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We are seeking a highly motivated and talented PhD student to join our team at the Institute of Environmental Engineering at EPFL (the Swiss Federal Institute of Technology Lausanne). The selected
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Materials science and technology are our passion. With our cutting-edge research, Empa's around 1,100 employees make essential contributions to the well-being of society for a future worth living
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manipulating nanoparticles’ dynamics in engineered potentials. Motivated by both, exploring the limits of quantum mechanics, and exceptional sensitivity to inertial and force sensing, Levitodynamics is striving
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components like self-labeling protein tags for application in cell biology. The work is highly interdisciplinary and collaborative, involving synthetic chemistry and/or protein engineering as well as cell
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Materials science and technology are our passion. With our cutting-edge research, Empa's around 1,100 employees make essential contributions to the well-being of society for a future worth living
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Master's degree (or equivalent) in Atmospheric Science, Physics, Environmental Science, Engineering, or a related field. Strong interest in cloud physics, aerosol science, and field measurements. Experience
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Materials science and technology are our passion. With our cutting-edge research, Empa's around 1,100 employees make essential contributions to the well-being of society for a future worth living
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...) as an additional degree of freedom to act on the ferroelectric order in striking contrast with the conventional depolarizing-field tuning strategy. Using our unique capacity to engineer oxide thin
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is a key-enabling technology for advanced manufacturing. In order to address increasingly complex demands on joining (dissimilar materials combinations, miniaturisation, extreme operation conditions
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researchers at conferences and more. What will make you stand out A proactive, creative mindset when it comes to solving complex scientific and engineering challenges. A willingness to work on large data