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to continue to invest in their growth. For more information, please visit Working at Utrecht University external link . About us A better future for everyone. This ambition motivates our scientists in executing
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, analysis, and model choice while retaining strong error guarantees. This means that researchers can adapt their research questions and sampling plans to the data as they come in and in a way that is as model
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mutualistic and antagonistic insect flower visitors in the greenhouse and in the field. Analyse complex data sets involving e.g. metabarcode sequencing Chemical analysis of flower nectar using HPLC and GC-MS
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experiments with herbivorous insects, plants and microbes Analysing complex data involving e.g. metabarcoding, metagenomics, and metabolomics Isolating and culturing microbes and testing inoculants on insect
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include: Designing and executing experiments with plants, microbes, insects and drought stress Analyse complex data sets involving metagenomics, transcriptomics and metabolomics Manipulate the soil
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the "best university " in the Netherlands! A place to be proud of. Do you want more information? For more information about the position, please contact Desiree Beaujean, teamleader, by e-mail
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with multidisciplinary team members. Information and application Are you interested in this position? Please send your application via the 'Apply now' button below before August 20, and include: A cover
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conducting experiments and performing analytical sample processing (lab work); a theoretical background in marine environmental physiology and biogeochemistry; willingness to experiment with new data
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can expect during the application procedure and how we handle your personal data and internal and external candidates. Apply now Application deadline 21 August 2025 We would like to recruit our new
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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