56 molecular-modeling-or-molecular-dynamic-simulation Postdoctoral positions in Switzerland
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of strongly correlated electron systems on surfaces. A particular focus is placed on molecular spin systems, where you can harness quantum correlations of many-body spin systems, enabled by atomically precise
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thinking with renewable energy community planning, developing methodological innovations that bridge quantitative modeling and qualitative approaches. Your tasks Develop and apply optimization and simulation
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quality insurance. The lab combines additive manufacturing, large scale laser micro-processing, multiscale modelling and AI/ML for the quality monitoring/control, at the end offering to the society novel
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, advanced materials, and innovative concrete strengthening solutions. Our work combines experimental investigations, analytical modelling, and numerical simulations to develop and validate novel reinforcement
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at the forefront of addressing several fundamental questions including: How can we best simulate strongly correlated quantum systems and harness the power of both classical and quantum computing resources? Can we
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advantage. A 1.5-year fully funded postdoctoral position in a dynamic and international research group within the Department of Environmental Sciences at the University of Basel. You will have access to state
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. The tasks will require a high degree of innovativeness, command of multi-scale asphalt and binder testing methods, as well as knowledge of the pavement design concepts. Experience in material modeling and
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. The Land Change Science research unit studies patterns and processes of land systems and their dynamics over various spatial and temporal scales. Within the FOEN funded «Habitat Map of Switzerland» project
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, analytical modelling, and numerical simulations to develop and validate novel reinforcement systems. This position is part of an Innosuisse-funded collaborative project with industry partners, focusing
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responsibilities may include: Development or analysis of novel Machine Learning algorithms for engineering design applications, such as Inverse Design, Surrogate Modeling, or generative modeling. Collaborating with