23 natural-language-processing Fellowship positions at UNIVERSITY OF SOUTHAMPTON in United Kingdom
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The School of Health Sciences, University of Southampton, invites applications for an exciting research position within the Extreme Temperature and Health OutcomeS (ETHOS) project. This Natural
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context, and will have excellent written English skills with meticulous attention to detail. We are open to flexible working patterns and to home working arrangements. Potential applicants who would like
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to be able to work independently and efficiently in a research context, and will have excellent written English skills with meticulous attention to detail. We are open to flexible working patterns and to
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Processing (e.g., NeurIPS, ICML, IEEE Transactions in Audio, Speech and Language Processing). You will benefit from: Extensive opportunities for collaboration with external project partners. Opportunities
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written and oral communication skills. The deadline for applications is the 20th July 2025. The position is tenable from the 1st of September 2025 or as soon as possible thereafter. Informal inquiries
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. The Research Fellow will join an international team in the project “Imaging the magma storage region and hydrothermal system of an active arc volcano”, funded by the UK Natural Environment Research Council and
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Reality for Learning in Context – Movement and memory go together. How can we leverage movement over and through our environment to build new skills – like 2nd language acquisition - to thrive better
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: Erlangen Programme for AI” This is a 5-year programme supported by the EPSRC and is a collaboration of mathematicians and computer scientists at the University of Southampton, the University of Oxford (lead
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cognition and emotion processing. We invite applications from individuals with a background in human experimental psychology (participant recruitment, experimental testing, data analysis) and with a PhD in
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-world conditions to verify system operation against targets and demonstrate the reliability of the technology for use in backup power, grid stabilisation, and renewable energy integration applications