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experiments. Information about the division and the department The Plasma Physics and Fusion Energy (PPFE) group at the department of Space, Earth and Environment/Astronomy and Plasma physics division has
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, diffraction limits, and thermal noise. Achieving compact, efficient designs for cryogenic environments is crucial for practical applications in radio astronomy. Major responsibilities As a PhD student, you will
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terahertz waveguides and layouts, and overcoming challenges related to signal attenuation, diffraction limits, and thermal noise. Achieving compact, efficient designs for cryogenic environments is crucial
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flow control. The candidate will work within a dynamic and collaborative research environment, gaining invaluable experience in developing innovative solutions that have tangible impacts on data security
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innovative methodologies while contributing to real-world imaging applications. Moreover, you will enjoy working in a diverse, collaborative, supportive and internationally recognized environment. The PhD
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, nutrition and health. We conduct fundamental and applied research, innovation, education and dissemination in Food and Nutrition Science with the aim to provide new knowledge and solutions that pave the way
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department The division of Food and Nutrition Science (FNS) is one of four research divisions at LIFE . FNS addresses major societal challenges related to sustainable food production, nutrition and health. We
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. FNS addresses major societal challenges related to sustainable food production, nutrition and health. We conduct fundamental and applied research, innovation, education and dissemination in Food and
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at LIFE . FNS addresses major societal challenges related to sustainable food production, nutrition and health. We conduct fundamental and applied research, innovation, education and dissemination in Food
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, you will enjoy working in a diverse, collaborative, supportive and internationally recognized environment. The PhD project centers on understanding and improving deep learning methods for 3D scene