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molecular experiments, preferably including CRISPR/Cas9 gene editing or RNAi in insects. Strong English communication skills (written and spoken). Background in evolutionary biology, entomology, genomics
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, and evolutionary modeling to uncover how host genetics and microbial communities have co-evolved across diverse human populations. The candidate will contribute to generating and analyzing large-scale
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speciation is a major research avenue in evolutionary biology. Comparing allopatric and sympatric populations of closely-related species provides a way to distinguish among traits involved in triggering
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experimental evolution and study morphogenesis in C. elegans populations evolving in the lab. Importantly, our preliminary results show that this approach is feasible as we observed evolutionary adaptation
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: Evolutionary Developmental Biology of Animals → 100% Assistant professor tenure track → Reference number: 202512/WE/ZAP-BOF/006 ABOUT GHENT UNIVERSITY Ghent University is a world-class, open, pluralistic and
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the mechanistic and evolutionary drivers of patterns and processes across biological scales, from gene regulation to ecosystem structure and function, including the role of communities in biogeochemical cycles and
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development computational biology bioinformatics genomics and proteomics microbiology and microbiome science ecology evolutionary biology Our concept is supported by the facilities available
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insight into developmental and evolutionary biology, supported by extensive experimental knowledge in the laboratory. This position offers an excellent environment for growth as an interdisciplinary
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social communication, and using those genes as windows into the key neural pathways, as well as investigating evolutionary foundations. This involves interdisciplinary research at multiple levels, from
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. These include areas such as additive manufacturing, quantum material design, scientific data reconstruction, for material discovery, inverse methods, complex optimization, population and evolutionary dynamics