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for We are seeking a motivated computational biologist with a passion for cancer genomics and a drive to tackle complex biological questions. Essential: PhD (or studying towards a PhD) in computational
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of analysis pipelines. Partner with AI/ML experts to implement predictive tools supporting guide design and perturbation strategies. Your profile PhD or equivalent experience in Molecular Biology, Biotechnology
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A PhD position is available in the lab "Structure and Function of Membrane Proteins” at the VIB-VUB Center for Structural Biology in Brussels, Belgium. The project focuses on the structural
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Biology in Leuven (www.aertslab.org), led by VIB.AI Scientific Director Stein Aerts, is seeking a highly motivated PhD candidate to study how gene-regulatory programs give rise to neuronal phenotypes. In
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will be working closely together with PhD students and postdoctoral researchers, coming from both computational and biological backgrounds. Because of the interdisciplinary nature of our lab, we
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an integrated, multidisciplinary way and studies how the environment and climate change affect ecosystems (www.uhasselt.be/en/instituten-en/cmk-centre-for-environmental-sciences ). At UHasselt, S. Hendrix
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www.psb.ugent.be for more information. Jenny Russinova lab at PSB focuses on research on brassinosteroid hormones (https://www.russinovalab.be ). Job description Brassinosteroids are steroidal phytohormones
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collaboration with AI experts. Your Profile PhD or equivalent experience in Bioinformatics, Computational Biology, Computer Science, or related fields. Strong programming skills in Python and/or R. Experience
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disease modelling skills to join our team. About the project The ultimate goal of this project is to develop and apply advanced human iPSC-based models to study complex genetic architecture
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-based models to study complex genetic architecture of neurodegenerative disorders. The candidate will approach this by: 1) using advanced Brain-on-Chip models to understand how genetic risk affects the