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that are relevant to industry demands while working on research projects in SIT. The research staff conducts research in the areas of video analytics for remote pilotage, video compression, advanced sensing
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the areas of video analytics for remote pilotage, video compression, advanced sensing techniques, sensor and operation data fusion, data analytics and machine learning algorithms. The primary responsibility
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knowledge of these areas of research is essential, and a strong background in remote monitoring in epilepsy is expected. It is essential the role holder has completed training in neurology and is working
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comprehensive understanding of aerosol-cloud-interactions. This will be achieved by using a state-of-the-art modelling framework with extensive, systematic, and simultaneous in situ and remote sensing airborne
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well as coordinating and managing field data collection, supervision of laboratory teams, data management and analysis, and publication of scientific articles. The post will involve remote supervision of laboratory
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, Assoc. Prof. Sonny Rosenthal, Asst. Prof. Yong Ming Lee, Prof. Ute Meta Bauer, and Assoc. Prof. Laura Miotto Cross Cutting Theme 2: Satellite remote sensing This theme will map and monitor the impact and
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statistical analysis of rip current incidents and met-ocean forcing data. You will also develop innovative methods to identify rip hazard hot spots through remote sensing and machine learning, and you will
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applications from engineers - scientists with expertise in computer engineering and/or programming and/or algorithm deployment within the aviation sector covering intelligent sensing and acquisition and
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hydrologic-hydrodynamic models and probabilistic methods. Uses computational modeling, operations research, and a wide range of in-situ and remotely-sensed data, analytical and statistical tools/methods
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with a global sediment database and use remotely sensed and other geographical data with machine learning/Bayesian Modelling techniques to establish drivers of global sediment flux. They will use