Open Science and Artificial Intelligence for supporting the sustainability of the SRC Network: The espSRC case
- URL: http://arxiv.org/abs/2503.16045v1
- Date: Thu, 20 Mar 2025 11:29:00 GMT
- Title: Open Science and Artificial Intelligence for supporting the sustainability of the SRC Network: The espSRC case
- Authors: J. Garrido, S. Sánchez-Expósito, A. Ruiz-Falcó, J. Ruedas, M. Á. Mendoza, V. Vázquez, M. Parra, J. Sánchez, I. Labadie, L. Darriba, J. Moldón, M. Rodriguez-Álvarez, J. Díaz, L. Verdes-Montenegro,
- Abstract summary: A global network of SKA Regional Centres (SR-CNet) will provide the infrastructure, tools, computational power needed for scientific analysis and scientific support.<n>The Spanish SRC (espSRC) focuses on ensuring the sustainability of this network by reducing its environmental impact.<n>This paper discusses and summarizes part of the research and development activities that the team is conducting to reduce the SRC energy consumption.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The SKA Observatory (SKAO), a landmark project in radio astronomy, seeks to address fundamental questions in astronomy. To process its immense data output, approximately 700 PB/year, a global network of SKA Regional Centres (SR-CNet) will provide the infrastructure, tools, computational power needed for scientific analysis and scientific support. The Spanish SRC (espSRC) focuses on ensuring the sustainability of this network by reducing its environmental impact, integrating green practices into data platforms, and developing Open Science technologies to enable reproducible research. This paper discusses and summarizes part of the research and development activities that the team is conducting to reduce the SRC energy consumption at the espSRC and SRCNet. The paper also discusses fundamental research on trusted repositories to support Open Science practices.
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