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Max Planck Institute of Molecular Cell Biology and Genetics, Dresden | Dresden, Sachsen | Germany | about 3 hours ago
, stem cell models of differentiation and cell biology approaches. Key questions include how cells regulate global rates of protein turnover, how chemical modifications mark proteins for removal and how
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Max Planck Institute for Solar System Research, Göttingen | Gottingen, Niedersachsen | Germany | 22 days ago
techniques have enormous potential for the modeling, prediction, and control of nonlinear systems governed by partial differential equations. This project will focus on developing machine learning methods
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models, the researcher will determine where and when mitochondrial transfer occurs in vivo, and how mitochondrial exchange shapes T cell differentiation and memory formation. In addition, the researcher
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engineering of SVD-relevant mutations, differentiation of iPSCs into neurovascular cells, microfluidic 3D vascular tissue engineering, and identifying disease-relevant alterations. Work is embedded in
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Max Planck Institute of Immunobiology and Epigenetics, Freiburg | Freiburg im Breisgau, Baden W rttemberg | Germany | 2 months ago
identities, as they are regulated during immune cell differentiation, metabolic response and epigenetic chromatin adaptation. Your tasks Independently drive your own research project, fitting the scope
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, differential growth generates large macroscopic deformations that alter the posture of the organ. Here, dimensional-reduction-based methods can help elucidate the overall dynamics of plant motion [2, 4]. In
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for emulating high-resolution process-based land-surface models - Combine process-based land surface and vegetation model components with data-driven model parts, e.g. in the framework of Neural Differential
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cell handling, differentiation, and organoid formation, while inte-grating automated imaging, quality control, and data analysis. A strong component of the work will be the programming and customization
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cell biology, developmental biology, biophysics, or related fields Strong expertise in pluripotent stem cell culture and differentiation protocols Practical experience with gastruloids, organoids