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communication, and enables you to build a strong scientific network. You will be embedded in a great team of world-class scientists, where English is the main working language and receive academic training within
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design next-generation computer architectures for running large AI models on embedded and edge systems under strict timing, energy, and memory constraints. You’ll explore hardware-aware optimization and co
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, using innovative methodologies and collaborating closely across disciplines. Our research is embedded in two research institutes: the Centre for Language Studies (CLS) and the Radboud Institute
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and guidelines that support industry, policymakers and society in adopting circular manufacturing practices. The project is embedded in a strong national consortium and offers a unique opportunity to
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Framework Programme? Not funded by a EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description The PhD position is part of project embedded within the Marie
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research group crystallization and self- assembly; The Soft Matter group at the University of Amsterdam is a large, internationally visible team embedded in the Van der Waals–Zeeman Institute at the UvA
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. The project is embedded in a strong national consortium and offers a unique opportunity to conduct impactful, application-driven research at the interface of AM, circular economy and sustainable industrial
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guidelines that support industry, policymakers and society in adopting circular manufacturing practices. The project is embedded in a strong national consortium and offers a unique opportunity to conduct
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with modern machine learning. You will work on extending data-driven models with process-informed constraints and novel data integration strategies. The position is embedded in the Computational
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. The project is grounded in cultural sociology and institutional analysis and combines qualitative and quantitative methods, including interviews, archival and policy analysis, and structured analysis