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Field
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for analysing complex materials, structures and model validation. The DIC community has developed guidelines to ensure robust measurements, continually advancing standards through ongoing challenges. In
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economics, the economics of crime, development economics, public economics, behavioural/experimental economics, microeconomic theory, macroeconomics, and finance. We also have strong links with other
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: Framework Development: Design and implement a generative deep learning framework for cross-modal integration and analysis, resilient to distribution shifts. Correlation Discovery: Identify interpretable
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performance. However, calculating defect formation energies and migration barriers using first-principles methods remains a major bottleneck in the materials discovery process. To address this, we will develop
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, feature extraction etc, to enhance data utilisation and improve existing models or develop new models for wind energy systems. The candidate will be hired knowing the general area of the PhD will relate
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bottlenecks facing flexible and large-area metal oxide electronics: the scarcity of hole-transporting (p-type) oxide semiconductors. Developing p-type materials with performance on par with their commercialized
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training and development to enable adaptable, sensitive and authentic music teaching within culturally diverse communities. The supervisory team will include Dr. Robert Gardiner (Robert.gardiner@rncm.ac.uk
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potential around the UK and Ireland. This PhD project aims to develop and assess the feasibility of various novel fixed-bottom solutions for deep-water wind turbine deployment from structural and economic
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. Applying machine learning to New Zealand’s landslide inventories to model landslide location, character and dynamics. Integrating time-series and inventory data to develop new models to predict location
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place to monitor its evolution and variability. To correctly interpret the observed AMOC variability, however, it is essential to be able to disentangle the buoyancy-driven variability from the wind