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, Agriculture Engineering (not agronomy), or Biosystems Engineering Basic knowledge in sensing technologies and measurement systems. Basic knowledge in machine learning, deep learning and/or data fusion and
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and measurement systems. Basic knowledge in machine learning, deep learning and/or data fusion and modelling tools, and eager to learn about more advanced modelling techniques. User of engineering
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domains of clinical neurophysiology. Knowledge in the field of artificial intelligence deep learning and machine learning is highly appreciated. The candidate should be a collaborative, dynamic person who
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Job description Vacancy: PhD position Deep Learning on Time series Data for Health Care ABOUT GHENT UNIVERSITY Ghent University is a world of its own. Employing more than 15.000 people, it is
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inference and continuous learning of deep neural network architectures. These designs should be informed by the specific hardware configuration of embedded platforms. Cooperating with domain experts in areas
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Intelligence, or equivalent, with excellent ('honors'-level or above) grades. • You have a strong background in deep learning. • You are willing to work in a multidisciplinary context. In particular, you are
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(not agronomy), or Biosystems Engineering Basic knowledge in sensing technologies and measurement systems. Basic knowledge in machine learning, deep learning and/or data fusion and modelling tools, and
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equivalent to 5 years of studies (bachelor + master) in the European Union. You have a strong background in either classical AI (including logic reasoning, graphical models) and/or deep learning (with focus
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(bachelor + master) in the European Union. You have a strong background in machine learning, including Natural Language Processing. You have excellent coding skills; hands-on experience in deep learning
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of studies (bachelor + master) in the European Union. You have a strong background in machine learning, including Natural Language Processing. You have excellent coding skills; hands-on experience in deep