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Field
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focuses on payloads, spacecraft and launchers for technology demonstration and utilisation as well as space applications and exploration in the upper atmosphere, Earth orbit and planetary space. The
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Postdoctoral Associate in Numerical Relativity The Cornell Center for Astrophysics and Planetary Science at Cornell University expects to have an opening for a Postdoctoral Associate in numerical
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of the Planetary/Environmental Health IRN is to understand how changes to the environment affect human health, and find sustainable ways for people to live healthier lives while maintaining the health of the planet
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physics, and planetary physics from several points of view, with the expertise of its members ranging from collecting and analyzing state-of-the-art data on the nature of the visible and invisible matter in
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. Candidates with expertise in climate science, hydrology, earth and planetary science, and physically-based or machine-learning/AI-based climate modeling (e.g. hydrometeorological and/or atmospheric processes