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Field
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the scalability and robustness of AI in complex environments which is a major step towards the digital transformation of the manufacturing industry. Motivation Automation is key to meeting the growing demand
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Overview: Fully Funded, £24,000 Tax-Free Stipend, Industrial Placement with Rolls-Royce Join Cranfield University and the UK’s EPSRC Centre for Doctoral Training (CDT) in Net Zero Aviation—home to
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Overview:Fully Funded, £24,000 Tax-Free Stipend, Industrial Placement with Rolls-Royce Join the UK’s EPSRC Centre for Doctoral Training (CDT) in Net Zero Aviation and help shape the future
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scenarios and network-centred operation (NCO) information, including positions, threats and airborne warning and control systems (AWACS). Streamlined and effective decision making in complex scenarios
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biology techniques (cryoEM and X-ray crystallography) to determine the structures of tyrosine fusion kinases found in leukaemia, and their complexes with the HSP90 molecular chaperone. Biochemistry and
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mismatch remains a key issue for speech and language technologies. Especially for speech technology the variability of input data is large and recordings can occur in highly complex acoustic and linguistic
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. This makes them unsuitable for identifying rare or complex cases, where annotations are scarce or unreliable. Recently developed unsupervised learning methods allow to circumvent this limitation by
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for Fluid and Complex Systems as well as to take active part in collaborations with our existing network, both in the UK and in the EU. How to apply Please submit an initial expression of interest application
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CO2e/tonne of aluminium as a supplied component and eventually to Net Zero carbon. This project is concerned with development of high strength aluminium alloys designed to provide better performance
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modelling capabilities for the prediction of energy extraction efficiency, especially focusing on improving the understanding and prediction of the complex flow phenomena, including buoyancy effects in AGS