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7 Mar 2024 Job Information Organisation/Company DURHAM UNIVERSITY Research Field Environmental science Geosciences Geography Researcher Profile Recognised Researcher (R2) Established Researcher (R3) Country United Kingdom Application Deadline 3 Apr 2024 - 00:00 (UTC) Type of Contract Other Job...
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Postdoctoral Research Associate in Geomorphology, Remote Sensing and Geomatics ( Job Number: 24000314) Department of Geography Grade 7: - £37,099 - 39,347 per annum Fixed Term - Full Time Contract
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study the climate resilience and threshold of trees in Singapore, using a wide array of ground observations (i.e., phenocam, Lidar, sap flow) and satellite remote sensing. The Postdoc is expected
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Infrastructure? No Offer Description Are you a skilled modeller, statistician or remote sensing expert with an interest in crop-climate modelling and analysis for the global south? Can you work in a multi
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View All Vacancies Are you a skilled modeller, statistician or remote sensing expert with an interest in crop-climate modelling and analysis for the global south? Can you work in a multi
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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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knowledge of these areas of research is essential, and a strong background in remote monitoring in epilepsy is expected. It is essential the role holder has completed training in neurology and is working
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available from 01/04/2024 to 31/03/2025. The successful applicant will combine remotely sensed datasets with machine learning to map peat extents, habitats, habitat condition and change. The post will include
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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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will include key methodological skills. Person Specification We are looking for a candidate with a minimum 2:1 (and minimum 60% project mark) in Geography/GIS/Remote Sensing or a related discipline