Catch Churn Signals 37% Earlier with Proactive Monitoring
Gainsight research shows proactive CS teams detect churn 37% earlier. Learn the 10 critical signals and how to build an early warning system.
Reactive churn management is a losing battle. By the time a customer announces they are leaving, it is often too late. Gainsight research reveals that proactive Customer Success teams can detect churn signals 37% earlier than reactive teams.
The Anatomy of Churn
Dissatisfaction -> Disengagement -> Evaluation -> Decision -> Churn
| | | |
Signals Signals Signals Too late
The key is catching signals in the first three stages.
10 Critical Churn Signals
Engagement Signals
- Login frequency drop (30%+ decrease)
- Session duration shortening
- Feature usage shift (abandoning core features)
Relationship Signals
- NPS score decline (drops below 6)
- Meeting no-shows
- Sponsor change (champion leaves company)
Support Signals
- Ticket volume spike
- Escalation increase
- Sentiment shift (negative tone in communications)
Financial Signals
- Late payments, downsell requests
Building Your Early Warning System
| Step | Activity | APIVOM Solution |
|---|---|---|
| 1 | Data collection | Atlas, Orbit |
| 2 | Signal processing | Staff AI workflows |
| 3 | Alert generation | Panel dashboards |
| 4 | Action trigger | Iris playbooks |
| 5 | CSM notification | Slack, email |
Case Study: Signal to Action
Day 0: Orbit detects 50% login decrease Day 1: Staff triggers at-risk workflow Day 2: Iris creates CSM task Day 3: CSM reaches out Day 7: Root cause identified (training gap) Day 14: Training completed, usage recovered Result: Churn prevented
Build your early warning system with APIVOM. Schedule a demo to see proactive churn prevention in action.