首页> 外文会议>IEEE International Parallel and Distributed Processing Symposium Workshops >Budget-Aware Scheduling Algorithms for Scientific Workflows with Stochastic Task Weights on Heterogeneous IaaS Cloud Platforms
【24h】

Budget-Aware Scheduling Algorithms for Scientific Workflows with Stochastic Task Weights on Heterogeneous IaaS Cloud Platforms

机译:异构IaaS云平台上具有随机任务权重的科学工作流的预算感知调度算法

获取原文

摘要

This paper introduces several budget-aware algorithms to deploy scientific workflows on IaaS cloud platforms, where users can request Virtual Machines (VMs) of different types, each with specific cost and speed parameters. We use a realistic application/platform model with stochastic task weights, and VMs communicating through a datacenter. We extend two well-known algorithms, MinMin and HEFT, and make scheduling decisions based upon machine availability and available budget. During the mapping process, the budget-aware algorithms make conservative assumptions to avoid exceeding the initial budget; we further improve our results with refined versions that aim at re-scheduling some tasks onto faster VMs, thereby spending any budget fraction leftover by the first allocation. These refined variants are much more time-consuming than the former algorithms, so there is a trade-off to find in terms of scalability. We report an extensive set of simulations with workflows from the Pegasus benchmark suite. Most of the time our budget-aware algorithms succeed in achieving efficient makespans while enforcing the given budget, despite (i) the uncertainty in task weights and (ii) the heterogeneity of VMs in both cost and speed values.
机译:本文介绍了几种可感知预算的算法,以便在IaaS云平台上部署科学工作流,用户可以在其中请求不同类型的虚拟机(VM),每种虚拟机都具有特定的成本和速度参数。我们使用具有随机任务权重的逼真的应用程序/平台模型,以及虚拟机通过数据中心进行通信。我们扩展了两种著名的算法MinMin和HEFT,并根据机器可用性和可用预算做出调度决策。在映射过程中,预算感知算法会做出保守的假设,以避免超出初始预算。我们使用改进的版本进一步改善了结果,这些版本旨在将一些任务重新安排到更快的VM上,从而花费第一次分配剩余的预算部分。这些改进的变体比以前的算法耗时得多,因此在可伸缩性方面需要权衡取舍。我们报告了来自Pegasus基准套件的工作流的大量模拟。大多数时候,尽管(i)任务权重的不确定性和(ii)VM在成本和速度值上的异质性,我们的预算感知算法都能在执行给定预算的同时成功实现有效的制造期。

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