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Schildt/NHM 8th April 2026 Languages English English English Natural History Museum Postdoctoral Researcher in Spatial Ecological Modeling and Interdisciplinary Biodiversity Science Apply for this job See
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Ulla Schildt/NHM 8th April 2026 Languages English English English Natural History Museum Postdoctoral Researcher in Spatial Ecological Modeling and Interdisciplinary Biodiversity Science Apply
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(MSCA-PF) to pursue a career in research. We invite applications from promising young researchers within the field of Computational Biology & Ecological Modeling. The selected candidate will write a
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user and stakeholder engagement. The candidate will be embedded in a multidisciplinary research environment combining expertise in machine learning (ML), numerical modelling, satellite remote sensing
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models for high-dimensional and functional data ”, led by Professor Valeria Vitelli. Successful candidates will work on Bayesian models for unsupervised learning when multiple data sources are available
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researcher in applied philosophy on the topic of biodiversity modeling and governance, under the interdisciplinary Convergence Environment BioM at the University of Oslo (UiO). Employment is scheduled
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computational modeling. The postdoctoral candidate will: Analyze quantitative molecular and imaging data produced by other members of GENESIS. Develop new machine learning models to identify gene regulatory
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computational modeling. The postdoctoral candidate will: Analyze quantitative molecular and imaging data produced by other members of GENESIS. Develop new machine learning models to identify gene regulatory
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, Modeling, and Perceiving the Combinatorics of Groove-based Rhythms, funded by the Research Council of Norway. The project is affiliated with RITMO Centre for Interdisciplinary Studies in Rhythm, Time and
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. The candidate shall take part in the research group on “Statistical models for high-dimensional and functional data ”, led by Professor Valeria Vitelli. Successful candidates will work on Bayesian models