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Marie Curie Grant Agreement Number 101226289 Is the Job related to staff position within a Research Infrastructure? No Offer Description This position is part of the BUG-ID Doctoral Network "Biosensors
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for Digital Twin Earth (AI4DTE). The main goal of DTEClimate project is to maximize the information extracted from EO data by extracting sensor information and generating actionable, uniform, accurate, complete
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Digital Endocrinology in the Marie Skłodowska-Curie Doctoral Network (ENDOTRAIN). Join Europe’s first doctoral network in digital endocrinology – integrating AI, sensor technology, omics, and clinical
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(ENDOTRAIN). Join Europe’s first doctoral network in digital endocrinology – integrating AI, sensor technology, omics, and clinical medicine to transform diagnosis and treatment of adrenal diseases. Digital
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spectroscopy and sensing, supported by long-standing expertise in fiber-optical sensor technology. As part of the SMS project, a shaft monitoring system for elevators is being developed in collaboration with
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localise greenhouse gas emissions over large open areas enabling organisations to achieve their net-zero climate goals. Our sensor products generate large volumes of data as they scan the environment
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classification of Aluminium 5083 TIG welding using HDR camera and neural networks. J. Manuf. Process. 45:603–613. https://doi.org/10.1016/j.jmapro.2019.07.020 2. Wang R, Wang H, He Z, et al (2024) WeldNet: a
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: Developing physics-informed neural networks (PINNs) for complex dynamical systems modeling and observer design Creating and validating digital twin architectures that incorporate physical laws and constraints
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for collecting sub-daily, daily, weekly, monthly, and quarterly data, depending on measurement type and established methods; collection of new soil and water samples; installation of new environmental sensors and
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maintenance, diagnostics, and troubleshooting on BAS-related electrical systems, including sensors, actuators, panels, and networked devices. Specify and install electrical and control wiring in compliance with