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projects Teaching and supervision experience from different degree levels Quantitative skills, related to empirical research or teaching Proficiency in Norwegian or another Scandinavian language Capability
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extension to 4 years. The PhD research fellows will be part of the PhD programme in Computer Science: Software Engineering, Sensor Networks and Engineering Computing (https://www.hvl.no/en/research/phd
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an inclusive and safe working environment. We believe that inclusion and diversity are a strength, and we want employees with different competencies, professional experience, life experience and perspectives
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making, analyzing patterns across different livelihood systems, such as hunter-gatherers, animal herders and subsistence farmers in different parts of the world. This research addresses a critical gap in
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/Machine Learning (AI-ML) approaches to meeting this challenge. Possible topics include, but are not limited to: storylines for plausible narratives of regional climate change, novel algorithms for rare
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on rural communities, will then be investigated in simulations. The end-product will be detailed knowledge on how different ecological practices affect farmers and rural communities and the identification
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potential of these measurements, there is a strong need of developing AI algorithms able to do real-time analyses of such data. Your immediate leader will be the Group leader of Manufacturing Engineering at
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integration of signal processing and machine learning methodologies aiming to interpret distributed acoustic sensing (DAS) data from production wells (both new and previously acquired sensor data). The main use
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communities, will then be investigated in simulations. The end-product will be detailed knowledge on how different ecological practices affect farmers and rural communities and the identification of strategies
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for plausible narratives of regional climate change, novel algorithms for rare event sampling or ensemble boosting, and the development and use of hybrid climate models combining physics-based and ML components