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100%, Zurich, fixed-term The Research Center for Energy Networks (Forschungsstelle Energienetze - FEN ) at ETH Zurich was founded in 2011 to address the need for independent, credible and applied
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interests in any domain of Differential geometry and Geometric analysis. Examples of research areas include, but are not restricted to, Riemannian and pseudo-Riemannian geometry, symplectic geometry, complex
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antimicrobial drugs Investigate diffusion behavior, mechanical stability, and stimuli-responsive functionality of fibers Fabricate and characterize hernia mesh prototypes, including mechanical, thermal, and in
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systems traditionally rely on centralised control and human-in-the-loop monitoring of its moving parts. However, this requires large amounts of resources for the network operation. Operators, responsible
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tools. Our group combines biology, engineering, and computational science to understand how cells organize into complex tissues. Located in Basel, the Department of Biosystems Science and Engineering (D
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hardware. Distributed and agentic embedded AI: Networks of autonomous micro-agents for cooperative sensing and learning. Job description Conduct experimental and theoretical research along the project’s core
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the position for you. Projects in the wet lab of the van Nimwegen group revolve around stochastic single-cell gene regulation in bacteria, the functioning of genome-wide gene regulatory networks, and the
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Innosuisse projects or projects with the Federal Offices, private companies and foundations. You will broaden your national and international network in Advanced Materials Processing and organize local and
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Fluency in English; German is a strong asset Desirable Attributes Entrepreneurial mindset with a strong drive for impact and systems-level thinking A good network into the Swiss industry Familiarity with
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discovery, and machine learning. In the wake of quantum mechanics' initial breakthroughs, we're on the brink of a second quantum revolution. Quantum physicists are adopting machine learning to explore complex