Section 01
[Introduction] MLOps Practice for Telecom Customer Churn Prediction: A Complete Guide from Model to Production Pipeline
MLOps Practice for Telecom Customer Churn Prediction: A Complete Guide from Model to Production Pipeline
This article deeply analyzes an MLOps project for customer churn prediction in the telecom industry, discussing how to transform machine learning models from isolated scripts into structured, version-controlled production pipelines to achieve engineering implementation. The core content covers the business value of customer churn prediction, core principles and practices of MLOps, project architecture and technology selection, in-depth feature engineering practices, model evaluation and alignment with business metrics, production deployment and continuous operation, and industry insights, providing reusable architectural patterns and best practices for relevant teams.