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at the University of Sheffield within the consortium is to lead nationally the development of quantum machine learning (QML) algorithms. The research will involve designing innovative QML approaches and collaborating
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-identified scans, records and sensor feeds to answer questions such as: Can we predict a patient’s response to treatment without ever seeing their raw file? Can an algorithm learn the warning signs of trouble
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for physics beyond the Standard Model. The detector will be built deep underground at the SURF facility (South Dakota, USA). The particle physics and particle astrophysics (PPPA) group at the University
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of rail with wider city and regional transport networks. A focus of this work is the application of optimisation techniques (e.g. evolutionary algorithms, or Bayesian techniques) to identify high performing
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participate in developing algorithms for tau lepton identification, and will also have the opportunity to assist with silicon module construction for the ATLAS tracker upgrade. Instructions for applying can be
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publications. There are opportunities for industrial placements during the project. The PhD student will be based at the School of Electrical and Electronic Engineering at the University of Sheffield. The School
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of AI in the School of Computer Science at the University of Sheffield. She received her PhD in Computer Science from Washington State University in 2018, and then spent 2.5 years as a Postdoctoral
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: Applications accepted all year round Details Are you interested in power system research for the future power grid operation? We have a recent PhD project opportunity at The University of Sheffield, a World
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transmission methods (wired or wireless) will be optimised for robust data capture in natural sleep environments. AI-Driven Analysis: Develop advanced AI algorithms to analyse the collected sensor data, aiming
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algorithms. These algorithms act as perfect digital lenses, with no image degradation from aberrations, and provide a fantastically detailed, information-rich view of any sample being imaged. Applications