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researchers / senior scientists in the emerging field for the development of nanoscale organic semiconductor optoelectronic devices. In these devices, the nanopatterned organic or halide perovskite
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atmospheric chemistry sub-group at ETH They will develop their own scientific and measurement portfolio They will be responsible for deploying, analyzing, and maintaining instrumentation as well as publishing
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engaged in development of electrochemical sensors detecting environmental pollutants, providing real-time information for effective management. Past and current work includes electrochemical sensors
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crucial insights. In this project, you will contribute to the development of AI-driven methodologies for experimental fluid mechanics , focusing on: Designing multi-fidelity neural networks for adaptive
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, developing the cities of the future, global food security and human health. To foster knowledge transfer, ETH Zurich maintains close collaborative research relationships with industry including: Disney
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environment with advanced laboratory infrastructure, the candidate will have a unique opportunity to develop their research abilities The position is available from May 2026 onwards Workplace Workplace We offer
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. Empa is a research institution of the ETH Domain. The Biointerfaces Laboratory is offering a PhD position focused on development of engineered antimicrobial hydrogels. This project aims to tackle
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develop predictive tools for mechanical failure. Our team is highly interdisciplinary and international, bringing together researchers with backgrounds in materials science, mechanics, and applied physics
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interested in applied machine learning and computer vision at the intersection of research and industrial deployment. Job description Develop and implement state-of-the-art computer vision algorithms
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" (D2M). This innovative project is a collaboration between the University of Basel, the Bern University of the Arts, and the FHNW. The goal is to develop a highly automated, reproducible pipeline