首页> 外文会议>IEEE International Conference on Network Protocols >How Hard Can It Be?: Understanding the Complexity of Replica Aware Virtual Cluster Embeddings
【24h】

How Hard Can It Be?: Understanding the Complexity of Replica Aware Virtual Cluster Embeddings

机译:它有多难?:了解副本感知的虚拟群集嵌入的复杂性

获取原文

摘要

Virtualized datacenters offer great flexibilities in terms of resource allocation. In particular, by decoupling applications from the constraints of the underlying infrastructure, virtualization supports an optimized mapping of virtual machines as well as their interconnecting network to their physical counterparts: essentially a graph embedding problem. However, existing embedding algorithms such as Oktopus and Proteus often ignore a crucial dimension of the embedding problem, namely data locality: the input to a cloud application such as MapReduce is typically stored in a distributed, and sometimes redundant, file system. Since moving data is costly, an embedding algorithm should be data locality aware, and allocate computational resources close to the data, in case of redundant storage, the algorithm should also optimize the replica selection. This paper initiates the algorithmic study of data locality aware virtual cluster embeddings on datacenter topologies. We show that despite the multiple degrees of freedom in terms of embedding, replica selection and assignment, many problems can be solved efficiently. We also highlight the limitations of such optimizations, by presenting several NP-hardness proofs, interestingly, our hardness results also hold in uncapacitated networks of small diameter.
机译:虚拟化数据中心在资源分配方面提供了极大的灵活性。尤其是,通过将应用程序与底层基础结构的约束脱钩,虚拟化支持虚拟机及其互连网络到物理对应物的优化映射:本质上是一个图形嵌入问题。但是,现有的嵌入算法(例如Oktopus和Proteus)通常会忽略嵌入问题的一个关键方面,即数据局部性:云应用程序(例如MapReduce)的输入通常存储在分布式的,有时是冗余的文件系统中。由于移动数据的成本很高,因此嵌入算法应了解数据的位置,并分配与数据接近的计算资源,在有冗余存储的情况下,该算法还应优化副本选择。本文启动了对数据中心拓扑上的数据局部性虚拟集群嵌入的算法研究。我们证明,尽管在嵌入,副本选择和分配方面存在多个自由度,但许多问题仍可以有效解决。通过提供几个NP硬度证明,我们还强调了这种优化的局限性,有趣的是,我们的硬度结果也适用于小直径的无电容网络。

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