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Justin Sheffield. This project aims to transform our understanding of soil moisture (SM) variability and its interactions with land-atmosphere processes. The project will use cutting-edge modelling, data
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the development of new anchoring technologies for floating offshore wind turbines. Your role will focus primarily on the development of simplified computational models, and you will contribute
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on the development of simplified computational models, and you will contribute to geotechnical centrifuge modelling. TAILWIND is a multi-disciplinary international research project, funded by the Horizon Europe
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have spread throughout the acoustics profession. The ISVR has excellent experimental facilities including anechoic and reverberation chambers, a 6-axis motion simulator and multiple audio focused
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preliminary data, it combines mechanistic and translational immunology with bespoke in vivo models to define and exploit therapeutically relevant subsets. The Research Fellow will lead studies on cytotoxic T
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for precision targeting of AML, an aggressive leukaemia with poor survival outcomes. Building on strong preliminary data, it combines mechanistic and translational immunology with bespoke in vivo models to define
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. As an essential part of the project team, you will work on: Designing and testing novel metamaterial unit cells tailored for transformer enclosures. Numerical modelling using advanced FEM/BEM
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experimental facilities including anechoic and reverberation chambers, a 6-axis motion simulator and multiple audio focused laboratories. In addition, we are currently making substantial investments to refurbish
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statistical, machine learning, and artificial intelligence (AI) techniques to analyse 'omics and clinical data, and contributing to the development of biomarkers and predictive models. A critical part of your
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to the development of biomarkers and predictive models. A critical part of your role will be to ensure all data and workflows are reproducible and shareable, aligning with our 'data lake to discovery' approach under