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field, together with pre- and/or postdoctoral research experience. Specialist knowledge in CRISPR technology, together with a good knowledge of statistics, bioinformatics and R programming is essential
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challenges, from reducing our carbon emissions to developing vaccines during a pandemic. Department The Student Data Management & Analysis (SDMA) team provides a portfolio of data, reporting and statistical
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primary analysis to apply bioinformatics solutions to biomedical problems. You will be responsible for carrying out data processing and integration, statistical analysis, presentation and interpretation
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collaborations across the University, and supervise research students. The successful applicant will also have the opportunity to conduct a small amount of teaching at the Department of Statistics in their areas
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to hold a PhD in Immunology, Bioinformatics, Statistics, Mathematics, Computer Science or other related computational subject. It is essential that you have experience in the analysis of single-cell RNA-seq
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/campus- safety/annual-report/index. html , which contains information about campus safety, crime statistics, and our drug and alcohol abuse and prevention program designed to prevent the unlawful
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internationally. We have methodological expertise in clinical trial design and implementation, clinical decision making and diagnostics, epidemiology, medical statistics, behavioural science, modelling, qualitative
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statutory data returns to the Higher Education Statistics Agency (HESA), supported by other team members. The returns are large (HESA Student has c. 3 million rows of XML data), and the quality of the data
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environment. You should be proficient in statistical programming languages such as R and/or Python, with experience in developing new and innovative bioinformatic techniques. Application Process You will be
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Immunology, Bioinformatics, Statistics, Mathematics, Computer Science or other related computational subject, have experience in the analysis of single-cell RNA-seq data (e.g. generated using 10X Genomics