关于
The ML Pipeline Workflow skill provides comprehensive architectural guidance and implementation patterns for building robust, production-grade MLOps pipelines. It helps developers and data engineers bridge the gap between experimental notebooks and scalable production systems by automating the entire lifecycle—including data ingestion, feature engineering, model validation, and deployment. By leveraging industry-standard tools like Airflow, Kubeflow, and MLflow, this skill ensures that machine learning workflows are reproducible, observable, and ready for high-stakes production environments.