lead-scoring
정보
이 스킬은 기업 정보 적합도, 행동 신호, 의도 데이터를 결합하여 영업 리드를 우선순위화하는 리드 스코어링 모델을 개발자가 구축할 수 있도록 합니다. 인바운드 리드 우선순위 설정, 자격 기준 설정, 리드 품질 분석을 위해 설계되었습니다. 이 방법론은 HubSpot의 리드 스코어링과 Forrester의 B2B 구매자 여정 연구와 같은 검증된 프레임워크를 기반으로 합니다.
빠른 설치
Claude Code
추천npx skills add guia-matthieu/clawfu-skills -a claude-code/plugin add https://github.com/guia-matthieu/clawfu-skillsgit clone https://github.com/guia-matthieu/clawfu-skills.git ~/.claude/skills/lead-scoringClaude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요
문서
Lead Scoring
Prioritize leads using a systematic scoring model that combines ICP fit, engagement behavior, and buying intent signals.
When to Use This Skill
- Designing a new lead scoring model
- Prioritizing inbound leads for SDR follow-up
- Setting MQL thresholds for sales handoff
- Analyzing lead quality by source
- Optimizing marketing spend by lead score
Methodology Foundation
Based on HubSpot's Lead Scoring methodology and Forrester's B2B Buyer Journey research, combining:
- Firmographic/demographic fit (who they are)
- Behavioral scoring (what they do)
- Intent signals (buying readiness)
- Negative scoring (disqualification)
What Claude Does vs What You Decide
| Claude Does | You Decide |
|---|---|
| Designs scoring model structure | Point values for your business |
| Calculates lead scores | MQL threshold for handoff |
| Identifies high-intent behaviors | Which behaviors matter most |
| Segments leads by score | Sales follow-up priorities |
| Suggests model improvements | Model weight adjustments |
What This Skill Does
- Model design - Create scoring framework with fit + behavior + intent
- Score calculation - Apply model to lead data
- Threshold setting - Define MQL/SQL qualification levels
- Segmentation - Group leads by score for routing
- Optimization - Analyze score-to-conversion correlation
How to Use
For Model Design:
Help me create a lead scoring model for [Business Type].
Our ICP:
- Company size: [Range]
- Industries: [List]
- Titles: [Target titles]
- Geography: [Regions]
Key buying signals we track:
- [List website pages, content, actions]
Current conversion rates:
- Lead to MQL: X%
- MQL to SQL: X%
- SQL to Won: X%
For Lead Scoring:
Score this lead:
Company: [Name]
Size: [Employees]
Industry: [Industry]
Title: [Contact title]
Location: [Geography]
Behavior (last 30 days):
- [List pages visited, content downloaded, emails opened]
Instructions
Step 1: Define Fit Score (0-40 points)
Company Firmographics:
| Criteria | Points |
|---|---|
| Company size matches ICP | +10 |
| Industry in target list | +10 |
| Geography in target regions | +5 |
| Revenue in target range | +5 |
| Company size too small | -10 |
| Industry excluded | -20 |
Contact Demographics:
| Criteria | Points |
|---|---|
| Title is decision maker | +10 |
| Title is influencer | +5 |
| Title is end user | +3 |
| Student/Personal email | -15 |
| Competitor domain | -40 |
Step 2: Define Behavior Score (0-40 points)
Content Engagement:
| Action | Points |
|---|---|
| Pricing page visit | +15 |
| Case study download | +10 |
| Product demo video watched | +10 |
| Blog post read | +2 |
| 5+ pages in session | +5 |
| Return visit within 7 days | +5 |
Direct Engagement:
| Action | Points |
|---|---|
| Demo request form | +30 |
| Contact sales form | +25 |
| Free trial signup | +20 |
| Webinar registration | +10 |
| Newsletter signup | +3 |
| Email opened | +1 |
| Email clicked | +3 |
Step 3: Define Intent Score (0-20 points)
Third-Party Intent:
| Signal | Points |
|---|---|
| Researching your category (Bombora/G2) | +15 |
| Competitor comparison searches | +10 |
| Job posting for related role | +5 |
| Funding announcement | +5 |
| Technology install matches | +5 |
Step 4: Apply Negative Scoring
| Signal | Points |
|---|---|
| Unsubscribed from email | -10 |
| Bounced email | -20 |
| No engagement 90+ days | -15 |
| Marked as spam | -30 |
| Competitor | -100 |
Step 5: Set Thresholds
| Score Range | Qualification | Action |
|---|---|---|
| 80-100 | Hot MQL | Immediate sales call |
| 60-79 | Warm MQL | SDR outreach 24hr |
| 40-59 | Marketing Qualified | Nurture sequence |
| 20-39 | Early Stage | Educational content |
| 0-19 | Not Qualified | Monitor only |
| Negative | Disqualified | Suppress |
Examples
Example 1: Scoring Model Design
Input:
Help me create a lead scoring model for B2B SaaS (marketing automation).
Our ICP:
- Company size: 50-500 employees
- Industries: Tech, E-commerce, SaaS
- Titles: VP Marketing, Director Marketing, CMO
- Geography: US, Canada, UK
Key buying signals:
- Pricing page, demo request, case studies
- Marketing automation category on G2
Output:
## Lead Scoring Model: Marketing Automation SaaS
### Fit Score (Max 40 points)
**Company Fit (20 points)**
| Criteria | Points |
|----------|--------|
| 50-500 employees | +10 |
| 500-1000 employees | +5 |
| <50 or >1000 employees | +0 |
| Tech/E-commerce/SaaS industry | +10 |
| Adjacent industry (Retail, Media) | +5 |
| Non-target industry | +0 |
**Contact Fit (20 points)**
| Criteria | Points |
|----------|--------|
| VP/Director Marketing, CMO | +15 |
| Marketing Manager | +10 |
| Marketing Coordinator | +5 |
| Non-marketing title | +0 |
| US/Canada/UK | +5 |
| Other geography | +0 |
| Personal email (@gmail) | -15 |
| Competitor domain | -40 |
### Behavior Score (Max 40 points)
**High-Intent Actions**
| Action | Points |
|--------|--------|
| Demo request submitted | +25 |
| Pricing page visit | +15 |
| Case study download | +10 |
| Product tour completed | +10 |
**Engagement Actions**
| Action | Points |
|--------|--------|
| 3+ pages in session | +5 |
| Return visit (7 days) | +5 |
| Webinar registered | +8 |
| Blog post read | +2 |
| Email clicked | +3 |
| Email opened | +1 |
### Intent Score (Max 20 points)
| Signal | Points |
|--------|--------|
| G2 category research | +10 |
| Competitor comparison | +8 |
| Marketing hire posting | +5 |
| Series A/B funding | +5 |
### Negative Scoring
| Signal | Points |
|--------|--------|
| Unsubscribed | -10 |
| No activity 90 days | -15 |
| Email bounced | -20 |
| Competitor | -100 |
### Thresholds
| Score | Status | SLA |
|-------|--------|-----|
| 70+ | 🔥 Hot MQL | Call within 5 min |
| 50-69 | 🟢 MQL | SDR contact 24hr |
| 30-49 | 🟡 Nurture | Email sequence |
| <30 | Monitor | No outreach |
Example 2: Individual Lead Scoring
Input:
Score this lead using the model above:
Company: GrowthTech Inc
Size: 180 employees
Industry: SaaS
Title: VP of Marketing
Location: San Francisco, US
Behavior (last 30 days):
- Visited pricing page (2x)
- Downloaded "Email Automation Guide"
- Attended webinar "Marketing Automation 101"
- Opened 4 emails, clicked 2
- Visited 8 pages total
Intent: Showing on G2 for marketing automation research
Output:
## Lead Score: GrowthTech Inc
### Overall Score: 83/100 🔥 HOT MQL
### Score Breakdown
**Fit Score: 35/40**
| Factor | Points | Notes |
|--------|--------|-------|
| Company size (180) | +10 | Perfect ICP |
| Industry (SaaS) | +10 | Target industry |
| Title (VP Marketing) | +15 | Decision maker |
| Location (US) | +5 | Target geography |
| **Subtotal** | **35** | |
**Behavior Score: 38/40**
| Action | Points | Notes |
|--------|--------|-------|
| Pricing page (2x) | +15 | High intent signal |
| Content download | +5 | Educational engagement |
| Webinar attended | +8 | Active learning |
| 8 pages visited | +5 | Deep exploration |
| 4 emails opened | +4 | Engaged with nurture |
| 2 emails clicked | +6 | Taking action |
| **Subtotal** | **38** | |
**Intent Score: 10/20**
| Signal | Points | Notes |
|--------|--------|-------|
| G2 category research | +10 | Active buyer research |
| **Subtotal** | **10** | |
### Qualification: HOT MQL
- **Action Required**: Immediate SDR call (within 5 minutes)
- **Talking Points**: Reference webinar attendance, pricing interest
- **Ask**: "What prompted your marketing automation research?"
### Next Best Actions
1. Call within 5 minutes (hot lead SLA)
2. Reference webinar + pricing page visits
3. Offer personalized demo with VP Marketing use cases
4. Connect on LinkedIn (warm outreach)
Skill Boundaries
What This Skill Does Well
- Structuring scoring models systematically
- Calculating scores from provided data
- Recommending thresholds based on best practices
- Identifying model gaps
What This Skill Cannot Do
- Access your CRM data directly
- Know your actual conversion rates
- Predict individual lead outcomes
- Account for offline interactions
When to Escalate to Human
- Setting final MQL thresholds (needs sales alignment)
- Weighting decisions (requires business judgment)
- Model validation (needs historical data analysis)
- Edge cases (unusual company profiles)
Iteration Guide
Follow-up Prompts
- "Adjust the model for enterprise (1000+ employees) leads."
- "What score would trigger an immediate call for us?"
- "Compare scores for these 5 leads and rank them."
- "What behaviors should we add to increase accuracy?"
Model Refinement Cycle
- Build initial model → Deploy
- Track score vs. conversion rate
- Adjust weights based on data
- Add new signals quarterly
- Remove low-correlation factors
Checklists & Templates
Lead Scoring Model Template
## [Company] Lead Scoring Model v[X]
### Fit Score (Max X points)
| Criteria | Points |
|----------|--------|
### Behavior Score (Max X points)
| Action | Points |
|--------|--------|
### Intent Score (Max X points)
| Signal | Points |
|--------|--------|
### Negative Scoring
| Signal | Points |
|--------|--------|
### Thresholds
| Score | Status | Action |
|-------|--------|--------|
### Review Schedule
- Quarterly weight review
- Monthly threshold check
Model Audit Checklist
- All ICP criteria have point values
- High-intent behaviors weighted appropriately
- Negative scoring prevents bad leads
- Thresholds align with sales capacity
- Model reviewed in last 90 days
References
- HubSpot Lead Scoring Guide
- Forrester B2B Buyer Journey Research
- Marketo Definitive Guide to Lead Scoring
- SiriusDecisions Demand Waterfall
Related Skills
icp-matching- Deep ICP definitionpipeline-forecasting- Score aggregation to forecastdeal-risk-scoring- Post-MQL deal health
Skill Metadata
- Domain: RevOps
- Complexity: Intermediate
- Mode: centaur
- Time to Value: 30-60 min for model design, 2 min per lead
- Prerequisites: ICP definition, behavior tracking capability
GitHub 저장소
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