Muestra métricas de impacto externas asociadas a la publicación. Para mayor detalle:
| Indexado |
|
||
| DOI | 10.4230/LIPICS.CP.2021.26 | ||
| Año | 2021 | ||
| Tipo |
Citas Totales
Autores Afiliación Chile
Instituciones Chile
% Participación
Internacional
Autores
Afiliación Extranjera
Instituciones
Extranjeras
High-performance Computing (HPC) systems have become essential instruments in our modern society. As they get closer to exascale performance, HPC systems become larger in size and more heterogeneous in their computing resources. With recent advances in AI, HPC systems are also increasingly being used for applications that employ many short jobs with strict timing requirements. HPC job dispatchers need to therefore adopt techniques to go beyond the capabilities of those developed for small or homogeneous systems, or for traditional compute-intensive applications. In this paper, we present a job dispatcher suitable for today's large and heterogeneous systems running modern applications. Unlike its predecessors, our dispatcher solves the entire dispatching problem using Constraint Programming (CP) with a model size independent of the system size. Experimental results based on a simulation study show that our approach can bring about significant performance gains over the existing CP-based dispatchers in a large or heterogeneous system.
| Ord. | Autor | Género | Institución - País |
|---|---|---|---|
| 1 | Galleguillos, Cristian | Hombre |
Pontificia Universidad Católica de Valparaíso - Chile
Alma Mater Studiorum Università di Bologna - Italia |
| 2 | Kiziltan, Zeynep | Mujer |
Alma Mater Studiorum Università di Bologna - Italia
|
| 3 | Soto, Ricardo | Hombre |
Pontificia Universidad Católica de Valparaíso - Chile
|