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, or a related field. Candidates must possess relevant research experience in probability, stochastic analysis, and optimization. Applicants with knowledge in machine learning, as well as a track record
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addition, to add time and spatial resolution, we will optimize FRET-based probe for specific metabolic pathway. The post holder will be responsible to establish methodologies, develop the project, perform
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addition, to add time and spatial resolution, we will optimize FRET-based probe for specific metabolic pathway. The post holder will be responsible to establish methodologies, develop the project, perform
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intelligence (AI) for application in medicine, with a primary focus on optimizing clinical trial design. The partnership will bring together the University of Oxford’s expertise in statistics, mathematics
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communications Deep knowledge of optimization theory Deep knowledge of Matlab Deep knowledge of CVX Desirable criteria Excellent communication skills Excellent presentation skills We pride ourselves on being
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of integrated sensing and communications 5. Deep knowledge of optimization theory 6. Deep knowledge of Matlab 7. Deep knowledge of CVX Desirable criteria 1. Excellent communication skills 2
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medicine, with a primary focus on optimizing clinical trial design. The partnership will bring together the University of Oxford’s expertise in statistics, mathematics, engineering and AI with industry
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medicine, with a primary focus on optimizing clinical trial design. The partnership will bring together the University of Oxford’s expertise in statistics, mathematics, engineering and AI with industry
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. This project aims to establish the safety limits for in vivo use, develop the optimal operational conditions for the proposed device and create software for device operation, data collection, analysis and
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the most pressing areas of fundamental understanding which are currently lacking and need to be overcome in order for the four PV device concepts to be optimized. The modelling findings on a range of