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. This opportunity provides an annual stipend of the research council minimum rate (set by UKRI) of £19,237 for 2024/25. PROJECT CONTACT Dr Misbahu Zubair PROJECT ADVERT This PhD studentship focuses on the design
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) will not have significant impact and runs the risk of remaining illusory until a point where design (PhD 3) and legal (PhD 4) considerations are addressed. As such an interdisciplinary approach is
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experience within a subset of the fields of system design, robotics, process sensors, vision and integration, process planning and monitoring, textile monitoring and modelling. The ideal candidate should have
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fit for purpose. This research aims to accelerate the UK’s secure blockchain quantum resistance by developing a framework for designing post-quantum blockchain and distributed ledger technologies
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individual operating points. The simplest design tool for a single turbine is blade-element momentum theory (BEMT). Based on the momentum principle and aerofoil theory this predicts thrust and power and is
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think of artistic entrepreneurship as a dynamic agency that promotes innovative collaboration between artists, designers, researchers, public and private actors, and that transcends traditional boundaries
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of the European Sea Basins, rapid technological advancements are needed. Recent trends have resulted in the design of wind turbines with higher rated power output, reaching up to 15MW. To enable the construction
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different means (for example, but not limited to, training applications, competition environment familiarisation, data visualisation). Empirical studies will then be designed and conducted to assess
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partners, within the department and the university, as well as locally and internationally. We seek applicants from visual arts, architecture, design and other related fields with a strong interest in
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, efficient machine learning. The project aims to theoretically understand why machine learning models perform well and/or design efficient and robust algorithms in trustworthy machine learning. The topics