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Field
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component (Master’s level or equivalent), A solid background in signal processing and machine learning Knowledge of embedded systems, cloud and edge computing is an advantage Excellent programming skills
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and ecosystems) and fine particles (again, harmful to health, and impacting climate through scattering of radiation and influencing cloud formation). There are two key uncertainties in BVOC emissions
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. Understanding of or curiosity about machine learning, AI, or cloud computing tools used in agricultural analytics. Interest or experience in working with industry, government, or multidisciplinary research teams
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with a strong mathematical and data management component (Master’s level or equivalent), A solid background in signal processing and machine learning Knowledge of embedded systems, cloud and edge
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for the built environment. Particular emphasis is placed on artificial intelligence in construction, building information modelling, point cloud capturing and processing, as well as construction robotics. The PhD
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topical subject area. Participation in project meetings and conferences. Opportunities for limited-time research stays abroad. Access to state-of-the-art HPC and ML facilities via the de.NBI Cloud and the
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reinforcement learning for edge-cloud-based computation. In both cases, vehicles and robots must be able to navigate around obstacles and manage safety constraints along the planned trajectory, even in situations
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for efficient and secure transmission of information in 5G/6G networks, using quantum communications technologies. Research and development of cloud-native approaches for Quantum Key Distribution (QKD
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, mobile platforms, industrial sensors/cameras, GPU workstations, and cloud platforms. Training covers research methods, scientific writing, open-source best practices, and impact/engagement. You’ll be
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workflows between field acquisition teams, data center staff, and research collaborators to ensure seamless data transfer and integration. -Support daily operations of servers, networks, storage, and cloud