概要
This skill transforms machine learning development into a structured workflow by integrating the SpecWeave autonomous development framework. It guides users through the entire ML lifecycle—from data exploration and feature engineering to model training and deployment—ensuring every experiment is tracked, documented, and reproducible. By treating ML features as managed increments, it bridges the gap between experimental data science and production-grade software engineering, automatically generating living documentation and maintaining model version traceability.