Chaos to Clarity: Governance and Adoption Lessons from Rolling Out Power BI and Fabric

Description

Power BI + Fabric at scale? Chaos looms—fragmented workspaces, messy permissions, frustrated users. Join us to see how we turned disorder into a governance playbook that accelerates adoption. Learn role-based access, streamlined workspace/app strategies, and AI-ready best practices to avoid pitfalls and win enterprise buy-in.

Key Takeaways

My Notes

Action Items

Slides

📥 Download Slides

Chaos to Clarity
Governance and Adoption Lessons from Rolling
Out Power BI and Fabric
Chris Aleman
Data Analytics
Manager
Why This Session
Power BI + Fabric adoption scales fast
Governance often lags behind adoption
Result: confusion, rework, loss of trust
Agenda

  1. Setting the Stage: Chaos at Scale
    • What breaks down as Power BI and Fabric adoption grows
  2. Governance Lessons Learned
    • Workspaces, permissions, and distribution patterns that didn’t scale
  3. From Chaos to Clarity
    • Role-based access, apps, and enterprise semantic models
  4. Driving Adoption with Guardrails
    • How governance accelerates trust and usage (instead of slowing it down)
  5. AI-Ready by Design
    • Preparing data and semantic models for Copilot and future AI
  6. Key Takeaways, Resources, & Q&A
    What “Chaos” Looks Like At Scale

    Multiple Versions of “truth”
    Fragmented Workspaces
    Messy Permissions
    Frustrated end users
    Governance Is About Behavior
    • Governance ≠ locking everything down
    • Governance = guiding how people work with data
    • Balance empowerment and guardrails
    Our Starting Point
    Early Mistakes We Made
    We moved fast. Then we paid the price
    • Direct workspace access for consumers
    • Department-level security groups
    • No clear separation of build vs consume
    • Consultants learning alongside us
    Why Workspaces Matter
    Security Boundary
    Ownership
    Build | Consume
    Overall Architecture: How We Put It Together
    Workspace Strategy We Landed On
    • Workspaces = build layer only
    • Creators collaborate here
    • Consumers do not live in workspaces
    Apps as the Consumption Layer
    • Apps = trusted entry point
    • Clean navigation
    Apps as the Consumption Layer: Before
    Apps as the Consumption Layer: After
    Apps as the Consumption Layer
    • Role-based audiences
    • Scales adoption cleanly
    Role-Based Access (What Actually Works)
    Entra ID security groups
    Group by job role, not department
    Role-Based Access (What Actually Works)
    • Dynamic membership where possible
    • Fewer exceptions over time
    The Semantic Model Shift
    Semantic Model - Before
    Semantic Model - After
    Enterprise Semantic Models
    • Single source of truth tables
    • Shared semantic models
    • Thin reports
    • Excel + Power BI + NLQ supported
    Source Control & Deployment
    Governing Semantic Models
    Ownership is explicit
    Changes are intentional
    Quality is enforced
    before users feel pain
    Dataflows: Bridge, Not Destination
    • Dataflows Gen2 helped early
    • Some business logic still lives there
    • Long-term goal: push logic upstream
    • Reduce report-side transformations
    Monitoring & Visibility
    Oversharing is a governance risk
    Need visibility into:
    Sharing patterns
    Workspace sprawl
    Orphaned assets
    Monitoring & Visibility
    • Adoption signals (views,
    unique users)
    • Refresh failures / reliability
    • Semantic model duplication
    • Workspace sprawl
    • Sharing patterns (direct
    share, link sprawl)
    Monitoring & Visibility
    Adoption ≠ Enablement
    • Users need clarity, not just access
    • Training and structure matter
    • Apps reduced “where do I go?” questions

    Access
    Enablement
    Why AI Raises the Stakes
    Data Quality
    /
    AI / Copilot
    Answers
    What “AI-Ready” Actually Means
    AI / Copilot
    Definitions
    Grain
    Measures
    Access
    If We Did It Again
    Go straight to Snowflake sooner
    Design security groups up front
    Apps from day one
    Fewer like-for-like conversions
    Trust Is the Real KPI
    • Trust is slow to build
    • Easy to lose
    • Consistency beats speed long-term
    • Identify business champions early
    Outcomes
    Consistency
    Governance
    Trust
    Governance Playbook (Summary)
    Monitor Continuously
    Enforce Quality Early
    Shared Semantic Models
    Role-Based Security Groups
    Apps as Default Distribution
    Separate Build / Consume
    Key Takeaways
    Chaos is predictable without structure
    Governance enables adoption
    Semantic models are the contract
    AI rewards discipline, not shortcuts
    Trusted Resources
    • Microsoft Learn Fabric Adoption Roadmap
    • Microsoft Learn Power Bi Implementation Planning
    • sqlbi
    • Tabular Editor
    • Data Goblins
    • Radacad
    • Story Telling With Data
    • Guy in a Cube
    • Chris Webb’s Blog
    • Powerbi.tips
    • Paul Turley
    Thank You!
    Questions?
    Chris Aleman
    Caleman@gvec.org
    Sound off.
    The mic is all yours.
    Influence the product roadmap.
    Join the Fabric User Panel
    Join the SQL User Panel
    Share your feedback directly with our
    Fabric product group and researchers.
    Influence our SQL roadmap and ensure
    it meets your real-life needs
    https://aka.ms/JoinFabricUserPanel
    https://aka.ms/JoinSQLUserPanel
    How was
    the session?
    Complete Session Surveys in
    for your chance to WIN
    PRIZES!