https://store-images.s-microsoft.com/image/apps.51697.4c6c3cdc-0feb-4041-a5a9-43136b2b727d.041a7684-bb2e-46df-b765-9e250e95da2a.43baaaa8-9ee8-41c4-a531-7f1943fff5d9

Microsoft Purview Adoption Services for Unified Data Governance

LevelShift

Enabling frictionless Purview adoption on Microsoft Fabric with our specialized Microsoft Purview Services.

Frictionless, Fabric-native data governance with Microsoft Purview.

Enterprises running SQL, Spark, SaaS, Lakehouse, and AI workloads need unified visibility, compliance, and control. Microsoft Purview provides a single governance layer for classification, lineage, and policy enforcement—ensuring trusted, compliant, AI-ready data across the estate.

LevelShift enables seamless Purview adoption with a structured approach that eliminates common blockers such as incomplete discovery, Fabric integration challenges, misaligned RBAC, unclear lineage, and low user adoption.

What we deliver:

• Data Catalog & Discovery - Enterprise-wide catalog deployment, metadata organization, and automated scanning across Fabric and hybrid sources.

• Sensitive Data Classification & Policies - PII/PHI/Financial data labeling with GDPR, HIPAA, and CCPA-aligned governance controls.

• End-to-End Lineage- Comprehensive lineage across SQL, Spark, pipelines, Power BI, and AI workflows to support accurate impact analysis.

• RBAC & Access Governance- Mapping of Fabric roles to Purview RBAC for secure, compliant, and predictable access.

• Compliance Monitoring- Audit-ready dashboards, real-time monitoring, and automated compliance insights.

• Fabric Workload Integration- Seamless integration with Lakehouse, pipelines, semantic models, and analytics workloads.

Why LevelShift

• Deep Microsoft-first expertise

• Governance accelerators that reduce deployment time by up to 40%

• Fabric-native governance across analytics, AI, and Power Platform

• Industry-specific playbooks for regulated and data-intensive sectors

*The typical implementation duration is 4–6 weeks. Actual timeline and cost may vary based on the existing data architecture, data volume, and scope of work (SOW).

At a glance

https://store-images.s-microsoft.com/image/apps.41814.4c6c3cdc-0feb-4041-a5a9-43136b2b727d.5411af94-6235-4d23-8ee0-44da23753879.9545dfc4-af12-4afa-be3b-3789aa0e20bc