52 algorithm-development-"Multiple"-"Simons-Foundation" positions at Chalmers University of Technology in Sweden
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will do: Take courses at an advanced level within the Graduate school of Mathematics (Mathematics | Chalmers ) Develop your own scientific concepts and communicate the results of your research verbally
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polymers and on the development of spinning processes for manufacturing conducting polymer fibers used in wearable electronics. A summary of the research field can be found in a recent review . Project
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Contribute to research that supports the development of sustainable bio-refineries. This project focuses on producing chemicals and fuels from waste materials through the development of novel
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work. A model is to be developed to estimate the material mass breakdown for various cell designs and cell formats. The model will be validated from teardown analysis of commercial lithium-ion battery
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of Technology to pioneer the next generation of biorefineries using marine and terrestrial biomass. This postdoctoral position offers the opportunity to develop innovative green processes for transforming
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network of national and international collaborators. Project overview The aim of this two-year project is to validate and further develop advanced numerical models (originally developed at Chalmers
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changing environment will affect the stability of quick clays, and the probability of triggering catastrophic failures. We offer access to unique experimental facilities and computational tools developed by
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failures. We offer access to unique experimental data and computational tools developed by our research team for addressing a timely societally relevant problem. Project overview The aim is to unravel
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. The project is part of the WiTECH industry competence centre and is also supported by the European Space Agency (ESA) and the Swedish Space Agency . Main Responsibilities: Develop processes for fabricating
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for real-time decision-making and optimization under uncertainty. Develop techniques for computationally efficient mixed-integer stochastic optimization. Investigate the interplay between energy consumption