Now Assist Center Performance Explorer dashboard
Summarize
Summary of Now Assist Center Performance Explorer dashboard
The Now Assist Center Performance Explorer dashboard enables ServiceNow customers to review and analyze detailed execution data for assistants and AI agents deployed across their organization. This dashboard helps in investigating individual execution records, assessing performance metrics, and identifying usage patterns to optimize AI asset deployments.
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Key Features
- Two Sub-tabs: The dashboard consists of Assistants and Agents tabs, each showing execution-level details for the respective asset types.
- Assistants Tab: Displays a table of individual assistant executions with filters such as Date, Assistant Name, Result Type Offered, Conversation End State, Deflection Outcome, and Deflection State to refine data views. Key displayed fields include:
- Assistant Name: Clickable to view full execution records.
- Executed On: Date of execution.
- Result Type Offered: Outcome types like answer, deflection, or transfer.
- Conversation End State: Final state such as Open or Faulted.
- Inferred CSAT: Customer satisfaction score derived from conversation signals.
- Transfers and Escalation: Indicates if conversation was handed off to a live agent.
- Assist: Number of assist actions performed.
- Deflection Outcome and State: Success and status of deflection attempts.
- Effort Score: Reflects user effort to complete the interaction.
- Agents Tab: Shows execution details for AI agents with filters including Date, State, E2E Latency (seconds), and a search by Agent Name. Important fields include:
- Agent Name: Name of the AI agent executed.
- Executed On: Date of execution.
- State: Execution state such as Completed or Terminated.
- Tool Calls and LLM Calls: Counts of tool and large language model calls made during execution.
- E2E Latency (S): Total execution time from start to finish.
- Tool Latency and LLM Latency: Latency contributions from tool and LLM calls.
- Assists Consumed: Number of assist credits used.
- Inferred CSAT: Customer satisfaction score based on interaction signals.
Key Outcomes
ServiceNow customers can leverage this dashboard to:
- Gain transparency into assistant and AI agent execution details for performance monitoring and troubleshooting.
- Identify success rates, user effort, and customer satisfaction metrics to improve conversational AI effectiveness.
- Analyze latency and resource consumption for AI agents to optimize response times and operational efficiency.
- Filter and drill down on execution data to uncover trends and issues impacting AI-driven engagements.
Use the Now Assist Center Performance Explorer dashboard to review and analyze the execution details of assistants and AI agents across your organization.
Now Assist Center Performance Explorer dashboard
The Now Assist Center Performance Explorer dashboard displays execution-level details for assistants and AI agents. Use the dashboard to investigate individual executions, analyze performance metrics, and identify patterns across your AI asset deployments.
The Performance Explorer dashboard includes two sub-tabs: Assistants and Agents. Each sub-tab displays a table of individual executions for the selected asset type.
Assistants
The Assistants tab displays a list of individual assistant executions. Use the Date, Assistant Name, Result Type Offered, Conversation End State, Deflection Outcome, and Deflection State filters to narrow results. Select Reset Filters to clear all applied filters.
- Assistant Name
- The name of the assistant that was executed. Select the assistant name to view the full execution record.
- Executed On
- The date on which the assistant execution occurred.
- Result type Offered
- The type of result that the assistant offered during the execution, such as an answer, a deflection, or a transfer.
- Conversation End State
- The state of the conversation at the end of the execution, such as Open or Faulted.
- Inferred CSAT
- The inferred customer satisfaction score for the execution, calculated based on conversation signals.
- Transfers and escalation
- Indicates whether the conversation was transferred or escalated to a live agent during the execution.
- Assist
- The number of assist actions performed by the assistant during the execution.
- Deflection Outcome
- The outcome of the deflection attempt, indicating whether the conversation was successfully deflected.
- Deflection State
- The state of the deflection for the execution, such as deflected or not deflected.
- Effort Score
- A score reflecting the level of effort required by the user to complete the interaction, based on conversation signals.
Agents
The Agents tab displays a list of individual AI agent executions. Use the Date, State, and E2E Latency (S) filters, or the Search Agent field, to narrow results. Select Reset Filters to clear all applied filters.
- Agent Name
- The name of the AI agent that was executed.
- Executed On
- The date on which the AI agent execution occurred.
- State
- The state of the AI agent execution, such as Completed or Terminated.
- Tool Calls
- The total number of tool calls made by the AI agent during the execution.
- LLM Calls
- The total number of large language model (LLM) calls made by the AI agent during the execution.
- E2E Latency (S)
- The end-to-end latency of the execution, in seconds, measured from the start to the completion of the AI agent run.
- Tool Latency
- The cumulative latency contributed by tool calls during the execution.
- LLM Latency
- The cumulative latency contributed by LLM calls during the execution.
- Assists Consumed
- The number of assist credits consumed by the AI agent during the execution.
- Inferred CSAT
- The inferred customer satisfaction score for the execution, calculated based on interaction signals. See Exploring Conversation Insights for more information.