2.3 KiB
2.3 KiB
name, description, usage
| name | description | usage |
|---|---|---|
| qualify-lead | Evaluate prospect fit and intent to determine next-best action for sales teams. | /sales-prospecting:qualify-lead --company "Acme" --persona "VP Revenue" --signals intent.json |
Qualify Lead Command
Score leads against ICP, intent signals, and buying triggers to decide whether to route, recycle, or nurture.
Command Syntax
/sales-prospecting:qualify-lead \
--company "<name>" \
--persona "<title>" \
--firmographics firmo.json \
--technographics tech.json \
--signals intent.json \
--threshold 75
Parameters
--company: Account name or domain.--persona: Primary buyer role under evaluation.--firmographics: JSON/CSV input of company attributes.--technographics: Technology stack details.--signals: Intent data (product usage, web visits, 3rd-party intent).--threshold: Minimum composite score to pass to sales (default 70).--stage: Lead stage (MQL, PQL, recycled) to influence scoring weights.
Workflow
- Data Normalization – clean and map firmographic, technographic, and behavior fields.
- Fit Scoring – apply weighted ICP model (industry, size, geography, use case, tech stack compatibility).
- Intent Scoring – incorporate behavioral data (content engagement, trials, intent providers, product telemetry).
- Timing Assessment – evaluate trigger events (funding, hires, tech churn) plus buying cycle alignment.
- Recommendation Engine – produce route/recycle/nurture guidance with rationale, next steps, and owner.
Output Schema
{
"company": "Acme Corp",
"fit_score": 82,
"intent_score": 76,
"composite_score": 79,
"decision": "route-to-ae",
"urgency": "high",
"rationale": [
"ICP match: SaaS, 200 employees, US",
"High technographic overlap",
"Recent product trial and pricing page visits"
],
"next_steps": [
"Assign to AE Sarah Lee",
"Send enterprise case study",
"Schedule discovery call within 48h"
]
}
Best Practices
- Keep scoring models transparent so SDRs/RevOps can adjust weights.
- Blend qualitative notes (call transcripts) with quantitative data.
- Auto-sync outcomes to CRM and track model drift monthly.
- Use different thresholds for inbound vs outbound vs product-led leads.