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AI for Good-Innovate for Impact



               51�2�2� Future Work

               To further enhance this use case, future endeavors include:

               •    Data Collection: Gathering more comprehensive datasets to refine AI models and                  51-China Telecom
                    enhance operational accuracy.
               •    Model Development: Evolving the LLM technology to better understand and execute
                    complex network maintenance tasks.
               •    Extension and Variation: Expanding the application of AIChatOps to new operational
                    scenarios and use cases.
               •    Standards Development: Establishing industry standards for AI-powered network
                    maintenance practices.  


               51�3� Use case requirements
               •    REQ-Q1: It is critical to enable real-time intent recognition and scheduling capabilities
                    for network maintenance tasks.
               •    Note: Ensure the system can interpret natural language instructions swiftly to initiate and
                    schedule tasks without manual intervention.
               •    REQ-Q2: It is critical to implement mobile-compatible features for querying and executing
                    network tasks via natural language instructions.
               •    Note: This functionality empowers frontline personnel with on-the-go access to critical
                    operational data and actions, enhancing operational efficiency and flexibility.
               •    REQ-Q3: It is critical to integrate  ChatOps
               •    Note: Enhance human-robot interaction by leveraging LLM's intent recognition to match
                    user queries with appropriate automation capabilities, optimizing operational workflows.
               •    REQ-Q4: It is critical to develop a multi-agent system to distribute and execute network
                    maintenance tasks autonomously.
               •    Note: This system efficiently handles complex tasks by assigning and coordinating
                    multiple agents.


               51�4� Sequence diagram




































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