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modeling. •Practical experience in one or more of the following is a plus: in vitro bioreactor experiments, molecular analysis techniques, or non-invasive material testing. •Demonstrated experience in
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to use qualitative and quantitative tools to measure technological competition, as well as markets and patent databases, which will then be analysed using network analysis and machine learning. Empirically
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an analysis of political-educational narratives, we want to examine if the great narratives of the philosophical modernity – such as emancipation through self-cultivation – have become totally obsolete
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an innovative academic education to more than 20000 students, conduct pioneering scientific research and play an important service-providing role in society. We are one of the largest, most international and most
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offer an innovative academic education to more than 20000 students, conduct pioneering scientific research and play an important service-providing role in society. We are one of the largest, most
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and image analysis. Where to apply E-mail chinmattia@gmail.com Requirements Research FieldNeurosciencesEducation LevelPhD or equivalent LanguagesENGLISHLevelExcellent Internal Application form(s) needed
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analysis (SUA, LFP), and developing spiking neural network models to interpret developmental circuit dysfunction and link experimental data to theoretical frameworks. Where to apply E-mail chinmattia
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work at Ghent University (Heidestraat Campus, Merelbeke), with occasional assignments at VUB, KULeuven, and UAntwerpen. WHAT WE ARE LOOKING FOR You have a PhD degree in Bioengineering, Veterinary
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, conduct pioneering scientific research and play an important service-providing role in society. We are one of the largest, most international and most innovative employers in the region. With more than 6000
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our expertise in bioinformatics and metagenomic analysis we offer hands-on clinical experience through cohort studies. These include cross-sectional and longitudinal cohorts, time-series intervention