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Job posting (Geo 01/2025) The Department of Marine Geosciences at the Leibniz Institute for Baltic Sea Research Warnemünde (IOW) is offering a full-time tenure track position at the earliest
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social skills and a strong work ethic. Place of employment: Karlskrona. Employment level: 100%. Commencement: To be agreed. Duration: Tenure track; initially 4 years with the right to be promoted to a
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at Stockholm University. We have a strong tradition in sampling but areas that we are growing in include, but are not limited to, Bayesian inference, the intersection of statistics and machine learning
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Department of Ecology We are looking for a postdoc/researcher to develop and implement tools for analysis of output from Bayesian inference under phylogenetic models About the position A postdoc
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We are looking for a postdoctoral researcher to develop and implement tools for analysis of output from Bayesian inference under phylogenetic models About the position A postdoctoral researcher
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We are looking for a researcher to develop and implement tools for analysis of output from Bayesian inference under phylogenetic models. About the position A researcher position is available in
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propagation problems, stochastic partial differential equations, geometric numerical integration, optimization, biomathematics, biostatistics, spatial modeling, Bayesian inference, high-dimensional data, large
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environments, safety monitoring for autonomous systems, and code review analysis driven by eye tracking. The division has strong collaborations both locally within Lund University, internationally with other
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genealogical relationships and genetic divergence across species, but its complexity requires new methodologies for efficient analysis. This project aims to use Variational Inference (VI) methods, enhanced by AI
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analysis, work with large language models, network analysis, causal inference in machine learning and agent-based modelling. Experience in collecting, curating and analyzing large digital datasets with