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range of topics related to imaging with geophysical data. Our research focuses on mathematical methods for processing, imaging, and inversion of geophysical data, the physics of wave propagation, and the
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electrocatalytic processes. We place a strong emphasis on mechanistic insights and employ advanced, in-situ characterization techniques (e.g., FTIR, Raman, DEMS, EQCM, GC) coupled with the detailed electrochemical
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related to staff position within a Research Infrastructure? No Offer Description The Department of Mechanical and Process Engineering (D-MAVT, www.mavt.ethz.ch ) at ETH Zurich invites applications
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: graph neural networks, natural language processing, algorithmic learning, fault-tolerance, blockchains, consensus, cryptocurrencies, digital money, central bank digital currency, decentralized finance
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Applicants should have a strong interest in doing basic research in areas such as: Bio-inspired /Bio-hybrid Robotics, Biomechanics, Causal Inference, Computational Biology, Computer Graphics
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60%-80%, Zurich, fixed-term Are you an ambitious data scientist with strong analytical and numerical skills, and expertise in geomatics, remote sensing, and data processing? We invite you to join
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-throughput screening workflows and preparing samples for metabolomic analysis. Skills in quantitative image analysis, data processing pipelines, and introductory computational modelling. Competence in
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-throughput laboratory systems. The infrastructure includes state-of-the-art robotic platforms for synthesis, characterization, and catalytic testing. You will ensure reliable day-to-day operation of complex
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communities, land managers, and fire professionals with knowledge and skills now before the threat becomes acute across the continent. FiRES aims to assist this process by learning from people’s embodied
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management policies to achieve energy neutrality and autonomous operation in long-term deployments. Edge–cloud integration and field deployment. Deploy and validate sensor networks on representative assets