ML regression skill. Linear/nonlinear regression, regularization (L1/L2/ElasticNet), polynomial features, cross-validation, and regression diagnostics pipelines. Use when working with linear/nonlinear regression, regularization (l1/l2/elasticnet), polynomial features.
ML regression skill. Linear/nonlinear regression, regularization (L1/L2/ElasticNet), polynomial features, cross-validation, and regression diagnostics pipelines.
logs/process-log.jsonl.report.md: concise method, results, interpretation, and file inventory in the user's language.results/: structured outputs, metrics, model artifacts, or extracted findings.figures/: English-only charts, diagrams, or panels when visual output is needed.data/: processed or derived datasets when transformation occurs.report.md and logs/process-log.jsonl reference the generated artifacts.If any gate fails: identify the specific failing check, fix the issue, and re-validate before proceeding.
logs/process-log.jsonl is updated with execution trace