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interdisciplinary, and together we contribute to science and society. Your role Conduct research at the highest scientific level Set up and develop your own research group in the field of bioinformatics or related
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computing as well as smart communication applications based on state-of-the-art magnetic tunnel junctions coupled into interacting networks. The ultimate goal will be to develop small scale demonstrators with
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focuses on the analytical synthesis of broadband and dual-band matching networks and power combiners for 6G radar applications. The objective is to develop a component library for integration
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resources to carry out your assignments. YOUR ASSIGNMENTS: The internship will develop and implement scalable, high‑performance algorithms for transient Lindblad dynamics tailored to the multi‑level Rydberg
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of teaching and research, the FSTM seeks to generate and disseminate knowledge and train new generations of responsible citizens in order to better understand, explain and advance society and environment we
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shine and develop your skills. WORKING ENVIRONMENT ( MANAGER AND TEAM) : The size of the team will allow you to have close relationships with management and your colleagues. You will be in charge of
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typically around 200nm in the transverse plane and 400nm in the optical axis. Over the recent years, several super-resolution techniques have been developed to overcome this drawback. Among them we focus
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of brain MRI (magnetic resonance imaging) phenotypes to better understand the underlying biological pathways and support the development of biomarkers addressing the lack of gold standards in mental health
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to collaboratively train machine learning models without sharing their data. Instead, clients exchange local model updates with a central server, which uses them to improve a global model. While this paradigm enhances
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(UCA). He leads the eBRAIN research group and develops a interdisciplinary research activity on embedded Bio-inspiRed AI and Neuromorphic architectures, especially based on SNNs. LEAT is a mixt research