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generating DNA cytosine modification dysfunction in IPF, and potential targets for therapeutic interference in IPF development. Applicants must be highly motivated and self-driven, with a PhD in bioinformatics
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://www.nottingham.ac.uk/research/research-areas/biodiscovery-institute/biodiscovery-institute.aspx ) About you – A PhD, or the equivalent in professional qualifications, and experience in blood cancer cell culture and drug
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quantitative expertise, from disciplines that include politics, sociology, law, and area studies. About you: Candidates should have a PhD in a relevant field or be close to completion. Here are some examples of
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Recognised Researcher (R2) Country United Kingdom Application Deadline 29 Oct 2025 - 23:59 (UTC) Type of Contract Temporary Job Status Part-time Is the job funded through the EU Research Framework Programme
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Biodiscovery Institute: https://www.nottingham.ac.uk/research/research-areas/biodiscovery-institute/biodiscovery-institute.aspx. The successful applicant will have a PhD or equivalent (or close to completion
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the lead on, plan, develop and conduct individual and/or collaborative research objectives, projects and proposals either as an individual or as part of a broader programme. - To acquire, analyse
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an area of growing policy interest, potentially offering a springboard to independent funding. The successful applicant will hold a PhD (or be near to the completion of a PhD) or equivalent in a Medicine
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to make applications for funding of a higher degree (PhD/ DM) and doctoral fees which are not included in this post. PhD/DM training for clinicians in the School of Medicine is closely supervised and
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with human research participants. Interested in neuromuscular physiology, ageing, and electrophysiology. Keen to contribute to high-impact research with real translational relevance. You must have a PhD
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computers”(under the UKRI Guarantee scheme). Topics include: - Quantum many-body dynamics - Quantum algorithms - Quantum-enhanced numerical methods - Quantum machine learning - Tensor Networks - Topological