Yingdong Lu, Mark S. Squillante, et al.
NeurIPS 2019
In this paper we present a study of the job arrival patterns from a parallel computing system and the impact of such arrival patterns on the performance of parallel scheduling strategies. Using workload data from the Cornell Theory Center, we develop a class of traffic models to characterize these arrival patterns. Our analysis of the job arrival data illustrates traffic patterns that exhibit heavy-tailed behavior and other characteristics which are quite different from the arrival processes used in previous studies of parallel scheduling. We then investigate the impact of these arrival traffic patterns on the performance of parallel space-sharing strategies, including the derivation of some scheduling optimality results.
Yingdong Lu, Mark S. Squillante, et al.
NeurIPS 2019
Min Li, Jian Tan, et al.
Cluster Computing
Eugenio Gianniti, Li Zhang, et al.
SBAC-PAD 2018
Li Zhang, Danilo Ardagna
WWW 2004