Today’s 5G network landscape represents a significant departure from previous generations. With this network, we see greater vendor diversity and increased disaggregation within the network. The shift towards distributed and cloud-based technologies, combined with rising demands for low-latency, high-bandwidth, and ultra-reliable services, is driving the development of new network design and management strategies. Programmability also influences 5G networks by creating opportunities for collaboration, fostering innovation in service development, and offering new monetization avenues.
AIOps has the potential to transform network security and management, aligning with the complexities of the current 5G landscape. However, a high level of visibility for these new capabilities is needed to be viable in a vastly different network environment
As 5G networks expand in scale and scope, operators encounter bigger challenges in effectively managing network performance and security. With the growing complexity of multi-layer network stacks and an array of configuration languages and tools, the risks to network stability and resilience also increase. To address these changes and mitigate potential risks, operators are adopting Artificial Intelligence for operations (AIOps) strategies to implement end-to-end network and service automation. This approach enables real-time network responses, moving from a reactive to a proactive stance, thereby ensuring an optimal customer service experience. AIOps has the potential to transform network security and management, aligning with the complexities of the current 5G landscape. However, a high level of visibility for these new capabilities is needed to be viable in a vastly different network environment.
Large 5G networks generate petabytes of data every day across diverse domains and third-party sources, resulting in siloed data that is challenging to process on time.
Real-time analysis of various network sources is essential for improving security, agility, operations, and efficiency.
The growing complexity of networks and services is compelling communications service providers (CSPs) to depend more on high-quality, curated operational data to enhance network and service availability, performance, and profitability. When service providers have timely access to the right data, disruptions that could otherwise take days to resolve can be fixed within minutes, minimizing and preventing negative impacts on business operations and the end-user experience.
Read more: IoT & connectivity: 5G & LPWA boost as IoT roaming market looks up, 15000 new satellites expected
AI and machine learning, excel at executing repetitive tasks quickly and accurately. This is what makes AIOps so crucial. When this solution is well implemented, AI can provide insights that drive intelligent automation, enabling real-time actions. AIOps leverages data and intelligence to enhance performance, optimize networks, reduce congestion, and predict and detect performance and security issues. It also has the potential to maximize network utilization and reduce power consumption, which is especially important for operators.
For many operators, the transition to AIOps will begin with operations, focusing on data analysis and providing recommendations and support for network performance management. Recent research by Heavy Reading indicates that network performance management was the leading AI application in 2023 by a significant margin.
The success of AIOps fundamentally depends on the quality of the data it relies on. Siloed data sources, such as the radio access network (RAN), edge, access, core, and cloud, highlight the necessity of end-to-end visibility. For instance, an issue in the RAN can have downstream effects on the core or even the cloud, and vice versa. All interconnected components of the network must function in harmony for effective service delivery, and this harmony requires comprehensive visibility across the entire network.
For 5G networks to fulfill their potential for operators, clients, and customers, it’s crucial to detect failures and degradations before they escalate into significant problems. AIOps, when equipped with accurate data and intelligence, can identify anomalies and integrate them into AI-driven network and security assurance solutions, swiftly addressing issues. Additionally, AIOps enables continuous optimization planning for the network.
Read more: How data centers keep the world running 24/7
AIOps is crucial for enhancing network performance in today’s increasingly complex 5G network environment. Achieving visibility is essential for leveraging AI insights into intelligent automation. AIOps has the potential to significantly reduce costs and streamline operations, making it a top priority for operators.
The right AIOps solution will ensure critical enhanced telemetry data is made available in a time-sensitive and highly digestible format to accelerate revenue and business growth. Incorporating machine learning (ML) and artificial intelligence (AI) models, the solution further enhances and automates processes to support the ongoing evolution of an organization’s operations.
Guest contributor Vinay Sharma is the Regional Director of India and SAARC at NETSCOUT, a company that provides real-time, pervasive visibility, and insights customers need to accelerate, and secure their digital transformation. Any opinions expressed in this article are strictly those of the author.
I think OpenAI is not being honest about the diminishing returns of scaling AI with…
S8UL Esports, the Indian esports and gaming content organisation, won the ‘Mobile Organisation of the…
The Tech Panda takes a look at recent funding events in the tech ecosystem, seeking…
Colgate-Palmolive (India) Limited, the oral care brand, launched its Oral Health Movement. The AI-enabled initiative…
This fast-paced business world belongs to the forward thinking organisations that prioritise innovation and fully…
In the rapidly evolving financial technology landscape, innovative product studios are emerging as powerful catalysts…