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    powerbi-modeling

    github/powerbi-modeling
    Data & Analytics
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    SKILL.md

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    About

    Power BI semantic modeling assistant for building optimized data models...

    SKILL.md

    Power BI Semantic Modeling

    Guide users in building optimized, well-documented Power BI semantic models following Microsoft best practices.

    When to Use This Skill

    Use this skill when users ask about:

    • Creating or optimizing Power BI semantic models
    • Designing star schemas (dimension/fact tables)
    • Writing DAX measures or calculated columns
    • Configuring table relationships (cardinality, cross-filter)
    • Implementing row-level security (RLS)
    • Naming conventions for tables, columns, measures
    • Adding descriptions and documentation to models
    • Performance tuning and optimization
    • Calculation groups and field parameters
    • Model validation and best practice checks

    Trigger phrases: "create a measure", "add relationship", "star schema", "optimize model", "DAX formula", "RLS", "naming convention", "model documentation", "cardinality", "cross-filter"

    Prerequisites

    Required Tools

    • Power BI Modeling MCP Server: Required for connecting to and modifying semantic models
      • Enables: connection_operations, table_operations, measure_operations, relationship_operations, etc.
      • Must be configured and running to interact with models

    Optional Dependencies

    • Microsoft Learn MCP Server: Recommended for researching latest best practices
      • Enables: microsoft_docs_search, microsoft_docs_fetch
      • Use for complex scenarios, new features, and official documentation

    Workflow

    1. Connect and Analyze First

    Before providing any modeling guidance, always examine the current model state:

    1. List connections: connection_operations(operation: "ListConnections")
    2. If no connection, check for local instances: connection_operations(operation: "ListLocalInstances")
    3. Connect to the model (Desktop or Fabric)
    4. Get model overview: model_operations(operation: "Get")
    5. List tables: table_operations(operation: "List")
    6. List relationships: relationship_operations(operation: "List")
    7. List measures: measure_operations(operation: "List")
    

    2. Evaluate Model Health

    After connecting, assess the model against best practices:

    • Star Schema: Are tables properly classified as dimension or fact?
    • Relationships: Correct cardinality? Minimal bidirectional filters?
    • Naming: Human-readable, consistent naming conventions?
    • Documentation: Do tables, columns, measures have descriptions?
    • Measures: Explicit measures for key calculations?
    • Hidden Fields: Are technical columns hidden from report view?

    3. Provide Targeted Guidance

    Based on analysis, guide improvements using references:

    • Star schema design: See STAR-SCHEMA.md
    • Relationship configuration: See RELATIONSHIPS.md
    • DAX measures and naming: See MEASURES-DAX.md
    • Performance optimization: See PERFORMANCE.md
    • Row-level security: See RLS.md

    Quick Reference: Model Quality Checklist

    Area Best Practice
    Tables Clear dimension vs fact classification
    Naming Human-readable: Customer Name not CUST_NM
    Descriptions All tables, columns, measures documented
    Measures Explicit DAX measures for business metrics
    Relationships One-to-many from dimension to fact
    Cross-filter Single direction unless specifically needed
    Hidden fields Hide technical keys, IDs from report view
    Date table Dedicated marked date table

    MCP Tools Reference

    Use these Power BI Modeling MCP operations:

    Operation Category Key Operations
    connection_operations Connect, ListConnections, ListLocalInstances, ConnectFabric
    model_operations Get, GetStats, ExportTMDL
    table_operations List, Get, Create, Update, GetSchema
    column_operations List, Get, Create, Update (descriptions, hidden, format)
    measure_operations List, Get, Create, Update, Move
    relationship_operations List, Get, Create, Update, Activate, Deactivate
    dax_query_operations Execute, Validate
    calculation_group_operations List, Create, Update
    security_role_operations List, Create, Update, GetEffectivePermissions

    Common Tasks

    Add Measure with Description

    measure_operations(
      operation: "Create",
      definitions: [{
        name: "Total Sales",
        tableName: "Sales",
        expression: "SUM(Sales[Amount])",
        formatString: "$#,##0",
        description: "Sum of all sales amounts"
      }]
    )
    

    Update Column Description

    column_operations(
      operation: "Update",
      definitions: [{
        tableName: "Customer",
        name: "CustomerKey",
        description: "Unique identifier for customer dimension",
        isHidden: true
      }]
    )
    

    Create Relationship

    relationship_operations(
      operation: "Create",
      definitions: [{
        fromTable: "Sales",
        fromColumn: "CustomerKey",
        toTable: "Customer",
        toColumn: "CustomerKey",
        crossFilteringBehavior: "OneDirection"
      }]
    )
    

    When to Use Microsoft Learn MCP

    Research current best practices using microsoft_docs_search for:

    • Latest DAX function documentation
    • New Power BI features and capabilities
    • Complex modeling scenarios (SCD Type 2, many-to-many)
    • Performance optimization techniques
    • Security implementation patterns
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