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flood risk. Delimitation of flood-risk areas and exposed assets at designated sites. Where to apply Website http://www.unikore.it Requirements Additional Information Eligibility criteria Eligible
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programme Is the Job related to staff position within a Research Infrastructure? No Offer Description PhD candidate: ML-based prediction of flood types based on atmospheric and catchment attributes Are you
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implementation of nature-based solutions for flood-risk reduction. This research helps overcome common implementation barriers to nature-based solutions projects by identifying economic, environmental, and
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documents . This PhD is being advertised as part of the Centre for Doctoral Training for Resilient Flood Futures (FLOOD-CDT). Further details about FLOOD-CDT can be seen at https://flood-cdt.ac.uk . Please
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programme Is the Job related to staff position within a Research Infrastructure? No Offer Description Are you interested in the prediction and modelling of extreme flood events? Do you want to understand how
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as part of the Centre for Doctoral Training for Resilient Flood Futures (FLOOD-CDT). Further details about FLOOD-CDT can be seen at https://flood-cdt.ac.uk . Please note that your application will be
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and on the handling of natural hazards. The Research Unit Mountain Hydrology and Mass Movements investigates water resources and natural hazard processes such as floods, droughts, and mass movements in
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on the International website (http://www.lboro.ac.uk/international/applicants/english/ ). Funding information: Studentship type – UKRI through Flood-CDT (https://flood-cdt.ac.uk/ ). The studentship is for 3.5 years and
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-26-LU4 in your application. This PhD is being advertised as part of the Centre for Doctoral Training for Resilient Flood Futures (FLOOD-CDT). Further details about FLOOD-CDT can be seen at https
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/Responsibilities: Develop and apply AI foundation models for hydrological and Earth system modeling, with emphasis on improving predictive capabilities for compound flooding in coastal regions. Design and implement