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across a broad spectrum of ETH's academic departments, including biology, physics, engineering, economics, architecture and more. Due to a growing portfolio of projects. we are looking for a versatile
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developer with a strong background in scientific computing who is eager to lead a development team, drive innovation, and explore commercial opportunities arising from our research. The position is linked
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20%-30%, Zurich, fixed-term The Atmospheric Physics group at the Institute for Atmospheric and Climate Science (IAC), ETH Zurich, has an opening for a Student Research Assistant. We are seeking a
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mentoring programme. Support the development and implementation of training and capacity building of relevant stakeholder groups. Engage with various stakeholders from the private and public sectors as
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Department of Mechanical and Process Engineering/Intelligent Control Systems can be found on website . Questions regarding the position should be directed to Dr. Marianne Schmid Daners, marischm@ethz.ch
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on Facebook. If you have any questions regarding the application process, please feel free to contact us at makerspace@sph.ethz.ch . We would like to point out that the pre-selection is carried out by
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of a process to track the success and impact of the two initiatives, and regular evaluation by ETH researchers as well as external stakeholders Manages a central pool of space experts (project managers
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. By investigating the multidimensional nature of learning across cognitive, social, emotional, cultural, physical, and technological dimensions, CLUE addresses the evolving challenges and opportunities
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strategies but often they lack physical intuition, which creates obstacles towards large-scale deployment and public acceptability. Project background Urban transport systems face increasing challenges from
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automating the detection of individual tree species in forests using deep learning. Specifically, you will: Focus on the application of deep learning techniques in Python to process spatial and aerial data