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available in the further tabs (e.g. “Application requirements”). Objective To intensify German-Chinese research cooperation and improve funding opportunities for young Chinese scientists and academics
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premature deaths, especially among children, people with certain medical conditions and the elderly. With roughly 91% of the population living in urban areas and breathing polluted air, miniaturized detection
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on cancer medication that utilises the patient's immune system and also developing genetic tests that can detect cancer at an early stage. More about Bert Vogelstein Bert Vogelstein (born Baltimore, USA, 2
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) - Semantic 3D Scene Understanding - Face / Body Tracking, 3D Avatars - Non-Linear Optimization - Media Forensics / Fake News Detection How to Apply: Follow the instructions on our application platform: https
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Researchers International Mobility Experience - DAAD The information listed here is subject to change without notice. Where we have listed information about jointly run scholarships programs, please also see
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PhD/Postdoc position in trustworthy data-driven control and networked AI for rehabilitation robotics
approaches for sustainability, new concepts for security and solutions for current latencies in communication networks. Find out more about the project under https://6g-life.de/ About us: At the Chair
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with such environments. We investigate machine learning approaches to infer semantic understanding of real-world scenes and the objects inside them from visual data, including images and depth/3D
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from disadvantaged backgrounds (see https://grants.nih.gov/grants/guide/notice-files/NOT-OD-20-031.html for examples); and individuals who identify as LGBTQIA+. In addition to seeking participants from
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with such environments. We investigate machine learning approaches to infer semantic understanding of real-world scenes and the objects inside them from visual data, including images and depth/3D
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interactions with such environments. We investigate machine learning approaches to infer semantic understanding of real-world scenes and the objects inside them from visual data, including images and depth/3D