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computational scheme which allows efficient and accurate computer simulations of biofabrication. Using this novel tool in collaboration with our experimental colleagues we will thrive to understand the physical
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offering PhD positions for students with a background in data science, computer science, computational science, or a domain science with a strong focus on computational science and an interest in training
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Description The Graduate School Global and Area Studies (GSGAS) at Leipzig University invites applications for 2 scholarships for international PhD candidates within the Graduate School Scholarship
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how very different mutations can trigger similar developmental problems. More information can be found on our homepage . Project Summary This PhD project builds upon an ongoing collaboration between
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characterize paralogue expression profiles, cellular dynamics and functional specialization across developmental stages. The project builds upon exciting unpublished data obtained by a previous PhD student
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Description Thinking of doing your PhD in the Life Sciences? The International PhD Programme (IPP) Mainz is offering talented scientists the chance to work on cutting edge research projects
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budding yeast and human cells as models. PhD Project 1: Deciphering the ubiquitin code The ubiquitin system plays a key role in determining the function and fate of proteins in virtually every biological
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Parasitology, Biophysics to Social and Computational Sciences and Health Economics. Please check our Webpage (link below) for further information about the PhD projects and required backgrounds. Our 9 projects
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the atomic to the industrial scale – to drive innovations that enable a sustainable energy transition. We are now inviting applications for a three-year PhD position in electrochemistry, focused
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of neural hydrology, where hydrological models are directly learned from data via machine learning (e.g., LSTM neural networks, [1]). Initially, these models ignored all physical background knowledge and did