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? Join the Department of Mechanical Engineering’s Thermofluids Group at the University of Sheffield for a PhD focused on the computational modelling of mechanical seals funded by John Crane Ltd
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research? Join the Department of Mechanical Engineering’s Thermofluids Group at the University of Sheffield for a PhD focused on the computational modelling of mechanical seals funded by John Crane Ltd
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) at the University of Sheffield is responsible for the management of the University's estate including managing property and facilities and developing new buildings. This is an exciting opportunity for a trained and
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multi-million pound investment from the University of Sheffield, the Centre for Machine Intelligence is a strategic initiative dedicated to the transformation and acceleration of our research, innovation
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, allowing sophisticated experiments with hundreds of robots. Supervisor Bio Prof James Marshall is Director of the Centre for Machine Intelligence at the University of Sheffield, and Founder Science Officer
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Details We have a vacancy for an enthusiastic and self-motivated PhD student for a PhD project in the Leonardo Centre at the University of Sheffield funded by the John Crane Ltd. About the Project
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advertised with Dr Matt Ellis. Applicants should only apply for one they are most interested in. Applications must be made directly to the University of Sheffield using the Postgraduate Online Application Form
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EPSRC CASE Studentship. University of Sheffield and Syngenta Crop Protection Machine learning is increasingly used for decision making and molecular design in the pharmaceutical and crop protection
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. The research programme includes evaluations of speech, language and communication interventions for children, designing intervention programmes for children and young people with learning disabilities and
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differential equations, for predicting the dynamics of experimental systems designed for neuromorphic computing. A focus will be on how these models can be trained to learn device variations and how they affect