Advancing autonomous network optimization: A DevOps-based framework for self-healing telecommunications networks
1 TELUS Mobility, Canada.
2 Salworks Consulting, Calgary, Canada.
3 Canadian Western Bank, Calgary, Canada.
Review
Open Access Research Journal of Multidisciplinary Studies, 2021, 02(01), 176-191.
Article DOI: 10.53022/oarjms.2021.2.1.0042
Publication history:
Received on 28 August 2021; revised on 18 October 2021; accepted on 22 October 2021
Abstract:
The evolving demands of modern telecommunications networks require continuous optimization to ensure reliability, performance, and scalability. This paper proposes an advanced framework for autonomous network optimization, utilizing a DevOps-driven approach to enable self-healing capabilities in telecommunications networks. The framework integrates automation, machine learning, and real-time anomaly detection to facilitate proactive network management, minimizing downtime and enhancing operational efficiency. In traditional telecom network management, the detection and resolution of network issues are often reactive, leading to delays and performance degradation. The proposed self-healing network system, based on DevOps principles, automates the entire process of anomaly detection, root cause analysis, and resolution. The framework employs machine learning algorithms to continuously monitor network traffic and performance metrics, enabling real-time identification of potential issues such as congestion, service degradation, or security breaches. Upon detecting anomalies, the system automatically triggers corrective actions, including rerouting traffic, optimizing resource allocation, or scaling network components, all without human intervention. The architecture integrates key DevOps elements, such as continuous integration/continuous deployment (CI/CD) pipelines, version control, and automated testing, to ensure rapid and reliable updates to the network infrastructure. This seamless integration of automation and machine learning enhances the system’s ability to adapt to evolving network conditions, providing a dynamic and self-optimizing network environment. The paper explores the benefits of this self-healing framework, including reduced operational costs, improved network uptime, and enhanced user experience. It also addresses the challenges associated with implementing such systems, including data quality, training models, and network complexity. Ultimately, this DevOps-based framework represents a significant step toward the future of autonomous, self-healing telecommunications networks, offering a foundation for the next generation of intelligent network management.
Keywords:
Autonomous Network Optimization; Devops; Self-Healing Networks; Machine Learning; Anomaly Detection; Network Automation; Real-Time Resolution; Continuous Integration; Telecommunications
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Copyright © 2021 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0