Using a resource classifier in traffic forecasting models for SDN networks

Authors

DOI:

https://doi.org/10.18372/2073-4751.78.18960

Keywords:

traffic forecasting, network resource classifier, SDN, neural network

Abstract

This publication reviews existing solutions for predicting SDN traffic. The proposed solution uses a resource classifier of client requests for predicting the network response to these requests. This short-term forecasting is performed using a convolutional neural network. The article considers aspects of parallel computing and forecasting in a dynamically reconfigurable system. Forecasting results can be used in QoS/QoE services, SDN controller for traffic routing and detection of anomalous traffic by network protection systems.

References

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Published

2024-07-01

Issue

Section

Статті