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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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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 investigating the translational
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industry You have a Felasa C certificate You are able to operate highly specialized equipment and to carry out complex experiments and non-standard techniques You have sense for planning, organization
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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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4 Dec 2025 Job Information Organisation/Company KU LEUVEN Research Field Philosophy » Philosophy of science Researcher Profile Recognised Researcher (R2) Country Belgium Application Deadline 16 Feb
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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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research record in one of the following areas of pure mathematics. Algebraic and arithmetic geometry Random matrices, complex analysis Differential geometry Functional analysis and operator algebras Group
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processing, signal processing, network resource management to improve the performance of the future wireless communication systems. Finally, due to the large-scale nature, complexity, and heterogeneity of 6G
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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