21 machine-learning-"https:" "https:" "https:" "https:" "https:" "https:" "U.S" positions at Tallinn University of Technology
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incorporate optimized machine learning algorithms, support standardized IoT protocols, and be validated in laboratory and semi-industrial environments. The project contributes to smart maintenance strategies
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of study programs at all levels of higher education. Possible subjects to teach: In the Ship Mechanics curriculum at the applied higher education level: VLL1590 Use of Future Fuels in Transport and Shipping
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Department of Computer Systems is internationally highly appreciated scientific and learning centre, which scientific competency is focused on creating of technical systems based on computer systems
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publications should be comparable to professors in the same field at the university's reference universities. * If the candidate has been on parental leave, maternity or paternity leave, or in military or
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paternity leave, or in military or alternative service after obtaining the doctoral degree, the time limit for becoming an Assistant Professor is extended by the corresponding period. LANGUAGE PROFICIENCY
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machine learning. The work will be part of a Horizon pilot project aimed at realizing a scenario-based platform for the interactive and comprehensive evaluation of design solutions and mitigation strategies
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critical maritime operation or system Collecting and curating operational and security-related data for AI-based threat analysis Training AI and machine learning models for anomaly and threat detection
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) extremes, preventive methods for mitigation of marine-induced hazards, application of machine learning techniques and opportunities provided by AI. Even though the listed advanced topics are mostly at the
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conducting simulator-based experiments, collecting and analyzing human performance and psychophysiological data, and developing models of human–machine collaboration for safe and efficient navigation
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performance data using recommended guidelines and machine learning tools Defining the uncertainty sources Enhancing existing guidelines for full-scale power-speed assessment practice Disseminating research