NETSCOUT ADVANCES AI-DRIVEN NETWORK OPERATIONS FOR TM FORUM’S NEURONOC: THE SELF-HEALING NETWORK BRAIN CATALYST PROJECT
High-fidelity data enabled AI agent’s swift resolution of a
simulated issue while reducing data tokenization with AWS Bedrock by an
estimated 80%
Bengaluru, July 11, 2025 – NETSCOUT SYSTEMS, INC. (NASDAQ: NTCT), a leading provider of
observability, AIOps, cybersecurity, and DDoS attack protection solutions,
today announced its recent participation in TM Forum’s NeuroNOC Catalyst,
an innovation project at DTW Ignite 2025, which set records for having the most
Communication Service Providers and countries represented at a DTW Ignite
event. TM Forum is a global alliance of telco and tech companies, leading the
industry in defining the building blocks for new operating models, impactful
new partnerships, and advanced software platforms. The NeuroNOC Catalyst
project explored how AI agents, closed-loop automation, and high-quality
network data can enable self-healing operations across telecom environments.
Developed in collaboration with global leaders, including Amazon
Web Services, Accenture, Symphonica, and Sand Technologies—and championed by
carriers such as BT Group, Telecom Argentina, Omantel, Turknet, Axian Telecom,
and Safaricom—the NeuroNOC initiative demonstrated how AI and automation can
dramatically accelerate fault detection and resolution in live network
environments.
NETSCOUT
deployed its Omnis AI Insights Solution, consisting of Omnis AI Sensor and Omnis AI Streamer, to
deliver 5G Standalone Radio Access Network (SA RAN) and Packet Core
high-fidelity telemetry essential for effective AI-driven operations. Omnis AI
Sensor utilizes NETSCOUT’s signature deep packet inspection (DPI)-based,
end-to-end network visibility, and Omnis AI Streamer provides powerful
analytics and filtering at source via an open API driven dataset. In simulated
service-impact scenarios, the solution enabled network operations center (NOC)
engineers to identify subscriber registration issues, pinpoint the root cause
via a curated large language model (LLM), and execute remediation steps with
minimal manual effort.
The key takeaway was strong empirical validation of the need for
high-quality curated data to drive effective AI solutions. Without data
quality, AI models are hollow shells incapable of delivering valuable results, and data curation can unleash great power to ensure better outcomes. Moreover, the project showed
promising results, including an expected 80% reduction in manual
troubleshooting and up to 50% lower operational costs for communications
service providers. It further reduced data usage and tokenization by AI models
like AWS Bedrock by up to 80%, pointing to additional potential savings.
“Accurate, real-time curated data is the foundation of intelligent
network operations. Without high-quality packet collection across the network,
it’s nearly impossible to correlate issues across multiple data streams,
determine root causes, and verify and test automated fixes,” said Richard
Fulwiler, a Catalyst participant and Senior Director, Product Management at
NETSCOUT. “While fully autonomous networks are still in their early stages,
this project shows the powerful potential of AI agents – armed with the right
data in real-time – to support faster and more accurate resolution of network
issues.”
For more information on the NeuroNOC Catalyst project, visit TM Forum’s NeuroNOC Catalyst page. Please visit our website to learn more about NETSCOUT’s AIOps solutions for service providers.
About NETSCOUT
NETSCOUT SYSTEMS, INC. (NASDAQ: NTCT) protects the connected world
from cyberattacks and performance and availability disruptions through its
unique visibility platform and solutions powered by its pioneering deep packet
inspection at scale technology. NETSCOUT serves the world’s largest
enterprises, service providers, and public sector organizations. Learn more at www.netscout.com or follow @NETSCOUT on LinkedIn, X, or Facebook.
©2025 NETSCOUT SYSTEMS, INC. All rights reserved. Third-party
trademarks mentioned are the property of their respective owners.

