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Pytorch and/or JAX deep learning models. Experience in single-cell or spatial omics data analysis. What we offerEmbedding within a computational team, with extensive experience in computational biology and
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Methods, Program Planning and Evaluation, Infectious and Chronic Disease Epidemiology, Spatial Epidemiology, Advanced Topics in Health Promotion, Advanced Topics in Public Health Policy and Administration
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, livestock systems, and healthy and sustainable diets, providing analysis and insights aimed at helping to shape the decision-making process at all relevant levels. The livestock sector is a crucial component
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. The project follows a bedside-to-bench-and-back approach, utilizing human tissue single-cell and spatial multi-omics at disease remission (inflammation resolution), human tissue organoids, and the use and
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the localisation of inflammation in the joints. The project is based on a bed-to-bench-and-back approach , utilising human tissue single-cell and spatial multi-omics , engineered CAR-T cells,human organoids , and
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moss biodiversity and function will change in relation to climate and grazing. This PhD will therefore use the powerful solution of spatial analysis utilising the natural heterogeneity of tundra
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in spatial-analysis, optimisation and economic analysis, as well as contribute to the UK’s hydrogen economy. How to Apply: Please see this link for information on how to apply: https
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. The project will include opportunities for both desk-based analysis of existing data and fieldwork. There are three specific objectives of this PhD project: (i) Testing the hypothesis that adults
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with EDF UK. The project offers the chance to develop skills in agent based modelling spatial-analysis, optimisation and economic analysis, as well as contribute to the UK’s decarbonisation. How to apply
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Job Purpose Working under the supervision of Prof Jon Cooper, the successful candidate will contribute to a project focusing on combining spatially offset and stand-off Raman spectroscopy systems