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stakeholders (investors, lenders, insurers) integrate this information into their investment and lending decisions, including an asset-pricing analysis of these implications. Impact of Physical Risk on Companies
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thinking, data analysis, problem-solving, and project management skills while contributing to the broader academic community through publications in peer reviewed journals. Working, teaching and research
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9 Oct 2025 Job Information Organisation/Company Empa Research Field Chemistry » Other Engineering » Materials engineering Engineering » Mechanical engineering Researcher Profile First Stage
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refer to: The PhD Survival Guide from ETH Zurich All about the doctorate at ETH Zurich For salary information, please refer to: Salaries for Doctoral Students at ETH Zurich . Profile We are looking
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) mechanics OR in designing laboratory experiments OR in data-driven analysis methods is an advantage. Excellent written and oral communication skills in English. (French is not required) We offer Opportunity
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macroeconomics and a strong knowledge of Data Science, Empirical Analysis and/or Quantitative Methods Technical understanding of Blockchain is required Some exposure to Computer Science is a plus You are fluent in
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Desirable: Experience with NMR spectroscopy and/or single-molecule fluorescence techniques Programming/data analysis skills (e.g., Python, MATLAB) Previous research experience in structural biology or protein
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, you will: Design and perform fluorogenic and nano-photonic DyeCycling experiments. Write/adapt analysis code to process fluorescence trajectories and extract kinetic information. Evaluate bioconjugation
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components and nucleic acids interact and self-assemble. Apply data analysis and modeling to deepen understanding of nanoparticle architectures, and contribute to standardization-relevant method development
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). Hands-on laboratory experience with lasers, optics, or photonic devices. Skills in experimental data acquisition and analysis (in Python). Motivation to combine computational modeling with experimental