Know Who Will Leave Before They Do
Score churn risk and deploy save actions where they protect the most revenue.
The Problem
Most organisations know who churned, not who is about to churn:
Churn is reported monthly or quarterly, with little early warning.
Cancellations, dormancy, and inactivity sit in different systems and reports.
“Save” offers are generic, not designed by segment, risk level, or lifetime value.
Retention, sales, and marketing teams work from different churn numbers and definitions.
Result: preventable revenue loss, rising acquisition pressure, and limited visibility on which customers can still be saved.
Business Outcomes
Protect recurring revenue and CLTV by intervening before customers fully lapse.
Improve unit economics by retaining profitable segments instead of replacing them at high CAC.
Stabilise forecasts by reducing volatility in active base and renewal rates.
Align teams around clear churn definitions, risk thresholds, and ownership.
Customer Churn Management Services
Churn Framework & Definition Design
Create a clear, shared definition of churn and risk.
- Churn definitions by business model (subscription, repeat purchase, contract-based).
- Time-to-churn thresholds by product, segment, and lifecycle stage.
- Base churn taxonomy: voluntary vs involuntary, price-driven vs service-driven.
- Ownership map: which teams own which parts of the retention funnel.
Data & Signal Foundation
Assemble the behavioural, transactional, and service data needed to detect risk early.
- Unified customer and account ID across CRM, billing, ecommerce, and support.
- Churn feature set (RFM, Usage, Engagement, Support signals).
- Cohort tables and retention curves at product/segment level.
Churn Risk Modeling
Quantify churn risk and prioritise customers and segments for action.
- Churn propensity models (ML techniques).
- Survival / time-to-event models to estimate timing.
- Driver analysis to identify top predictors.
Retention Playbooks & Activation
Translate risk scores into operational actions.
- Segment- and risk-specific playbooks.
- Integration into CRM and Marketing Automation.
- Triggered campaigns based on risk level.
Measurement & Governance
Ensure churn management delivers measurable lift and remains under control.
- Dashboards for churn, retention, and reactivation.
- A/B and uplift testing frameworks.
- Reporting on incremental revenue saved.
Typical Use Cases
Subscription and SaaS
Renewal risk scoring, save teams prioritisation, and downgrade early-warning signals.
Ecommerce and retail
Inactivity detection, win-back campaigns, and segment-specific offers.
Financial services and telecom
Attrition risk by product and plan, targeted retention and cross-sell actions.
Why Rudder Analytics
Data and model-led approach
Churn work grounded in RFM, survival analysis, and propensity modeling, not generic KPIs.
Full-stack capability
From data engineering and feature design to models, dashboards, and activation.
Business focus
Every churn initiative measured in revenue retained, margin impact, and CAC reduction.
Tool-agnostic deployment
Churn scores and playbooks integrated into existing CRM, MAP, CDP, and support platforms.

