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for the circular economy in manufacturing. The PhD Project The UK is heavily reliant on critical materials imported from overseas, this means it is susceptible to global supply issues and price volatility. There is
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Are you passionate about the reduction of aircraft noise? Do you want to contribute to cutting-edge research that will lead to silent airfoil design? Applications are invited for a 3.5-year UK PhD
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breaking towards achieving silent aircraft design? Applications are invited for one funded 3.5-year PhD studentship for the project titled ”Data-driven modelling and control of turbulence-generated noise” in
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industrial-scale Positron Emission Particle Tracking, and cutting-edge Terahertz Raman spectroscopy. On the computational side, they will develop and apply a broad range of highly-transferrable digital tools
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of pathogens in the UK. We are seeking a PhD student to perform a project analysing the MScape metagenomic surveillance of infectious disease data set. We aim to recreate strain level information of pathogens
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interface. This PhD project aims to develop a flexible electrochemical sensing interface capable of capturing local physicochemical changes in real time. The work will explore biocompatible, deformable
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2D materials, searching for exotic quantum functionalities to form new sustainable electronics and new types of computing. Tuning nanostructures of these materials with extreme pressure will unlock
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We invite applications for a fully funded PhD studentship (3.5 years) hosted by the University of Birmingham and conducted in collaboration with Siemens and the UK Met Office. This project is ideal
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tested by isothermal titration calorimetry (ITC) or microscale thermophoresis (MST) in collaboration with the lab of Prof. Andy Lovering. In parallel, minibinder/effector pairs will be co-expressed using
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. Yet, many stellar and planetary parameters remain systematically uncertain due to limitations in stellar modelling and data interpretation. This PhD project will develop Bayesian Hierarchical Models