Churn Prediction Workflow
The customer who was about to cancel just got a personal check-in from your CEO — before they knew they were leaving.
By the time a customer emails 'we're canceling,' they decided to leave 3 weeks ago — and the only signal you had was reduced logins that nobody was watching. Churn at sub-10-person SaaS companies is usually solvable (pricing confusion, forgotten onboarding, one broken integration) but only if you catch it before the decision is made. Monitoring login patterns across 500 customers manually is impossible.
AI Data Analyst watches your PostHog/Mixpanel event stream and Stripe subscription data daily, scoring each customer on engagement trends and flagging anomalies. AI Customer Support runs the save plays: personalized check-in emails, offers tuned to the specific friction, CS escalations. Net churn drops because every at-risk customer gets an intervention before the cancel email hits your inbox.
How it runs
- 1Define health signals
You tell AI Data Analyst what signals matter for your product: logins per week, feature X usage, team invite count, support ticket volume. It weighs them into a health score 0-100 per account, calibrated against your historical churn data.
- 2Daily scoring pass
AI Data Analyst recomputes every customer's health score daily. Flags ones that dropped >10 points in a week, ones that crossed the 30-point threshold, and ones trending consistently downward for 3+ weeks.
- 3Root cause diagnosis per flag
For each flagged account, AI Data Analyst runs pattern analysis: 'usage dropped when user X left the team,' 'feature Y never got adopted despite onboarding,' 'support ticket pattern suggests billing confusion.' The output is a diagnostic note, not just an alert.
- 4Play selection
AI Head of Growth matches the diagnosis to a save play: onboarding re-trigger (for never-activated), integration help (for technical block), executive check-in (for high-value silent accounts), feature education (for adoption gap), pricing review (for billing friction).
- 5Execute the play
AI Customer Support runs the play: personalized email from the relevant human (founder for high-value, support rep for standard), tailored to the specific diagnosis. Includes a call link, a loom video walk-through if needed, or a pricing adjustment offer. No generic 'we haven't seen you in a while.'
- 6Track outcome and calibrate
Plays get tracked: did the customer re-engage, book a call, churn anyway? The save rate per play gets logged. AI Data Analyst calibrates which plays work best for which signals, and the scoring model gets sharper each month.
- 7Weekly health review
Friday report to your chat: churn risk pipeline (who's at risk, what play ran, what's the outcome), saves this week, confirmed churns this week, and a predicted churn count for next month. You spend 5 minutes reviewing vs hours reconstructing what happened after a churn hits.
Who runs it
What you get
- ✓Gross churn reduced 20-40% within 90 days for most B2B SaaS
- ✓NRR (net revenue retention) lifted 5-15 percentage points
- ✓Customer saves happen proactively instead of reactively
- ✓At-risk customers get contacted before the decision to leave is made
- ✓Founder stops being surprised by cancellations
- ✓Save play library that gets smarter month over month
- ✓High-value account protection with founder-level check-ins
Frequently asked questions
How is this different from ChurnZero, Vitally, or Gainsight?
Those are CS platforms — dashboards for your CS team to manage accounts. Tycoon is the CS team that runs the plays. ChurnZero will surface a health score; Tycoon will surface the score, diagnose the root cause, pick the right save play, draft the email in your voice, and send it. For companies under 50 employees that don't have a dedicated CS team, Tycoon replaces the 'team' part of Customer Success — you don't need Gainsight plus three CS hires. For companies with existing CS teams, Tycoon augments them: CS people handle the high-judgment saves, Tycoon handles the long tail.
How accurate is the prediction — do I trust it enough to act on it?
Accuracy improves with your data and calibration. Cold-start (first month) precision is around 60-70% — meaning 30-40% of flagged accounts would not have churned. That's still worthwhile because the intervention is cheap (an email) relative to the save. By month 3, calibrated against your actual churn history, precision typically reaches 80%+. You're never making irreversible decisions on the prediction; you're deciding whether to send a check-in email, which has near-zero downside if wrong.
What about large enterprise customers where the signal is contract renewal rather than usage?
For enterprise the health model changes: usage matters less, stakeholder health matters more. AI Data Analyst can track stakeholder stability (champion still at the company via LinkedIn), email thread sentiment over time, NPS / CSAT responses, and renewal dates. 120 days before a renewal, the AI starts the renewal workflow: scheduling the QBR with the champion, preparing the business value recap, surfacing expansion opportunities. Enterprise churn prevention is more about relationship intelligence than product usage, and the AI adapts to that.
We're B2C with 10K users. Is per-user health scoring overkill?
Yes — for B2C consumer SaaS, per-user scoring is usually overkill. The right abstraction is cohort-based: 'users who signed up in week X are churning at 40% vs 25% for earlier cohorts — what changed?' AI Data Analyst can run cohort churn analysis, identify problem signups, and trigger bulk save campaigns (discount email to cohort X, onboarding re-trigger to cohort Y). Individual customer save plays only make sense when LTV justifies the 1:1 attention, which usually means B2B or high-value B2C ($50+/mo).
Can it handle win-back campaigns for already-churned customers?
Yes — and this is an underused workflow. AI Data Analyst tracks churned customers and triggers win-back plays at specific intervals: 30 days after churn ('we shipped the thing you asked for'), 90 days after churn (new pricing tier offer), 365 days after churn (gentle re-introduction as lapsed user). Win-back conversion rates of 5-15% are normal, and these are customers you already acquired so the cost to re-activate is a fraction of new acquisition. Tycoon keeps the churn list warm without your time.
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