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options include Climate Change, Mapping Environmental Issues, Environmental Spatial Analysis, Environmental Geographic Systems, Natural Science and Environmental Problems, Environmental Policy, Green Energy
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-term in situ and remote sensing data analysis coupled with ecosystem modelling approaches (for instance, greenhouse gas fluxes and energy, water, and nutrient exchange data). Key focus will be
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, vegetation mapping, and LiDAR-based ecology. We're looking for candidates with strong technical skills and ecological interest—people who want to use LiDAR, AI, and spatial modeling to advance our
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, vegetation mapping, and LiDAR-based ecology. We're looking for candidates with strong technical skills and ecological interest—people who want to use LiDAR, AI, and spatial modeling to advance our
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Assoc. Prof. Francesco Da Ros, DTU Electro. Where to apply Website https://efzu.fa.em2.oraclecloud.com/hcmUI/CandidateExperience/en/sites/CX_2001/… Requirements Research FieldEngineering » OtherEducation
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the development of novel genomic assays involving single cell and spatial genomic experiments and state-of-the-art imaging analysis. You will also utilize your project management skills to prioritize and manage
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-destructive, rapid evaluation methods that are transforming the agrifood sector. At VUB B-PHOT, we are developing the next generation of spectroscopic sensors, integrating spectroscopic analysis, machine
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, ecology, and conservation and spans a range of activities from exploratory analysis, visualization, and discovery to prediction, validation, quantification of uncertainty, and inference. To thrive in
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learning and deep learning methods to analyze multi-omics data (genetic, epigenetic, transcriptomic, imaging, single-cell genomics and spatial omics data) with the goal of understanding the underlying
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mechanistic studies in nutrition health associations. https://www.ars.usda.gov/plains-area/college-station-texas-rafsru/responsive-agriculturalfood-systems-research-unit/ The research of the Responsive