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journey with the Deep-C project, funded by the European Union's prestigious ERC Starting Grant. Tackle climate change head-on by decoding the mysteries of calcium carbonate (CaCO3) dissolution in deep-sea
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Description The researcher will use modeled surface ocean microplastic abundances and improved sea-spray-based emission functions to represent ocean–atmosphere transfer processes. Using the GEOS-Chem global
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to monitor the evolution of the planet at various scales and develop models to tackle societal challenges on biodiversity, climate change, food security, water resources, etc. The laboratory also contributes
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18 Sep 2025 Job Information Organisation/Company CNRS Department Institut Franco-Argentin d'études sur le climat et ses impacts Research Field Environmental science Environmental science » Earth
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cycle in regional and global chemistry-transport and climate models, and for improving the ability of remote sensing to detect and characterize source areas and atmospheric particles. The OPENDUST project
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) Biogeochemical Cycles and Transfers in the Environment iii) Climate and Cycles - Modeling their variabilities and interactions. Each of these themes brings together between 4 and 7 research teams formed around
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using advanced statistical methods. The goal is to improve our understanding of wave-driven turbulence processes, which are crucial for accurate climate modeling The Institute of Environmental Geosciences
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water management. Task Description: Development and calibration of SWAT and MODFLOW models for surface and groundwater systems. Analysis of hydrological and climatic data. Application of the WA+ water
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approaches to predict phenotypic variations from multi-source data. Develop predictive models to forecast changes in the genetic diversity of palm populations under climate change and anthropogenic pressures
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the territory and are essential for 80% of the farms. However, these areas—especially those in retro-coastal zones and floodplains—are increasingly impacted by climate extremes, such as summer droughts and spring