II.
Workflow overview
Reference · liveworkflow:dataset-versioning-governance
Dataset Versioning Governance overview
Governs the versioning lifecycle of ML training and evaluation datasets — enforcing DVC or LakeFS versioning policies, validating that dataset lineage metadata tracks transformations and source provenance, auditing storage deduplication, managing access controls per dataset sensitivity tier, and ensuring reproducibility by linking model artifacts to exact dataset versions. Excludes dataset creation and labeling.
Attributes
displayName
Dataset Versioning Governance
workflowKind
governance
triggerType
continuous
typicalCadence
continuous
complexity
cross-team
description
Governs the versioning lifecycle of ML training and evaluation datasets —
enforcing DVC or LakeFS versioning policies, validating that dataset
lineage metadata tracks transformations and source provenance, auditing
storage deduplication, managing access controls per dataset sensitivity
tier, and ensuring reproducibility by linking model artifacts to exact
dataset versions. Excludes dataset creation and labeling.
Outgoing edges
applies_to_domain2
- domain:data-science·DomainData Science
- domain:ml-ops·DomainMLOps
involves_role3
- role:ml-engineer·RoleMachine Learning Engineer
- role:data-scientist·RoleData Scientist
- role:platform-engineer·RolePlatform Engineer
performed_by_org_unit2
- org-unit:ml-platform-team·OrgUnitML Platform Team
- org-unit:data-platform-team·OrgUnitData Platform Team
requires_skill_area2
- skill-area:python-data-pipelines·SkillAreaPython Data Pipelines
- skill-area:ml-fine-tuning·SkillAreaML Fine-Tuning
triggers_responsibility2
- responsibility:data-quality-monitoring·ResponsibilityData quality monitoring
- responsibility:review-architecture-changes·ResponsibilityReview architecture changes
Incoming edges
None.