Ali El Amine, O. Brun, Slim Abdellatif, Pascal Berthou
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引用次数: 1
摘要
我们在切片即服务(SlaaS)模型中考虑了SFC嵌入(SFCE)问题。在这个模型中,一个片提供程序从多个云和网络提供程序租用资源,以便实例化片承租者请求的服务功能链(Service Function Chain, SFC)。由于片提供程序对资源提供程序的基础设施不具有可视性,因此它必须查询资源提供程序,以确定可能的分配情况及其成本。我们表明,当有许多资源提供者和许多vnf组成SFC时,为发现最低成本的SFC嵌入而进行的查询数量会迅速增加,从而导致部署时间过长。为了减少后一种数量,我们建议策略性地查询资源提供者,而不是一次收集所有可能分配的信息。我们提供了在这种方法中要进行的查询数量的限制,并建议利用最短路径发现算法来减少查询数量,从而减少SFC部署时间。我们的数值结果表明,该算法是相当有效的,并且可以显著缩短部署时间,特别是当分片提供商可以提供分配成本的初始估计时。
Shortening the Deployment Time of SFCs by Adaptively Querying Resource Providers
We consider the SFC embedding (SFCE) problem in the Slice as a Service (SlaaS) model. In this model, a slice provider leases resources from multiple cloud and network providers in order to instantiate the Service Function Chain (SFC) requested by a slice tenant. As the slice provider has no visibility on the infrastructures of the resource providers, in which resources may be purchased and released quite rapidly, it has to query them to determine what are the possible allocations and their costs. We show that when there are many resource providers and many VNFs composing the SFC, the number of queries to be made for discovering a minimum cost SFC embedding grows quickly, leading to excessively long deployment times. In order to reduce the latter quantity, we propose to query resource providers strategically, rather than collecting the information on all possible allocations at once. We provide bounds on the number of queries to be made in this approach, and propose to exploit a Shortest Path Discovery algorithm in order to reduce this number of queries and thus the SFC deployment time. Our numerical results suggest that this algorithm is fairly efficient, and that the deployment times can be significantly shortened, in particular when initial estimates of allocation costs can be provided by the slice provider.