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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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has gathered detailed data on the effects of contaminants on marine mammals over the last three decades, combining a variety of methods including PBPK modelling, TWI evaluations, mass balances, risk
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transcriptomics and bioimaging to study human liver biopsies and advanced, preclinical models. A combination of wet-lab and computational biology, close ties to the clinic, and a wonderful team of early career
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physics and condensed matter theories to address the problem of fracture in complex materials. You will be working with experimental model systems and numerical simulations of materials that exhibit
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integrates innovative oceanographic, biogeochemical, ecophysiological, and model-based investigations. The main research objective is the exploration and quantification of non-photosynthetic sources of oxygen
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are for different levels of decision-making. The position is for two years and will commence April 1, 2026, or soon thereafter. The position is within the research section Management and Modelling (MAMO
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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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analytical chemistry and will be undertaking detailed quantification of the resulting products and propose models and mechanisms toward the underlying chemistry. The postdoc is expected to ensure the ongoing
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, religion or ethnic background are encouraged to apply. As DTU works with research in critical technology, which is subject to special rules for security and export control, open-source background checks may
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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