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the prevalence and risk of modern slavery. There will be a focus on Bayesian nonparametric methods and practical development of MCMC algorithms that can be applied to data. Translating the project findings
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AI algorithm learning when subjected to cyber attacks in Edge Computing environments. At the Edge AI Hub, you will join an internationally renowned and multi-disciplinary team co-led at Southampton Dr
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the performance of the above model and sensor fusion algorithm when considering different sensor parameters and configurations Work within specified research grants and projects Operate within area of specialism
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benefit society by advancing technologies that will underpin the design of the next generation of transport aircraft. Specifically, you will develop, test, and industrialise algorithms designed to simulate
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and refine algorithms and models for large-scale language processing tasks, with a focus on healthcare data Contribute to developing new models, techniques and methods for clinical machine learning
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neutral-atom quantum simulator. The post holder will interact with international collaborators to develop new algorithmic approaches to minimising the effects of first and second order phase transitions in
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Jeevartnam’s supervision. The successful applicant will join an interdisciplinary team at Surrey and will be primarily engaged in a project aiming to develop computational algorithms for the prediction
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team under Prof Jeevartnam’s supervision. The successful applicant will join an interdisciplinary team at Surrey and will be primarily engaged in a project aiming to develop computational algorithms
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fundamental research protecting data quality and AI algorithm learning when subjected to cyber attacks in Edge Computing environments. At the Edge AI Hub, you will join an internationally renowned and multi
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development of mathematical models and algorithms for the analysis of biopharmaceutical manufacturing processes with a focus on assuring safety and alignment of machine learning models with the expected