Detect cannibalized keywords and competing pages with Google Search Console
Find Cannibalized Pages (Google Search Console)
This n8n template helps you detect page cannibalization in Google Search Console (GSC): situations where multiple pages on your site rank for the same query and more than one page gets clicks. Use it to spot competing URLs, consolidate content, improve internal linking, and protect your CTR/rankings.
Good to know
- Data source: Google Search Console Search Analytics (Dimensions:
query,page). - Scope: Defaults to last 12 months and up to 10,000 rows per run (adjustable).
- Logic: Keeps only queries with >1 page and where the second page has clicks > 0 → higher confidence of true cannibalization.
- Privacy: Template ships with a placeholder property (
sc-domain:example.com) and a neutral credential name; replace both after import. - Cost: n8n nodes used here are free. GSC usage is also free (subject to Google limits).
How it works
- Manual Start — run the workflow on demand.
- Google Search Console — fetch last 12 months of query–page rows.
- Summarize — group by
query, building two arrays:appended_page[]→ all pages seen for that queryappended_clicks[]→ clicks for each page-query row (aligned withappended_page)
- Filter — pass only queries where:
count_query > 1(more than one page involved), andappended_clicks[1] > 0(the second page also received clicks)
- Output — list of cannibalized queries with the competing pages and their click counts.
Example output
{
"query": "best running shoes",
"appended_page": [
"https://example.com/blog/best-running-shoes",
"https://example.com/guide/running-shoes-2025"
],
"appended_clicks": [124, 37],
"count_query": 3
}
How to use
- Import the JSON into n8n.
- Open the Google Search Console node and:
- Connect your Google Search Console OAuth2 credential.
- Replace
siteUrlwith your property (sc-domain:your-domain.com).
- Press Execute Workflow on Manual Start.
- Review the output — focus on queries where the second page has meaningful clicks.
💡 Tip: If your site is large, start with a shorter date range (e.g., 90 days) or raise rowLimit.
Requirements
- Access to the target property in Google Search Console.
- One Google Search Console OAuth2 credential in n8n.
Customising this workflow
- More robust detection: In the Summarize node, change
clicksaggregation fromappendtosum. Then filter for “at least 2 pages withsum_clicks > 0” to avoid any dependency on row order. - Scoring & sorting: Add a Code/Function node to sort competing pages by clicks or impressions and compute click-share per page.
- Deeper analysis: Include
impressionsandpositionin the GSC node and extend the summary to prioritize fixes (e.g., high impressions + split clicks). - Reporting: Send results to Google Sheets or export a CSV; create a dashboard of top cannibalized queries.
- Thresholds: Expose minimum click thresholds as workflow variables (e.g., second page clicks ≥ 3) to reduce noise.
Troubleshooting
- Empty results: Widen date range, increase
rowLimit, or temporarily relax the filter (remove the second-page click condition to validate data flow). - No property data: Ensure you used
sc-domain:vs.https://property format correctly and that your user has GSC access. - Credential issues: Reconnect the OAuth2 credential and reauthorize if needed.
n8n Core Nodes Workflow Example
This n8n workflow demonstrates the use of several core n8n nodes to perform basic data manipulation and flow control. It serves as a foundational example for understanding how to combine Start, Sticky Note, Filter, and Summarize nodes in a sequence.
Description
This workflow is a simple illustration of core n8n functionalities. It starts a workflow, includes a note for documentation, allows for conditional filtering of data, and then summarizes the processed information. While not connected to external services, it showcases the internal logic capabilities of n8n.
What it does
- Starts the workflow: Initiates the execution of the workflow.
- Provides a Sticky Note: Includes a "Sticky Note" for adding comments or documentation directly within the workflow canvas.
- Filters data: Implements a "Filter" node, which is capable of conditionally passing or omitting items based on specified criteria.
- Summarizes data: Uses a "Summarize" node to aggregate or transform data, such as counting, grouping, or calculating sums/averages.
Prerequisites/Requirements
- An active n8n instance.
- No external service credentials are required for this specific workflow, as it only uses core n8n nodes.
Setup/Usage
- Import the workflow: Download the provided JSON and import it into your n8n instance.
- Explore the nodes: Examine each node to understand its configuration and purpose.
- Add your logic: This workflow is a template. You can connect additional nodes before or after the
FilterandSummarizenodes to implement specific business logic. For example, you could add data from a Google Search Console node before the filter, and then send summarized results to a Slack or Google Sheets node. - Configure the Filter: Adjust the conditions within the "Filter" node to match your specific data filtering requirements.
- Configure the Summarize: Set up the "Summarize" node to perform the desired aggregation or transformation on your data.
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