Adaptive Bandwidth Allocation in Network Function Virtualization: A Multi-Tenant Optimization Method Using Artificial Intelligence
Keywords:
Artificial Intelligence, Network Function Virtualization, bandwidth allocation, resource managementAbstract
NFV scales and facilitates flexible deployment of telecom network services. Changing traffic, demands, and resource allocation challenges multi-tenant NFV bandwidth management. Optimizing NFV AI bandwidth. Particularly machine learning techniques, artificial intelligence might improve real-time NFV performance, user experiences, and resource economy. AI handles multi-tenant systems, anticipates bandwidth, and best allocates resources. Evaluating artificial intelligence-managed NFV opportunities, drawbacks, and performance.
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