314 algorithm-development-"Multiple"-"Simons-Foundation"-"Prof"-"UCL" positions at University of Sheffield
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changes needed to secure quality care for the future. Working to develop new knowledge that can transform lives for the better, the Centre for Care uses its collective resources to undertake multi
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/adaptive algorithms, offline and online data analysis, conducting experimental research, and online evaluation of the developed adaptive strategies with a robotic application. The prospective students can
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particularly welcome proposals that look to data-mine multiple language sources as a core to the research method. The successful candidate will have academic experience in applying digital methodologies
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The evolution and development of vertebrate skin appendage morphogenesis
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Integration of renewables into energy systems-forecasting model development and analysis School of Mechanical, Aerospace and Civil Engineering PhD Research Project Self Funded Prof Mohamed
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Engineering at the University of Sheffield, where you will develop your research and professional skills alongside multiple researchers focused on CFD and boiling modelling. Confident and reliable estimation
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Development of biofidelic test-beds for assessing human interactions School of Mechanical, Aerospace and Civil Engineering PhD Research Project Self Funded Prof M Carre, Prof R Lewis, Dr J Rongong
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multiple research projects at Sheffield for the Sellafield/National Nuclear Laboratory-based Encapsulant Integrated Research Team (EIRT) focused on development of cement encapsulants to meet Sellafield and
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have experience of working to funder guidelines / eligibility criteria, have excellent organisation skills and be able to work to multiple deadlines across a range of projects. Excellent communication
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adapted based on the abilities and needs of patients. Moreover, automatic intelligent algorithms will be developed in to make the control intuitive, natural and adaptive. Such that the model can learn new