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- Network Planning and Design: Generative AI for precise small cell placement, MIMO antennas, beamforming, and optimized backhaul connections.
- Self-Organizing Networks (SON): Harnessing AI-based algorithms for autonomous optimization and management of network resources in Self-Organizing Networks.
- Shared Infrastructure: Leveraging 5G RAN infrastructure resources for training and inference, enhancing AI capabilities and network efficiency.
- Code Generation for Network Protocols: Enabling co-pilot functionality for generating software implementations of network protocols specifications, facilitating protocol development and deployment.
- Capacity Forecasting for Access, Edge, and Core Networks: : Utilizing AI for accurate load prediction on each RAN site to optimize network capacity and avoid unnecessary upgrades or poor network performance from overloaded nodes.
Key drivers for AI/ML for Operations:
- Network AIOps: Implementing AIOps methodologies to automate, streamline and streamline network operations, improving overall improve overall network efficiency.
- Predictive Maintenance: Utilizing AI to forecast equipment failures , enhancing maintenance efficiency and network reliability.Automated Closed Loop: Employing AI models trained on operational data to ensure network assurance through automated processes.and improve maintenance efficiency
- Technical Assistant/Customer Service: Real-time guidance from AI-based LLM trained tech assistants, enhancing customer service and field operations efficiency.
- Traffic Management: Dynamic rerouting of traffic based on AI analysis to efficiently utilize network resources and improve user experience.
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