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, Computational Science and Systems and Network Engineering. Our research involves complex information systems at large, with a focus on collaborative, data driven, computational and intelligent systems, all with a
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engineering disciplines to address the global societal challenges that threaten us today, climate change without doubt being the most important. Our focal subjects: sustainable aerospace, big data and
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intelligence (GenAI) in the form of conversational agents such as ChatGPT as sources of information. These agents help individuals learn about society and the world around them, including what companies do and
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perfectly secure tool for storing and processing sensitive data in an untrusted cloud environment. However, this innovative encryption method introduces a significant overhead leading to a large computational
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). Proceedings of the National Academy of Sciences, 119(11), 1-9. Athey, S. (2017). Beyond prediction: Using big data for policy problems. Science, 355(6324), 483–485. Barocas, S., Hardt, M., & Narayanan, A. (2021
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innovations in offshore renewable energy through data-driven hybrid labs. The scale of infrastructure and innovations in HybridLabs is unique. The collaborative research tasks involve the connection of hybrid
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of the English language is expected to be at C1 level . Sometimes it is necessary to submit an internationally recognised Certificate of Proficiency in the English Language. More information can be found here . We offer
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bulk infrared spectroscopy, optical photothermal spectroscopy, and infrared nanospectroscopy (AFM-IR); apply chemometrics and machine learning methods (AI) to analyze the data and identify nano-chemical
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overcome this gap. Deep learning models are exceptional at identifying multiple features in large datasets without explicit programming, and have shown to be adept at enhancing assistive technology
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Irène Curie Fellowship No Department(s) Industrial Engineering and Innovation Sciences Reference number V39.7543 Job description Can and should philosophers employ large language models or other