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description based on analysis of the raw data. Onboard processing is also very relevant for units with multiple sensors (sensor fusion) where the combination of information from multiple sensors can be used
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University Hospital, Duke Regional Hospital, Duke Raleigh Hospital, Duke Health Integrated Practice, Duke Primary Care, Duke Home Care and Hospice, Duke Health and Wellness, and multiple affiliations. Be You
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, for whom and why. Conduct multiple case study research adopting various qualitative and quantitative research methodologies. Build bridges between theory and VET education practice (back and forth) and
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(3.5 years). Project Description Computing systems today face increasing security threats, including zero-day vulnerabilities, side-channel attacks, and firmware exploits across multiple layers
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Your Job: develop numerical and analytical techniques to simulate and control the time dynamics of quantum technology devices implement and optimize gate operations and artificial Hamiltonians
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. Development of multimodal AI models that fuse data from multiple types of sensors to accurately model and predict wind turbine blade damage. Establish and develop data science pipelines for wind turbine blade
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patient-derived, isogenic-corrected patient-derived controls and healthy-derived iPSCs and evaluate pathomechanisms through in-depth molecular, physiologic, and morphologic phenotype analysis. WP2
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and interests. You have an excellent command of written and spoken Dutch and English and excellent communication skills. You have the ability to work both independently and as a team player. You have a
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. Empa is a research institution of the ETH Domain. In our research group, we design smart stimuli-responsive (nano)-materials that can be applied as diagnostic tools or as controlled drug delivery systems
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on “Statistical models for high-dimensional and functional data ”, led by Associate Professor Valeria Vitelli. Successful candidates will work on Bayesian models for unsupervised learning when multiple data sources