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Slide presentation "Neuroscience and Open Science: a winning combination". SINS 2023 National Congress, September 16th, Torino. This talk is part of the Symposium "Big Data in Neuroscience: large scale characterization of brain physiology". Abstract: Open Science aims to make scientific knowledge openly available, accessible, and reusable to everyone for the benefits of science and society. It includes various movements and practices and it has rapidly become the new normal in research. Practicing Open Science also requires to manage research data responsibly and to share them with complete documentation and in line with the FAIR guiding principles for scientific data management to enable reuse by humans and machines. This is even more important when collecting large amounts of valuable data that are relevant to multiple scientific questions. During this presentation, I will highlight how the Open Science paradigm can be successfully applied in Neuroscience, in particular when big data is involved, with practical examples and with reference to existing tools, platforms, and standards in this field.
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neuroscience, research, big data, open science, FAIR
neuroscience, research, big data, open science, FAIR
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