84 data-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"FCiências" positions at Leibniz
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provide corresponding debugging and/or performance analysis, document ICON model usage and workflows within MOD, as well as develop and extend in-house climate data processing and visualization software
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metabolic research is desirable, Experience using flow cytometric approaches (FACS) and/or animal experiments would be beneficial but is not required, Experience in evaluating ‘Omics’ data sets, especially
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biological and fisheries data – including satellite observations, field surveys, stock assessments, catch and effort records – as well as outputs from climate and Earth system models. Work with size-spectrum
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DIPF | Leibniz Institute for Research and Information in Education contributes to addressing challenges in education through empirical research, digital infrastructure and knowledge transfer. At its
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analysis of existing long-term biological, chemical and physical monitoring data of German Baltic Sea coastal waters. Compilation and analysis of existing phytoplankton monitoring data with a focus on
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Research Data Center , the IWH hosts a wealth of commercial databases via WRDS and other platforms, provides access to proprietary microdata on banks and firms via research collaborations, and pursues
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monitoring scientific and qualitative standards for aerosol characterization Advancing technical innovations in the field of aerosol measurement technology and data processing Public representation of CAIS
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to work independently, establish new techniques and present data (scientific writing and oral communication) Fluency in both oral and written English At least basic German language knowledge Experience with
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improvement. The research will analyse results from a coupled hydrodynamic-biogeochemical model, adapted to the eastern German Baltic Sea, and compare it to existing monitoring data on seagrass distribution and
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), biostatistics, machine learning, data science and research data management, and causal inference methods (Iris Pigeot, Marvin Wright, Vanessa Didelez), and etiologic and molecular epidemiology (Konrad Stopsack