209 algorithm-development-"Multiple"-"Prof"-"Prof"-"SUNY" positions at University of Nottingham in United Kingdom
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, spread and transmission of drug-resistant pathogens under the One Health concept, and to use this knowledge to develop an innovative AI-powered surveillance solution. The research fellow will take a
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: - Have experience of using eye-tracking and/or psychophysiological methods (e.g., EEG/fEMG/EDA/heart rate monitoring) to study written language comprehension, including stimuli development, experimental
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broader team of 27, made up of operational support staff, Our Learning and Development team, T Levels University Support Manager, Research and Policy Team About you We’re looking for a passionate
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and Materials to work across several industry relevant projects and for the development of future group research strategy. MAS has a large intra-disciplinary team of researchers, engineers, technicians
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sites. The Senior Operations Manager (SOM) will champion Halls operational excellence including the development and delivery of consistent, high level customer service across the Halls of Residence in
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will play a lead role in the production and analysis of these simulations, including code development, simulation runs, and like-with-like comparisons to observations. Moreover, you are encouraged
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holiday allowance of 27 (pro rata) days per year plus additional university closure days and bank holidays Ongoing support to develop your skills, career and gain industry recognised qualifications Employee
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. What’s in it for you Ongoing support to develop your skills and gain industry recognised qualifications to further your career ambitions that may lead to different career paths and career progression
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for the post can be found on the attached job role profile. What’s in it for you Ongoing support to develop your skills and gain industry recognised qualifications to further your career ambitions that may lead
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to the analysis of time series. In particular, the project will examine and develop methods that go beyond the Markovian paradigm. It will consider a range of time series data, focusing on those that show