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The team of Dr Hunt, Dr Nolan, Prof Norris, and Dr Bailey at Brunel University London is offering a fully funded PhD studentship to co-design a physical activity intervention for working-age adults
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-inspired materials based on biomass-derived polymers (e.g., using chitin derived from mushrooms) and sustainable inorganic sources and 3D printing processes to support a low-carbon manufacturing process. For
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opportunity to work as part of a dedicated team within an ERC project “turbulence intermittency for cloud physics” (TITCHY), underwritten by UKRI, seeking to understand the importance of intermittent turbulent
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or electronic engineering, machine learning, medical physics or neuroscience. Knowledge of electronics is essential. Strong programming skills (MATLAB is essential) & Phyton (TensorFlow library, desirable
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tolerances that can influence the performance of the thruster unit. Develop a statistical model, based on first principles physics, to predict the performance of the thruster unit given a set of parametric
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Jonathan Breeze in the Department of Physics & Astronomy, University College London. Rydberg atoms, highly excited electronic states, offer exciting opportunities for exploring quantum light-matter
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Duration of study: Full time - 4 years fixed term (1y MRes + 3y PhD) Starting date: September 2024 Primary Supervisor: Prof. Ilias Tachtsidis, Department of Medical Physics and Biomedical
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structures, thus distinguishing the chemical properties of building blocks from the physical and mechanical material properties. These characteristics open up endless possibilities in material design, with
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The recent advent of deep learning (DL) has enabled data-driven models, paving the way for the full exploitation of rich image datasets from which physics can be learnt. Here at the University
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research supervisor should be Prof Mark O’ Malley [email protected] to indicate that the application is for this post. Full guidance on application process is available here . Any further queries