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creativity. Willingness to supervise and support student projects. Your workplace Your workplace We offer We offer a full-time position for a researcher, with the option to do a PhD thesis at ETH. Through
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100%, Zurich, fixed-term inspire AG is the leading Swiss competence center for product innovation and advanced manufacturing. As a strategic partner of ETH Zurich, our mission is to transfer
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of your letter of motivation should be to help us gauge your interest and motivation in pursuing research in sustainable networking. For instance, you may think to write about: An exciting master thesis
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applicants: willingness to teach (max. 20%) Your workplace Your workplace We offer We offer a full-time scientific assistant position with the option of a PhD thesis at ETH Zurich. Through the close
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prior experience of the candidate, a contribution to supervising the Bachelor or Master thesis, teaching existing courses, or the development of novel complementary offerings is expected. Your workplace
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Experience in computer vision and machine learning Experience in software tools for 3D graphics and rendering is beneficial Very good Master's degree (Master of Science) Passion for smart camera applications
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background in one or more of the following domains: robotics, mechatronics, machine learning, and other complementary fields Proficiency in software engineering, including a solid foundation in C++ and/or
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efficient and scalable architectures and deployment onboard small aerial robots. Required selection criteria You must have a professionally relevant background in any or all of the domains of machine learning
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method. You have rigorous statistics training in causal inference, and a strong command of Stata and/or R (knowledge of machine learning methods is a plus). You have, at the time of appointment, completed
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-ratio estimates in soil, taking also into account measurement errors. This research will build on ongoing work on full-waveform inversion and machine learning for laterally varying, high-resolution shear