Intent Discovery
Summarize
Summary of Intent Discovery Enable AI experiences
The Intent Discovery application assists ServiceNow customers in identifying opportunities for incident deflection, allowing for improved Virtual Agent conversations and AI Search implementations. By analyzing historical incident data, it helps determine which prebuilt and custom intents can enhance service efficiency.
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Key Features
- Analysis of Historical Data: Run analyses on incident records to uncover intent coverage and effectiveness.
- Taxonomy Selection: Generate reports based on specific domains, identifying unmatched records and recommended intents.
- Clustering: Group unmapped utterances into clusters for easier intent creation.
- Report Generation: Create detailed reports of intent recommendations, including options to customize and save report names.
- Importing Intents: Easily add recommended intents to existing or new NLU models within the same application scope.
- Utterance Management: Add, edit, or delete utterances related to intents for refinement and accuracy.
Key Outcomes
By utilizing Intent Discovery, customers can expect to:
- Enhance Virtual Agent interactions through better-defined intents.
- Optimize incident handling by leveraging insights from historical data.
- Increase the effectiveness of AI models by integrating targeted intents.
- Streamline the process of intent creation and management, improving overall service delivery.
Use the Intent Discovery application to help identify opportunities for incident deflection. For example, you can use it to identify which Virtual Agent conversations to activate next.
Summary usage
For applications that consume NLU, such as Virtual Agent and AI Search, Intent Discovery helps you to better understand which prebuilt intents you can benefit from, and which custom intents would be useful to create.
Intent Discovery provides an analysis that you run on historic incident data or other task data. You can also group the run’s remaining records into different clusters so you can manually add utterances to NLU intents. In addition, you can use specific clusters to create new intents in a model.
In this example scenario, you're using Intent Discovery to identify the top intents in your instance, and how much coverage they can provide across your historic incident records.
Installation
Intent Discovery is available from the ServiceNow Store. For more information, see Install Intent Discovery.
Intent Discovery report details
- When Taxonomy is selected, the generated report contains intent recommendations against the selected taxonomy. A taxonomy is a prebuilt library of intents in a specific domain. While you don't have access to the underlying intents, when you run Intent Discovery against a specific taxonomy, data that maps to any intent in the taxonomy will be identified.
- Unmatched records are the utterances which couldn't match to any intent in the taxonomy.
- Recommended intents are the intents which are found from utterances that data was run on.
- The percentage of Unmatched records (clustered) are the records that aren't classified (records that don't belong to any of the recommended intents).
- The percentage of unmatched records and the number of recommended intents don't need to match. It's a coincidence if they match.
Creating an Intent Discovery report
1. Using the admin or nlu_admin role, navigate to .
Running an analysis on the report
- Data Source: Select the Incident (incident) table.
- Filter by: [Created] [on] [This quarter]
- Field to analyze: Short description (short_description). You choose Short description because it's a highly used string field that references words that can help the system identify an intent.
- Taxonomy: Select ITSM. This field tells the system to run classification processing on your ITSM incident records. It has 3 options: Classification, ITSM, or blank, which defaults as Classification.
- Cluster unmapped utterances by keywords... : Select the check box. When you check this box, the system groups your incident records that weren't classified into clusters.
- Report name: The field automatically defaults to Incident <month/day/year>. You can edit the name if you prefer. In this example scenario, you enter Incident 12/16/2020 - SF Test.
2. Select Run analysis.
Result: Your report appears on the Intent Discovery screen, showing its status as the analysis begins. The subsequent status values appear in the following order during the analysis: Preparing to run, Work in progress, Clustering, and Done. This can take from 5 minutes to 30 minutes to complete. The fewer the records you have in a cluster, the less time it takes. Turning clustering off can also speed up the process.
3. Select the Name of your report.
Result: The screen refreshes, showing the analyzed incident records and the remaining incident records that were not classified.
Importing recommended intents to new or existing custom models
Before importing intents to an NLU model, ensure that you are in the same application scope as the model. For more information, see .
1. On the Records covered by recommendations section of the screen, select the caret icon on a recommended intent you want to add to a custom model.
Result: The details of the recommended intent appear so you can review them, as shown in the image below.
2. Select Add to Model.
4. Select Save.
Result: A banner appears on the screen, confirming the intent is added to the target model.
The recommended intent also appears on the Model screen of the target model, as shown in the image below.
Adding clustered utterances to an intent and its model
1. On the Remaining records section of the intent discovery records screen, select and open a cluster of utterance and short description data that you want to add to an intent and its associated model.
As you continue to build out new intents from these clusters, you can click the Ignore icon to remove any unwanted intents from the report.
There's also a Show Additional filter you can use to show or hide the added intents, and the ignored intents as well.
2. Select Add to intent.
3. In the Add this cluster to an intent and model screen, select an intent and model pair you want to associate to this cluster.
4. Enter a few utterance examples into the open text field. Select Add each time you complete your entry to save it in the system. Use the pencil icon or the trash can icon respectively to edit or delete your entry.
5. Select Save.
Result: The records screen appears, showing a banner confirming you added two new utterances to the target intent and its associated model. The model and intent pair appears in the Added To column, as shown in the image below.
Use the Show Additional filter if you want to show or hide the clusters that have added intents, and the clusters that are ignored.
Running another analysis on your Intent Discovery report
1. Select Run Again.
Result: The new run begins. When it's in progress, the option to cancel the run appears, as shown in the image below.
When the run is complete, a new banner appears that states you have a new version of the report.
2. Select the new version, then select Run Again.
Result: The time stamp you selected for the most recent run appears in the Run date column of the Intent Discovery screen.