首页> 外文会议>International Conference on High Performance Computing >Dynamic Load Balancing for I/O-Intensive Tasks on Heterogeneous Clusters
【24h】

Dynamic Load Balancing for I/O-Intensive Tasks on Heterogeneous Clusters

机译:异构集群I / O密集型任务的动态负载平衡

获取原文

摘要

Since I/O-intensive tasks running on a heterogeneous clus-ter need a highly effective usage of global I/O resources, previous CPU-or memory-centric load balancing schemes surfer significant performance drop under I/O-intensive workload due to the imbalance of I/O load. To solve this problem, we develop two I/O-aware load-balancing schemes, which consider system heterogeneity and migrate more I/O-intensive tasks from a node with high I/O utilisation to those with low I/O uti-lization. If the workload is memory-intensive in nature, the new method applies a memory-based load balancing policy to assign the tasks. Like-wise, when the workload becomes CPU-intensive, our scheme leverages a CPU-based policy as an efficient means to balance the system load, In doing so, the proposed approach maintains the same level of performance as the existing schemes when I/O load is low or well balanced. Results from a trace-driven simulation study show that, when a workload is I/O-intensive, the proposed schemes improve the performance with respect to mean slowdown over the existing schemes by up to a factor of 8. In addition, the slowdowns of almost all the policies increase consistently with the system heterogeneity.
机译:由于在一个异构的CLU之三需要全局I / O资源,一个非常有效的使用运行I / O密集型任务,以前的CPU或内存为中心的负载均衡方案下我上网显著性能下降/ O密集型工作负载因I / O负载的不平衡。为了解决这个问题,我们开发了两个I / O感知的负载均衡方案,其中考虑系统的异质性和高I / O利用率的一个节点迁移更多的I / O密集型任务,那些低I / O UTI-补肾中药。如果工作负载的内存密集型的性质,新方法应用于基于内存的负载均衡策略分配的任务。像明智的,当工作负荷变得CPU密集型的,我们的方案利用基于CPU的策略作为一种有效的手段来平衡系统负载,在此过程中,该方法保持相同的性能水平,现有的方案时,I / O负载低或很好的平衡。从跟踪驱动模拟研究的结果显示,当工作负载的I / O密集型,所提出的方案提高相对于高达平均增长放缓在现有方案的性能达到8.另外一个因素,怠工几乎所有的政策与制度的异质性持续增加。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号