Examples of using AI agents

  • Release version: Zurich
  • Updated July 31, 2025
  • 2 minutes to read
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    Summary of Examples of Using AI Agents

    The Now Assist AI agents application enables automation of various business processes and operational challenges, enhancing efficiency across departments like IT Service Management, Customer Service Management, and Human Resources. These agents can operate independently or within hierarchical structures to streamline complex workflows.

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    Key Features

    • Incident Management and Resolution: AI agents automate the incident lifecycle, from triage to resolution. They analyze historical incidents and knowledge base articles to determine solutions, automatically closing incidents when confident or reassigning them when necessary.
    • Case Management Automation: Similar to incident management, these agents manage case workflows by analyzing details and providing recommended solutions, enabling customer service teams to handle higher volumes efficiently.
    • Cross-Functional Process Automation: AI agents can coordinate workflows across multiple departments, such as in employee onboarding, tracking progress, sending reminders, and providing updates.
    • Knowledge Management and Content Discovery: They assist users in locating relevant information by understanding queries and delivering targeted content based on user intent and permissions.
    • Virtual Agent Enhancement: AI agents enhance Virtual Agent interactions by providing intelligent responses and executing actions, creating more effective conversational experiences.

    Implementation Considerations

    Organizations should consider the following when implementing AI agents:

    • Start with repetitive processes that have clear success criteria.
    • Ensure sufficient training data and knowledge base content are available.
    • Define confidence thresholds for automated actions versus human review.
    • Establish monitoring and quality assurance processes to track performance.
    • Plan for iterative improvements based on interaction data.
    • Configure memory sharing for different hierarchy structures.
    • Consider scalability when designing complex agent hierarchies.

    Review different ways that you can leverage the Now Assist AI agents application in agentic workflows across the platform.

    AI agents Overview

    AI agents in the Now Assist application provide automated solutions for a wide range of business processes and operational challenges. These agents can work independently or as part of hierarchical structures to handle complex workflows, reduce manual effort, and improve service delivery efficiency. You can leverage AI agents across multiple departments including IT Service Management, Customer Service Management, and Human Resources.

    Incident Management and Resolution

    AI agents can automate the entire incident lifecycle from initial triage to resolution. When an incident is created and assigned to a designated service desk user, the agent automatically retrieves incident details, searches for similar historical incidents, and analyzes relevant knowledge base articles. Based on this research, the agent determines an appropriate resolution path.

    If the agent has high confidence in the solution, it posts the resolution in the work notes and closes the incident automatically. When confidence is lower, the agent documents its findings and reassigns the incident to a technical support specialist for review. This approach reduces mean time to resolution while ensuring quality control for complex issues.

    Case Management Automation

    Similar to incident management, AI agents can handle case workflows in customer service scenarios. Agents analyze case details, match them with historical cases, search knowledge articles, and provide recommended solutions or next steps. This automation helps customer service teams handle higher volumes of cases while maintaining consistent quality in responses.

    Cross-Functional Process Automation

    AI agents can orchestrate workflows that span multiple departments and systems. For instance, an onboarding agent might coordinate tasks across HR, IT, facilities, and finance departments, ensuring new employees receive proper access, equipment, workspace setup, and orientation materials. The agent can track progress, send reminders, escalate delays, and provide status updates to stakeholders throughout the process.

    Knowledge Management and Content Discovery

    AI agents can assist users in finding relevant information by analyzing queries, searching across multiple knowledge sources, and presenting contextualized results. These agents understand the user's intent, consider their role and permissions, and deliver targeted information that helps them complete tasks or resolve issues independently.

    Virtual Agent Enhancement

    AI agents can work behind the scenes to enhance Virtual Agent conversations by providing intelligent responses, retrieving relevant information, and executing actions on behalf of users. This integration creates more capable and helpful conversational experiences that can handle complex queries and multi-step processes.

    Implementation Considerations

    When implementing AI agents, organizations should consider the following factors:

    • Start with well-defined, repetitive processes that have clear success criteria
    • Ensure adequate training data and knowledge base content for agents to reference
    • Define appropriate confidence thresholds for automated actions versus human review
    • Establish monitoring and quality assurance processes to track agent performance
    • Plan for iterative improvements based on agent interaction data and outcomes
    • Configure memory sharing appropriately for different hierarchy structures
    • Consider scalability requirements when designing complex agent hierarchies