5 Years Impact Factor: 1.53
Author: Kranti Kumar Appari
Abstract:
This paper proposes a reinforcement learning approach to optimize Service Function Chaining (SFC) in Network Function Virtualization (NFV) environments. As 5G networks introduce unprecedented complexity in service requirements and connected devices, efficient orchestration of Virtual Network Functions (VNFs) becomes critical for maintaining Quality of Service (QoS). Traditional SFC path selection methods often struggle to adapt to dynamic network conditions and resource constraints. To address these challenges, we present a Q-Learning-based algorithm that dynamically selects optimal SFC paths based on real-time resource usage (CPU and memory) and physical node location. By modeling the problem as a Markov Decision Process (MDP), our approach enables an intelligent agent to learn efficient chaining policies through interaction with the network environment. We implemented our solution in an OpenStack- based NFV testbed and compared it against random path selection across mult
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