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modelling and AI/ML for the quality monitoring/control, at the end offering to the society novel nanostructured materials, their shape-forming and integration into devices. Your tasks We are seeking a highly
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include low energy-consuming electric-field-controllable non-volatile memory elements with high information density. The recent progress in controlling the electrostatic and elastic boundary conditions in
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knowledge and technology from research to Swiss machine, electrical and metal industries. The Automatic Control Laboratory (IfA) in the Department of Information Technology and Electrical Engineering of ETH
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-time feedback integration for closed-loop control. This position is embedded within a multidisciplinary research team at ETH Zurich and offers the opportunity to work at the intersection of engineering
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multiphase fluid phenomena, such as bubble and droplet dynamics and the resulting fast flows. One of our key objectives is to control bubble oscillations to exploit their energy-focusing characteristics in
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of advanced planning and energy management solutions that enhance self-consumption by intelligently controlling PV systems, batteries, electric vehicle charging, heat pumps, and thermal storage. Beyond
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reputation for carefully designed and precisely controlled experiments, high quality temporally and spatially resolved field experiments using particle image velocimetry combined with synchronised measurements
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100%, Basel, fixed-term The Khammash Lab at ETH Zurich is seeking a motivated and skilled technician to join our interdisciplinary team working at the interface of synthetic biology, control
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related field; proficiency with the command line and the Linux compute environment; working knowledge in collecting / analyzing job metrics from various data sources and derive useful information from
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, control engineering, and immunoengineering. This position is part of our newly funded ERC Advanced Grant, which aims to develop genetically engineered feedback control circuits in human T cells to tackle