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Field
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of different chemical and biological wearable/implantable/point-of-care sensors using these materials for the high precision detection of biomarkers and physiological parameters, such as proteins, DNA, antigen
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, or sensor development, looking to apply your background to next generation power electronic conversion and related measurement in pursuit of Carbon Net Zero? We are seeking motivated interdisciplinary
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the underground infrastructure theme within the Quantum Technology Research Hub in Sensors, Imaging and Timing (www.quisit.org ). The successful candidate will focus on designing and conducting large scale
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environmental monitoring data and access to Fjordlab marine research infrastructure at NTNU Ålesund, enabling validation of models using real-world observations and sensor networks. The postdoctoral fellowship
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writing manuscripts with data from the multi-year On Thin Ice project. This year-round field-based project combines data across 93 international networked lakes, 23 gradient lakes, and 6 model lakes with
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ecosystems. This can be data collected about the marine environment from, e.g., satellites, using passive or active acoustic sensors, or underwater video/images from AUVs. The research will be done in
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, pulsed power, or sensor development, looking to apply your background to next generation power electronic conversion and related measurement in pursuit of Carbon Net Zero? We are seeking motivated
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, advanced sensing techniques, sensor and operational data fusion, data analytics, and machine learning algorithms for condition monitoring, fault diagnosis, and early fault prediction in electric vessels
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mechanical ventilation, simulation, building automation and control, sensor network, thermal energy storage, indoor air quality, heat transfer, and building energy performance evaluation. Experience of test
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candidates/candidates who are in the closing stages of their master’s degree can also apply Solid background in artificial intelligence and machine learning, including deep neural networks Programming