275 postdoc-computational-fluid-dynamics-2017 Postdoctoral research jobs at Nature Careers
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a Postdoctoral Researcher for experiments in swarming dynamics of living swimmers A Postdoctoral Researcher position is available in the Living, Fluid, & Soft Matter group of Prof. Matilda Backholm
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(FSTM) at the University of Luxembourg contributes multidisciplinary expertise in the fields of Mathematics, Physics, Engineering, Computer Science, Life Sciences and Medicine. Through its dual mission
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innovative strategies to improve human health. HT is composed of five Centers: Health Data Science, Genomics, Computational Biology, Neurogenomics and Structural Biology. The Centers work together to enable
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Clinical Pharmacology, Pharmacy, and Environmental Medicine at the Department of Public Health, Faculty of Health, University of Southern Denmark, is offering a 2-year postdoc position within
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We are recruiting a group of postdocs who are eager to pursue ground-breaking biomedical research, and we will help them to establish themselves as future scientific leaders. This postdoc program is
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assistance, reflecting our commitment to recognize and invest in talent. A Sense of Community: St. Jude fosters a vibrant postdoc community that supports a well-balanced life. A dynamic environment promotes
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, work together and exchange knowledge, which promotes a dynamic and open culture. Qualifications - This is how the position is assessed: You need to have met the following two formal requirements by
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published by our group (Nasri M, Ritter M et al., Mol Therapy 2024; Skokowa et al., NEJM 2021) and is currently funded by the BMBF/SPARK-BIH program. The postdoc will also participate in the development
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at CSIC and UCM in Madrid, as well as Aarhus University, in a joint effort between the ERC Synergy project METRIQS and the Villum Young Investigator programme DynamiQ. Responsibilities and qualifications In
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currently exploring a range of exciting topics at the intersection between computational neuroscience and probabilistic machine learning, in particular, to derive mechanistic insights from neural data. We