658 data-"https:" "https:" "https:" "https:" "https:" "https:" "https:" "University of St" "St" "St" positions at University of Sheffield
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events. Funding Notes This project is for Self-funded students or students with external funding. References https://sgielen.wordpress.com/ View DetailsEmail EnquiryApply Online
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biochemical areas as well as equip you with core data analysis and professional skills that are necessary for bioscience research and related non-academic careers. https://www.yorkshirebiosciencedtp.ac.uk
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team has extensive experience and expertise in behavioural ecology, evolution, reproductive biology & conservation science. Further information can be found via: https://www.sheffield.ac.uk/aps/research
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employment policies. For further information on the WIRe scheme visit the web site at: https://cdtwire.com/ The project based at The University of Sheffield will be supervised by academics at Sheffield and
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maintaining data. You will also contribute to University initiatives to share best practices and foster continual improvement. We are looking for someone proactive and flexible; pragmatic and solutions-focused
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Information, please email k.lohwasser@sheffield.ac.uk and T.Vickey@sheffield.ac.uk or look at the University’s website: https://www.sheffield.ac.uk/postgraduate/phd. Further Information on the Particle
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literature data to guide research design and interpretation. Collaborating with industry partners to translate discoveries into real-world food applications. This project provides an excellent platform
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biological, biotechnology and biochemical areas as well as equip you with core data analysis and professional skills that are necessary for bioscience research and related non-academic careers. https
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collaboration at its core. The aim is to enable you to develop a range of research skills in biological, biotechnology and biochemical areas as well as equip you with core data analysis and professional skills
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through a combination of machine learning, clinical data modelling, and 3D-printed acoustic metamaterials. The central research question is: How can personalised tinnitus therapy be delivered effectively