116 machine-learning-"https:"-"https:"-"https:"-"https:"-"UCL" positions at University of Nottingham
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including machine learning. This research will support the path to net zero flights and there will be opportunities to become involved in practical aspects of fuel system design and testing during their PhD
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role brings rewarding and empowering contact with academic, research staff and students alike. We value a flexible approach and willingness to learn as well as develop new professional skills. Within
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also developing skills in data analysis and machine learning. This role offers a unique opportunity to grow as a researcher, contribute to high-impact publications, and shape the future of biomolecular
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expertise in a supportive and innovative environment. In this role, you will lead the computational strand of the project, applying molecular simulations, data analysis, and machine learning to uncover how
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An exciting opportunity has arisen for a Mechanical Test Technician, Hydrogen to join the world-renowned Power Electronics, Machines and Control Institute (PEMC) at the University of Nottingham
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An exciting opportunity has arisen for a Senior Cryogenic Technician to join the world-renowned Power Electronics, Machines and Control Institute (PEMC) at the University of Nottingham, where you
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to the delivery of our innovative undergraduate curriculum, collaborating with veterinary surgeons, veterinary nurses and fellow educators to provide an exceptional student learning experience. About you You will
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will be responsible for monitoring all computer systems connected to the university network to identify known vulnerabilities, potential weaknesses, security breaches, unusual activity and unauthorised
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and machine learning algorithms to deliver quantitative diagnosis without destroying the samples. The AF-Raman prototype will be integrated and tested in the operating theatre at the Nottingham Breast
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Bezares (numerical relativity), Dr Stephen Green (gravitational waves, data analysis including machine learning, black holes), Dr Laura Sberna (gravitational waves, black holes, and environmental effects