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-time systems. The role will involve working with large and multi-modal datasets (e.g., images, video, audio, and sensor data), and deploying solutions in real-world environments, particularly in robotics
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multi-agent autonomous systems and related technologies. This will include development of distributed monitoring algorithms enabling agents in a multi-agent swarm to autonomously locate other agents in
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statistical and machine learning techniques for dynamic energy system modelling Develop advanced optimization algorithms for building energy management and control (e.g., MPC, RL) Develop and evaluate digital
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and deploying UAV simulation environments using AirSim or its derivatives. Designing and implementing navigation, planning, and obstacle avoidance algorithms using ROS2. Conducting simulation studies
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National Aeronautics and Space Administration (NASA) | Hampton, Virginia | United States | 2 months ago
intercalibration with other on-orbit reflected solar sensors, and characterization of other intercalibration targets (e.g. pseudo-invariant land sites, the Moon). With its high accuracy, spectral range (350 - 2300
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strong confidence/belief in a vehicle’s perceived environment based on evidence (local & shared sensor readings) is under addressed, as such shared sensor readings may be subject to spatial correlations
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environment project, we will develop automated species and community recognition, particularly focusing on pathogenic soil fungi, with help of deep-learning algorithms fed with microscopic image and Raman
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support data analytical efforts using ML / AI algorithms for high frequency longitudinal sensor data, study data management, interaction with various UAHS stakeholders and incorporation of wearable sensors
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and storage systems. • Collaborate with multidisciplinary teams to integrate IoT sensor data into energy simulations. • Propose innovative solutions to enhance energy efficiency while reducing
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National Aeronautics and Space Administration (NASA) | Greenbelt, Maryland | United States | 2 months ago
structure and function. Airborne remote sensing offers unique flexibility, including the potential to combine different sensors on a single platform and to acquire data at the scale of individual trees