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in the context of global sustainability standards. Key Responsibilities: Research and Development: Conduct cutting-edge research that utilizes GIS, remote sensing, and other spatial technologies
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staff position within a Research Infrastructure? No Offer Description The project aims to apply artificial intelligence (AI) to map agricultural plastic in remote sensing images. The fellow will work
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Qualifications Knowledge of Remote sensing of surface water quality, numerical modeling, GIS, leadership and advising skills, teaching, & writing experience. Appointment Type Salary Information $50,000-$55,000
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of GIS, remote sensing, and other analytical software tools. Excellent analytical, organizational, and problem-solving skills. Strong publication record in relevant academic journals. Excellent
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•Engagement in high-level research in two or more of the following research areas with emphasis in Archeology and Digital Humanities: -GeoInformatics (Geophysical Prospection, Satellite Remote Sensing
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opportunity to gain teaching experience. The project is well suited to applicants with a strong background in remote sensing, snow science, hydrology, GIS, and/or climate science. Prior remote sensing research
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an all-island Ancient Woodlands Inventory. The multidisciplinary project will draw on expertise in GIS and remote sensing, paleoecology, contemporary ecology, and history to assess temporal changes in
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(essential). Advanced experience in GIS (essential). Appropriate experience (essential) in either (1) machine learning (fully-convolutional neural networks) applied to remotely sensed data, either/or (2
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research in written and oral forms, generating novel ideas for new, interdisciplinary research, working with large, multi-layered spatial data sets (e.g. Remote Sensing and GIS), and contributing
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internationally recognized, with modeling, remote sensing and in situ measurement approaches. By joining this project, you will work closely with the members of this team, and with colleagues from the Côte d'Opale