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focus on factory and line level, where three research topics are defined: 1) Conceptual design principles and methods for resilient manufacturing systems. This topic will build upon existing theory
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Gyrd-Hansen, Professor and leader of STEMBRACE, Ditte Caroline Andersen and collaborate with researchers from various institutes at SDU, Odense. At DaCHE, we apply economic theory and empirical methods
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University, Oxford University, Princeton, MIT, UC Berkeley, and more. ACE is a research center focusing on the development of econometric theory and methodology; specifically, methods that are robust
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functional theory and ab-initio molecular dynamics simulations) with artificial intelligence techniques to parameterize machine learning force fields and kinetic Monte Carlo methods to model the molten salt
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research field • a description of the research literature already published within that field • an outline / explanation of the theories that could be employed • an outline / explanation of the methods to be
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position with a PhD project in Perturbative Quantum Field Theory. Targeted starting date for the position is 1 August 2025. Application deadline: 15. March 2025 at 23:59 hours local Danish time We are not
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will organize several research-related activities, such as workshops and seminars throughout the project period. The work is supposed to empirically test hypotheses rooted in economic theory. The center
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, probability theory, and combinatorial optimization. Experience in decision-making under uncertainty and autonomous system operation. High level written and spoken English skills. You may obtain further
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for resilient manufacturing systems. This topic will build upon existing theory on modular and reconfigurable manufacturing systems and develop methods and model-based approaches to design and evaluate resilient
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(density functional theory and ab-initio molecular dynamics simulations) with artificial intelligence techniques to parameterize machine learning force fields and kinetic Monte Carlo methods to model