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Specific informations of {{{1}}}'s site:
- [[{{{1}}}:Hardware|Hardware]]
- [[{{{1}}}:Network|Network]]
- [[{{{1}}}:Storage|Storage]]
- [[{{{1}}}:External access|External access]]
- [[{{{1}}}:People|People]]
- [[{{{1}}}:Roadmap|Roadmap]]
- [[{{{1}}}:Logs|Logs]]
- [[{{{1}}}:Administration|Administration]]
Direct access to resources for {{{1}}}'s site:
- reservation state and reservation history via OAR
- available resources via Ganglia
- critical services via Nagios
- opened bugs via BugZilla
- {{{1}}}-staff via mail
Shortcuts to global tools and informations:
- support procedures to report bugs or ask for enhancements
- global reservation state and global reservation history via OARgrid.
- registered users via phpLDAPadmin
Latest updated publications Five random publications that benefited from Grid'5000 (at least 2943 overall):
- Vincent Alba, Olivier Aumage, Denis Barthou, Raphaël Colin, Marie-Christine Counilh, et al.. Performance portability of generated cardiac simulation kernels through automatic dimensioning and load balancing on heterogeneous nodes. PDSEC 2024, May 2024, San Francisco (CA, USA), United States. 10.1109/IPDPSW63119.2024.00171. hal-04606388v2 view on HAL pdf
- Jolyne Gatt, Maël Madon, Georges da Costa. Digital sufficiency behaviors to deal with intermittent energy sources in a data center. ICT4S 2024: International Conference on ICT for Sustainability, Jun 2024, Stockhlom, Sweden. 10.1109/ICT4S64576.2024.00015. hal-04745218 view on HAL pdf
- Vania Marangozova, Angelo Gennuso. K8S Auto-Scaler Coordinators. Université Grenoble - Alpes. 2024. hal-04963348 view on HAL pdf
- Théophile Bastian. Towards automatic characterization of microarchitectural behaviour form performance modeling of computing kernels : an analysis of the Cortex A72 and Intel microarchitectures. Hardware Architecture cs.AR. Université Grenoble Alpes 2020-.., 2024. English. NNT : 2024GRALM072. tel-05116111 view on HAL pdf
- Rahma Hellali, Zaineb Chelly Dagdia, Karine Zeitouni. A Multi-Objective Multi-Agent Interactive Deep Reinforcement Learning Approach for Feature Selection. International conference on neural information processing, Dec 2024, Auckland (Nouvelle Zelande), New Zealand. pp.15. hal-04723314 view on HAL pdf
Latest updated experiments {{#experiments: 5|{{{1}}}}}
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