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Field
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. The aim of the PINZ CDT is to train the next generation of process and chemical engineers, and chemists, to develop the new processes, process technologies and green chemistries required for the process
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machine learning (applied to spatiotemporal data). International and UK applicants are both eligible to apply. Sponsor: This scholarship is funded by the UK Engineering and Physical Sciences Research
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1st class degree in Engineering with strong background in theoretical and computational mechanics of solids/materials. To apply please contact the supervisor, Prof Andrey Jivkov - andrey.jivkov
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technology is emerging as a key commercial fusion solution promising pilot plant concepts that can be deployed by the 2040s. Tokamak Energy, a leading private fusion company in the UK and the UK Atomic Energy
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spherical tokamak with high-temperature superconducting (HTS) magnet technology. However, the compact design of a spherical tokamak places the fusion plasma in close proximity to a critical component known as
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maths, physics, mechanical or materials engineering or a closely related discipline is essential. A Masters-level degree or publication record in any of the above fields would be advantageous. Good
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summary The PhD studentship will broadly explore development of cutting-edge AI solutions for image registration, anatomy segmentation, and immersive technology. The selected candidate will work with
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Application deadline: All year round Research theme: Applied Mathematics, Mechanical and Aerospace Engineering, Fluid Dynamics How to apply:uom.link/pgr-apply-2425 How many positions: 1 This 3.5
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, at least a 2.1 honours degree or a master’s (or international equivalent) in a relevant science or engineering related discipline. To apply please contact the supervisor, Dr Jane Wood - jane.wood-2
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the coordination guarantees. Applicants should have, or expect to achieve, at least a 2.1 honours degree or a master’s (or international equivalent) in a relevant science or engineering related discipline. Candidate