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For years, service providers focused on collecting more telemetry data. Today, the challenge has moved beyond getting access to data and on to managing the overwhelming volume of fragmented, siloed, and “noisy” information flowing through the network.
According to “Data-diamonds in the rough: management makes them sparkle,” poor-quality data creates operational blind spots, increases observability costs, contributes to alert fatigue, and limits the effectiveness of AI initiatives.
AI-ready data is complete, accurate, context-rich, scalable, and available in real time. Rather than relying on sampled or disconnected telemetry sources, organizations should focus on creating a high-signal, low-noise data foundation that enables AI systems to identify meaningful patterns, accelerate decision-making, and strengthen threat detection.
Donogh also emphasizes the importance of packet-level visibility and application-aware insights. Together, these capabilities provide the context AI models need to understand not only that an event occurred, but where it happened, what services were impacted, and why it matters. This deeper visibility helps reduce false positives, improve service assurance, and enhance cybersecurity outcomes.
Perhaps the most important lesson is that the telecom industry’s competitive advantage will not come from adopting AI alone. AI technologies are increasingly accessible to everyone. The real differentiator will be the ability to provide those systems with trusted, high-quality data that delivers actionable insights at the speed of network operations.
As networks grow more complex and organizations continue their AI journeys, leaders should evaluate whether their data strategies are enabling innovation or simply creating more noise. Building a strong foundation of contextual, real-time telemetry is essential to maximizing both operational efficiency and security performance.
This blog only scratches the surface of the insights shared in the article. To learn more about the role of AI-ready data, telemetry modernization, and the future of AIOps in telecom, read the full story today on Mobile Europe UK.
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