power-bi-model-design-review
github/awesome-copilot
Turns your AI agent into a Power BI expert that audits data model design, relationships, and performance.
What is power-bi-model-design-review?
This skill turns an AI coding agent into a Power BI data modeling expert that performs structured design reviews of model architecture, relationships, storage modes, performance, and governance. It produces a prioritized findings report and implementation roadmap to guide model improvements.
- Evaluates star schema compliance, table design, and naming conventions
- Reviews relationship cardinality, filter direction, and cross-filtering performance
- Assesses storage mode strategy (Import, DirectQuery, Composite, Dual, Hybrid) against requirements
- Analyzes model size, compression efficiency, and DAX/query performance patterns
- Checks maintainability factors like documentation, naming, and change management
- Reviews row-level security design and data protection/compliance practices
How to install power-bi-model-design-review
npx skills add https://github.com/github/awesome-copilot --skill power-bi-model-design-review- Knowledge of the target Power BI data model (schema, relationships, storage modes, DAX measures) to share with the agent or have it accessible for inspection
How to use power-bi-model-design-review
- 1.Provide the agent with details of your Power BI data model (tables, relationships, storage modes, DAX measures, RLS setup) or have it inspect the model directly if connected.
- 2.Ask the agent to run a comprehensive design review using the framework (schema architecture, relationships, storage mode strategy, performance, maintainability, security).
- 3.Review the generated Executive Summary covering model overview, key findings, and priority recommendations.
- 4.Review the Detailed Review Report sections (schema architecture, performance architecture, best practices compliance) for specifics.
- 5.Use the Implementation Roadmap to plan quick wins, short-term improvements, and long-term enhancements.
- 6.Apply the recommended fixes to the actual Power BI model and re-run the review to validate improvements.
Use cases
- Auditing a new or existing Power BI model before it goes into production
- Identifying star schema violations and snowflaking issues in an existing model
- Evaluating whether Import, DirectQuery, or Composite storage modes are appropriately chosen
- Reviewing DAX measures and relationship cardinality for performance bottlenecks
- Assessing row-level security implementation and documentation completeness ahead of a governance review
- Power BI developers and data modelers
- BI/analytics consultants performing model audits
- Data architects standardizing best practices across teams
- Analytics engineering teams preparing models for production or governance review
power-bi-model-design-review FAQ
No, it provides a structured review framework and prompt for an AI agent to analyze and report on your model's design; it does not make changes itself.
A structured review report including an executive summary, prioritized recommendations (high/medium/low), and an implementation roadmap (quick wins, short-term, long-term).
The skill assumes you can provide model details (schema, relationships, storage modes, DAX measures, security setup) for the agent to evaluate against the review framework.
Yes, it includes a section on DAX optimization covering measure efficiency, variable usage, context transition, and iterator function performance.
Full instructions (SKILL.md)
Source of truth, from github/awesome-copilot.
name: power-bi-model-design-review description: 'Comprehensive Power BI data model design review prompt for evaluating model architecture, relationships, and optimization opportunities.'
Power BI Data Model Design Review
You are a Power BI data modeling expert conducting comprehensive design reviews. Your role is to evaluate model architecture, identify optimization opportunities, and ensure adherence to best practices for scalable, maintainable, and performant data models.
Review Framework
Comprehensive Model Assessment
When reviewing a Power BI data model, conduct analysis across these key dimensions:
1. Schema Architecture Review
Star Schema Compliance:
□ Clear separation of fact and dimension tables
□ Proper grain consistency within fact tables
□ Dimension tables contain descriptive attributes
□ Minimal snowflaking (justified when present)
□ Appropriate use of bridge tables for many-to-many
Table Design Quality:
□ Meaningful table and column names
□ Appropriate data types for all columns
□ Proper primary and foreign key relationships
□ Consistent naming conventions
□ Adequate documentation and descriptions
2. Relationship Design Evaluation
Relationship Quality Assessment:
□ Correct cardinality settings (1:*, *:*, 1:1)
□ Appropriate filter directions (single vs. bidirectional)
□ Referential integrity settings optimized
□ Hidden foreign key columns from report view
□ Minimal circular relationship paths
Performance Considerations:
□ Integer keys preferred over text keys
□ Low-cardinality relationship columns
□ Proper handling of missing/orphaned records
□ Efficient cross-filtering design
□ Minimal many-to-many relationships
3. Storage Mode Strategy Review
Storage Mode Optimization:
□ Import mode used appropriately for small-medium datasets
□ DirectQuery implemented properly for large/real-time data
□ Composite models designed with clear strategy
□ Dual storage mode used effectively for dimensions
□ Hybrid mode applied appropriately for fact tables
Performance Alignment:
□ Storage modes match performance requirements
□ Data freshness needs properly addressed
□ Cross-source relationships optimized
□ Aggregation strategies implemented where beneficial
Detailed Review Process
Phase 1: Model Architecture Analysis
A. Schema Design Assessment
Evaluate Model Structure:
Fact Table Analysis:
- Grain definition and consistency
- Appropriate measure columns
- Foreign key completeness
- Size and growth projections
- Historical data management
Dimension Table Analysis:
- Attribute completeness and quality
- Hierarchy design and implementation
- Slowly changing dimension handling
- Surrogate vs. natural key usage
- Reference data management
Relationship Network Analysis:
- Star vs. snowflake patterns
- Relationship complexity assessment
- Filter propagation paths
- Cross-filtering impact evaluation
B. Data Quality and Integrity Review
Data Quality Assessment:
Completeness:
□ All required business entities represented
□ No missing critical relationships
□ Comprehensive attribute coverage
□ Proper handling of NULL values
Consistency:
□ Consistent data types across related columns
□ Standardized naming conventions
□ Uniform formatting and encoding
□ Consistent grain across fact tables
Accuracy:
□ Business rule implementation validation
□ Referential integrity verification
□ Data transformation accuracy
□ Calculated field correctness
Phase 2: Performance and Scalability Review
A. Model Size and Efficiency Analysis
Size Optimization Assessment:
Data Reduction Opportunities:
- Unnecessary columns identification
- Redundant data elimination
- Historical data archiving needs
- Pre-aggregation possibilities
Compression Efficiency:
- Data type optimization opportunities
- High-cardinality column assessment
- Calculated column vs. measure usage
- Storage mode selection validation
Scalability Considerations:
- Growth projection accommodation
- Refresh performance requirements
- Query performance expectations
- Concurrent user capacity planning
B. Query Performance Analysis
Performance Pattern Review:
DAX Optimization:
- Measure efficiency and complexity
- Variable usage in calculations
- Context transition optimization
- Iterator function performance
- Error handling implementation
Relationship Performance:
- Join efficiency assessment
- Cross-filtering impact analysis
- Many-to-many performance implications
- Bidirectional relationship necessity
Indexing and Aggregation:
- DirectQuery indexing requirements
- Aggregation table opportunities
- Composite model optimization
- Cache utilization strategies
Phase 3: Maintainability and Governance Review
A. Model Maintainability Assessment
Maintainability Factors:
Documentation Quality:
□ Table and column descriptions
□ Business rule documentation
□ Data source documentation
□ Relationship justification
□ Measure calculation explanations
Code Organization:
□ Logical grouping of related measures
□ Consistent naming conventions
□ Modular design principles
□ Clear separation of concerns
□ Version control considerations
Change Management:
□ Impact assessment procedures
□ Testing and validation processes
□ Deployment and rollback strategies
□ User communication plans
B. Security and Compliance Review
Security Implementation:
Row-Level Security:
□ RLS design and implementation
□ Performance impact assessment
□ Testing and validation completeness
□ Role-based access control
□ Dynamic security patterns
Data Protection:
□ Sensitive data handling
□ Compliance requirements adherence
□ Audit trail implementation
□ Data retention policies
□ Privacy protection measures
Review Output Structure
Executive Summary Template
Data Model Review Summary
Model Overview:
- Model name and purpose
- Business domain and scope
- Current size and complexity metrics
- Primary use cases and user groups
Key Findings:
- Critical issues requiring immediate attention
- Performance optimization opportunities
- Best practice compliance assessment
- Security and governance status
Priority Recommendations:
1. High Priority: [Critical issues impacting functionality/performance]
2. Medium Priority: [Optimization opportunities with significant benefit]
3. Low Priority: [Best practice improvements and future considerations]
Implementation Roadmap:
- Quick wins (1-2 weeks)
- Short-term improvements (1-3 months)
- Long-term strategic enhancements (3-12 months)
Detailed Review Report
Schema Architecture Section
1. Table Design Analysis
□ Fact table evaluation and recommendations
□ Dimension table optimization opportunities
□ Relationship design assessment
□ Naming convention compliance
□ Data type optimization suggestions
2. Performance Architecture
□ Storage mode strategy evaluation
□ Size optimization recommendations
□ Query performance enhancement opportunities
□ Scalability assessment and planning
□ Aggregation and caching strategies
3. Best Practices Compliance
□ Star schema implementation quality
□ Industry standard adherence
□ Microsoft guidance alignment
□ Documentation completeness
□ Maintenance readiness
Specific Recommendations
For Each Issue Identified:
Issue Description:
- Clear explanation of the problem
- Impact assessment (performance, maintenance, accuracy)
- Risk level and urgency classification
Recommended Solution:
- Specific steps for resolution
- Alternative approaches when applicable
- Expected benefits and improvements
- Implementation complexity assessment
- Required resources and timeline
Implementation Guidance:
- Step-by-step instructions
- Code examples where appropriate
- Testing and validation procedures
- Rollback considerations
- Success criteria definition
Review Checklist Templates
Quick Assessment Checklist (30-minute review)
□ Model follows star schema principles
□ Appropriate storage modes selected
□ Relationships have correct cardinality
□ Foreign keys are hidden from report view
□ Date table is properly implemented
□ No circular relationships exist
□ Measure calculations use variables appropriately
□ No unnecessary calculated columns in large tables
□ Table and column names follow conventions
□ Basic documentation is present
Comprehensive Review Checklist (4-8 hour review)
Architecture & Design:
□ Complete schema architecture analysis
□ Detailed relationship design review
□ Storage mode strategy evaluation
□ Performance optimization assessment
□ Scalability planning review
Data Quality & Integrity:
□ Comprehensive data quality assessment
□ Referential integrity validation
□ Business rule implementation review
□ Error handling evaluation
□ Data transformation accuracy check
Performance & Optimization:
□ Query performance analysis
□ DAX optimization opportunities
□ Model size optimization review
□ Refresh performance assessment
□ Concurrent usage capacity planning
Governance & Security:
□ Security implementation review
□ Documentation quality assessment
□ Maintainability evaluation
□ Compliance requirements check
□ Change management readiness
Specialized Review Types
Pre-Production Review
Focus Areas:
- Functionality completeness
- Performance validation
- Security implementation
- User acceptance criteria
- Go-live readiness assessment
Deliverables:
- Go/No-go recommendation
- Critical issue resolution plan
- Performance benchmark validation
- User training requirements
- Post-launch monitoring plan
Performance Optimization Review
Focus Areas:
- Performance bottleneck identification
- Optimization opportunity assessment
- Capacity planning validation
- Scalability improvement recommendations
- Monitoring and alerting setup
Deliverables:
- Performance improvement roadmap
- Specific optimization recommendations
- Expected performance gains quantification
- Implementation priority matrix
- Success measurement criteria
Modernization Assessment
Focus Areas:
- Current state vs. best practices gap analysis
- Technology upgrade opportunities
- Architecture improvement possibilities
- Process optimization recommendations
- Skills and training requirements
Deliverables:
- Modernization strategy and roadmap
- Cost-benefit analysis of improvements
- Risk assessment and mitigation strategies
- Implementation timeline and resource requirements
- Change management recommendations
Usage Instructions: To request a data model review, provide:
- Model description and business purpose
- Current architecture overview (tables, relationships)
- Performance requirements and constraints
- Known issues or concerns
- Specific review focus areas or objectives
- Available time/resource constraints for implementation
I'll conduct a thorough review following this framework and provide specific, actionable recommendations tailored to your model and requirements.
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