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-of-the-art on ML-based PHY solutions, you will identify the most promising blocks where AI solutions have the potential to out-perform traditional approaches - either in performance or in complexity - but also
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(100%) senior researcher to work in the field of molecular and computational genomics of Alzheimer’s disease. The Sleegers lab is an international team committed to increasing insights into the complex
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field of molecular and computational genomics of Alzheimer’s disease. The Sleegers lab is an international team committed to increasing insights into the complex genetics of Alzheimer’s disease and to
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of challenging waste streams containing complex organic pollutants and (micro)plastics. The main purpose of plasma gasification of complexed organic waste is to produce syngas, a valuable precursor to different
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at the cost of significant extra digital complexity. A complete system power optimization is hence required. New communication networks will also support radar-like applications (joint communication and sensing
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Nayer. The faculty, the department, and the campus can build upon a solid research infrastructure, extensive international networks, connections with companies and non-profit organisations, a stable offer
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Networks, and ICT Services & Applications. Your role This Ph.D. position offers a chance to join a dynamic, interdisciplinary research group at the forefront of tackling complex global challenges
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, medical image processing and applications of convolutional and graph neural networks, digital twins,… in the fields of rare diseases, cancer and inflammation . Institutional and societal engagement Based
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PIs of the Namur Institute of Structured Matter (NISM), the Namur Institute for Complex Systems (naXys) and the Institute Heritages, transmissions & inheritances institute (PaTHs). The project focuses
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the catalyst’s dynamic evolution. The goal is to select model systems based on the complex reaction networks involved in the CO2-to-hydrocarbons process, using machine-learned models for a consistent