87 web-programmer-developer-university-of-liverpool positions at University of Groningen in Netherlands
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completion of the PhD thesis within the next three years is to be expected. A university PhD training programme is part of the agreement, and the candidate will be enrolled in the Graduate School of Science
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opportunities in a wide variety of disciplines encourage the 34,000 students and researchers alike to develop their own individual talents. As one of the best research universities in Europe, the University
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dynamic and innovative university offering high-quality teaching and research. Its 34,000 students are encouraged to develop their own individual talents through challenging study- and career paths
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to indicate that a successful completion of the PhD thesis within the next three years is to be expected. A university PhD training programme is part of the agreement, and the candidate will be
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university offering high-quality teaching and research. Its 34,000 students are encouraged to develop their own individual talents through challenging study- and career paths. The University of Groningen is an
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Organisation Job description The University of Groningen ( https://www.rug.nl/ ) offers a 4-year M20 Program ( https://uef.nl/en/projects/m20-en ) funded PhD position for a project to develop a
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manner in different archaeal models. Organisation The University of Groningen is a research university with a global outlook, deeply rooted in Groningen, City of Talent. Quality has been our top priority
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-research-projects-awarded-through-open-competition-domain-science-m-programme ). Responsibilities and tasks: Development of novel electrocatalysts for N2 fixation. Fabrication of single cells with targeted
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and continuous development of regional innovation strategies as part of the European regional economic policies framework (EFRD, for example). How can such stakeholder networks best be leveraged
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: This PhD project will develop model- and data-driven hybrid machine learning material models that capture the complex, nonlinear, path- and history-dependent behaviour of materials. The goal is to create