Sentiment Score Node
Last updated: June 12, 2026
To learn more about Sentiment and Sentiment Score metrics in see the 📄 About Sentiment section.
The Sentiment Score node pulls brand sentiment data from your Profound account into an Agent. Use this step when you want to analyze positive, negative, or neutral sentiment toward your brand in AI answers.
This node is optimized for understanding perception trends and tone shifts over time.
Use Sentiment Score for tasks such as:
Tracking positive vs. negative AI answer sentiment
Identifying sentiment changes after product updates
Comparing sentiment across models or regions
Node configuration
Selecting the Sentiment Score node opens its configuration panel on the right side of the Agent Builder.
Metric
Choose the sentiment metric to return. Options include:
Positive Count
Negative Count
Total Occurrences
Positive Ratio (%)
Negative Ratio (%)
Date Range
Specify the time window to query (for example, Last 7 Days).
The node will return sentiment data only for answers within this range.
Filters
Use filters to narrow the dataset.
Fields may include:
Analysis Types
Asset
Citation Categories
Hostnames
Regions
Personas
Platforms
Prompts
Tags
Topics
You can paste a static value or insert a value dynamically from earlier Agent steps by typing /.
When filtering on a field, you must also include that field as a dimension in the field settings.
Output Label
Examples:
sentiment_scoreweekly_sentimentsentiment_by_model
Advanced settings
Date Interval
Group the date interval by day, week, month or year.Â
Limit
Set the maximum number of rows returned by the query. This is helpful when using multiple dimensions or sending data into LLM steps.
Sort By
Sort the output by metric or date.
Sort Direction
Sort the output in ascending (ASC) or descending (Desc) order.
Output
Returns structured sentiment metrics grouped by any selected dimensions.
This output is commonly used in:
LLM narrative summaries
Reputation monitoring Agents
Executive dashboards