customer-success-manager
npx skills add https://github.com/alirezarezvani/claude-skills --skill customer-success-manager
Agent 安装分布
Skill 文档
Customer Success Manager
Production-grade customer success analytics with multi-dimensional health scoring, churn risk prediction, and expansion opportunity identification. Three Python CLI tools provide deterministic, repeatable analysis using standard library only — no external dependencies, no API calls, no ML models.
Table of Contents
- Capabilities
- Input Requirements
- Output Formats
- How to Use
- Scripts
- Reference Guides
- Templates
- Best Practices
- Limitations
Capabilities
- Customer Health Scoring: Multi-dimensional weighted scoring across usage, engagement, support, and relationship dimensions with Red/Yellow/Green classification
- Churn Risk Analysis: Behavioral signal detection with tier-based intervention playbooks and time-to-renewal urgency multipliers
- Expansion Opportunity Scoring: Adoption depth analysis, whitespace mapping, and revenue opportunity estimation with effort-vs-impact prioritization
- Segment-Aware Benchmarking: Configurable thresholds for Enterprise, Mid-Market, and SMB customer segments
- Trend Analysis: Period-over-period comparison to detect improving or declining trajectories
- Executive Reporting: QBR templates, success plans, and executive business review templates
Input Requirements
All scripts accept a JSON file as positional input argument. See assets/sample_customer_data.json for complete examples.
Health Score Calculator
{
"customers": [
{
"customer_id": "CUST-001",
"name": "Acme Corp",
"segment": "enterprise",
"arr": 120000,
"usage": {
"login_frequency": 85,
"feature_adoption": 72,
"dau_mau_ratio": 0.45
},
"engagement": {
"support_ticket_volume": 3,
"meeting_attendance": 90,
"nps_score": 8,
"csat_score": 4.2
},
"support": {
"open_tickets": 2,
"escalation_rate": 0.05,
"avg_resolution_hours": 18
},
"relationship": {
"executive_sponsor_engagement": 80,
"multi_threading_depth": 4,
"renewal_sentiment": "positive"
},
"previous_period": {
"usage_score": 70,
"engagement_score": 65,
"support_score": 75,
"relationship_score": 60
}
}
]
}
Churn Risk Analyzer
{
"customers": [
{
"customer_id": "CUST-001",
"name": "Acme Corp",
"segment": "enterprise",
"arr": 120000,
"contract_end_date": "2026-06-30",
"usage_decline": {
"login_trend": -15,
"feature_adoption_change": -10,
"dau_mau_change": -0.08
},
"engagement_drop": {
"meeting_cancellations": 2,
"response_time_days": 5,
"nps_change": -3
},
"support_issues": {
"open_escalations": 1,
"unresolved_critical": 0,
"satisfaction_trend": "declining"
},
"relationship_signals": {
"champion_left": false,
"sponsor_change": false,
"competitor_mentions": 1
},
"commercial_factors": {
"contract_type": "annual",
"pricing_complaints": false,
"budget_cuts_mentioned": false
}
}
]
}
Expansion Opportunity Scorer
{
"customers": [
{
"customer_id": "CUST-001",
"name": "Acme Corp",
"segment": "enterprise",
"arr": 120000,
"contract": {
"licensed_seats": 100,
"active_seats": 95,
"plan_tier": "professional",
"available_tiers": ["professional", "enterprise", "enterprise_plus"]
},
"product_usage": {
"core_platform": {"adopted": true, "usage_pct": 85},
"analytics_module": {"adopted": true, "usage_pct": 60},
"integrations_module": {"adopted": false, "usage_pct": 0},
"api_access": {"adopted": true, "usage_pct": 40},
"advanced_reporting": {"adopted": false, "usage_pct": 0}
},
"departments": {
"current": ["engineering", "product"],
"potential": ["marketing", "sales", "support"]
}
}
]
}
Output Formats
All scripts support two output formats via the --format flag:
text(default): Human-readable formatted output for terminal viewingjson: Machine-readable JSON output for integrations and pipelines
How to Use
Quick Start
# Health scoring
python scripts/health_score_calculator.py assets/sample_customer_data.json
python scripts/health_score_calculator.py assets/sample_customer_data.json --format json
# Churn risk analysis
python scripts/churn_risk_analyzer.py assets/sample_customer_data.json
python scripts/churn_risk_analyzer.py assets/sample_customer_data.json --format json
# Expansion opportunity scoring
python scripts/expansion_opportunity_scorer.py assets/sample_customer_data.json
python scripts/expansion_opportunity_scorer.py assets/sample_customer_data.json --format json
Workflow Integration
# 1. Score customer health across portfolio
python scripts/health_score_calculator.py customer_portfolio.json --format json > health_results.json
# 2. Identify at-risk accounts
python scripts/churn_risk_analyzer.py customer_portfolio.json --format json > risk_results.json
# 3. Find expansion opportunities in healthy accounts
python scripts/expansion_opportunity_scorer.py customer_portfolio.json --format json > expansion_results.json
# 4. Prepare QBR using templates
# Reference: assets/qbr_template.md
Scripts
1. health_score_calculator.py
Purpose: Multi-dimensional customer health scoring with trend analysis and segment-aware benchmarking.
Dimensions and Weights:
| Dimension | Weight | Metrics |
|---|---|---|
| Usage | 30% | Login frequency, feature adoption, DAU/MAU ratio |
| Engagement | 25% | Support ticket volume, meeting attendance, NPS/CSAT |
| Support | 20% | Open tickets, escalation rate, avg resolution time |
| Relationship | 25% | Executive sponsor engagement, multi-threading depth, renewal sentiment |
Classification:
- Green (75-100): Healthy — customer achieving value
- Yellow (50-74): Needs attention — monitor closely
- Red (0-49): At risk — immediate intervention required
Usage:
python scripts/health_score_calculator.py customer_data.json
python scripts/health_score_calculator.py customer_data.json --format json
2. churn_risk_analyzer.py
Purpose: Identify at-risk accounts with behavioral signal detection and tier-based intervention recommendations.
Risk Signal Weights:
| Signal Category | Weight | Indicators |
|---|---|---|
| Usage Decline | 30% | Login trend, feature adoption change, DAU/MAU change |
| Engagement Drop | 25% | Meeting cancellations, response time, NPS change |
| Support Issues | 20% | Open escalations, unresolved critical, satisfaction trend |
| Relationship Signals | 15% | Champion left, sponsor change, competitor mentions |
| Commercial Factors | 10% | Contract type, pricing complaints, budget cuts |
Risk Tiers:
- Critical (80-100): Immediate executive escalation
- High (60-79): Urgent CSM intervention
- Medium (40-59): Proactive outreach
- Low (0-39): Standard monitoring
Usage:
python scripts/churn_risk_analyzer.py customer_data.json
python scripts/churn_risk_analyzer.py customer_data.json --format json
3. expansion_opportunity_scorer.py
Purpose: Identify upsell, cross-sell, and expansion opportunities with revenue estimation and priority ranking.
Expansion Types:
- Upsell: Upgrade to higher tier or more of existing product
- Cross-sell: Add new product modules
- Expansion: Additional seats or departments
Usage:
python scripts/expansion_opportunity_scorer.py customer_data.json
python scripts/expansion_opportunity_scorer.py customer_data.json --format json
Reference Guides
| Reference | Description |
|---|---|
references/health-scoring-framework.md |
Complete health scoring methodology, dimension definitions, weighting rationale, threshold calibration |
references/cs-playbooks.md |
Intervention playbooks for each risk tier, onboarding, renewal, expansion, and escalation procedures |
references/cs-metrics-benchmarks.md |
Industry benchmarks for NRR, GRR, churn rates, health scores, expansion rates by segment and industry |
Templates
| Template | Purpose |
|---|---|
assets/qbr_template.md |
Quarterly Business Review presentation structure |
assets/success_plan_template.md |
Customer success plan with goals, milestones, and metrics |
assets/onboarding_checklist_template.md |
90-day onboarding checklist with phase gates |
assets/executive_business_review_template.md |
Executive stakeholder review for strategic accounts |
Best Practices
- Score regularly: Run health scoring weekly for Enterprise, bi-weekly for Mid-Market, monthly for SMB
- Act on trends, not snapshots: A declining Green is more urgent than a stable Yellow
- Combine signals: Use all three scripts together for a complete customer picture
- Calibrate thresholds: Adjust segment benchmarks based on your product and industry
- Document interventions: Track what actions you took and outcomes for playbook refinement
- Prepare with data: Run scripts before every QBR and executive meeting
Limitations
- No real-time data: Scripts analyze point-in-time snapshots from JSON input files
- No CRM integration: Data must be exported manually from your CRM/CS platform
- Deterministic only: No predictive ML — scoring is algorithmic based on weighted signals
- Threshold tuning: Default thresholds are industry-standard but may need calibration for your business
- Revenue estimates: Expansion revenue estimates are approximations based on usage patterns
Last Updated: February 2026 Tools: 3 Python CLI tools Dependencies: Python 3.7+ standard library only