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Do you want to unravel the physics of water and ion transport in micro-electronics? Do you want to lay the foundation for early warning methods and sensors in chips and electronic circuits? Irène
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embedded within the Laboratory of Physical Chemistry at the Department of Chemical Engineering and Chemistry and will be supervised by dr. Heiner Friedrich and prof. Rolf van Benthem . Research
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of complex industrial systems, where the current common practice is to employ very complex simulations in the design process for tuning and evaluating different design parameters. Surrogate models are simple
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regular meetings of the EU project CombTools. Job requirements A master’s degree in Physics, Electrical Engineering, or a related field. Strong background in optics, photonics, and signal processing
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, EuroVis); several successful start-up companies (MagnaView, Process Gold and SynerScope); and a number of techniques that are used on a large scale world-wide. Job requirements We are looking for a
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of the methods and applied simplifications will be required. During your work you will be positioned in both the Building Physics and Building Performance research group at our department, and supervised by
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scientific researcher. At TU/e we challenge you to take charge of your own learning process . An excellent technical infrastructure, on-campus children's day care and sports facilities. An allowance
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-hybrid material, as well as the technology development of the integration process. Record efficiency and footprint are anticipated by such integration concept. Besides from pursuing the device performance
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vacation pay of 8%. High-quality training programs and other support to grow into a self-aware, autonomous scientific researcher. At TU/e we challenge you to take charge of your own learning process . An
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research into brain-inspired computing models that mimic the natural neural system's computational physics. Our research entails the development of novel brain-inspired computing theories, learning systems