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is not a standalone concept and has close connections to diversity, transparency and bias. In this position, the PhD candidate will work on algorithmic fairness in job recommender systems
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This is NTNU NTNU is a broad-based university with a technical-scientific profile and a focus in professional education. The university is located in three cities with headquarters in Trondheim. At NTNU, 9,000 employees and 43,000 students work to create knowledge for a better world. You will...
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, cargo, harbors etc. Large and deep AI models can be built using these data sets and machine learning, which can be combined with real-time satellite-based AIS data and sensors such as radar and algorithms
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. Knowledge Graphs based on engine propeller combinator diagrams of the same vessels. Machine learning algorithms for data clustering and regressions of ship performance and navigation data sets as a part of
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Doctoral Network project “SHIELD” (Strategies for Healing Implant-associated Infections and Enhancing Longevity in Devices) led by the University of Gothenburg. http://www.shield-dn.eu The candidate will
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for Healing Implant-associated Infections and Enhancing Longevity in Devices) led by the University of Gothenburg. http://www.shield-dn.eu The candidate will participate in in vivo experiments and clinical
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vessels and ship systems. Knowledge Graphs based on engine propeller combinator diagrams of the same vessels. Machine learning algorithms for data clustering and regressions of ship performance and
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the fundamental limits of quantum error correction (QEC) while concurrently advancing efficient decoding algorithms for quantum error-correcting codes in the near-term, noisy intermediate-scale quantum (NISQ) era
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AI Documented knowledge in maritime situational awareness, target tracking and ship surveillance sensors and systems Good oral and written presentation skills in Norwegian/Scandinavian language
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computer vision models for forest-based 3D point cloud data. In recent years, large advances have been made for deep learning algorithms for high-resolution point clouds from small geographic areas. We seek