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Field
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Background Network Rail operates several telecom networks which provide connectivity for various signalling systems. Therefore, the performance of telecoms assets is integral to how the railway system operates
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. This project aims to dive into the dynamics of attack methodologies (e.g., Membership Inference, Property Inference) and defensive mechanisms (e.g., Differential Privacy, Machine Unlearning) within FL
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-material capability with a suitable closure model; (2) improved strategy for interface tracking/capturing; (3) very high-speed scenarios with use of nonlinear Riemann-solvers. If time allows exploratory 3D
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improve surgical workflow, shortens surgery time, enables unrestricted movement tracking, and reduces infection risks. Eliminating markers enables robot-assisted or fully automated femoral implantation
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atmosphere. Our successful track record of scientific achievements ranges from nanoscale and nonlinear photonics and fibre lasers to medical lasers and bio-sensing for healthcare and the high-speed optical
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electron microscopy image simulations Development of a machine learning model capable of inferring 3D atomic structure from two-dimensional TEM projection images Application of the new approach
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engage in immersive, simulated construction tasks, while wearable sensors monitor their physical effort, emotional states, and cognitive load. Physiological and behavioural data — including eye tracking
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scenarios as typically encountered by UK mountain rescue teams and apply innovative biomechanical analysis using Bournemouth University ’s in-vivo 3D motion tracking technology to determine residual motion of
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track intertidal transitions from unvegetated to vegetated states as metrics of restoration success. Depending on the candidate’s prior experience and research interests, there is also the possibility
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supervisor Dr Lei Xing has built strong track record in circular chemical economy, green energy, carbon capture and utilisation, AI and digitalisation. Supervisors:Dr Lei Xing and Professor Jin Xuan Entry