13 algorithm-development "https:" "Simons Foundation" PhD positions at University of Sheffield
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, inspection histories, operational performance data, hyperspectral imagery, train-borne video analytics and satellite soil-moisture products to build predictive models of vegetation-driven and water-driven
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Prof Jon Heffernan Application Deadline: Applications accepted all year round Details The EPSRC National Epitaxy Facility has a funded PhD studentship available for research and development in AI
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significant challenges for the treatment and supply of safe and high-quality drinking water. The project aims to develop a multiscale predictive analytics framework that integrates long-term algal speciation
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for sensible, infrastructure-aware policy development in the UK, EU and internationally. Working closely with academic experts and InSinkErator UK (Whirlpool), the student will analyse food waste compositions
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we work closely with clinical trials units to develop and evaluate different interventions. The role is 80%wte fixed term contract for 24 months. Main duties and responsibilities Work with NHS
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meet the team of scientists you will be working closely with. Please use this link to sign up to the webinar: DiMen PhD Webinar Sign-up form Renshaw Lab links/Bateson Centre: https://sheffield.ac.uk
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correction. Funding Notes This project is for self or externally funded students only. References https://www.quantumbespoke.com/ View DetailsEmail EnquiryApply Online
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Crane Ltd, a world-renowned engineering technology leader. Why Join This PhD? Impact the Future of Clean Energy: Develop next-generation mechanical seals for high-pressure hydrogen systems—key
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career development programs which focus on training in transferable skills for academia and beyond. Throughout their studies, PhD students are supported by Career Services, which provides career
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or potential damage to the rail surface. The Research: This project aims to transform this process by developing a novel machine learning (ML) tool to inform optimal grinding parameters. The core research goals