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completed projects. This will require familiarity with interdisciplinary collaboration, research design, and proposal development. Candidates should have a PhD (submitted or nearly submitted at the time of
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for someone who is educated to degree level, normally with a PhD (or very close to being awarded a PhD) in a relevant discipline, e.g. Modern History of Asia/Modern World History. An established expertise in
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will have a PhD in a relevant area (or be close to completion) and a good understanding of neurotransmission and behaviour. We welcome applicants with experience in some of the following areas and with a
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to doctoral (PhD) studies. Candidates must hold a BSc degree (or Masters' degree) in a biological subject, and hands-on experience in areas relevant to molecular biology and physiology. The ideal candidate will
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advantageous. The role comes with the opportunity to undertake a fully funded PhD, based within the Department of Medicine, and with access to high quality training and mentorship. Informal enquiries regarding
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technical nature and be able to build internal and external contacts. The successful candidate will have a proven record of internationally outstanding research, a PhD (within the last three years (2022
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date of PhD (or anticipated date of submission/examination), and a list of publications and presentations; 2) Proposed mentor within the Faculty, and whether that mentor has been approached; 3) Title
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PhD students, three Research Assistants, as well as research visitors and interns. We value our team's complementary skills (e.g., differing backgrounds, research approaches, and areas of expertise
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robots. They will be working with a team composed of PhD students, Research Assistants and Postdocs that is developing novel multi-robot architectures for practical, real-world settings. Current solutions
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molecular and computational approaches. They will hold a PhD in a relevant subject, have a solid computational background, and be able to curate, analyse and interpret complex single-cell data sets