概要
This skill streamlines the creation of production-grade machine learning pipelines by providing structured guidance for every stage of the MLOps lifecycle, including data ingestion, validation, training, and automated deployment. It is particularly useful for engineers and data scientists looking to implement reproducible, DAG-based workflows using industry-standard tools like Airflow, Kubeflow, or MLflow, ensuring model reliability through rigorous validation and monitoring patterns.