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Description of the workplace Our division in the Enoch Thulin laboratory develops laser spectroscopic diagnostics techniques for industrial and environmental applications. In the biophotonic sensing
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Autonomy for modular and soft robotics - Reconfigurable morphogenesis, self-assembling robots - Terrain-adaptive locomotion - Embedded sensing and soft actuation Human-robot interaction - Dynamic task
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/thesis: Challenges and opportunities with remote sensing and machine learning in forestry Research subject : Soil science Description: WIFORCE Research School Do you want to contribute to the future
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Functional Materials, 2024, 34, 2406875). This project will further develop this technique with a focus on aerospace applications such as lightning protection, de-icing, and sensing. This position is part of
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Project descriptionAutonomous systems are intelligent agents—such as robots, vehicles, or drones—that can sense their environment, make decisions, and act independently. When multiple such agents
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analysis. Personal Attributes We place great importance on personal suitability. To succeed in this role, you should demonstrate: A high sense of responsibility and integrity Strong analytical and problem
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that push the boundaries of what is possible, aiming for the next generation of wireless systems, remote sensing and space far-infrared instrumentation. You will benefit from engaging discussions with our
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The University of Borås offers more than just employment – here, you have the opportunity to influence and make a difference. For us, it’s important that you feel well and maintain a good work-life
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on the development of self-sensing fiber-reinforced cementitious composites (SS-FRCMs) for the dual purpose of structural strengthening and real-time health monitoring of infrastructure. The research is structured
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aims to advance the field of time and frequency (TF) transmission in data communication networks. The focus of the research will be on distributed fiber optic sensing (FDOS) and machine learning