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Department of Forest Resource Management The Department of Forest Resource Management conducts education and research in the areas of forest planning, forest remote sensing, forest inventory and
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present results at conferences and workshops. Mentor master students and PhDs Qualifications: Ph.D. in Remote Sensing, Geospatial Science, Environmental Science, Data Science, or related field. Strong
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of remote sensing imagery. Proficiency with GIS methods, applications, and visualization. Prior experience engaging with stakeholders and application of participatory methodologies. Background Investigation
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. Approval of remote and hybrid work is not guaranteed regardless of work location. For additional information on remote work at Penn State, see Notice to Out of State Applicants . POSITION SPECIFICS
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: 19.12.2025 EXPIRES: 28.01.2026 WEBSITE www.igf.edu.pl KEYWORDS: Geophysics, physics, Earth and Environmental Sciences, environmental hydraulics; field research; riverine vegetation; remote sensing; UAV/drones
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of Engineering and Applied Sciences Environmental Sustainability Research Fellow in Environmental Sensors Fixed Term Contract until 31 October 2027 Full time starting salary (if PhD close to completion) is
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, integration, and validation for environmental and forest monitoring. Familiarity with remote sensing, cartography, and spatial data analysis using specialized software and tools will be considered a significant
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seismological data using Music information retrieval separation Locate seismic sources Publish and maintain code Interpret seismological data jointly with volcanological, remote sensing, and modelling data
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7 Dec 2025 Job Information Organisation/Company Faculty of Science, Charles University Research Field Computer science » Other Geography » Cartography Technology » Remote sensing Researcher Profile
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its maintenance and safety increasingly depend on data. This PhD project will develop new methods that combine remote sensing, physics-based modelling, and Bayesian machine learning to support risk