112 machine-learning-"https:"-"https:"-"https:"-"https:"-"Iscte-IUL" positions at University of Nottingham
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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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, together with evidence of managing cash-handling/reconciliation processes. Previous experience working with computer-booking systems would be desirable. The role is key to ensuring a first class and seamless
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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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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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standard of support for student learning. The successful applicant will also be encouraged to pursue opportunities related to research in anatomy education. About you: The successful candidate will have a
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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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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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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