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Engineering and the Division of Microstructure Physics . Both divisions have broad experience and work across experimental and theoretical approaches. We combine fundamental scientific studies with applied
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experimentation to address one of the most critical challenges in modern energy systems, maintaining stability in an increasingly converter-dominated power network. The project will be carried out in close
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will need strong written and verbal communication skills in English Strong analytical skills Experience from protein extraction You are expected to be somewhat accustomed to teaching, and to demonstrate
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-Design of Legged Robots. The research of the postdoctoral researcher will touch upon various topics design optimization, multi-body dynamics, optimal control theory and generative AI in general. Experience
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years prior to the application deadline*. You will need strong written and verbal communication skills in English Strong analytical skills Experience from protein extraction You are expected to be
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intelligence, machine learning, data science, applied mathematics, or a closely related field, awarded no more than three years prior to the application deadline*. Documented research experience in machine
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, applied mathematics, or a closely related field, awarded no more than three years prior to the application deadline*. Documented research experience in machine learning, AI, or statistical modeling. Proven
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on theoretical and experimental subatomic physics, mathematical and high-energy physics, plasma and fusion physics, as well as nuclear physics. This diversity of research topics allows us to connect fundamental
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Excellence Centre (2024-2029) aimed at realizing breakthroughs in integrated photonics. You will thus be part of a team of PhD students and postdocs in a constellation of local theoretical and experimental
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, particularly head/skull injury mechanics or impact biomechanics Knowledge of material characterization techniques and experimental mechanics Familiarity with optimization algorithms and design of experiments