Boosting performance of I/O-intensive workload by preemptive job migrations in a cluster system
Resumo
Load balancing in a cluster system has been investigated extensively, mainly focusing on the effective usage of global CPU and memory resources. However, if a significant portion of applications running in the system is I/O-intensive, traditional load balancing policies that focus on CPU and memory usage may cause the system performance to decrease substantially. To solve this problem, a new I/O-aware load-balancing scheme with preemptive job migration is presented to sustain the high performance of a cluster with a diverse set of workload conditions. The proposed scheme dynamically detects I/O load imbalance on nodes of a cluster, and determines whether to preempt some running jobs on overloaded nodes and migrate them to other less- or under-loaded nodes. Besides balancing I/O load, the scheme takes into account both CPU and memory load sharing in clusters, thereby maintaining the same level of performance as existing schemes when I/O load is low or well balanced. Results from a trace-driven simulation show that, compared to the existing approaches that only consider I/O with nonpreemptive job migrations, the proposed schemes achieve the improvement in mean slowdown by up to a factor of 10.
Palavras-chave:
Boosting, Load management, System performance, Computer science, Application software, Computational modeling, Remote sensing, Bridges, Costs, Throughput
Publicado
10/11/2003
Como Citar
QIN, X.; JIANG, H.; ZHU, Y.; SWANSON, D. R..
Boosting performance of I/O-intensive workload by preemptive job migrations in a cluster system. In: INTERNATIONAL SYMPOSIUM ON COMPUTER ARCHITECTURE AND HIGH PERFORMANCE COMPUTING (SBAC-PAD), 15. , 2003, São Paulo/SP.
Anais [...].
Porto Alegre: Sociedade Brasileira de Computação,
2003
.
p. 235-243.
