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education and research in the areas of forest planning, forest remote sensing, forest inventory and sampling, forest mathematical statistics and landscape studies. The department is also responsible
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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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awarded 1 Eligible courses Any applicable Curtin HDR courses. Eligibility criteria Honours / Master’s degree or equivalent qualification in a relevant area (e.g., satellite ocean colour remote sensing
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. Preferred requirements: Preference will be given to candidates with experience in spatial ecology, biogeography, geographical information systems, remote sensing, ecological niche modelling, R, and Google
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with systems for remote monitoring of people with epilepsy at home, evidenced by extensive publications 7. PhD in related area of research 8. Strong communication and teamwork skills We pride
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therefore necessary. Teaching of MSc students and PhD candidates will form part of your duties. Industrial experience may be an advantage but is not required, and you should feel comfortable in contacts with
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on-site at the Lawrence, KS campus with the possibility of a hybrid (remote and on-site work) schedule as deemed by the supervisor. The position will require occasional overnight travel to field sites
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for research or innovation projects; You have experience with satellite remote sensing, space borne optical instruments and/or geophysical data processing; You have experience with space projects; You have
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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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. Apply tools developed in remote sensing to answer some of the key research questions of this project, such as inferring sediment yield potential of exposed rocks. Having affinities with activities