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. Collaborating closely with SINTEF and industrial partners (Hydro and Benteler) to provide input for alloy design and processing strategies. The work will be done at the Trondheim node of NORTEM/TEM Gemini Center
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. Collaborating closely with SINTEF and industrial partners (Hydro and Benteler) to provide input for alloy design and processing strategies. The work will be done at the Trondheim node of NORTEM/TEM Gemini Center
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scientists and industry representatives connected to the centre Closely collaborate with SINTEF, which is the project owner and main research partner in the project Participate in international activities
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scientists and industry representatives connected to the centre Closely collaborate with SINTEF, which is the project owner and main research partner in the project Participate in international activities
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Division of NORCE Norwegian Research Centre there is a 3-year full time PhD research fellow position available within the field of modeling and simulation of CO2 storage. The position is for a fixed-term
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, and is a collaboration between NTNU and SINTEF. The aim is to better understand the properties of magnetic skyrmions and how they behave at the nanoscale when subject to an electric current. Duties
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Department of Physics. About the project NIMSKY is a project funded by the The Research Council of Norway, and is a collaboration between NTNU and SINTEF. The aim is to better understand the properties
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mechanisms for substation protection using digital technologies both in simulations and in a laboratory environment. How to facilitate the use of protection and control systems in the substation? How
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mechanisms for substation protection using digital technologies both in simulations and in a laboratory environment. How to facilitate the use of protection and control systems in the substation? How
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, materials and their condition. Second, simulation of pulse propagation in cables with variable parameters quantified in experimental studies. Third, utilizing signal processing and machine learning to develop