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be actively involved in state-of-the-art research on mathematical modelling, integrated assessment and interoperability. You will contribute to development of an ontology model of the water reuse
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component. Perform a literature and state-of-the-art study and develop use cases for the validation of the tools to be developed, based on the input of the Belgian Defence clients. Develop a set of algorithms
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have a thorough knowledge of the relevant academic literature; You are flexible, self-motivated and perseverant; You are fully fluent in English, proficiency in other languages is an advantage; You are
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motivated and enthusiastic to learn and expand both computational and experimental skill set be able to summarize data extracted from the literature and clearly shape research objectives be able
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) early modern forgeries and circa twelve reference works with the aim of understanding these in their art historical context and to identify significant anomalies in collaboration with the team’s research
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able to summarize data extracted from the literature and clearly shape research objectives be able to efficiently communicate with experimental and computational scientists have excellent communication
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degree in a relevant field (Conservation and Restoration or Technical Art History); You have the ability to develop an original research project and to find and select relevant literature and case studies
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will be working in a dynamic research group and will be actively involved in state-of-the-art research on mathematical modelling, integrated assessment and interoperability. You will contribute
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opportunities. With its 11 faculties and more than 85 departments offering state-of-the-art study programmes grounded in research in a wide range of academic fields, Ghent University is a logical choice for its
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be able to interact with many fellow PhD students and industry stakeholders throughout Flanders. Your main tasks include: Reviewing literature on efficient deep neural network methods, adaptive