57 machine-learning-"https:" "https:" "https:" "https:" "https:" "https:" "NORTHUMBRIA UNIVERSITY" positions at UNIVERSITY OF SOUTHAMPTON
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, collaborating with the European Space Agency (ESA) and NHS Hampshire Hospitals. More information about the project is available at https://project-pasta.com . Key responsibilities include: Designing Power
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information on the Service please look at the website http://ais.southampton.ac.uk/ About the role: Location: University of Southampton Highfield Campus, Building 19 Working hours: Monday to Friday 9am-5pm Job
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senior lab member you would be expected to aid in the training of junior members; some more details about the group can be found here: https://the-williams-group.co.uk/ . Informal enquiries should be
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with our four research centres (https://www.southampton.ac.uk/research/areas/psychology ). We particularly welcome applications from candidates whose research can contribute to one or more of our cross
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investment aligned with our four research centres (https://www.southampton.ac.uk/research/areas/psychology ). Applicants will have expertise in neuroscience/neuropsychological methods (e.g., functional brain
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to apply Website https://www.timeshighereducation.com/unijobs/listing/405561/research-technician… Requirements Additional Information Work Location(s) Number of offers available1Company/InstituteUNIVERSITY
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mechanics including turbulent boundary layers, flow control, atmospheric flows, and diagnostics development. You will join a large and friendly aerodynamics group (http://www.southampton.ac.uk/engineering
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(USS), subsidised health and fitness facilities and a range of discounts. For additional information, please email Professor Lisa McNeill, lcmn@soton.ac.uk Where to apply Website https
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the University of Southampton’s wide range of benefits, please visit https://www.southampton.ac.uk/hr/services/benefits-explained/index.page Learn more about Southampton Sport Meet the Team Behind Southampton
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application of innovative Machine Learning (ML) frameworks to understand and predict the global hydrological cycle. The role will require bridging the gap between process-based physical modeling and scalable