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Observation data including Satellite Remote Sensing together with Soil and geospatial datasets. Salary Post-Doctoral Researcher, Level 1 (2025): €45,847 p.a. (1 point - with increment) Appointments will be made
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and remote sensing. Experience with environmental modeling, downscaling, and data integration techniques. Salary Range $55,000 + depending on qualifications. Working Conditions May work around standard
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/Administrative Internal Number: 37162 Description: This is a full-time Postdoc position to develop the remote sensing data fusion to automatically extracting spatio-temporal features using integrated data-driven
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at very high spatial resolution. The candidate will collaborate closely with the Remote Sensing and Hydrology lab and the Rutgers Infrastructure Resilience Group. Both groups involve a number of research
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modeling, AI-driven simulations, optical remote sensing and biogeochemical modeling to predict seagrass distribution under various climate and nutrient scenarios. SEAGUARD aims to provide science-based
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students and contributing to educational initiatives. Experience with remote sensing, GIS tools, and image analysis techniques is an advantage, as is knowledge of genetic methods (e.g., SNP-based data
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or related fields programming experience in Python or extensive experience in another high-level programming language is a prerequisite experience in geospatial data science, remote sensing, GIS, and open
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proficiency in languages such as R and Python. Experience in GIS, remote sensing, and processing projected climate data. Proven ability to manage multiple tasks effectively, work collaboratively in team
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support PI’s research and education activities to enhance environmental, soil, water quality, microclimate monitoring, Geographic Information System (GIS), and remote sensing research programs as part of
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familiarity with model coupling frameworks (e.g., ESMF). Proficiency in programming and data analysis (e.g., Python, Fortran) and handling large datasets, including GIS or remote sensing integration. Strong