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23–25 June 2026

Copenhagen

2025 Catalyst Projects

See Innovation Come to Life

At the heart of innovation at DTW Ignite, our 50+ Catalyst projects will debut their groundbreaking innovations live in the Quad and on the Innovation Arena stage.
Harnessing the collaborative global force of over 1000 industry minds from 250 organizations, our Catalyst project teams are pioneering solutions to directly impact TM Forum's Missions of AI & Data, Autonomous Networks, and Composable IT & Ecosystems to propel industry innovation and growth.
Experience first-hand their inventive and trailblazing demonstrations. Delve into the challenges tackled, use cases explored, and solutions forged. Connect with these visionaries to discover how you can leverage their achievements to align with your business objectives and advance future outcomes.

Browse Catalyst Projects

AI marketing brain in telecoms

AI marketing brain in telecoms

In an era where customer behavior shifts faster than quarterly business reviews, Communications Service Providers (CSPs) face a mounting paradox: they possess unprecedented volumes of behavioral data—spanning network usage, billing events, app interactions, and care touchpoints—yet remain locked in a legacy marketing operating model that is slow, siloed, and reactive. Traditional approaches force teams into an unsustainable “n×n×n” vortex: for every new business scenario (e.g., 5G migration, churn prevention, FMC bundling), marketers must commission separate data pipelines, engineers must build isolated models, and analysts must manually validate segments—often taking months to deploy campaigns based on outdated insights. This fragmentation not only inflates operational costs but erodes customer trust through irrelevant, poorly timed offers. As digital competition intensifies and growth pressures mount, CSPs urgently need a unified intelligence layer that can transform raw behavioral sequences into real-time, actionable intent—without multiplying technical debt or compromising compliance. The AI Marketing Brain delivers precisely this transformation through its foundational innovation: the Large User Intent Model (LUM). Unlike conventional machine learning systems that rely on hand-crafted features and task-specific models, LUM treats each subscriber’s multi-domain history—OSS/XDR logs, BSS transactions, CRM interactions—as a coherent behavioral language. Built on a Transformer-based architecture pre-trained on over four months of unlabeled user sequences, LUM learns the latent grammar of intent by predicting future actions from past context (e.g., “Given this pattern of video streaming, location mobility, and bill shock, what is the probability this user will downgrade next month?”). This universal representation enables a single model to power dozens of use cases—from prepaid-to-postpaid conversion to smart home adoption—without redundant engineering. Critically, LUM serves as the cognitive core of an AI Marketing Copilot, a multi-agent system that orchestrates end-to-end engagement: the Insight Agent surfaces probabilistic intent (e.g., “78% likelihood of 5G readiness”), the Offer Agent (powered by a lightweight LLM fused with business rules) generates natural-language propositions tailored to individual context (“Your new device + evening gaming suggests a 5G+Cloud Gaming bundle”), and the Channel Agent uses reinforcement learning to select the optimal touchpoint—SMS, in-app message, or agent-assisted call—based on real-time engagement propensity. This triad operates in continuous alignment, turning marketing from a campaign factory into a dynamic, journey-aware revenue engine. Deployed across diverse markets and operator maturity levels—from large-scale national deployments to lean, emerging-market setups—the AI Marketing Brain has consistently demonstrated significant improvements in marketing efficiency, targeting precision, and customer relevance, all while adhering to strict ethical and privacy standards. The system operates under a privacy-by-design framework: all raw data is anonymized and tokenized before ingestion, no personally identifiable information enters the model, and human oversight remains embedded at critical decision points. Fairness monitoring ensures consistent outcomes across demographic and geographic segments, aligning with global regulations such as GDPR and local data protection laws. Validated and scaled in production environments by China Mobile, Telkomsel, Mauritius Telecom, the solution proves that advanced, intent-driven marketing is no longer the privilege of tech giants—but an accessible, responsible, and transformative capability for telecom operators worldwide.

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URN: C25.5.887
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Agentic AI for customer-centric O&M

Agentic AI for customer-centric O&M

Telecom operators are racing to advance toward AN4-level autonomous networks, yet they face severe challenges: delayed user perception assurance, where passive manual responses fail to predict issues in advance, and slow complaint handling continues to erode customer satisfaction; imprecise fault analysis, making it difficult to reasonably prioritize critical issues amid redundant work orders; and inefficient fault handling, with low accuracy in root cause identification, siloed systems, and unvalidated solutions. These not only prolong the Mean Time to Repair (MTTR) but also threaten network stability. Addressing these challenges will deliver significant business value: drastically reducing operational costs by minimizing manual operations, enhancing network reliability through faster and more accurate fault resolution, and strengthening competitive advantages by upgrading service quality. For users, this means fewer network disruptions, quicker problem resolution, and consistently superior experiences—turning dissatisfaction into trust. This project integrates signaling analysis large models, spatiotemporal analysis large models, multi-agent collaboration, and digital twin technology, shifting the focus of operations from "network-centric" to "customer and business-centric." It enables proactive issue prevention, automated end-to-end cross-domain process closure, and risk-controllable solutions, reshaping the operation model to bring "ultimate user perception" to both operators and customers. The core value of operators' transition to L4 autonomous networks lies in achieving proactive and automated operations. However, the current passive, incident-driven O&M model keeps customer complaints high, with three key issues: 1. Lagging user perception assurance: Inadequate optimization of service quality improvement processes and weak ability to locate quality issues result in reactive operations that fail to "identify problems before users". Meanwhile, manual, lengthy complaint handling with bottlenecks leads to inefficiency and reduced customer satisfaction. 2. Inaccurate fault analysis: Massive alarms and work orders lack metrics for assessing impacts on services and user perception, treating all equally. The phenomenon of "one fault generating multiple orders" also exists, failing to prioritize critical fault handling. 3. Inefficient fault disposal: Low accuracy in root cause identification, over-reliance on expert experience for solutions, lack of automatic collaboration between cross-domain systems, and absence of simulation verification not only waste time and effort but also cause misjudgments. This leads to long Mean Time to Repair (MTTR), uncontrollable network operation risks, and impacts on network quality and customer service guarantee. These issues not only increase O&M costs but also directly affect customer retention. For instance, the churn rate of high-value users has risen year-on-year due to undetected service quality issues. Addressing these challenges will reshape the competitiveness of Communication Service Providers (CSPs): Signaling and spatiotemporal analysis models can enhance problem prediction accuracy; multi-agent collaboration enables "minute-level" closed-loop handling of cross-domain faults; digital twin verification reduces operational risks. For operators, users' demand for a "seamless network experience"—consistently stable and smooth service—has become core. Traditional "firefighting" O&M not only consumes resources but also erodes user trust, a fatal flaw in the digital era. For vertical industries like finance and healthcare, a more stable network will accelerate the implementation of their digital services, ultimately achieving value co-creation between CSPs and industry clients. This Catalyst project is part of the Innovate Asia 2025 AN Level 4 Moonshot Challenge

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URN: M25.5.868
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InfraVerse: Breaking boundaries for XR sustainability

InfraVerse: Breaking boundaries for XR sustainability

Telecom infrastructure deployment—especially for rooftop, in-building, and dense urban environments—remains slow, costly, and error-prone. Existing planning methods rely on static blueprints, fragmented site data, and repeated site visits, leading to rework, delays, and missed revenue opportunities. The InfraVerse Catalyst addresses this bottleneck by applying telecom-specific building information modelling (BIM) to digitize the physical deployment process. It integrates drone imagery, AI-driven insight extraction, and genAI automation to transform how CSPs plan, validate, and deploy high-performance infrastructure—particularly in hard-to-serve, high-value areas. The Catalyst combines drone-based data collection, AI, and generative AI (genAI) with a telecom-specific BIM platform. Drones capture detailed visual data. AI then processes this data to extract structural, spatial, and environmental insights. Next, genAI generates critical documents—like EMF assessments, technical drawings, and permit applications—reducing manual work and speeding up compliance. This solution allows virtual site inspections, improves design accuracy, and reduces unnecessary travel. Teams collaborate more effectively using a unified digital model, streamlining deployment and cutting costs. CSPs can plan with greater precision, optimize equipment placement, and deliver stronger indoor and outdoor coverage. The system is scalable and sustainable - it enables energy-efficient design, lowers emissions, and helps meet green building standards. With fewer design errors and faster approvals, CSPs can deploy infrastructure faster, at lower cost, and with better quality control. The InfraVerse Catalyst helps CSPs break free from slow, reactive builds—replacing outdated planning with intelligent, digital-first workflows. The shift brings sharper accuracy, faster deployments, lower costs, and sustainability gains that can’t be ignored. It’s not just better planning—it’s a smarter path to market and a stronger, greener foundation for the networks of tomorrow.

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URN: C25.0.802
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Beyond Chatbots: Hybrid AI for fully automated proactive customer care - Phase II

Beyond Chatbots: Hybrid AI for fully automated proactive customer care - Phase II

Only 1 in 25 Unhappy Customers Will Complain The other 96% remain silent—leaving service providers with a costly blind spot. This silence leads to unresolved issues, missed opportunities for intervention, and ultimately, silent churn. For telecom operators, this means not just lost revenue but a failure to meet customer expectations. The Problem with Traditional Care Legacy care systems are reactive. They rely on customers to initiate the support journey—by calling, clicking, or complaining. Even with chatbots, dashboards, and predictive models in place, most tools operate in silos. They detect technical issues but rarely connect those issues to the specific customers affected, leaving care teams without the clarity or speed needed to respond effectively. The Shift to Proactive, Autonomous Care Phase One: Assisted Care In the beginning, AI played a supporting role in reactive care. Once a customer initiated contact—through a call, chat, or complaint—AI stepped in to predict intent, route queries, and prioritize responses. It helped optimize workflows, but only after the problem had surfaced. Phase Two: Autonomous, Proactive Engagement Now, we’ve flipped the model. When a service issue is detected in real time, the system identifies which customers have been affected. It then predicts how those customers are likely to respond—whether by calling support, submitting a complaint, or silently churning. Based on this prediction, the system proactively engages with each customer to address the issue before they take action. This Catalyst transforms telecom care from reactive support to proactive, intelligent engagement—delivered through a robust Hybrid AI approach built to scale across millions of interactions. AI at the Core of the Solution Built for telco, Designed for scale. * AI at the core – The operational engine, not a bolt-on * Closed-loop automation – From detection to resolution, no handoffs * Silo-breaking integration * ODA-aligned – Modular, open, and fast to deploy Business Impact Even in pilots delivered : * 30%+ improvement in service quality * 80%+ satisfaction in AI-led interactions * Reduced call volumes and churn * Increased upsell/cross-sell * Lower operational costs through automation The Result: Productivity at the core. Scale at the edge. Satisfaction across the journey.

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URN: C25.0.767
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Agentic intelligence exchange

Agentic intelligence exchange

The telecom industry is sitting on a "trapped goldmine" of real-time data, but this high-value asset remains stuck in legacy silos. Governed by slow, static rules, today's engagement models are disconnected from real-time customer intent. This disconnect leads to a cascade of failures: missed revenue opportunities, low campaign conversion, and silent customer churn. This Catalyst introduces the Agentic Intelligence Exchange (AIX), a multi-operator "shared brain" that moves the industry beyond simple automation to deliver true, governed autonomy. The solution is an autonomous reasoning engine built on three key innovations. First, it delivers Agentic AI, allowing the system to "perceive, reason, and act" autonomously shifting its strategy from "upsell" to "retain" in milliseconds based on real-time context . Second, it achieves this through Privacy-First Federated Learning, enabling partners like Indosat and Telin to collaborate on intelligence without sharing raw data, ensuring digital trust and data sovereignty. Third, it solves the "AI black box" problem by using TMF915 (AI Management) as its governance backbone, making every autonomous decision logged, explainable, and auditable . This ODA-aligned architecture operates as a 4-step value chain . Real-time network triggers from the Operators are enriched by the intelligence layer to create "intent tags" and a "churn score". This insight is fed to the "Agentic Brain," which autonomously decides the next-best action. That decision is then instantly executed on digital engagement platforms via WhatsApp, RCS, Email or in-app offers, with conversion data fed back to complete the learning loop . The results of this deployment-ready prototype are not theoretical. The AIX has proven it can unlock $3-5M in new monthly revenue and deliver a 30-35% improvement in campaign engagement. Operationally, it achieves 91% accuracy in real-time intent prediction and a 90-98% reduction in manual data mapping effort. This Catalyst delivers the industry's first shared intelligence layer and a reusable ODA blueprint that proves multi-operator AI collaboration is the key to defining the future of AI-native, real-time customer engagement

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URN: C25.5.881
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Multi-agent boost for 5G services

Multi-agent boost for 5G services

The in-depth convergence of 5G and vertical industries is accelerating drive-in, and 5G B2B services are experiencing explosive growth. However, service development faces problems such as slow service rollout, low O&M efficiency, and difficult reliability assurance. It is urgent to introduce new technical means to break the situation. Based on the Mixture of model architecture, multi-agent technologies ensure the full lifecycle of 5G B2B services. Before service provisioning: Requirements from the government and enterprise department to the office management, resource allocation, and work order generation. Service provisioning: Based on the large language model (LLM), configuration agents automatically generate natural language instructions to standard configurations and pre-review compliance. The intelligent simulation algorithm simulates and verifies the generated configuration file to ensure reliable solutions and apply them to networks, ensuring agile service rollout and improving mobile network operation security. After service provisioning: Complaint handling agents and alarm handling agents ensure efficient service O&M. Complex signaling messages can be automatically parsed based on signaling model. Complaint/alarm handling agents can automatically identify intentions, automatically diagnose based on the chain of thoughts, and intelligently fill in TTs based on analysis conclusions. One-stop automatic closure of complaints/alarms, greatly improving efficiency. By 2025, the number of IoT connections in China has exceeded 2.8 billion, with an annual growth rate of about 22% in the past three years. The industry is developing rapidly. According to data from the Ministry of Industry and Information Technology (MIIT), more than 20,000 5G private network have been deployed, covering key industries such as internet of vehicles(IoV), energy, transportation, and healthcare. 5G has become the core engine of industry digital transformation. Challenge 1: Service configuration depends on manual operations, resulting in low efficiency and reliability. In the face of complex networking, massive rule parameters, frequent service provisioning operations, configuration preparation, review, and impact evaluation rely heavily on expert experience, resulting in low efficiency and reliability. A large number of network incidents are caused by incorrect configuration. Therefore, AI is urgently required to implement automatic configuration. Challenge 2: The alarm and complaint handling efficiency is insufficient, and the SLA cannot be ensured. Take a single province as an example. O&M personnel handle tens of thousands of alarm tickets and thousands of complaint tickets every year, causing great pressure. The traditional manual mode is inefficient and cannot meet the strict SLA requirements of the IoT. AI needs to be introduced to improve efficiency and security. This Catalyst project is part of the Innovate Asia 2025 AN Level 4 Moonshot Challenge

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URN: M25.5.897
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AN L4 Digital Twin ensures maximum service reliability

AN L4 Digital Twin ensures maximum service reliability

Service is revenue. Better service is better revenue. Reliable service is reliable revenue. High service reliability has always been the key to success for CSPs and the telco industry as a whole, yet even minor configuration errors can trigger network-wide failures, causing severe revenue losses. IP network failures often escalate to core service outages, while massive-scale device connections exacerbate operational complexity. Statistics reveal that 70% of global IP incidents stem from human configuration errors, exemplified by an operator making 6,000 annual manual changes with 10+ human-induced errors and outages yearly. Exponential growth in CSP network complexity drives hundreds of annual configuration changes, with single IP devices handling ~600K configuration lines. Manual analysis remains prevalent, causing inefficiency, human dependency, and most importantly it simply cannot fully mitigate the risks. Therefore, relying on human intervention is destined to become obsolete. With our solution, CSPs can pre-emptively identify misconfigurations and service impacts, eliminate human-induced network failures, have a much faster network change process, reduce reliance on 5+ year-experienced O&M staff. This alleviates executive concerns about network change accidents which has been a long-standing issue. Zero-Accident Guarantee: Pre-emptive identification of misconfigurations and service impacts, reducing network change risks. Intelligent Verification: Automated network-wide analysis of routing and traffic changes, replacing error-prone manual checks. Real-Time Emulation: A digital twin mirroring live networks to test changes virtually, eliminating the need for multi-day physical monitoring. Operational Efficiency: Accelerated testing/troubleshooting and reduced resource costs via lightweight, high-precision simulation. By shifting from reactive to proactive operations, this solution empowers CSPs to execute network changes confidently while safeguarding service continuity.

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URN: C25.0.828
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Agentic & autonomous AI for business excellence

Agentic & autonomous AI for business excellence

The traditional market for telecom operators is nearing saturation. However, with the rapid rise of AI technology, new opportunities in intelligent applications across industries are emerging. According to reports, the global smart applications market is projected to grow at a CAGR of 31.7% from 2025 to 2033, reaching $488.54 billion by 2033. To harness this opportunity, telecom operators should offer integrated computing and network services to support industrial AI applications, lowering the barriers and costs of these foundational resources and fostering their own “second growth curve.” However, operators face several issues when providing computing-network services. * First, the complexity of industry intelligent services requires operators to understand industry business characteristics, diverse resource characteristics, and integration of heterogeneous products / resources to meet customized B2B needs, leading to difficult business analysis and long configuration time. * Second, high AI resource costs—smart computing resources and networks for AI-driven applications are costly, and inefficient allocation prevents operators from achieving economies of scale. Additionally, the intensive computing nature of AI-driven applications greatly increases resource energy consumption and power costs. * Third, complex operation and maintenance (O&M) of heterogeneous resources across computing-network domains raises O&M difficulties and weakens service guarantee. In conclusion, ineffective operation means may cause operator margins to fall short of expectations. To address these challenges, this Catalyst project aims to build an intelligent infrastructure that integrates network and computing resources, enabling efficient deployment of vertical AI applications. By leveraging Agentic AI and autonomous operations, the project will enable intelligent understanding of industrial AI workloads, precise resource matching, dynamic scheduling, cross-domain operational assurance, and holistic energy-saving strategies. The project will focus on AI medical imaging in healthcare as the initial application scenario, lowering costs and barriers for hospitals and offering strong replicability for other AI healthcare use cases and cross-industry adoption, empowering telecom operators to explore new markets.

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URN: C25.0.816
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Project Aura (AI + RAN)

Project Aura (AI + RAN)

This Catalyst project brings together StarHub, Celcom Digi, Etisalat UAE, Red Hat, SynaXG, Orex Sai to build an AI-powered blueprint for next-generation AI-RAN and edge services. Which combines the power of “AI for RAN” and “AI on RAN”. By combining OSS/BSS capabilities with edge AI applications * Video analytics * Drone orchestration * Location-based services The project aims to demonstrate a paradigm shift on how telcos can monetize network intelligence, offer new use cases and deliver differentiated customer experiences using CAMARA API’s. Unlike traditional RAN initiatives, the focus is on real-time insights and service innovation at the network edge, bridging the gap between infrastructure and application layers. With StarHub as the regional lead, this initiative addresses the unique demands of Asia-Pacific service providers while aligning with TM Forum’s vision of open, intelligent networks. The proposed architecture integrates AI workloads, data pipelines, and orchestration on a unified platform, enabling flexibility, scalability, and ecosystem collaboration. By harnessing hybrid cloud capabilities and engaging potential partners for AI Accelerator’s, this project delivers a future-ready telco model while providing a scalable blueprint for global adoption. The expected outcome is a compelling showcase of how telcos can evolve from connectivity providers to AI-first infrastructure providers that offer innovative digital services using open platforms and edge intelligence. CSPs are driven by the need for greater efficiency, cost reduction, and new revenue streams. The current infrastructure model often involves separate, underutilized hardware for network functions and for AI applications. By running AI-RAN on a shared, accelerated infrastructure at the network edge, they can: Today, CSP networks run RAN and AI workloads on separate, often underused hardware. By consolidating onto a shared, high-performance edge platform, CSPs can: * Boost network performance through AI-driven, real-time optimization. * Maximize ROI by keeping expensive GPUs fully utilized for both RAN and AI tasks. * Monetize the edge by offering AI-as-a-Service to enterprises. * This turns the RAN from a cost center into a revenue-generating platform. From Telco to Tech Powerhouse CSPs can differentiate by offering edge-native services such as: * Generative AI-as-a-Service — low-latency assistants and chatbots hosted at the edge. * Digital twins — real-time models for predictive maintenance and optimization. * Instant analytics — actionable insights from IoT and sensor data. Instead of competing on coverage and price, CSPs become enablers of innovation for industries. Fueling Innovation Across Verticals with AI at the edge, industries can deploy capabilities previously limited by latency and bandwidth: * Manufacturing: Instant quality control with AI vision on the factory floor. * Transport: Local, secure data processing for operational safety. * Logistics: Ultra-low-latency navigation for autonomous vehicles and delivery robots. The Bottom Line This isn’t just about faster networks — it’s about redefining what networks can do. AI-RAN at the edge unlocks new efficiencies, fuels industry innovation, and opens entirely new revenue streams. The CSP of the future isn’t just a connectivity provider — it’s the backbone of the AI-powered economy.

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URN: C25.5.899
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Intelligent cross-domain network assurance

Intelligent cross-domain network assurance

Intelligent Multi-Domain Cross-Disciplinary Network O&M Capability solves critical network operation failures caused by human configuration errors and cross-domain silos. Current fragmented systems result in >70% service outages from manual mistakes in multi-vendor environments, delaying fault resolution for hours. Our solution integrates four patented modules: Wing Script: Pre-change script audit via conflict detection prevents erroneous configurations. Large AI configuration models combine with small models applied in IP resource adjustment system for automated IP network vulnerability identification. Wing Simulation: Protocol behavior simulation using routing/flow inputs predicts routing/forwarding tables. Cross-vendor (Huawei) heterogeneous simulation enables full-network coverage. Wing Topology: Automatically builds real-time updated network physical topology / dynamic network service routing flow topology, enables inspection and maintenance capabilities based on service flows, predictive maintenance, and circumvents large-scale failures.Integrating end-to-end ping/trace, log analysis, and alarm correlation. Wing AI-Config:​Pulls approved plans & scripts, auto-executes deployments, alerts on errors. Validates scripts against plans, restricts high-risk commands, audits execution for compliance & smarter change control. Business Impact: • Zero mass service disruptions • 80% faster MTTR • 40% OPEX reduction Innovation: First integrated AI agent merging pre-audit, multi-vendor simulation, real-time digital twin (99% accuracy), and self-healing automation – transforming siloed operations into error-proof networks.

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URN: C25.5.890
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OmniBOSS - Phase II

OmniBOSS - Phase II

OmniBOSS Phase II proves that even with minimal effort, agentic AI can provide contextual insights from real operational data, closing the gap between practice and execution while preserving telecom expertise for the future. OmniBOSS is an Agentic AI platform that revolutionizes how Communication Service Providers (CSPs) operate their B/OSS environments by embedding domain knowledge, best practices, and AI-driven oversight directly into operational workflows. Unlike traditional systems that passively store configurations and metrics, OmniBOSS proactively monitors, evaluates, and recommends corrective actions across B/OSS layers — acting as a real-time expert assistant. In Phase I, OmniBOSS demonstrated a working prototype of Agentic AI for B/OSS best practices using simulated data. The goal was to prove the conceptual feasibility: AI agents can understand, enforce, and recommend operational best practices across TM Forum-aligned domains like alarms, thresholds, and inventory. Phase II builds on this foundation by extending the solution in two key ways: 1. Real-World Data Validation We evolve from simulation to validation against real-world data samples (anonymized or exported from live systems). This elevates credibility by showing how agents respond to actual operational complexity, not just theoretical cases. 2. New Asset – Best Practice Coverage Heatmap We introduce a visual analytics layer that displays which TMF API areas are fully, partially, or not yet covered by best practice enforcement. This new asset acts as a strategic roadmap for CSPs to prioritize improvements and track operational maturity.

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URN: C25.5.888
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AN agent for 5G bearer networks

AN agent for 5G bearer networks

The 5G bearer network, which connects the 5G radio access network and the core network and supports high quality private line services, plays an extremely important role. But troubleshooting on the bearer network can be difficult. On one hand, alarms and faults frequently occur. For example, a broken optical cable broken may trigger hundreds of device alarms. On the other hand, it typically takes several hours for experts to complete a fault diagnosis and the on-site engineer often needs to contact the network operations center to obtain support. Yet during typhoons and other disasters, emergency relief and communication recovery must be completed quickly. This Catalyst is creating an intelligent fault management framework, encompassing network devices, the network management system (NMS) and the operations support system (OSS). The framework employs AI agents to automate the monitoring and diagnosis of root alarms, in place of manual operations, in common fault scenarios. In a scenario where a fault needs to be manually diagnosed, an AI copilot will provide support to the engineers via a natural language interface. A major step towards the development of a level four autonomous network, the end-to-end solution is based on a three-layer architecture that associates digital twins with AI foundation models. Drawing on embedded AI, the intelligent network element (NE) layer provides real-time awareness of the network status. The intelligent NMS layer enables self-closed-loop fault diagnosis in a single domain. Integrated with the NMS, the intelligent OSS layer can address fault scenarios across domains and vendors end-to-end. Having completed technical pre-research, the solution is being piloted by China Mobile Guangdong. After it is integrated into production, operations and maintenance in the province, the solution should greatly improve network stability and reliability, by reducing the time it takes to resolve faults. Improved data query efficiency and a more robust emergency response capability for natural disasters are also expected.

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URN: C25.0.848
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