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Research Fellow in Intervention Development to join the Big Data in Health Group About us Our big data in health team at the University of Southampton is based in the Primary Care Research Centre
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of the Principal Investigator and Director of LISA, with a view to developing LISA's research capacity in AI-augmented spatial analysis. The Fellow is expected to lead the development and application of machine
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PhD (or near to completion) in relevant subject area (structural biology or biophysics) High level analytical capability Ability to communicate complex information clearly Fluency in relevant models
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Job Description Position Details The Institute for Data and AI (IDAI) Location: University of Birmingham, Edgbaston, Birmingham UK Full time starting salary is normally in the range £36,130
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post is fully funded for 3 years and provides an opportunity to obtain a PhD. The project will enable the candidate to develop unique skills in complex linked data handling, geospatial analysis and
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part of the project, the Research Group will develop assessment tools that will inform the practice of Pathfinder workers and will be used to collect outcome data for the evaluation. At specific stages
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UKESM1 or similar models, advanced data analysis and machine learning, would be advantageous. Grade E: You will be near completion of a relevant PhD or have equivalent research experience, and be able
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to help develop new techniques within the laboratory, help supervise project/undergraduate students, and present their data regularly at internal lab meetings and external conferences. All applicants should
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and networks Help with training Master and PhD students and other group members who are working on similar areas Supervise student's projects at both undergraduate and postgraduate levels Person
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leveraged to accelerate learning from both classical and quantum data. The project will develop rigorous theoretical frameworks to understand key properties of quantum machine learning models—expressivity