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Description VIB.AI, the VIB Center for AI & Computational Biology, is a young research center dedicated to combining machine learning with in-depth knowledge of biological processes. Our mission is
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collaborations with industrial partners as well as national and international academic initiatives. These projects span the full research and development lifecycle, requiring large-scale experimentation, real-time
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), and multi-robot cooperation. Researchers with an interest in non-terrestrial robotic manipulation will find a young and vibrant team of over 23 members fostering a collaborative atmosphere (2 Professors
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: 10.1101/2025.09.08.674950), and AI/machine learning. We work closely with clinicians to translate our findings into clinical practice, focusing on genomically complex sarcomas and haematological
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ICT Services & Applications. Your role The FEderated droNe Countering system (FENCE) project is a collaboration between the University of Luxembourg - SnT and Luxembourg Tech School (LTS). It aims
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VIB.AI, the VIB Center for AI & Computational Biology, is a young research center dedicated to combining machine learning with in-depth knowledge of biological processes. Our mission is to study
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publication(s) in peer-reviewed international journals Experience in molecular biology, single cell approaches, imaging and electrophysiology are a plus Team player and great collaborator Strong interest in
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microscopy data analysis, chemometrics, and machine learning. This position is ideal for a researcher who enjoys working at the interface of imaging, data science, and environmental monitoring. The project
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, for their analysis and optimization, we use tools such as artificial intelligence/machine learning, graph theory and graph-signal processing, and convex/non-convex optimization. Furthermore, our activities
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multiple symbolic fields, including official political discourse, academic debates and selected cultural outputs. Methodologically, it adopts a mixed-methods approach, combining machine-learning–enhanced