/SKILL.md
Use when working with ANY PageRangers or SEO ranking operation — keyword analysis, SERP data, search volume, competition metrics, ranking positions, KPIs, or keyword opportunities via PageRangers API.
npx skillsauth add netresearch/pagerangers-skill pagerangers-seoInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Query the PageRangers Monitoring API for SEO insights directly from your AI assistant.
| Command | Description |
|---------|-------------|
| keyword <term> | Analyze a keyword (SERP, volume, competition) |
| rankings | List current keyword rankings |
| kpis | Get project KPIs (ranking index, top 10/100) |
| prospects | Find high-opportunity keywords |
# 1. Create credentials file (see references/setup.md for details)
cat > ~/.env.pagerangers << 'EOF'
PAGERANGERS_API_TOKEN=your_api_key_here
PAGERANGERS_PROJECT_HASH=your_project_hash_here
EOF
# 2. Run commands (global flags like --json go BEFORE the subcommand)
python3 ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py --json keyword "SEO Analyse" --top 5
python3 ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py --json rankings --limit 10
python3 ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py --json kpis
python3 ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py --json prospects --limit 10
python3 ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py --json keyword "online marketing" --top 10
Returns: keyword, search volume, competition (low/medium/high), top URLs, related keywords.
python3 ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py --json rankings --limit 20
Returns: keyword, position, ranking URL.
python3 ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py --json kpis
Returns: ranking index, top 10 count, top 100 count, average position.
python3 ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py --json prospects --limit 10
Returns: keywords with best ranking potential.
| Topic | Reference |
|-------|-----------|
| API documentation | references/pagerangers-api.md |
| Endpoint configuration | references/pagerangers-api.json |
| Setup and credentials | references/setup.md |
| Error handling | references/error-handling.md |
| Module distinction (Monitoring vs Explorer) | references/module-distinction.md |
| API costs and credits | references/api-costs.md |
| CLI implementation | ${CLAUDE_SKILL_DIR}/scripts/pagerangers.py |
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