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October 13, 2026London, UK

Workflow: Turn competitor wins into playbooks

After WF1 identifies the fastest-growing competitors, this step zooms in on the one you select for a full keyword cluster breakdown — which topics they've built an organic footprint in, how many pages they've built, and where their traffic concentrates.

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Prompt

Using Semrush organic data for {country}: Analyze {competitor-domain} if provided. If a previous competitor analysis exists in this conversation, also consider the top growing competitors identified there. Prioritize {competitor-domain} first if provided, then include up to 3 additional growing competitors from the previous analysis if they are relevant. If {competitor-domain} is not provided and previous growing competitors are available, select the most relevant growing competitor from the previous analysis. If neither {competitor-domain} nor previous competitor analysis is available, ask the user to provide a competitor domain before proceeding. 1. Pull the organic keywords {competitor-domain} ranks for (keyword, position, monthly volume, URL). Display_limit: 100. Sort by volume descending. 2. Group the returned keywords into 5 topic clusters by semantic similarity. Infer cluster labels from keyword patterns (e.g., "backlink analysis", "site audit", "keyword research"). Label all cluster names as (inferred). 3. For each cluster: count unique ranking URLs and identify the top 3 keywords by volume. Return ONE table: Columns: * source_competitor * cluster_name * keyword_count * unique_pages_count * top_3_keywords (with volume) * growth_signal (high/med/low) Growth signal rule: * high = top 2 clusters by keyword count * med = clusters 3–4 * low = cluster 5 Limit: 5 clusters. Complete the keyword pull before returning the table. Label all cluster groupings as (inferred).

Example Output (illustrative)

- A 5-cluster breakdown for {competitor-domain} — keyword count, unique ranking pages, top 3 keywords with volume, and growth signal (high / med / low); cluster names labeled as inferred