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Prospect

Full ICP-to-leads pipeline. Describe your ideal customer in plain English and get a ranked table of enriched decision-maker leads with emails and phone numbers.

$ npx promptcreek add prospect

Auto-detects your installed agents and installs the skill to each one.

What This Skill Does

This skill helps users generate a ranked and enriched lead list from an ideal customer profile (ICP) description. It's designed for sales and marketing teams looking to quickly identify and prioritize potential customers based on specific criteria. The skill automates the process of finding relevant companies and decision-makers.

When to Use

  • Identify VP of Engineering leads at Series B+ SaaS firms.
  • Find heads of marketing at e-commerce companies in Europe.
  • Generate a list of CTOs at fintech startups in New York.
  • Locate procurement managers at large manufacturing companies.
  • Discover SDR leaders at companies using Salesforce and Outreach.

Key Features

Parses natural language ICP descriptions into structured filters.
Searches for companies based on industry, size, and location.
Enriches company data to reveal revenue, funding, and headcount.
Finds decision-makers based on job titles and seniority levels.
Enriches lead data to provide comprehensive contact information.

Installation

Run in your project directory:
$ npx promptcreek add prospect

Auto-detects your installed agents (Claude Code, Cursor, Codex, etc.) and installs the skill to each one.

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Prospect

Go from an ICP description to a ranked, enriched lead list in one shot. The user describes their ideal customer via "$ARGUMENTS".

Examples

  • /apollo:prospect VP of Engineering at Series B+ SaaS companies in the US, 200-1000 employees
  • /apollo:prospect heads of marketing at e-commerce companies in Europe
  • /apollo:prospect CTOs at fintech startups, 50-500 employees, New York
  • /apollo:prospect procurement managers at manufacturing companies with 1000+ employees
  • /apollo:prospect SDR leaders at companies using Salesforce and Outreach

Step 1 — Parse the ICP

Extract structured filters from the natural language description in "$ARGUMENTS":

Company filters:

  • Industry/vertical keywords → q_organization_keyword_tags
  • Employee count ranges → organization_num_employees_ranges
  • Company locations → organization_locations
  • Specific domains → q_organization_domains_list

Person filters:

  • Job titles → person_titles
  • Seniority levels → person_seniorities
  • Person locations → person_locations

If the ICP is vague, ask 1-2 clarifying questions before proceeding. At minimum, you need a title/role and an industry or company size.

Step 2 — Search for Companies

Use mcp__claude_ai_Apollo_MCP__apollo_mixed_companies_search with the company filters:

  • q_organization_keyword_tags for industry/vertical
  • organization_num_employees_ranges for size
  • organization_locations for geography
  • Set per_page to 25

Step 3 — Enrich Top Companies

Use mcp__claude_ai_Apollo_MCP__apollo_organizations_bulk_enrich with the domains from the top 10 results. This reveals revenue, funding, headcount, and firmographic data to help rank companies.

Step 4 — Find Decision Makers

Use mcp__claude_ai_Apollo_MCP__apollo_mixed_people_api_search with:

  • person_titles and person_seniorities from the ICP
  • q_organization_domains_list scoped to the enriched company domains
  • per_page set to 25

Step 5 — Enrich Top Leads

> Credit warning: Tell the user exactly how many credits will be consumed before proceeding.

Use mcp__claude_ai_Apollo_MCP__apollo_people_bulk_match to enrich up to 10 leads per call with:

  • first_name, last_name, domain for each person
  • reveal_personal_emails set to true

If more than 10 leads, batch into multiple calls.

Step 6 — Present the Lead Table

Show results in a ranked table:

Leads matching: [ICP Summary]

| # | Name | Title | Company | Employees | Revenue | Email | Phone | ICP Fit |

|---|---|---|---|---|---|---|---|---|

ICP Fit scoring:

  • Strong — title, seniority, company size, and industry all match
  • Good — 3 of 4 criteria match
  • Partial — 2 of 4 criteria match

Summary: Found X leads across Y companies. Z credits consumed.

Step 7 — Offer Next Actions

Ask the user:

  • Save all to Apollo — Bulk-create contacts via mcp__claude_ai_Apollo_MCP__apollo_contacts_create with run_dedupe: true for each lead
  • Load into a sequence — Ask which sequence and run the sequence-load flow for these contacts
  • Deep-dive a company — Run /apollo:company-intel on any company from the list
  • Refine the search — Adjust filters and re-run
  • Export — Format leads as a CSV-style table for easy copy-paste
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Supported Agents

Claude CodeCursorCodexGemini CLIAiderWindsurfOpenClaw

Details

License
MIT
Source
admin
Published
3/18/2026

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