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based on social context, interaction partners, and ecological settings. The evolutionary roots of such behavioural plasticity remain unexplored in our closest living relatives, the great apes. Bonobos
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and simulation aspects across a wide range of fields - from biomechanics and geophysics to polymer-fluid coupling. Further areas of interest include numerical algorithms for high-dimensional problems
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comparison of models, methods, and simulation approaches. • Rapid prototyping of new ideas in custom code. • Implementation of new models, methods, and algorithms into an existing framework, with a focus on
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near-real-time forecast system for the Baltic Sea Generate high-resolution daily surface salinity maps for the Baltic Sea and validate them with available observational datasets Develop algorithms and
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of the function and protection of the ocean for future generations. The research unit Marine Evolutionary Ecology of the research division Marine Ecology (PI Prof. Thorsten Reusch) is offering a Postdoctoral
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contribute significantly to the preservation of the function and protection of the ocean for future generations. The research unit Marine Evolutionary Ecology of the research division Marine Ecology (PI Prof
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-sampling data. Furthermore, the position holder will play a central role in creating high-quality training datasets (seagrass maps) to support artificial intelligence (AI) algorithms used in related projects
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algorithms to analyze OMICS data (e.g., genome, transcriptome, proteome, microbiome) from patient samples and basic research perform single-cell RNA-Seq and spatial transcriptomics analysis apply artificial
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that algorithmic parameters are tuned so that the over-approximation of the computed reachable set is small enough to verify a given specification. We will demonstrate our approach not only on ARCH benchmarks, but
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is to understand the evolutionary driven force by which plants adapt to varying (extreme) environments on their metabol(om)ic landscape. Studies in this direction will be carried out in model organisms