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The Department of Electronic Systems at The Technical Faculty of IT and Design invites applications for a position as research assistant or postdoc in the field of Advanced Drone-Based EM
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Abstract: This research assistant focuses on the design, prototyping, and testing of bio-inspired drones, inspired by the aerodynamics and adaptability of natural flyers such as birds and bats
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Abstract: This position focuses on the development of intelligent and autonomous drone systems, integrating AI, edge computing, and digital twin technologies for mission autonomy and predictive
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The FEderated droNe Countering system (FENCE) project is a collaboration between the University of Luxembourg - SnT and Luxembourg Tech School (LTS). It aims to propose a unique swarm-based counter
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ICT Services & Applications. Your role The FEderated droNe Countering system (FENCE) project is a collaboration between the University of Luxembourg - SnT and Luxembourg Tech School (LTS). It aims
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portable dataloggers (or analogous geophysical sensors) and continuous monitoring workflows. Background in UAS/drone mapping. Numerical modeling skills. Familiarity with coastal water-level/wave datasets and
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to serve teaching, research and innovation. As part of the ANR projects LEASARD and VORTEX, which aim to increase the navigation autonomy of drone fleets in complex environments via embedded AI and event
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renewable for up to two additional years (3 years total), pursuant to availability of funds. This postdoctoral scholar will work on research topics related to AI-Driven Wildfire Detection Using Drones and
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complicated systems. These include humanoids, quadrupeds, omnidirectional drones and others. These controllers will rely on principles like Reinforcement Learning (RL), Model Predictive Control (MPC), or other
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and abundance of fish and larger invertebrates, and Cornell is at the forefront of the application of these methods in lakes. We are now collecting data with automated systems using uncrewed drones