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is the construction of tail dependence models that are flexible, parsimonious, and computationally tractable, and scale well as the dimension grows. Recently, Kiriliouk, Lee and Segers (2024, X-Vine
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trajectories of individuals and households with a migration background in Belgium, focusing on hazard and microsimulation models of demographic events in multiple life domains. You contribute to the development
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variables into super-resolution models. Implement physical constraints (e.g., elevation dependency, mass conservation) using soft and hard constraint techniques. Validate models using in-situ data and
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. combined valorisation of waste energy and materials). The potential of thermal plasma technology is groundbreaking and attractive because it contributes to a circular economy model, in which value can be
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spiking neural network modeling, we aim to uncover translational biomarkers and fundamental mechanisms underlying altered inhibitory circuits and network dynamics. The project offers significant
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program on human sensorimotor control supervised by and in collaboration with the spokesperson of the consortium (F. Crevecoeur). The lab has developed a strong expertise in computational modeling
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-based policy models for climate adaptation and land-use management by integrating socio-economic and environmental dimensions. Integrate research outcomes into European climate and rural development
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diverse academic backgrounds to contribute to our projects in areas such as: Network Security, Information Assurance, Model-driven Security, Cloud Computing, Cryptography, Satellite Systems, Vehicular
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vivo pancreatic acinar-to-ducal metaplasia models and deploy liquid-chromatography mass-spectrometry to analyse the metabolome and proteome of acinar cells undergoing metaplasia. The researcher will
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/knowledge of computer science and/or machine learning Interest/knowledge of omics data analysis, gene regulation or structural modeling Proficiency in programming languages such as Python, R and/or C++ as