Lead Scoring
What this skill does
Implements a lead scoring model that evaluates prospects based on demographic fit, firmographic data, behavioral engagement, and intent signals. Assigns numerical scores to prioritize sales outreach and route leads to the right team. Continuously refines scores based on conversion outcomes.
Example
Create a lead scoring model for our B2B SaaS product. ICP: 50-500 employee tech companies in North America.
Required Tools
Compatible Agents
Add to your agent
Or install via CLI:
$ npx skills add webrix-ai/agent-skills --skill lead-scoring
Deploy Org-wide
Free for up to 5 users
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