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English. Knowledge of German is beneficial, but not mandatory. Our offer We offer a PhD position at the research institution with excellent infrastructure and plenty of possibilities for personal and
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related field. You bring a strong analytical background and are proficient in areas like geometric deep learning, signal processing, statistics, or learning theory. Knowledge of energy systems, multi-energy
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meetings and in international conferences will require a good knowledge of English. Ability to work independently, as well as to contribute to a collaborative lab culture. We offer We offer a stimulating
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personal responsibility, excellence and flexibility to work and deliver results. The candidate should have excellent written and oral communication skills in English. Knowledge of German is beneficial, but not
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, or similar Proficient knowledge of and previous experience with R and Python, survey design, experimental design, field experiments and quasi - experiments are an added value Strong interest to work in
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continuum modeling (finite element modeling, computational fluid dynamics), and proven experience with COMSOL Multiphysics. Knowledge of heat and mass transport processes in heat-sensitive materials and
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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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. Candidates should be able to independently conduct statistical analyses in R, be able and willing to conduct fieldwork in the Swiss Alps, and have knowledge in plant species identification. Prior experience
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of new knowledge into society. Over 30,000 people from more than 120 countries find our university to be a place that promotes independent thinking and an environment that inspires excellence. Located in
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(finite element modeling, computational fluid dynamics), and proven experience with COMSOL Multiphysics. Knowledge of heat and mass transport processes in heat-sensitive materials and process optimization