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not need to fill in any other sections in the JobbNorge form, as all the information we need will be provided by you when attaching the mandatory elements listed in the next section. Your application
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CT core scanning, as well as grain size analysis) is a requirement. Experience with (geostatistical) data analysis approaches (at least Excel and ArcGIS, but preferably also R and Grapher or similar
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. Demonstrated experience generating paleoenvironmental data, notably using lake sediment proxy approaches (for example, XRF and CT core scanning, as well as grain size analysis) is a requirement. Experience with
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in Western Norway. A key component of the research will be the integration of remote sensing outputs to assess and classify the activity levels of various catchments. This work will support and refine
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of geomorphological and ecological dynamics. There will be opportunities for cross-disciplinary collaborations with other PhDs within CMT along a regional-scale gradient in Western Norway. A key component of the
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cryospheric modelling, preferably at catchment or regional scales, is a requirement Strong skills in statistical analysis and the handling of large spatiotemporal datasets is a requirement. Proficiency in
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science, is a requirement Applicants must possess strong skills in the management and analysis of ecological or biodiversity data using R. Experience (for example, a master’s project or internship) working
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://www.uib.no/en/sefas About the project/work tasks: The postdoctoral research fellow will perform quantitative data analysis using advanced techniques such as signal processing and dynamic systems modeling, and
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in scientific coding and data analysis programming languages, such as Python or MATLAB, is a requirement. Experience with running snowpack and/or Earth System Models is a requirement. Experience in
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Conditions and Ageing (CC.AGE). Read more about the project: https://www.uib.no/en/sefas About the project/work tasks: The postdoctoral research fellow will perform quantitative data analysis using advanced