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to oncogenic enhancers. You will integrate loss- and gain-of-function tools (e.g., CRISPR/Cas and degron systems) with a range of advanced omics approaches in pre-clinical model systems such as cell lines and
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experience in scientific writing and publication in peer-reviewed scientific journals Research experience in some of the areas of process-based crop modeling, uncertainty characterization, digital agronomy
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2026 or as soon possible. Job description This position will involve designing, conducting, and analysing experiments to understand the impact of inflammation on the gut-brain axis in the zebrafish model
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experimental systems, ranging from molecular screening tools, state-of-the-art methods for molecular/cellular characterization, animal models, and primary human cell/organoid models. We offer a unique
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chemical–biological pathway. The advertised positions will support these efforts through research on advanced carbon capture methods, process modelling and optimization, and biological CO2 valorization in
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-based genome editing, and bioinformatics. The lab uses diverse cell models, including embryonic stem cells and their differentiated derivatives. The research in the Choudhary group is mainly funded by
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modelling of diffuse scattering using X-rays, electrons and neutrons to establish local structure and correlated disorder in advanced materials and including ultrafast femtosecond science. The project
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the biogeochemical mechanisms that underpin the resilience of restored wetlands, integrating field observations, laboratory experiments, and modelling approaches. You will explore how nutrient dynamics, hydrological
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injection, ion transfer, and structural dynamics in realistic and model systems for battery materials. The position will span experimental efforts at large scale X-ray facilities, handling and reduction
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domains. The scientific outcomes are expected to be significant in: Earth system science – by improving models of Earth surface evolution and enabling better predictions of landscape response to climate