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AI-Empowered VNF Migration as a Cost-Loss-Effective Solution for Network Resilience

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arxiv 2101.09343 v1 pith:52JW2RVJ submitted 2021-01-22 cs.NI cs.AI

AI-Empowered VNF Migration as a Cost-Loss-Effective Solution for Network Resilience

classification cs.NI cs.AI
keywords costnetworkmigrationuserai-empoweredlossmobilityoperations
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With a wide deployment of Multi-Access Edge Computing (MEC) in the Fifth Generation (5G) mobile networks, virtual network functions (VNF) can be flexibly migrated between difference locations, and therewith significantly enhances the network resilience to counter the degradation in quality of service (QoS) due to network function outages. A balance has to be taken carefully, between the loss reduced by VNF migration and the operations cost generated thereby. To achieve this in practical scenarios with realistic user behavior, it calls for models of both cost and user mobility. This paper proposes a novel cost model and a AI-empowered approach for a rational migration of stateful VNFs, which minimizes the sum of operations cost and potential loss caused by outages, and is capable to deal with the complex realistic user mobility patterns.

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