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, environmental and sensor data Design and validate AI-based risk and preparedness models Publish scientific articles in peer-reviewed journals and conferences Participate in international collaboration within
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interest since 2000. It allows us to better plan our cities, and new approaches have been made possible with the widespread use of smartphones carrying several different sensors. As a matter of fact, in most
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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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available in 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
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the Nuclear envelope dynamics group and the Laboratory for Neural Computation groups at the Institute for Basic Medical Sciences. Explore quantum defect-based sensors as indicators of biomechanical forces
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sensor signals into reliable state information and use this information to enable real-time, closed-loop operation. A key strength of these projects is that your work will not remain “simulation-only.” You
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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 medicine is
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technologies are central to both sensor development and underwater communication and are therefore included in several of the centre activities. About the project/work tasks: The PhD project has working title
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with technical instrumentation (e.g. O2 and nutrient sensors) and sea ice environments is a benefit. Interest in microbiology and biogeochemistry within laboratory setting is essential to the position
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proficiency, particularly in Python Experience with or strong interest in, Language models (SLMs/LLMs), Agentic AI systems, Deep learning architectures, Multimodal AI (e.g., text, time-series, sensor data