churn predictor

安装量: 47
排名: #15575

安装

npx skills add https://github.com/eddiebe147/claude-settings --skill 'Churn Predictor'
Churn Predictor
Expert churn prediction system that identifies at-risk customers before they leave using behavioral signals, engagement patterns, and predictive analytics. This skill provides structured workflows for building churn models, monitoring risk signals, and executing retention interventions.
Churn is the silent killer of growth. By the time a customer announces they're leaving, it's often too late. This skill helps you identify churn risk early when intervention can still make a difference, prioritize retention efforts, and systematically reduce churn.
Built on data science best practices and customer success methodologies, this skill combines leading indicator analysis, risk scoring, and intervention playbooks to predict and prevent churn before it happens.
Core Workflows
Workflow 1: Churn Signal Identification
Map the behaviors that predict churn
Behavioral Signals
Signal Type
Examples
Risk Level
Usage Decline
30%+ drop in logins, sessions, actions
High
Feature Abandonment
Stopped using key features
Medium-High
Engagement Drop
No response to emails, missed meetings
Medium
Support Patterns
Spike in tickets, negative sentiment
High
Billing Issues
Failed payments, downgrade requests
High
Account Signals
Champion departure (key user leaves)
Company layoffs or restructuring
Merger/acquisition announcements
Budget cuts affecting your category
Competitor evaluation signals
Contract not renewed on auto-renew
Relationship Signals
NPS score decline (9-10 → 7 or below)
Missed QBRs or check-ins
Unresponsive to outreach
Escalated support issues
Negative sentiment in communications
Time-Based Signals
Approaching renewal (90/60/30 days)
End of trial or pilot
Anniversary of bad experience
Post-implementation plateau
Seasonal usage patterns
Workflow 2: Risk Scoring Model
Build a composite churn risk score
Score Components
Churn Risk Score =
(Usage Score × 0.30) +
(Engagement Score × 0.25) +
(Support Score × 0.20) +
(Relationship Score × 0.15) +
(Account Score × 0.10)
Scale: 0-100 (higher = more at risk)
Usage Score Factors
Login frequency vs. baseline
Feature adoption breadth
Active users vs. licensed seats
Time in product
Core action completion
Engagement Score Factors
Email open/click rates
Meeting attendance
Resource downloads
Training completion
Community participation
Risk Categories
Score
Risk Level
Action
0-20
Low
Standard monitoring
21-40
Moderate
Proactive outreach
41-60
Elevated
Intervention needed
61-80
High
Urgent save attempt
81-100
Critical
Executive escalation
Workflow 3: Cohort & Trend Analysis
Understand churn patterns across customer segments
Cohort Analysis
Analyze by signup month/quarter
Track retention curves over time
Identify cohorts with worse retention
Correlate with product/market changes
Find patterns in successful cohorts
Segment Analysis
By customer size (SMB/Mid/Enterprise)
By industry vertical
By use case/persona
By acquisition source
By pricing tier
Churn Timing Patterns
When in customer lifecycle does churn occur?
Renewal vs. mid-contract churn
Time from warning signs to churn
Seasonal patterns
Correlation with contract length
Leading Indicator Validation
Track signals → churn correlation
Calculate signal lead time
Measure false positive rate
Refine scoring weights
A/B test interventions
Workflow 4: Alert & Escalation System
Surface risk at the right time to the right people
Alert Triggers
Score crosses threshold (e.g., into "elevated")
Rapid score increase (10+ points in 7 days)
Critical signal detected (payment failed, champion left)
Renewal approaching with elevated risk
Multiple signals converging
Escalation Matrix
Risk Level
Owner
Escalation
Response SLA
Moderate
CSM
None
5 days
Elevated
CSM
Manager copy
48 hours
High
CSM + Manager
VP briefed
24 hours
Critical
Manager
VP/Exec sponsor
Same day
Alert Content
Customer name and risk score
Specific signals triggering alert
Score trend (improving/declining)
Renewal date and ARR at risk
Recommended actions
Alert Channels
Slack/Teams notifications
Email digests
CRM dashboards
Weekly risk reports
Executive summaries
Workflow 5: Intervention Playbooks
Systematic approaches to save at-risk customers
Intervention Matching
Root Cause
Intervention
Low adoption
Training, onboarding redo
Technical issues
Engineering escalation, workarounds
Value unclear
ROI analysis, executive alignment
Champion left
Relationship rebuild with new stakeholders
Pricing concerns
Discount, plan adjustment, payment terms
Competitive
Feature comparison, roadmap preview
Save Play Execution
Diagnose root cause (don't assume)
Match intervention to cause
Assign owner and resources
Set clear timeline and milestones
Track outcome (saved, lost, reason)
Intervention Tactics
Urgent Call
Same-day executive outreach
Health Check
Comprehensive account review
Training Blitz
Intensive enablement sessions
Success Sprint
Focused value delivery
Executive Alignment
VP/C-level engagement
Commercial Discussion
Pricing/terms adjustment Outcome Tracking Save rate by risk level Save rate by intervention type Time from intervention to resolution Reasons for unsuccessful saves Long-term retention of saved accounts Quick Reference Action Command/Trigger Check risk score "Show churn risk for [Customer]" List at-risk accounts "Show accounts above [X] risk score" Analyze churn patterns "Analyze churn patterns by [segment]" Review alerts "Show churn alerts this week" Create save plan "Create intervention plan for [Customer]" Score validation "Validate churn model accuracy" Cohort analysis "Analyze retention by cohort" Signal analysis "Find leading churn indicators" Trend report "Show risk score trends" Intervention report "Report on save play outcomes" Best Practices Signal Selection Focus on behaviors you can observe Validate correlation with actual churn Use leading indicators (not lagging) Combine multiple signal types Weight by predictive power Scoring Model Start simple, add complexity gradually Calibrate weights with historical data Validate with blind holdout testing Recalibrate quarterly Document methodology Alert Design Don't alert on every score change Focus on actionable thresholds Include context in alerts Route to right person Avoid alert fatigue Intervention Diagnose before prescribing Match intervention to root cause Set clear success criteria Track outcomes rigorously Learn from failures Model Maintenance Review accuracy monthly Retrain with new churn data Adjust for product changes Update as customer base evolves Document false positives/negatives Churn Signals Library Usage Signals Signal Calculation Warning Threshold Login decline % change week-over-week -30% for 2+ weeks DAU/MAU ratio Daily active / Monthly active Below 0.2 Feature breadth

features used / available

Below 30% Seat utilization Active users / licensed seats Below 50% Session depth Actions per session Below baseline by 40% Engagement Signals Signal Calculation Warning Threshold Email engagement Open rate × Click rate Below 5% Meeting attendance Attended / Scheduled Below 60% Response time Avg days to respond Above 5 days QBR participation Attended / Scheduled Miss 2+ in row Training completion Completed / Available Below 25% Support Signals Signal Calculation Warning Threshold Ticket volume Tickets / month 3× baseline Sentiment score Negative / Total Above 30% Escalation rate Escalated / Total Above 20% Resolution satisfaction CSAT on resolved Below 3/5 Open ticket age Avg days open Above 7 days Relationship Signals Signal Calculation Warning Threshold NPS change Current - Previous Drop of 3+ points Health score Composite score Below 60 Champion risk Champion activity decline Below 50% of baseline Executive access Exec meetings / quarter 0 in 2+ quarters Renewal confidence CSM assessment Below 70% Risk Report Template Weekly At-Risk Summary

Churn Risk Report: Week of [Date]

Summary

Accounts at elevated risk or above: [X]

Total ARR at risk: $[Amount]

New alerts this week: [X]

Risk trending down: [X accounts]

Critical Risk (81-100) | Account | ARR | Score | Key Signals | Owner | Action | |


|

|

|

|

|

| | [Name] | $X | 87 | [Signals] | [CSM] | [Status] |

High Risk (61-80) [Same format]

Elevated Risk (41-60) [Same format]

Interventions in Progress | Account | Started | Intervention | Progress | |


|

|

|

| | [Name] | [Date] | [Type] | [Status] |

Outcomes This Week

Saved: [X accounts, $ARR]

Lost: [X accounts, $ARR, reasons]

De-escalated: [X accounts]
Red Flags
Model overfit
Perfect on training data, poor on new data
Signal lag
Indicators trigger too late for intervention
False positive fatigue
Too many alerts that aren't real risk
Missing signals
Key churn predictors not tracked
Score opacity
Team doesn't understand why scores change
Intervention mismatch
Same playbook for different problems
No feedback loop
Not learning from save attempts
Data quality
Missing or stale underlying data Model Validation Metrics Metric What It Measures Target Accuracy Overall correct predictions 80%+ Precision True positives / All predicted positives 70%+ Recall True positives / All actual churns 85%+ Lead Time Days from high risk to actual churn 60+ days False Positive Rate False alarms / All high-risk alerts < 30% Save Rate Saved / Attempted saves 40%+ AUC-ROC Model discrimination ability 0.75+
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