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The position involves working with large national comprehensive population multi-register data collected from the Public Health Agency of Sweden, Statistics Sweden, the National Board of Health and Welfare
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We are looking for someone who has or will soon defend their thesis, with previous education in statistics, data processing and/or bioinformatics, to contribute to research on brain diseases. You
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will also design and develop statistical analysis plans, including advanced methods in epidemiology. Statistical analyses will then be carried out following the statistical analysis plans. A significant
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statistical inference and ecology through the DIASPARA project. Regular online and in-person meetings with the DIASPARA team are scheduled throughout the project. Required qualifications: PhD degree in
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on school bullying, including collecting and statistically analyzing data, in collaboration with other researchers at the department. As postdoc, you will principally carry out research. A certain amount of
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, IF, EndoPat) and associated statistical analyses related to cardiorenal research. What do we offer? A creative and inspiring environment with wide-ranging expertise and interests. Karolinska Institutet is one
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PhD studies - Publications in the field of human cytotoxic lymphocytes immunology - Statistical knowledge - Generate high-parameter flow cytometry data - Extensive human immune cell culture background
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analysis. Data collection from various biogas plants and statistical analysis will also be a part of your task as well as compiling results in scientific articles. The project is financed by the Swedish
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ecological processes Strong skills in statistical modelling and spatial data analyses Capacity to work with complex data sets Strong communication skills in English Other qualifications counted as an advantage
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will be given to: ability and experience to attract external funding in competition programming skills in R that encompass r package development competence and experience in Bayesian statistical models