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imaging methodologies, biological sample preparation, vacuum technology, laser operation and optics, and electrical and mechanical engineering. Furthermore, you are expected to present your work in
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, multi‑dimensional imaging data and enable richer exploration of historical paintings in collaboration with the Van Gogh Museum. Information Paintings are examined to understand artistic processes, support
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PhD in experimental soft matter, physics, fluid dynamics, or a related field; experience designing and developing microscopy and imaging techniques, in particular at high speeds; the ability to work
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passionate about the Earth and its climate? Do you want to make a difference in science and the world? Do you get excited about satellite images and venturing out to remote places? This vacancy is part of a
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the Institute for Cultural Inquiry . ICON is one of the four research institutes of the Faculty of Humanities. The researchers are working in six different research fields. PhD candidates are also embedded in
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: Experience with crystallization processes, soft matter physics, or porous media Familiarity with imaging techniques (optical/electron microscopy, X-ray tomography, or spectroscopy) Experience with cultural
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Vacancies PhD position on model-based wavefront shaping microscopy Key takeaways With wavefront shaping, you can focus light through non-transparent materials. Since the invention of wavefront
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approaches will involve the use of helium-filled soap bubbles as flow tracers, combined with multi-directional imaging and illumination for omni-directional flow measurements. These elements form the basis
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scientific expertise to active and passive microwave remote-sensing missions, i.e. radar altimeters and imaging microwave radiometers, and potentially imaging SAR; establishing and managing mission objectives
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is looking for an aspiring PhD candidate to research causal machine learning and uncertainty quantification for Earth Observation time-series. Currently, predictive AI in Earth Sciences relies heavily