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On the Scaling of Virtualized Network Functions

机译:虚拟网络功能的扩展

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Offering Virtualized Network Functions (VNFs) as a service requires automation of cloud resource management to allocate cloud resources for the VNFs dynamically. Most of the existing solutions focus only on the initial resource allocation. However, the allocation of resources must adapt to dynamic traffic demands and support fast scaling mechanisms. There are three basic scaling models: vertical where re-scaling is achieved by changing the resources assigned to the VNF in the host server, horizontal where VNFs are replicated or removed to do rescaling, and migration where VNFs are moved to servers with more resources. In this paper, we present an Iterated Local Search (ILS) based framework for automation of resource reallocation that supports the three scaling models. We, then, use the framework to run experiments and compare the different scaling approaches, specifically how the optimization is affected by the scaling approach and the optimization objectives.
机译:提供虚拟化网络功能(VNF)作为服务需要自动化云资源管理,才能为VNF动态分配云资源。现有的大多数解决方案仅专注于初始资源分配。但是,资源分配必须适应动态流量需求并支持快速扩展机制。共有三种基本扩展模型:纵向(通过更改主机服务器中分配给VNF的资源来实现重新缩放),水平(在其中复制或删除VNF以进行重新缩放)以及迁移(将VNF移至具有更多资源的服务器上)。在本文中,我们提出了一种基于迭代局部搜索(ILS)的框架,用于资源重新分配的自动化,该框架支持三种扩展模型。然后,我们使用该框架进行实验并比较不同的缩放方法,特别是缩放方法和优化目标如何影响优化。

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