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young scientists is an excellent educational programme covering all relevant aspects of scientific inquiry, including training in experimentation and theory. A specific feature serving as both an asset
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. To do so, you will combine atomistic simulations (density functional theory and ab-initio molecular dynamics simulations) with new machine learning models to parameterize machine learning force fields
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experiment and quantitative theory – to become, in effect, scientifically bilingual or multilingual. To this end, the school offers a structured PhD programme consisting of three components
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is made for you! Information We invite highly motivated students with a strong background in mathematical control theory, and a keen interest in machine learning to apply for the PhD position within
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to cutting-edge research that bridges theory and practice. Project structure DECIDE is organized into 10 work packages (WPs): Six WPs focus on disciplinary perspectives in psychology, education, computer
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complex materials simulations. These agents will assist with setting up, executing, and optimizing electronic structure workflows, from standard ground-state Density Functional Theory (DFT) calculations
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SFI FAST: PhD position in Microstructure/texture evolution during extrusion of scrap-based Aluminium
criteria A Master’s degree in materials science, mechanical engineering, applied physics, or related fields. Strong academic background relevant to metal forming, plasticity theory. Proficiency in
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projects of the MQS group. Our recent research has focused on the theory and applications of variational quantum algorithms and quantum machine learning. We also have activity in quantum optics, so
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. It requires combining what AI excels at, such as pattern recognition and processing data streams, with theories and methods for planning and logistics. The PhD research will focus on AI-enhanced
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processing data streams, with theories and methods for planning and logistics. The PhD research will focus on AI-enhanced planning of operations in shipbuilding supply chains, examining how AI techniques can