Set Up Dataverse Data Model
Guide the user through creating Dataverse tables, columns, and relationships for their Power Pages site. Follow a systematic approach: verify prerequisites, obtain a data model (via AI analysis or user-provided diagram), review and approve, then create all schema objects via OData API.
Core Principles
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Never create without approval: Always present the full data model proposal and get explicit user confirmation before making any Dataverse changes.
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Use TaskCreate/TaskUpdate: Track all progress throughout all phases — create the todo list upfront with all phases before starting any work.
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Resilient execution: Refresh tokens proactively, check for existing tables before creating, and report failures without automated rollback.
Initial request: $ARGUMENTS
Phase 1: Verify Prerequisites
Goal: Confirm PAC CLI authentication, acquire an Azure CLI token, and verify API access
Actions:
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Create todo list with all 8 phases (see Progress Tracking table)
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Follow the prerequisite steps in ${CLAUDE_PLUGIN_ROOT}/references/dataverse-prerequisites.md to verify PAC CLI auth, acquire an Azure CLI token, and confirm API access. Store the environment URL as $envUrl .
Output: Verified PAC CLI auth, valid Azure CLI token, confirmed API access, $envUrl stored
Phase 2: Choose Data Model Source
Goal: Determine whether the user will upload an existing ER diagram or let AI analyze the site
Actions:
Ask the user how they want to define the data model using the AskUserQuestion tool:
Question: "How would you like to define the data model for your site?"
Option Description
Upload an existing ER diagram Provide an image (PNG/JPG) or Mermaid diagram of your existing data model
Let the Data Model Architect figure it out The Data Model Architect will analyze your site's source code and propose a data model automatically
Route to the appropriate path:
Path A: Upload Existing ER Diagram
If the user chooses to upload an existing diagram:
Ask the user to provide their ER diagram. Supported formats:
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Image file (PNG, JPG) — Use the Read tool to view the image and extract tables, columns, relationships, and cardinalities from it
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Mermaid syntax — The user can paste Mermaid ER diagram text directly in chat
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Text description — A structured list of tables, columns, and relationships
Parse the diagram into the same structured format used by the data-model-architect agent:
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Publisher prefix (ask the user, or retrieve from the environment via pac env who )
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Table definitions: logicalName , displayName , status (new/modified/reused), columns , relationships
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Column definitions: logicalName , displayName , type , required
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Relationship definitions: type (1:N or M:N), referenced/referencing tables
Query existing Dataverse tables (same as Phase 3 would) to mark each table as new , modified , or reused .
Generate a Mermaid ER diagram from the parsed data (if the user provided an image or text) for visual confirmation.
Proceed directly to Phase 4: Review Proposal with the parsed data model.
Path B: Let the Data Model Architect Figure It Out
If the user chooses to let the Data Model Architect figure it out, proceed to Phase 3: Invoke Data Model Architect (the existing automated flow).
Output: Data model source chosen and, for Path A, parsed data model ready for review
Phase 3: Invoke Data Model Architect
Goal: Spawn the data-model-architect agent to autonomously analyze the site and propose a data model
Actions:
Use the Task tool to spawn the data-model-architect agent. This agent autonomously:
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Analyzes the site's source code to infer data requirements
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Queries existing Dataverse tables via OData GET requests
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Identifies reuse opportunities (reuse, extend, or create new)
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Proposes a complete data model with an ER diagram
Spawn the agent:
Task tool: subagent_type: general-purpose prompt: | You are the data-model-architect agent. Follow the instructions in the agent definition file at: ${CLAUDE_PLUGIN_ROOT}/agents/data-model-architect.md
Analyze the current project and Dataverse environment, then propose
a complete data model. Return:
1. Publisher prefix
2. Table definitions (logicalName, displayName, status, columns, relationships)
3. Mermaid ER diagram
- Wait for the agent to return its structured proposal before proceeding.
Output: Structured data model proposal from the agent (publisher prefix, table definitions, ER diagram)
Phase 4: Review Proposal
Goal: Present the data model proposal to the user and get explicit approval before creating anything
Actions:
4.1 Present Proposal
Present the data model proposal directly to the user as a formatted message, including:
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Publisher prefix
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All proposed tables with columns (logical names + display names)
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Relationship descriptions
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Mermaid ER diagram
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Which tables are new vs. modified vs. reused
4.2 Get User Approval
Use AskUserQuestion to get approval:
Question Header Options
Does this data model look correct? Data Model Proposal Approve and create tables (Recommended), Request changes, Cancel
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If "Approve and create tables (Recommended)": Proceed to Phase 5
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If "Request changes": Ask what they want changed, modify the proposal, and re-present for approval
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If "Cancel": Stop the skill
Only proceed to creation after explicit user approval.
Output: User-approved data model proposal
Phase 5: Pre-Creation Checks
Goal: Refresh the token, verify what already exists in Dataverse, and build the creation plan to avoid duplicates
Actions:
5.1 Refresh Token
Re-acquire the auth token (tokens expire after ~60 minutes):
node "${CLAUDE_PLUGIN_ROOT}/scripts/verify-dataverse-access.js" <envUrl>
5.2 Query Existing Tables
For each table in the approved proposal marked as new , check whether it already exists:
node "${CLAUDE_PLUGIN_ROOT}/scripts/dataverse-request.js" <envUrl> GET "api/data/v9.2/EntityDefinitions(LogicalName='<table_logical_name>')"
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If 404: Table does not exist, proceed to create it
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If 200: Table already exists — skip creation, warn the user
For tables marked as modified , verify the table exists (it should) and check which columns are missing.
5.3 Build Creation Plan
From the pre-creation checks, build a list of:
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Tables to create (new tables that don't exist yet)
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Columns to add (new columns on existing/modified tables)
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Relationships to create
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Tables/columns to skip (already exist)
Inform the user of any skipped items.
Output: Finalized creation plan with tables, columns, and relationships to create or skip
Phase 6: Create Tables & Columns
Goal: Create each approved table and its columns using the Dataverse OData Web API
Actions:
Refer to references/odata-api-patterns.md for full JSON body templates.
6.1 Create Tables
For each new table, POST to the EntityDefinitions endpoint:
node "${CLAUDE_PLUGIN_ROOT}/scripts/dataverse-request.js" <envUrl> POST "api/data/v9.2/EntityDefinitions" --body '<JSON body from references/odata-api-patterns.md>'
Use the deep-insert pattern to create the table and its columns in a single POST request. See references/odata-api-patterns.md for the complete JSON structure.
6.2 Add Columns to Existing Tables
For tables marked as modified , add new columns one at a time:
node "${CLAUDE_PLUGIN_ROOT}/scripts/dataverse-request.js" <envUrl> POST "api/data/v9.2/EntityDefinitions(LogicalName='<table>')/Attributes" --body '<column JSON from references/odata-api-patterns.md>'
6.3 Track Progress
Track each creation attempt and its result (success/failure/skipped). Do NOT attempt automated rollback on failure — report failures and continue with remaining items.
6.4 Refresh Token if Needed
If creating many tables, the dataverse-request.js script handles 401 token refresh automatically. No manual refresh is needed between batches.
Output: All approved tables and columns created (or failures reported)
Phase 7: Create Relationships
Goal: Create all relationships between the newly created and existing tables
Actions:
7.1 One-to-Many Relationships
Create lookup columns that establish 1:N relationships:
node "${CLAUDE_PLUGIN_ROOT}/scripts/dataverse-request.js" <envUrl> POST "api/data/v9.2/RelationshipDefinitions" --body '<relationship JSON from references/odata-api-patterns.md>'
7.2 Many-to-Many Relationships
Create M:N relationships (intersect tables are created automatically):
node "${CLAUDE_PLUGIN_ROOT}/scripts/dataverse-request.js" <envUrl> POST "api/data/v9.2/RelationshipDefinitions" --body '<M:N relationship JSON from references/odata-api-patterns.md>'
7.3 Track Relationship Creation
Track each relationship creation attempt. Report failures without rolling back.
Output: All approved relationships created (or failures reported)
Phase 8: Publish & Verify
Goal: Publish all customizations, verify tables exist, write the manifest, and present a summary
Actions:
8.1 Publish Customizations
Publish all customizations so the new tables and columns become available:
node "${CLAUDE_PLUGIN_ROOT}/scripts/dataverse-request.js" <envUrl> POST "api/data/v9.2/PublishXml" --body '{"ParameterXml":"<importexportxml><entities><entity>cr123_project</entity><entity>cr123_task</entity></entities></importexportxml>"}'
See references/odata-api-patterns.md for the full PublishXml pattern.
8.2 Verify Tables Exist
For each created table, run a verification query:
node "${CLAUDE_PLUGIN_ROOT}/scripts/dataverse-request.js" <envUrl> GET "api/data/v9.2/EntityDefinitions(LogicalName='<table>')?$select=LogicalName,DisplayName"
8.3 Write Manifest
After successful verification, write .datamodel-manifest.json to the project root. This file records which tables and columns were verified to exist, and is used by the validation hook.
{ "environmentUrl": "https://org12345.crm.dynamics.com", "tables": [ { "logicalName": "cr123_project", "displayName": "Project", "status": "new", "columns": [ { "logicalName": "cr123_name", "type": "String" }, { "logicalName": "cr123_description", "type": "Memo" } ] } ] }
Use the Write tool to create this file at <PROJECT_ROOT>/.datamodel-manifest.json . Only include tables and columns that were confirmed to exist in Step 8.2. See ${CLAUDE_PLUGIN_ROOT}/references/datamodel-manifest-schema.md for the full schema specification.
8.4 Record Skill Usage
Reference: ${CLAUDE_PLUGIN_ROOT}/references/skill-tracking-reference.md
Follow the skill tracking instructions in the reference to record this skill's usage. Use --skillName "SetupDatamodel" .
8.5 Present Summary
Present a summary to the user:
Table Status Columns Relationships
cr123_project (Project) Created 5 columns 2 relationships
contact (Contact) Reused 1 column added —
cr123_task (Task) Created 4 columns 1 relationship
Include:
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Total tables created/modified/reused/failed
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Total columns created/skipped/failed
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Total relationships created/failed
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Any errors encountered with details
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Location of the manifest file (.datamodel-manifest.json )
8.6 Suggest Next Steps
After the summary, suggest:
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Review created tables in the Power Pages maker portal
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Populate tables with sample data for testing: /power-pages:add-sample-data
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Integrate tables with your site's frontend via Web API: /power-pages:integrate-webapi
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If the site is not yet built: /power-pages:create-site
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If the site is ready to deploy: /power-pages:deploy-site
Output: Published customizations, verified tables, manifest written, summary presented
Important Notes
Throughout All Phases
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Use TaskCreate/TaskUpdate to track progress at every phase
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Ask for user confirmation at key decision points (see list below)
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Token refresh is automatic — the dataverse-request.js script handles 401 token refresh and 429/5xx retry internally
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Report failures without rollback — track each creation attempt and continue with remaining items on failure
Key Decision Points (Wait for User)
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After Phase 2: Data model source chosen (upload vs. AI)
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After Phase 4: Approve data model proposal before any creation
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After Phase 5: Acknowledge any skipped items before proceeding
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After Phase 8: Review summary and choose next steps
Progress Tracking
Before starting Phase 1, create a task list with all phases using TaskCreate :
Task subject activeForm Description
Verify prerequisites Verifying prerequisites Confirm PAC CLI auth, acquire Azure CLI token, verify API access
Choose data model source Choosing data model source Ask user to upload ER diagram or let AI analyze the site
Invoke data model architect Invoking data model architect Spawn agent to analyze site and propose data model
Review and approve proposal Reviewing proposal Present data model proposal to user, get explicit approval
Pre-creation checks Running pre-creation checks Refresh token, query existing tables, build creation plan
Create tables and columns Creating tables and columns POST to OData API to create tables and columns
Create relationships Creating relationships POST to OData API to create 1:N and M:N relationships
Publish and verify Publishing and verifying Publish customizations, verify tables, write manifest, present summary
Mark each task in_progress when starting it and completed when done via TaskUpdate . This gives the user visibility into progress and keeps the workflow deterministic.
Begin with Phase 1: Verify Prerequisites