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also works towards the development of technological applications based on these materials such as electronics, bioelectronics and biosensing, neural interfaces, etc. The activities cut across different
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the internal computations and circuits within large models. Can we reverse-engineer the "algorithms" that a neural network has learned? Value Alignment & AI Ethics: How do we formally define and embed complex
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technology, nanofabrication) and applications, with a strong emphasis on bioelectronics for neural interfacing. Main Tasks and responsibilities: The research activity of the candidate will be part of
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to help build the Quantum Industry through a Pan-European mobility program. A number of fellowships therefore exist to support outstanding DigiQ students to undertake a research stay (internship or master’s
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i-BRAIN – the Institute for Brain Research, Advanced Interfaces and Neurotechnologies - is a highly-interdisciplinary research institute focused on developing transformative brain-computer
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materials, thin film technologies for neural interfaces, as well as in-vivo device validation of the neural technologies. Requirements: MSc, PhD in Materials Science, Nanotechnology, Engineering, Physics
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). ICN2 comprises 19 Research Groups, 7 Technical Development and Support Units and Facilities, and 2 Research Platforms, covering different areas of nanoscience and nanotechnology. Job Title: PhD on in
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Research Engineer - Tools developer for LSQUANT platform (Theoretical and Computational Nanoscience)
different areas of nanoscience and nanotechnology. Job Title: Research Engineer - Tools developer for LSQUANT platform Research area or group: Theoretical and Computational Nanoscience Group Description
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towards the development of technological applications based on these materials such as electronics, bioelectronics and biosensing, neural interfaces, etc. The activities cut across different scientific
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novel energy harvesting devices for the development of self-driven neural interfaces. Requirements: PhD in Energy, Electrochemistry, Materials Science, Nanotechnology, or equivalent degrees. Knowledge and