skills/writing-and-planning/copywriting/document-editorial/composio-skills/hunter-automation/SKILL.md
Automate Hunter.io email intelligence -- search domains for email addresses, find specific contacts, verify email deliverability, manage leads, and monitor account usage -- using natural language through the Composio MCP integration.
npx skillsauth add lunartech-x/superpowers Hunter AutomationInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Power your outreach with Hunter.io -- discover email addresses by domain, find specific people's emails, verify deliverability, save leads, and track your API usage -- all through natural language commands.
Toolkit docs: composio.dev/toolkits/hunter
https://rube.app/mcp
Discover all publicly available email addresses for a given domain or company, with filtering by department, seniority, and type.
Tool: HUNTER_DOMAIN_SEARCH
Example prompt:
"Find all executive email addresses at stripe.com using Hunter"
Key parameters:
domain -- Domain to search (e.g., "stripe.com"). Required if company not provided.company -- Company name to search (e.g., "Stripe"). Required if domain not provided.type -- Filter by "personal" or "generic" emailsseniority -- Filter by levels: "junior", "senior", "executive" (array)department -- Filter by departments: "executive", "it", "finance", "sales", etc. (array)required_field -- Require specific fields: "full_name", "position", "phone_number" (array)limit -- Max results per request (1-100, default 10; free/basic plans limited to 10)offset -- Skip results for pagination (default 0)Infer the most likely email address for a person given their name and domain or company.
Tool: HUNTER_EMAIL_FINDER
Example prompt:
"Find the email for Alexis Ohanian at reddit.com using Hunter"
Key parameters:
domain -- Target domain (e.g., "reddit.com"). Takes precedence over company.company -- Company name (e.g., "Reddit"). Used if domain not provided.first_name + last_name (e.g., "Alexis" + "Ohanian")full_name (e.g., "Alexis Ohanian")max_duration -- Max request duration in seconds (3-20, default 10). Longer durations yield more accurate results.Check whether an email address is valid, deliverable, and safe to send to.
Tool: HUNTER_EMAIL_VERIFIER
Example prompt:
"Verify if [email protected] is a valid email address"
Key parameters:
email (required) -- The email address to verify (e.g., "[email protected]")Response includes: verification status, deliverability score, MX record validation, and risk assessment.
Check how many email addresses Hunter has for a domain or company -- this call is free and does not consume API credits.
Tool: HUNTER_EMAIL_COUNT
Example prompt:
"How many email addresses does Hunter have for stripe.com?"
Key parameters:
domain -- Domain to query (e.g., "stripe.com"). Required if company not provided.company -- Company name (min 3 characters). Required if domain not provided.type -- Filter count by "personal" or "generic" emailsReturns: Total count with breakdowns by type, department, and seniority level.
Create or update leads by email in a single upsert call -- no need to check existence first.
Tool: HUNTER_UPSERT_LEAD
Example prompt:
"Save [email protected] as a lead in Hunter with name John Doe, position CTO"
Key parameters:
email -- Lead's email address (primary identifier for upsert)Review your Hunter account plan details, remaining searches, and verification quotas before running bulk operations.
Tool: HUNTER_ACCOUNT_INFORMATION
Example prompt:
"How many Hunter API searches do I have left this month?"
Key parameters: None required.
authentication_failed errors indicate an invalid or expired API key. Fix before attempting bulk operations.HUNTER_EMAIL_COUNT returns approximate numbers for sizing and prioritization, not guaranteed retrievable email counts.HUNTER_DOMAIN_SEARCH paginates via limit/offset. Do not assume the first page is complete -- continue fetching until results are empty or you hit a cap.HUNTER_DOMAIN_SEARCH can return emails: [] with no error. Treat as "no data found" and continue, rather than retrying as a failure.accept_all or risky statuses from HUNTER_EMAIL_VERIFIER indicate uncertainty. Exclude these from strict deliverability workflows or handle them separately.HUNTER_DOMAIN_SEARCH to 10 results per request. Higher limits require a paid plan.| Action | Tool Slug | Required Params |
|---|---|---|
| Search domain emails | HUNTER_DOMAIN_SEARCH | domain or company |
| Find person's email | HUNTER_EMAIL_FINDER | Name + (domain or company) |
| Verify email | HUNTER_EMAIL_VERIFIER | email |
| Get email count | HUNTER_EMAIL_COUNT | domain or company |
| Save/update lead | HUNTER_UPSERT_LEAD | email |
| Check account | HUNTER_ACCOUNT_INFORMATION | None |
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