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An Enhanced Ensemble Method on Optimization for Resource Allocation in Software-Defined Networking Environments


Affiliations
1 Department of Computer Science and Engineering, Unnamalai Institute of Technology, India

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Software-Defined Networking (SDN) offers flexibility and programmability in network management, but efficient resource allocation remains a challenge due to dynamic traffic patterns and diverse service requirements. This paper proposes an Enhanced Ensemble Method (EEM) for optimizing resource allocation in SDN environments. EEM integrates multiple ensemble learning techniques, leveraging their complementary strengths to enhance prediction accuracy and robustness. The key contribution lies in the novel integration of ensemble methods tailored for SDN resource allocation, offering improved adaptability to changing network conditions and service demands. Evaluation on real-world SDN datasets demonstrates that EEM outperforms existing methods in terms of both resource utilization efficiency and service quality. Notably, EEM achieves significant improvements in network throughput, latency reduction, and resource utilization balance.

Keywords

Software-Defined Networking, Resource Allocation, Ensemble Learning, Optimization, Dynamic Traffic Patterns
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  • An Enhanced Ensemble Method on Optimization for Resource Allocation in Software-Defined Networking Environments

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Authors

Mathumohan Swamidoss
Department of Computer Science and Engineering, Unnamalai Institute of Technology, India

Abstract


Software-Defined Networking (SDN) offers flexibility and programmability in network management, but efficient resource allocation remains a challenge due to dynamic traffic patterns and diverse service requirements. This paper proposes an Enhanced Ensemble Method (EEM) for optimizing resource allocation in SDN environments. EEM integrates multiple ensemble learning techniques, leveraging their complementary strengths to enhance prediction accuracy and robustness. The key contribution lies in the novel integration of ensemble methods tailored for SDN resource allocation, offering improved adaptability to changing network conditions and service demands. Evaluation on real-world SDN datasets demonstrates that EEM outperforms existing methods in terms of both resource utilization efficiency and service quality. Notably, EEM achieves significant improvements in network throughput, latency reduction, and resource utilization balance.

Keywords


Software-Defined Networking, Resource Allocation, Ensemble Learning, Optimization, Dynamic Traffic Patterns