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interested in how floods are generated and which processes can lead to floods? Do you want to understand how extreme events manifest and how they differ in space and time? Do you want combine statistical and
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developed models will be applied to estimate design flood events for different return periods and flood types. With metrics based on flood statistical aspects, the type-specific models will be compared
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Environmental Biology (CML-EB). Presently, about 150 fte (including postdocs and PhDs) are employed at CML. CML further collaborates with TU Delft and Erasmus University in the Leiden-Delft-Erasmus Centre
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developing state-of-the-art methods in network analysis, connectomics, and computational neuroscience. You will collaborate within a motivated, multidisciplinary team of PhD students and postdocs with
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publications, and in an academic thesis resulting in a PhD degree. Where to apply Website https://www.academictransfer.com/en/jobs/355765/phd-seasonal-timing-of-egg-over… Requirements Specific Requirements What
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combines 8 Dutch and 1 Ukrainian university as well as Statistics Netherlands (CBS) in an interdisciplinary and collaborative endeavour aimed at understanding emergent phenomena across scales, combining
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recommendations prior to commencement. The position is part of the NWO-funded project “VR4eVR – Virtual Reality for Enriched Visual Rehabilitation” (https://vr4evr.nl ), a collaboration of four universities and a
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. There are ample opportunities for collaborations within the project. The trait data collected in the PhD projects will also be used by a postdoc to assess how the impact of fire on tree populations is
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supervision of Prof. Martin van Hecke and Prof. Daniela Kraft, whose groups are embedded in the Smart Living Active Matter Center at the physics department of Leiden University (link: https://slam-leiden.nl
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Conference on Artificial Intelligence and Statistics (AISTATS), vol. 238, pp. 550-558, 2024. H. Fokkema, T. van Erven and S. Magliacane. Sample-efficient Learning of Concepts with Theoretical Guarantees: from