Machine Learning Foundations workflows for quantitative research, implementation, and production controls. use when tasks involve feature pipelines, generalization control, and model-monitoring discipline.
Execute machine learning foundations work with reproducible research, explicit controls, and deployable outputs.
python scripts/machine_learning_foundations_diagnostics.py input.csv --output diagnostics.json and keep the json artifact.references/machine-learning-foundations-playbook.md with assumptions, tests, limits, and rollout plan.scripts/machine_learning_foundations_diagnostics.py for deterministic diagnostics.references/machine-learning-foundations-playbook.md for the domain-specific checklist and delivery structure.