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, complex protein chemistry, and challenging biophysics including development of new assays would all be a plus. Enthusiasm for working in a laboratory environment and in a small team is also expected, as
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Alliance. Other duties will include contributing to community activities such as seminars and networking events and developing skills in many areas of computational biological research via independent study
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data from a variety of sources, including Spatial Transcriptomics and multiplex Spatial Proteomics platforms and developing skills in computational biology and mathematical spatial analysis via
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Oxford’s Department of Orthopaedics (NDORMS) as well as collaborators in Bristol and Cardiff. You should have a PhD/DPhil (or be near completion) in robotics, computer vision, machine learning or a closely
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. Experience with filamentous proteins, challenging protein purification and complex protein chemistry, and helical analysis would all be a plus. Enthusiasm for working in a laboratory environment and in a close
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of code to conduct complex comparative genomics, implement HMM searching strategies and conduct phylogenetic analysis on a grand scale while making use of sophisticated phylogenetic methods (for example
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at the University of Oxford. Although near-Ambient Pressure XPS has enabled operando measurements of surface chemical processes in recent years, it is limited to low pressures (~ mbar) and complex, dedicated
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of complex biological oligosaccharides and their site of attachment on fusion glycoprotein complexes isolated from viral surfaces (e.g. dengue and HIV-1). We are looking for a highly motivated researcher
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, including the generation and analysis of complex datasets is desirable. Excellent communication skills, including the ability to write for publication and represent the research group at meetings
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B cell biology and spatiotemporal regulation of immune responses. Additionally, you will have proven experience in independently conducting complex and demanding experiments using large cohorts