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Candidates should normally have or be about to obtain (usually within three months) a relevant PhD in Geography, Palaeoecology, Ecology, Environmental Sciences, Environmental Engineering, Remote Sensing
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processing of free satellite imagery. You will have a strong quantitative grounding, including a track record of working with remote sensing imagery obtained from aerial and/or satellite platforms. You will be
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comprehensive understanding of aerosol-cloud-interactions. This will be achieved by using a state-of-the-art modelling framework with extensive, systematic, and simultaneous in situ and remote sensing airborne
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statistical analysis of rip current incidents and met-ocean forcing data. You will also develop innovative methods to identify rip hazard hot spots through remote sensing and machine learning, and you will
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well as coordinating and managing field data collection, supervision of laboratory teams, data management and analysis, and publication of scientific articles. The post will involve remote supervision of laboratory
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with a global sediment database and use remotely sensed and other geographical data with machine learning/Bayesian Modelling techniques to establish drivers of global sediment flux. They will use
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applications in autonomous vehicles, remote sensing and intelligent robotics. The successful candidate(s) will manage their own academic research in the outlined area. They will be involved in several projects
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remote sensing and machine learning, and you will gather in-situ field data to verify the forecast. For ARISE and MS4S you will develop hydro- and morpho-dynamic models to predict coastal sediment
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to visit data collection sites in the tea growing regions of Kenya. About You You will be educated to doctoral level (or close to completion of PhD) in some aspect of remote sensing, agricultural engineering
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ideally have knowledge in marine remote sensing, radar operations, an in depth understanding of coastal wave and current physics. Strong programming and data analysis skills are desired along with practical