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department can be found here: Division of Production and Materials Engineering The project is carried out within Sentio – Integrated Sensors and Adaptive Technology for Sustainable Products and Manufacturing
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Programme? Not funded by an EU programme Is the Job related to staff position within a Research Infrastructure? No Offer Description PhD in Production Technology – AI-Pipeline for Industrial Sensor Data
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the recently renovated M-building on LTH's campus in Lund. More information about the division (iprod.lth.se/english) The project is carried out within Sentio – Integrated Sensors and Adaptive Technology for
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undergraduate education, not least in the Master of Science in Engineering Nanoscience programme at LTH. Sentio – Integrated Sensors and Adaptive Technology for Sustainable Products and Manufacturing – is a newly
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the hidden surface. (3) Planning and executing scooping actions for precise material dosing using online sensor feedback. The position will be funded by the Wallenberg AI, Autonomous Systems and Software
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sensors -- and the combination thereof. Common sensors like lidars and cameras struggle in low-visibility conditions (dust, smoke, fog). Despite recent progress toward long-term autonomy, ensuring reliable
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department can be found here: Division of Production and Materials Engineering The project is carried out within Sentio – Integrated Sensors and Adaptive Technology for Sustainable Products and Manufacturing
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to conventional simulation frameworks that typically operate entirely in virtual environments, the DTO will connect both physical components (i.e., sensor data networks) with virtual applications (i.e., artificial
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of remote sensing methods for estimation of forest resources using several kinds of sensor data, for example multi-spectral cameras, laser scanners, and radar sensors. For more information visit: https
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health status of marine ecosystems. In contrast to conventional simulation frameworks that typically operate entirely in virtual environments, the DTO will connect both physical components (i.e., sensor