Author :
Rankothge, Windhya ; Jiefei Ma ; Le, Franck ; Russo, Alessandra ; Lobo, Jorge
Abstract :
By allowing network functions to be virtualized and run on commodity hardware, NFV enables new properties (e.g., elastic scaling), and new service models for Service Providers, Enterprises, and Telecommunication Service Providers. However, for NFV to be offered as a service, several research problems still need to be addressed. In this paper, we focus and propose a new service chaining algorithm. Existing solutions suffer two main limitations: First, existing proposals often rely on mixed Integer Linear Programming to optimize VM allocation and network management, but our experiments show that such approach is too slow taking hours to find a solution. Second, although existing proposals have considered the VM placement and network configuration jointly, they frequently assume the network configuration cannot be changed. Instead, we believe that both computing and network resources should be able to be updated concurrently for increased flexibility and to satisfy SLA and Qos requirements. As such, we formulate and propose a Genetic Algorithm based approach to solve the VM allocation and network management problem. We built an experimental NFV platform, and run a set of experiments. The results show that our proposed GA approach can compute configurations to to three orders of magnitude faster than traditional solutions.
Keywords :
cloud computing; computer network management; genetic algorithms; quality of service; virtual machines; virtualisation; GA approach; NFV; Qos requirements; SLA; VM allocation; VM placement; cloud computing service; commodity hardware; enterprises; genetic algorithm; network configuration; network function virtualization; network management; network resources; service chaining algorithm; service models; telecommunication service providers; virtual machine; Elasticity; Genetic algorithms; Resource management; Servers; Sociology; Statistics; Topology;