21 parallel-computing-numerical-methods-"DIFFER" PhD positions at University of Cambridge
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the computational and experimental methods will be provided in the projects, although relevant previous experience would be advantageous. Applications for this PhD project should be submitted via the University
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The position is open to UK citizens, or overseas students meeting the UK residency requirements, or able to cover the difference in international fees through additional funding awards. How to apply For further
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chromatin profiling methods along with CRISPR/Cas9-meduated cell line engineering and various animal models. You will study the effects of the activation or depletion of chromatin-modifying enzymes using
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. This research aims to develop a novel method for conjugating oligonucleotides to antibodies, utilizing divinylpyridine motifs. The project will develop skills in both organic synthesis and chemical biology. We
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the proteins associated with their binding sites with a view to understanding therapeutic mechanisms [e.g. see Nature Biotechnology 2023, 41 1265]. We are expanding this work to create methods to characterise
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situ, with direct structure determination, and (ii) investigating and optimizing methods for chirality determination using electron crystallography. Candidate We are looking for a highly motivated and
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. Current Mass Spectrometry approaches have been unable to assess most of the FOXA1 protein for PMTs, but new Mass Spectrometry methods such as 'top-down' approaches permit an unprecedented opportunity
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The Centre for Doctoral Training in Nanoscience and Nanotechnology (NanoDTC) at the University of Cambridge invites applications for its 3.5-year interdisciplinary PhD programme. The programme
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of our approach is the innovation of novel methods to investigate genome function. For example, we have recently developed ways to map the binding of nucleic acid-interacting drugs and small molecules
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both sites. The project sits at the interface of cell line engineering, protein science and machine learning and you will receive advanced training in these areas while developing methods to accelerate