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the NCO will consist of an extensive survey data collection on gender cultures in Dutch secondary schools. This dataset will be linked to register data from Statistics Netherlands (CBS). In the PhD project
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in English, both written and spoken, with the ability to communicate complex ideas clearly; - who has experience with statistical programming (e.g., Stata, R); - who is motivated to study policy
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identity. The project will make use of prehistoric ceramic assemblages from the FDP and consist of a wide scope of methods including stylistic, scientific and statistical approaches. The goal of the project
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on the following key questions: Analysing Centralization and Accessibility: Using population data from real world data sources such as cancer registries and data from the central bureau of statistics, the PhD
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, behavioural observations), theoretical research, analyses of long-term data (extracting data and statistical analyses) and has written at least one scientific publication. We also ask for excellent
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: The relation between climate change, health and work; The relation between health, income and the burden of COVID-19; You will conduct state-of-the-art statistical analyses using linked, population-level data
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, statistics, and visualization is an advantage. Experience with field work with birds in West Africa is an advantage. Cross-cultural sensitivity and a team player willing to be part of a large international
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-economical surveys and work is an advantage. Knowledge of R and/or Python as a tool for data analysis, statistics, and visualization is an advantage. Experience with work within local communities in West
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statistical skills (e.g., group and single case statistics, correlations). In accordance with the Collective Labour Agreement for Dutch Universities, the University of Groningen offers you: A salary of € 2.901
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) Proven affinity with the application of statistical methods for data analysis of spatial and temporal datasets in the domain of agronomy, ecology and environmental sciences Proven affinity with modeling