64 phd-studenship-in-computer-vision-and-machine-learning positions at University of Antwerp
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of more efficient cancer detection methods and revolutionary therapies. The center is looking for A PhD for the project “Intraoperative assessment of resection margins in breast cancer surgery by Raman
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. The courses you will teach may include bachelor-level courses, such as Computer Networks, Distributed Systems, Computer and Network Security, Operating Systems, and master-level courses, such as Topics in
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programmes and language certificates obtained. The courses you will teach will include an English-taught master-level course on “Theory of Fundamental Interactions” (6 ECTS, 60 hours). You will play a role in
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expertise in architectural design and methodology. You can demonstrate experience in practice in developing and/or customizing digital workflows and tools. Experience with automation and machine learning
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obtained. The courses you will teach may be included in the curriculum of analytical and physical chemistry. Teaching assignments are expected to amount to approximately 100 contact hours per academic year
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relations and in interaction with organizations, to gain insight into computer-mediated communication, its applications and effects, and to pursue evidence-based communication strategies, instruments and
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) and QSP (KU Leuven). The hired PhD student will be in charge of producing clusters in the gas phase, depositing them on the titania nanotubes and SiO2 , and studying their ex situ structural and
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report on your progress regularly. You will participate in the doctoral study programme at the Antwerp Doctoral School to support your PhD pathway. You will present the findings of your PhD research
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of Applied Mathematics: Statistics Position You will work actively on the preparation of a PhD thesis in the field of statistics and machine learning. You will publish scientific articles related
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of CLiPS, which focuses on the application of statistical and machine learning methods, trained on corpus data, to explain human language acquisition and processing data, and to develop automatic text