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and flow field interactions Tuning of the CFD models with experimental results Artificial Neural Network training and development Scientific publications in journals and at conferences Supervision
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Foundation. Muoniverse connects over 30 research teams and provides comprehensive training, exchange opportunities, and career development through its Research School. As positions serve as bridges between
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Information Benefits We offer Our institution is based on an interdisciplinary, innovative and dynamic collaboration. You will profit from a systematic training on the job, in addition to personal development
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cellular activities, we design programmable cellular implants and devices for therapeutic applications. By integrating fundamental discoveries with translational development, we aim to shape the future
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plenty of possibilities for personal and professional development. Fully funded four-year PhD position at Empa in Dübendorf, starting from September 2026. Joint supervision/research resources and
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application; 2) Excellent complementary skills in personal and career development as well as business training required to extend beyond scientific research; and 3) Exposure to both academic and non- academic
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. Empa is a research institution of the ETH Domain. The Urban Energy Systems Laboratory (UESL) pioneers strategies, solutions, and methods to support the development of sustainable, resilient, and
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systematic training on the job, in addition to personal development possibilities and our pronounced vocational training culture. If you wish to optimally combine work and family life or other personal
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. Empa is a research institution of the ETH Domain. The Urban Energy Systems Laboratory (UESL) pioneers strategies, solutions, and methods to support the development of sustainable, resilient, and
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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