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involving Fluid Dynamics. Demonstrable affinity with studying the physics of the ocean and preferably with polar oceanography. Experience with numerical modelling. Excellent ability to communicate in both
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substantial intensification of the ocean heat transport, highlighting their climatic influence. However, the dynamics of submesoscale flows, and hence their representation in climate models, have not been
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: PhD in Climate Impact Modeling, Epidemiology, Eco-epidemiology, Climatology, Geomatics, or a relevant interdisciplinary field. • Experience in mechanistic and/or statistical modeling of complex systems
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. This project includes collaborations with Sofar Ocean https://www.sofarocean.com/ (link is external) . Additional details on the research team can be found at: https://simpsoba.su.domains/ (link is external
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collaboration with modelling partners. PhD 2 | Formation and properties of icy grains in plume and spill-out processes You will investigate how oceanic water freezes to become icy grains as it escapes through
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integrating advanced sediment transport and groundwater flow models, leveraging insights from fluvial hydraulics and new field experiments.The PhD candidate will work on: Collecting and analyzing data from
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the land-ocean interface: the role of Submarine Groundwater Discharge A PhD position is available in the Physics Department and the Institute of Environmental Science and Technology (ICTA
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studies, and modeling work to conduct curiosity- and application-driven research on marine biogeochemistry and ecosystems in a changing environment. YOUR TASKS Conduct research on the ocean carbon cycle
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or on 1 March 2026. Where to apply Website https://www.academictransfer.com/en/jobs/356609/phd-position-on-arctic-sea-ice-… Requirements Specific Requirements You are enthusiastic and collaborative and meet
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of Ocean and Earth Science at the University of Southampton. The successful candidate will be part of the ‘Accurate projections of climate recovery from a combination of historical data, simple models and AI