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Department of Chemistry – BMC Postdoctoral position in Biochemistry The Department of Chemistry for Life Sciences is located at the Uppsala Biomedical Centre campus. It belongs to the Faculty
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The SciLifeLab and Wallenberg National Program for Data-Driven Life Science (DDLS) invites applications for 22 postdoctoral fellowships starting in autumn 2026. This call marks the launch of a new
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Postdoctoral Fellow in Evolutionary Systems Biology The Department of Zoology is one of the departments within the Faculty of Science and has approximately 80 employees including researchers, PhD
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The Department of Medical Biosciences is offering a postdoctoral scholarship within the project “Developing computational tools for large-scale human intracellular signaling models”. The scholarship
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scientific direction within it. A postdoctoral position is a career-building opportunity for early-career researchers, so we are primarily looking for a candidate who earned their Ph.D. no more than three
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, providing a platform to identify and optimize therapeutic candidates. Our group specializes in developing technologies to assess the multicellular environment within three-dimensional microtumor models
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biomarkers with capacity to predict treatment outcomes. We are now seeking a highly motivated postdoctoral researcher with expertise in studies of antibody responses using related technologies. Work duties The
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science/physics/mathematics. Experience with ML implementation (ideally interpretable ML and/or generative AI) is required. The Selected postdoctor will be joining the Computational Microscopy for Cell Biology
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an outstanding and ambitious postdoctoral researcher in computational biology to pioneer understanding and modeling of tissue architecture using single-cell and spatial transcriptomics data. The focus will be
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. You would be welcomed in the the Yant Lab (https://www.yantlab.net/ ) Using large-scale graph-based pangenomics and forward evolutionary simulations, the student will develop predictive models