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Computational Neuroscience and related fields as part of the Medical Research Council, UKRI grant “Algebraic topology bridging the gap between single neurons and networks”. They will be expected to conduct
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with experimental biologists to validate the hypotheses, and advise and supervise computational staff and students. You will write research articles and present the results at national and international
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, small group teaching, and tutoring of undergraduates and graduate students. Applicants should hold or be close to completion of a PhD/DPhil in accelerator physics, particle physics, or a closely-related
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proof-of-principle repetition-rate and staging experimentation. The successful candidate will perform duties that include developing/using particle-in-cell computer codes hosted on local and national high
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members of the research group including research assistants, PhD students, 3rd/4th year students, and/or project volunteers. This role is offered with full time hours, on a fixed-term basis for 1 year with
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overseeing ethical approvals and participant recruitment as required. About You You will have or be close to the completion of a PhD/DPhil in computational neuroscience with experience in contemplative
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with an international reputation for excellence. The Department has a substantial research programme, with major funding from Medical Research Council (MRC), Wellcome Trust and National Institute
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, in natural science and/or social science domains. Candidates should possess a PhD (or be near completion) in PhD in Computer Science, AI, Security, or a related field. You will have a Strong background
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This is an exciting opportunity to help shape the direction of a new research group, and supervise PhDs and Masters’ students. We are looking for an independent postdoc who wants to explore both
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computational methods, and inn collaboration with permanent academics, help to mentor students undertaking masters projects and internships in the research team. The post-holder will have the opportunity to teach