers, and molecular analysis. 1
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through the vessels and how diseases like heart blockages or artery wall damage develop. However, most current computer models used to study blood flow treat arteries as if they are rigid and motionless
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-controlled process, weaving through-thickness reinforcements directly into a component. This project will focus on the mechanical performance of tufted, 3D woven and z-pinned CFRP laminates. Key objectives