Luma Virtual Agent (Luma VA) is an advanced support agent designed to assist end-users by understanding and processing their requests using advanced AI technology. With the power of large language models (LLM) and Generative AI, Luma VA can understand what users are asking for and provide the right information or assistance. It identifies user intent, understands their emotions, and offers relevant solutions, making the support experience smooth and efficient. This page explains how Luma VA works and what you can expect.
Initiating a Conversation
When an end-user initiates a conversation with Luma VA, the system uses Generative AI to comprehend the user's request. This involves identifying the user's intent and responding appropriately. Here’s a step-by-step breakdown of how Luma VA processes user interactions:
Intent Identification
Luma VA uses advanced AI to determine the intent behind the user's request. It analyzes the language used to understand what the user is seeking.
Sentiment and Tone Analysis
Luma VA can detect the sentiment and tone of the user's message. It adjusts responses based on the user's emotions, ensuring a more empathetic and suitable interaction.
Categorizing Requests
Based on the identified intent, Luma VA categorizes the request into one of the following:
Knowledge Request: The user is looking for information.
Problem Report: The user is reporting an issue or a problem.
Service Request: The user needs a service.
Ticket Data Search: The user searches for existing ticket information.
Handling Different Request Types
Knowledge Request
When a user seeks information:
Luma VA searches the internal Knowledge Base for relevant articles and presents the information to the user.
Luma searches the internet for relevant information if the information is not found.
Problem Report
When a user reports a problem:
Luma VA searches the internal Knowledge Base for pre-configured services and relevant articles.
The information is presented based on how confident the system is about the found information.
If information is not found in the internal Knowledge Base, the system is not confident in the search results, or the user does not like the results, fallback is triggered.
Luma now gathers detailed information about the issue and uses it to log a well-formed ticket, ensuring that analysts have all the necessary details to resolve the problem efficiently.
Service Request
When a user needs a service:
Luma VA searches the internal Knowledge Base for pre-configured services and relevant articles.
The information is presented based on how confident the system is about the found information.
If information is not found in the internal Knowledge Base, the system is not confident in the search results, or the user does not like the results, fallback is triggered.
Luma VA collects the required information from the user and submits the service request to the appropriate team for action.
Ticket Data Search
When a user searches for ticket information:
Luma VA uses Natural Language Processing (NLP) to understand and process the query.
It retrieves and presents relevant ticket data to the user.
User can now take further actions on their ticket based on ITSM practices configured in their system.
Managing Feedback
Luma VA captures and collects feedback from every user interaction. This feedback is essential for improving the system's accuracy and performance. Here’s how feedback is managed:
Knowledge Gaps: When Luma VA cannot find relevant information in the internal Knowledge Base, it implicitly logs this as a Knowledge Gap. Knowledge Curators and Administrators can use this information to create new Knowledge Articles and configure new Services.
Positive Feedback: Positive feedback helps identify the most helpful content. It assists curators in understanding the type of information users seek and ensures that the most helpful articles are highlighted.
Negative Feedback: Negative feedback is marked against the specific Knowledge Article served. Curators use this feedback to update and improve the content of the Knowledge Articles, ensuring that future users receive more accurate and relevant information.
Key Performance Indicators (KPIs): The feedback collected is used to update Key Performance Indicators (KPIs), which reflect the overall service quality. Continuous feedback allows Luma VA to adapt and enhance its support capabilities.
Luma is designed to streamline support processes by efficiently understanding and handling user requests. Leveraging Generative AI, sentiment analysis, and NLP, Luma VA ensures that users receive timely and relevant assistance. The continuous feedback collection and intelligent fallback mechanisms enhance the user experience, making Luma VA a robust and adaptive virtual support agent.
The behavior described is fully configurable and can be updated to meet your organization's specific requirements. The above behavior represents the current Out-of-the-Box (OOTB) behavior configured in Conversation Startup skills, which can be easily customized to fit your needs.
For more information on how to build Conversation startup skills, refer to Customize Conversation startup.