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powerplatform-mcp
PowerPlatform Model Context Protocol server
3 years
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PowerPlatform MCP Server
A Model Context Protocol (MCP) server that provides intelligent access to PowerPlatform/Dataverse entities and records. This tool offers context-aware assistance, entity exploration and metadata access.
Key features:
- Rich entity metadata exploration with formatted, context-aware prompts
- Advanced OData query support with intelligent filtering
- Comprehensive relationship mapping and visualization
- AI-assisted query building and data modeling through AI agent
- Full access to entity attributes, relationships, and global option sets
Installation
You can install and run this tool in two ways:
Option 1: Install globally
npm install -g powerplatform-mcp
Then run it:
powerplatform-mcp
Option 2: Run directly with npx
Run without installing:
npx powerplatform-mcp
Configuration
Before running, set the following environment variables:
# PowerPlatform/Dataverse connection details
POWERPLATFORM_URL=https://yourenvironment.crm.dynamics.com
POWERPLATFORM_CLIENT_ID=your-azure-app-client-id
POWERPLATFORM_CLIENT_SECRET=your-azure-app-client-secret
POWERPLATFORM_TENANT_ID=your-azure-tenant-id
Usage
This is an MCP server designed to work with MCP-compatible clients like Cursor, Claude App and GitHub Copilot. Once running, it will expose tools for retrieving PowerPlatform entity metadata and records.
Available Tools
-
get-entity-metadata
: Get metadata about a PowerPlatform entity -
get-entity-attributes
: Get attributes/fields of a PowerPlatform entity -
get-entity-attribute
: Get a specific attribute/field of a PowerPlatform entity -
get-entity-relationships
: Get relationships for a PowerPlatform entity -
get-global-option-set
: Get a global option set definition -
get-record
: Get a specific record by entity name and ID -
query-records
: Query records using an OData filter expression -
use-powerplatform-prompt
: Use pre-defined prompt templates for PowerPlatform entities
MCP Prompts
The server includes a prompts feature that provides formatted, context-rich information about PowerPlatform entities.
Available Prompt Types
The use-powerplatform-prompt
tool supports the following prompt types:
- ENTITY_OVERVIEW: Comprehensive overview of an entity
- ATTRIBUTE_DETAILS: Detailed information about a specific entity attribute
- QUERY_TEMPLATE: OData query template for an entity with example filters
- RELATIONSHIP_MAP: Visual map of entity relationships
Examples
Entity Overview Prompt
// Example client code
await mcpClient.invoke("use-powerplatform-prompt", {
promptType: "ENTITY_OVERVIEW",
entityName: "account"
});
Output:
## Power Platform Entity: account
This is an overview of the 'account' entity in Microsoft Power Platform/Dataverse:
### Entity Details
- Display Name: Account
- Schema Name: Account
- Description: Business that represents a customer or potential customer
- Primary Key: accountid
- Primary Name: name
### Key Attributes
- name: String (Account Name)
- emailaddress1: String (Email)
- telephone1: String (Main Phone)
- address1_city: String (City)
- statecode: Status (Status)
- accountnumber: String (Account Number)
- industrycode: OptionSetValue (Industry)
- revenue: Money (Annual Revenue)
- ownerid: Owner (Owner)
- createdon: DateTime (Created On)
### Relationships
- One-to-Many Relationships: 42
- Many-to-Many Relationships: 8
You can query this entity using OData filters against the plural name.
Attribute Details Prompt
await mcpClient.invoke("use-powerplatform-prompt", {
promptType: "ATTRIBUTE_DETAILS",
entityName: "account",
attributeName: "revenue"
});
Output:
## Attribute: revenue
Details for the 'revenue' attribute of the 'account' entity:
- Display Name: Annual Revenue
- Description: Annual revenue for the account
- Type: Money
- Format: Currency
- Is Required: No
- Is Searchable: true
### Usage Notes
- Data Type: Money
- Required: No
- Max Length: N/A
Query Template Prompt
await mcpClient.invoke("use-powerplatform-prompt", {
promptType: "QUERY_TEMPLATE",
entityName: "account"
});
Output:
## OData Query Template for accounts
Use this template to build queries against the accounts entity:
accounts?$select=name,emailaddress1,telephone1, address1_city,statecode&$filter=name eq 'Example'&$orderby=name asc&$top=50
Common Filter Examples
- Equals:
name eq 'Contoso'
- Contains:
contains(name, 'Contoso')
- Greater than date:
createdon gt 2023-01-01T00:00:00Z
- Multiple conditions:
name eq 'Contoso' and statecode eq 0
#### Relationship Map Prompt
```javascript
await mcpClient.invoke("use-powerplatform-prompt", {
promptType: "RELATIONSHIP_MAP",
entityName: "contact"
});
Output:
## Relationship Map for contact
This shows all relationships for the 'contact' entity:
### One-to-Many Relationships (contact as Primary)
- contact_activity_parties: contact (1) → activityparty (N)
- contact_connections1: contact (1) → connection (N)
- contact_connections2: contact (1) → connection (N)
- contact_customer_contacts: contact (1) → contact (N)
- contact_master_contact: contact (1) → contact (N)
### One-to-Many Relationships (contact as Related)
- account_primary_contact: account (1) → contact (N)
- customer_contacts: customer (1) → contact (N)
- system_user_contacts: systemuser (1) → contact (N)
### Many-to-Many Relationships
- contactleads_association: contact (N) ↔ lead (N)
- contactopportunities_association: contact (N) ↔ opportunity (N)
- contactquotes_association: contact (N) ↔ quote (N)
Prompt Examples
Here are some examples of how you can interact with assistant using the PowerPlatform MCP prompts:
1. Entity Understanding
You can ask assistant about entities in natural language:
User: "Tell me about the Account entity in our PowerPlatform environment"
Response:
[uses ENTITY_OVERVIEW prompt internally]
Here's what I found about the Account entity:
- It's a core business entity representing customers and potential customers
- The primary identifier is 'accountid' and the primary name field is 'name'
- Key fields include:
* name (Account Name)
* emailaddress1 (Email)
* telephone1 (Main Phone)
* revenue (Annual Revenue)
- It has 42 one-to-many relationships and 8 many-to-many relationships
2. Building Queries
You can ask for help constructing queries:
User: "Help me write a query to find active accounts with revenue over $1M in California"
Response:
[uses QUERY_TEMPLATE prompt internally]
Here's the OData query you need:
accounts?$select=name,revenue,statecode,address1_stateorprovince
&$filter=statecode eq 0
and revenue gt 1000000
and address1_stateorprovince eq 'California'
&$orderby=revenue desc
This query:
1. Selects relevant fields
2. Filters for active accounts (statecode eq 0)
3. Checks revenue > $1M
4. Filters for California location
5. Orders by revenue highest to lowest
3. Understanding Relationships
You can explore entity relationships naturally:
User: "How are Accounts and Contacts related in our system?"
Response:
[uses RELATIONSHIP_MAP prompt for both entities internally]
Here are the key relationships between Accounts and Contacts:
1. Primary Contact (One-to-Many):
- account_primary_contact: Account (1) → Contact (N)
- An account can have many contacts, but one designated as primary
2. Customer Relationship:
- contact_customer_accounts: Contact (N) ← Account (1)
- Contacts can be associated with customer accounts
3. Additional Relationships:
- accountleads_association: For lead tracking
- account_connections: For relationship management
4. Field/Attribute Investigation
You can ask about specific fields:
User: "What kind of field is the revenue field on Account?"
Response:
[uses ATTRIBUTE_DETAILS prompt internally]
The revenue field on Account is:
- Data Type: Money
- Format: Currency
- Not required
- Searchable: Yes
- Used for: Tracking annual revenue for the account
- Can be used in advanced find and filtered views
5. Complex Data Modeling
You can get help with data modeling decisions:
User: "I need to design a solution for tracking product reviews. Which entities should I relate to?"
Response:
[uses multiple ENTITY_OVERVIEW and RELATIONSHIP_MAP prompts internally]
Based on the existing data model, here's a suggested approach:
1. Product (existing entity):
- Already has relationships with:
* Price lists
* Product categories
* Inventory units
2. New Review entity should relate to:
- Product (N:1) - Each review is for one product
- Contact (N:1) - Reviews are written by contacts
- Account (N:1) - Optional link to company if B2B review
Here's a sample lookup field structure...
[continues with detailed implementation guidance]
6. Debugging Assistance
You can get help troubleshooting:
User: "Why am I getting 'invalid property' when querying account.customertypecode?"
Response:
[uses ATTRIBUTE_DETAILS prompt internally]
I see the issue. The field 'customertypecode' is actually named 'customertype' in your environment. Here's the correct field information:
- Logical Name: customertype
- Type: OptionSetValue
- Valid Values:
* 1 = Competitor
* 2 = Consultant
* 3 = Customer
* 4 = Investor
* 5 = Partner
* 6 = Influencer
Try updating your query to use 'customertype' instead of 'customertypecode'.
These examples show how AI assistant can leverage the MCP prompts to provide context-aware, accurate assistance for PowerPlatform development tasks. The AI understands your environment's specific configuration and can help with both simple queries and complex architectural decisions.
License
MIT
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