【24h】

Toward Dependency-Aware Live Virtual Machine Migration

机译:向依赖关系的实时虚拟机迁移

获取原文
获取原文并翻译 | 示例

摘要

The most powerful characteristic of any machine virtualizar tion technology is its ability to adapt to both its underlying infrastructure and the applications it supports. Possibly the most dynamic feature of machine visualization is the ability to migrate live virtual machines between physical hosts in order to optimize performance or avoid catastrophic events. Unfortunately, the need for live migration increases during times when resources are most scarce. For example, load-balancing is only necessary when load is significantly unbalanced and impending downtime often causes many virtual machines to seek new hosts simultaneously. It is imperative that live migration mechanisms be as fast and efficient as possible in order for visualization to provide dynamic load balancing, zero-downtime scheduled maintenance, and automatic failover during unscheduled downtime.rnThis paper proposes a novel dependency-aware approach to live virtual machine migration and presents the results of the initial investigation into its ability to reduce migration latency and overhead. The approach uses a tainting mechanism originally developed as an intrusion detection mechanism. Dependency information is used to distinguish processes that create direct or indirect external dependencies during live migration. It is shown that the live migration process can be significantly streamlined by selectively applying a more efficient protocol when migrating processes that do not create external dependencies during migration.
机译:任何计算机虚拟化技术的最强大的特征是它能够适应其基础架构及其所支持的应用程序。机器可视化的最动态功能可能是能够在物理主机之间迁移实时虚拟机,以优化性能或避免灾难性事件。不幸的是,在资源最稀缺的时期,对实时迁移的需求增加了。例如,仅当负载严重不平衡且即将发生的停机通常导致许多虚拟机同时寻找新主机时,才需要进行负载平衡。为了使可视化能够提供动态负载平衡,零停机计划维护以及非计划停机期间的自动故障转移,实时迁移机制必须尽可能快和高效。rn本文提出了一种新颖的依赖项感知方法,用于实时虚拟机迁移,并提供了有关减少迁移延迟和开销的能力的初步调查结果。该方法使用了最初开发为入侵检测机制的污染机制。依赖性信息用于区分在实时迁移期间创建直接或间接外部依赖性的过程。结果表明,通过在迁移过程中不创建外部依赖项的迁移过程中有选择地应用更有效的协议,可以显着简化实时迁移过程。

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