28 density-functional-theory-molecular-dynamics PhD positions at University of Cambridge
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PhD Studentship: Development of Next-Generation High-Performance Titanium Alloy for Aerospace Applications Funder: EPSRC and Rolls-Royce plc Duration: 3.5 years Supervisors: Professor Nick Jones and
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molecular biology, quantitative imaging and biophysical approaches to investigate cell shape changes in cultured cells and in vivo. Current projects in the lab include investigating the regulation
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Project Title: Characterising clonal dynamics of somatic mutations in vivo for early prediction of carcinogenicity using advanced error corrected next generation sequencing Supervisor: Dr Alex Cagan
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structure and function in the developing brain. This inability to accurately predict those infants who will go on to develop problems makes it extremely challenging to focus resources on those infants who
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and functional/molecular studies. Whilst the focus of this recruitment drive is to find a candidate with genomics expertise, enquiries would also be welcome from molecular biologists interested in using
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diversity. We work to identify the genes that regulate plant development, describe the evolutionary histories of these genes, and connect the molecular evolution of developmental genes to the evolution
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Fixed-term: The funds for this post are available for 3.5 years from September 2025. Applications are invited for a position of a Research Assistant to work on the UKRI-funded (ERC advanced grant
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lab investigates systems neuroscience questions, specifically the role of cortico-subcortical loops in statistical learning. We focus on the auditory system and perform awake/asleep electrophysiology
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We are seeking an applicant for a fully-funded ERC Research Assistant position with the opportunity to undertake PhD studies in statistical methodology and theory led by Professor Richard Samworth
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) leverage existing mutant libraries to define molecular mechanisms of influx, efflux, and metabolism, and (iii) use this information to employ in silico screening and generative AI methods to create new