Churn prediction is the practice of identifying customers or accounts at risk of leaving or not renewing their subscription or contract. It uses historical data, behavioral patterns, and machine learning models to flag at-risk accounts before they decide to leave, enabling retention teams to intervene proactively.
In B2B SaaS and subscription models, churn is revenue erosion. A single enterprise customer leaving represents significant ARR loss. Churn prediction flips this from reactive (learning customers have left) to proactive (identifying and saving at-risk accounts before they go).
Churn prediction enables revenue teams to allocate resources efficiently. Instead of generic "check in with all accounts" retention programs, teams focus on accounts with high churn risk. A customer showing low usage of key features and declining engagement gets personalized onboarding or feature training, while engaged customers receive expansion outreach.
Churn models also reveal gaps in product experience or customer success. If a cohort with specific characteristics churns at high rates, it signals a product, pricing, or support problem that requires investigation and fixing.
Customer lifetime value (CLV) predicts total revenue from a customer; churn prediction identifies which customers will not complete their expected lifetime, enabling intervention.