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- NTNU Norwegian University of Science and Technology
- NORWEGIAN UNIVERSITY OF SCIENCE & TECHNOLOGY - NTNU
- NTNU - Norwegian University of Science and Technology
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Field
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intelligence methods, notably machine learning, anticipated to play a significant role in advancing sports science and performance. Applications could include training planning, identifying factors limiting
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(OT) is increasing when it comes to military systems, and the cyber physical aspect is thus of greatest importance for the FACT project. Military platforms are not easily transferable to a relevant
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structural level, developing and employing machine-learning tools for predicting antibody-epitope binding and antibody developability. In silico antibody design is a long-standing computational and
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structural level, developing and employing machine-learning tools for predicting antibody-epitope binding and antibody developability. In silico antibody design is a long-standing computational and
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to perform structure-based antibody design, developing and employing machine-learning tools for predicting antibody-epitope binding and antibody developability. In silico antibody design is a long-standing
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emerging field that applies computational techniques such as big data, machine learning, artificial intelligence, optimization, etc. for realizing sustainable future energy systems (smart grids, smart homes
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five-year master’s degree or a cand.med.vet. degree, with a learning outcome corresponding to the descriptions in the Norwegian Qualification Framework, second cycle. The applicant must have a documented
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cand.med.vet. degree, with a learning outcome corresponding to the descriptions in the Norwegian Qualification Framework, second cycle. The applicant must have a documented strong academic background from
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, including comprehensive experience with modern machine learning libraries. Published scientific articles in the field of this position. Good written and oral English language skills Preferred selection
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propulsion, optimization, machine learning, simulations, or similar topics practice scientific communication by writing articles and attending conferences with other scientists and PhD candidates Investigate