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the NordForsk project ‘RISK-AI’ 230778. https://www.nordforsk.org/projects/responsible-innovation-and-social-knowledge-artificial-intelligence-risk-ai and is based at the Department of Computer Science in
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, with ability to work effectively independently and as part of a team by keeping an open, honest and professional interaction with the colleagues at NTNU Work in a structured way, set goals and make plans
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Technology . The position is for a period of 3 years. Desired start date: 1 May 2026 or earlier. The fellowship is part of TIES project “Tunable ion separations with micro-structured composite membranes
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characteristics To complete a doctoral degree (PhD), it is important that you are able to: Work independently, but seeking feedback and reporting regularly Work in a structured way, set goals and make plans
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Personal characteristics To complete a doctoral degree (PhD), it is important that you are able to: Work independently, but seeking feedback and reporting regularly Work in a structured way, set goals and
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the integration of AI-based digital systems in new product development (NPD) processes influences organizational dialogue, participation and authority structures in complex innovation systems. The possibilities
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creation of tender documents, specifications, and requirement structures. 2D and 3D spatial reasoning, including general arrangement exploration, layout optimization, and constraint-aware geometry generation
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of the PhD project is to develop an effective control structure and real-time optimization scheme for a novel continuous bioprocess. The control and real-time optimization will then be validated in experiments
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/ML methods to improve drillability, increase rate of penetration (ROP), reduce non‑productive time, and enable cost‑effective geothermal well construction. The work includes evaluating geothermal
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Factorization Embedding Structure (BETTER)”, and this PhD project specifically aims at developing a unified, scalable, and interpretable framework for tensor analysis. Specifically, the project will: Develop