Assessing the impact of concurrent replication with canceling in Parallel Jobs

Parallel job processing has become a key feature of many software applications, e.g., in scientific computing. Parallelization allows these applications to exploit large resource pools, such as cloud or grid data centers. However, a job composed of a large number of parallel tasks will suffer a fail...

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Autores:
Tipo de recurso:
Fecha de publicación:
2015
Institución:
Universidad del Rosario
Repositorio:
Repositorio EdocUR - U. Rosario
Idioma:
eng
OAI Identifier:
oai:repository.urosario.edu.co:10336/28505
Acceso en línea:
https://doi.org/0.1109/MASCOTS.2014.13
https://repository.urosario.edu.co/handle/10336/28505
Palabra clave:
Reliability
Time factors
Computational modeling
Numerical models
Vectors
Generators
Equations
Rights
License
Restringido (Acceso a grupos específicos)
Description
Summary:Parallel job processing has become a key feature of many software applications, e.g., in scientific computing. Parallelization allows these applications to exploit large resource pools, such as cloud or grid data centers. However, a job composed of a large number of parallel tasks will suffer a failure if any of its tasks fail, requiring reprocessing and additional delays. In this paper, we explore the effect that the replication of parallel jobs has on the job reliability and response time, as well as on resource utilization. The replication mechanism consists of concurrently processing replicas, at either the job or the task level, retrieving the results of the replica that finishes first, if any, and canceling any remaining replica in process. We propose a stochastic model that explicitly considers parallel job processing, replication at both the job and the task level, and handles general arrival processes. We develop a numerically-efficient algorithm to solve large-scale instances of the model and compute key performance metrics. We observe that the task cancellation mechanism offers an effective way of limiting the increase in resource utilization, allowing the use of replicas that not only increase the job reliability, but have the potential to reduce the response times.