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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
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(min 80%) vacancy: Research Manager, FAMFLEX Centre of Excellence The FAMFLEX consortium aims to advance our understanding of how increasingly complex and flexible family practices unfold across time
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through the EU Research Framework Programme? Horizon Europe - MSCA Is the Job related to staff position within a Research Infrastructure? No Offer Description REMOD-HEALING is a Doctoral Network funded by
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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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of Excellence are seeking to fill the following full-time (min 80%) vacancy: Research Manager, FAMFLEX Centre of Excellence The FAMFLEX consortium aims to advance our understanding of how increasingly complex and
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applications which is hindered by the lack of a molecular understanding of their formation process. This is particularly true for zeolite synthesis which is characterized by a very complex reaction network in
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grounded in research in a wide range of academic fields, Ghent University is a logical choice for its staff and students. Doctoral fellow within the Marie-Curie Doctoral Network SCARPA Today, fewer than 5
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/Qualifications You have a Master's degree in (bio)engineering, (life) sciences, (bio-)physics, optical sciences or a related field. You are trained in optics, can interpret complex optical microscope assemblies
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complex omics data. Therefore, knowledge of programming languages such as Python or R is necessary and prior experience with data science, high-throughput omics, Linux command line, machine learning and
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increasingly complex networks. By deploying and advancing techniques such as machine learning, graph-based network analysis, and synthetic data generation, the project tackles key challenges in anomaly detection