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to the area of biological nitrification inhibition (BNI), and the focus of your position will be to integrate metabolomics, microbiome characterization, and field experiments to identify and validate BNI traits
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protein engineering, characterization of protein interactions by various methods, de novo design of protein binders, integrative structural biology using NMR, SAXS and/or single molecule FRET. Your profile
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Applications are invited for three 2-years Post Doc fellowships within the Center for Ice-Free Arctic Research, at the Department of Biology, Aarhus University, Denmark. Expected start date and
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researchers. The selected candidates for these positions will join our team for further advances in this area. This includes phenotype definition, integrating novel genetically related traits using digital
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complement the Department’s ongoing activities in landscape-scale modelling, with a specific focus on nature-based solutions in agricultural landscapes. The successful candidate will be integrated
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quality modelling, with focus on Knowledge-Guided Machine Learning. The position is a rewarding opportunity to be integrated in an excellent freshwater group. The department’s research and advisory
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main tasks will consist of: Independent research of high international quality, including publication. Establishing and refining multi-modal workflows for integrating and analyzing spatial datasets with
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Designing and evaluating segmentation algorithms for multi-energy spectral CT data Contributing to or leading work on advanced reconstruction, spectral decomposition, or signal processing methods Integrating
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Electrophysiological characterization of muscle fiber excitability (in collaboration with the research group) In vivo studies using animal models of neuromuscular disease Integration of molecular and transcriptomic data
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will be part of a research environment focusing on integrating multi-source satellite remote sensing data and developing novel algorithms to quantify agroecosystem variables for environmental