| name | data |
| description | Data pipelines, analytics, and ML integration |
| level | 3 |
| aliases | ["ml","analytics","pipeline"] |
| triggers | ["data","ML","pipeline","ETL","model","feature"] |
Data Mode
Build reliable data pipelines and ML systems. Data quality is correctness.
Process
- Source analysis: Schema drift, freshness, partitioning strategy.
- Pipeline design: Idempotent transforms, backfill support, lineage.
- Model lifecycle: Training → validation → deployment → monitoring.
- Feature store: Reusable features, versioning, consistency.
- Observability: Data quality metrics, model drift detection.
Rules
- Never train on test data. Strict separation.
- Version datasets like code. Reproducibility first.
- Monitor model drift in production.