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Field
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Civil and Environmental Engineering, hydrogeology, hydrology, or a related field. Strong background in numerical groundwater modeling particularly MODFLOW family. Experience in land-use and land-cover
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, climate resilience, and ecosystem services provided by different agroforestry systems in New England. Ecosystem services of particular interest include carbon sequestration and storage, hydrologic
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exist to collaborate with skilled researchers in hydrology, geochemistry, environmental microbiology, and ecology within ORNL, at collaborating Universities and other National Laboratories. This position
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Investigator (PI), this individual will conduct research on the Cooperative Institute for Research to Operations in Hydrology (CIROH): ML-based Flexible Flood Inundation Mapping and Intercomparison Framework
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National Laboratory (ORNL) seeks a postdoctoral researcher with expertise in environmental (bio)geochemistry and hydrology. This researcher will use a suite of analytical tools to understand biogeochemical
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modeling capabilities for assessing how post-wildfire runoff, smoke deposition, altered vegetation and hydrology, and targeted restoration activity affect functioning and shape recovery. The position
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Foundation funded project focuses on understanding the role that hydrology plays in structuring microbial communities and their associated ecosystem function with an emphasis on the role that microbes play in
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interactions with hydrologic variation. Work directly with experimentalists and observationalists to test hypotheses regarding variability in biogeochemical processes across coastal land-water interface
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physics-based machine learning for land cover forecasting. Intended use of these capabilities include urban planning, hydrological modeling, and wildfire risk mitigation strategies. In addition to model
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hydrologic regimes and vary within and across stream networks that drain heterogeneous land covers. The candidates will work with world-leading biogeochemical experimental and field researchers and modelers