Improving Reliability of Service Function Chains with Combined VNF Migrations and Replications
Francisco Carpio, Admela Jukan

TL;DR
This paper explores how combining VNF migrations and replications can enhance the reliability of Service Function Chains in NFV, while also optimizing resource utilization and load balancing.
Contribution
It introduces a linear programming model to analyze joint VNF migrations and replications, demonstrating their combined benefits for reliability and resource efficiency.
Findings
Replications improve reliability and load balancing.
Joint migrations and replications enhance resource utilization.
N-to-N configurations enable fast recovery with efficient resource use.
Abstract
The Network Function Virtualization (NFV) paradigm is enabling flexibility, programmability and implementation of traditional network functions into generic hardware, in form of Virtual Network Functions (VNFs). To provide services, the VNFs are commonly concatenated in a certain ordered sequence, known as Service Function Chains (SFCs). SFCs are usually required to meeting a certain level of reliability. This creates the need to place the VNFs while optimizing reliability jointly with other objectives, such as network and server load balancing. Traditional migration and replication mechanisms, commonly used for Virtual Machines (VM) in data centers, can be used to improve SFC reliability. We study how to improve service reliability using jointly replications and migrations, considering the chaining problem inherent in NFV. While replications provide reliability, performing migrations…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · Software System Performance and Reliability · Network Security and Intrusion Detection
