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is required. Excellent publishing and communication skills are essential together with an already existing broad professional network. You are a team player and your strengths include taking personal
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contract under ETH regulations ; salary follows the ETH postdoc standard. Community & development: You’ll join the Design++ network, with access to the Design++ Labs the Immersive Design Lab (IDL) and Large
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optimal new technologies and transition pathways simultaneously. To holistically evaluate the environmental impacts of processes and energy systems, we develop predictive methods for Life Cycle Assessment
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80%-100%, Zurich, fixed-term The Research Center for Energy Networks (Forschungsstelle Energienetze – FEN) of the Swiss Federal Institute of Technology, Zurich (ETHZ) acts as a bridge between
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ongoing projects on fermentation, as well as assessment and optimization of new raw materials for food use. The work includes developing improved analytical methods for the analysis of these components and
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community. We develop and commercialize simulation tools, as well as measurement equipment for all-in-one electro-optical device characterization and for device stability assessment. Our R&D tools are used
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analysis. Experience in formulating and solving mathematical optimization problems is an asset. Proficiency in English is required; good comprehension and oral communication skills in German are desirable
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group, led by Prof. Natalie Banerji at the University of Berne, is now seeking Doctoral applicants to take part of a European Marie Sklodowska-Curie Training Network programme FADOS. The successful
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for further optimization in medicinal chemistry is a primary focus. We closely collaborate with our therapeutic areas and functions to convert hypotheses into innovative therapeutics. The opportunity We
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on the available system resources (e.g., communication, computation, energy). Communication-efficient knowledge exchange among networked federated large models. These research directions allow you to gradually build