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collaboration, funded through the Centre for Research-based Innovation, SFI-CELECT (Research Centre for Effective Engineering and Learning in Complex Systems) . The position is 3-year doctoral research
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activities independently Be able to communicate complex information clearly, both orally and in writing, to different audiences Desired qualifications In this role, it is an advantage if you have: Experience
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, the Fen Complex stands as a vital area for both scientific research and economic exploration. The general evolution of the complex is known to a certain extent with a general evolution from calcite
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complex physical phenomena than those represented in simulations, such as heating system dynamics or occupant behavior. Finally, existing legacy building automation systems may not be well-suited to support
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knowledge for a better world. You will find more information about working at NTNU and the application process here. About the position The Department of Marine Technology at NTNU is looking for a PhD
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for complex marine systems. You will be part of a world leading, vibrant research community in marine technology, together with more than 60 PhD students from all over the world. You will explore how emerging
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result, the process of implementing and developing AI-based systems is high-risk, and can result in large losses or manual time required to rework products. Here therefore, a framework and approach to
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application process here. About the project The rapid integration of renewable energy sources (RES), distributed devices, and digital technologies is transforming traditional power systems into highly
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modelling and monitoring such complex systems. However, the ongoing energy transition also introduces significant uncertainty due to fluctuating renewable generation, dynamic demand, and increasingly complex
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complex biological systems. Research Environment & Collaboration The successful candidate will work at the interface of machine learning and biostatistics, developing new theory, algorithms, and scalable