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"Crop Growth Monitoring and Yield Forecasting". This project aims to revolutionize agriculture in Morocco by combining cutting-edge technologies, including crop growth models, remote sensing data, data
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of Stavanger (UoS). The position is funded within the project “SURF: “Subsurface Understanding for Robust emissions Forecasting”. SURF is funded by the Research Council of Norway and industry partners. We
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includes geologists, atmospheric scientists, paleontologists, and oceanographers. Additional information about the department may be found at: https://science.gmu.edu/academics/departments-units/atmospheric
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forecasting. Build data fusion pipelines (e.g., combining model outputs with imagery, weather, soil, and management data) to deliver prescriptive BMPs for nutrient and water management, planting decisions, and
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landslide and rockfall forecasting: the lack of physically grounded, early precursors of failure. The core hypothesis is that macroscopic slope collapse is preceded by changes in local deformation, expressed
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interactions. This involves (i) developing predictive machine learning models that forecast user actions and remote system responses across audio, video and haptic modalities, and (ii) jointly orchestrating
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Designing and evaluating AI-informed methods for long sequence modeling and forecasting of physiological signals (e.g., continuous glucose), integrating these data with electronic health records and other
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. The core research objective of this PhD is to design and evaluate “latency hiding” methods for immersive networked interactions. This involves (i) developing predictive machine learning models that forecast
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computational methods for understanding complex economic and financial systems. Research Areas: Applied statistics and econometrics with emphasis on high-dimensional data analysis, forecasting and predictive
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advanced optimization models to support microgrid management, including forecasting, load scheduling, and demand response strategies; and (iii) designing and implementing a digital platform that enables