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The PhD programme in Innovation for Sustainability is interdisciplinary, applied and project oriented. It is suited for research and development work within private and public sectors as
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offer study programmes at bachelor's and master's level in design, arts and crafts, drama and theatre communication, art dissemination, and fashion and production. In addition, we have a new PhD program
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Campus in Viken. The Department of Computer Science offers three bachelor’s degree programmes, a master’s degree programme, and is part of a cross-departmental PhD program. Academic staff at the department
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and accelerate the development of more high-performing PNSEs. The ultimate goal of the project is to develop, implement, and validate novel deep-learning models for molecular dynamics and coarse-grained
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and other activities where there is requirement for a high level of scientific knowledge of teacher education, school and early childhood education and care, and socialisation. The programme develops
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predictive control, optimization-based decision frameworks, and data-driven performance modelling. The overall goal is to develop computational methods that enable efficient and intelligent operation of wind
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seeking theoretical challenges and qualifications as researchers in the field of educational sciences for teacher education. The programme aims at offering high quality post graduate studies a stimulating
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Campus in Viken. The Department of Computer Science offers three bachelor’s degree programmes, a master’s degree programme, and is part of a cross-departmental PhD program. Academic staff at the department
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. The programme is characterized by methodological and theoretical diversity. The training component consists of 30 ECTS credits and will support the work you do in the research component (the thesis
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, wearable physiological sensing, and machine learning to uncover how factors like fatigue and cognitive workload impact technician performance. Join us to develop predictive models that predict human error