FreshMCP
Provides an MCP interface for FreshMCP operations using Azure Cosmos DB and AI Search.
FreshMCP
A Python-based service that provides a Message Control Protocol (MCP) interface for FreshMCP operations using Azure Cosmos DB and AI Search.
Overview
FreshMCP is a comprehensive service that provides standardized interfaces for interacting with Azure services:
Cosmos DB Operations
- Container management (create, list, delete)
- Item operations (create, read, update, delete, query)
AI Search Operations
- Create index
- List indexes
- Delete index
Architecture & Flow
System Architecture
graph TB
subgraph "Client Layer"
A[VSCode/Cursor Client]
B[Web Application]
end
subgraph "APIM Gateway"
C[Azure API Management]
D[Rate Limiting]
E[Authentication]
F[Request Routing]
end
subgraph "MCP Agent Layer"
G[Cosmos DB MCP Agent]
H[Search MCP Agent]
end
subgraph "Azure Services"
J[Cosmos DB]
K[AI Search]
end
A --> C
B --> C
C --> D
C --> E
C --> F
F --> G
F --> H
G --> J
H --> K
Request Flow
- Client Request: VSCode/Cursor or web application sends request to APIM
- APIM Processing:
- Authentication and authorization
- Rate limiting and throttling
- Request routing based on service type
- MCP Agent Processing:
- Tool execution based on request type
- Service-specific operations
- Response formatting
- Azure Service Interaction:
- Direct API calls to Azure services
- Data retrieval and manipulation
- Telemetry collection
APIM Configuration
The Azure API Management (APIM) serves as the central gateway for all MCP agent communications:
- Authentication: Subscription key-based authentication
- Rate Limiting: Configurable limits per subscription
- Routing: Intelligent routing to appropriate MCP agents
- Monitoring: Built-in analytics and monitoring
- Caching: Response caching for improved performance
MCP Agent Communication
Each MCP agent communicates via Server-Sent Events (SSE) protocol:
- Cosmos DB Agent: Handles all database operations
- Search Agent: Manages AI Search index operations
Prerequisites
- Python 3.11 or higher
- Azure CLI
- Azure Developer CLI (azd)
- Docker
- Azure subscription with appropriate permissions
Local Development Setup
-
Clone the repository:
-
Install uv (if not already installed):
pip install uv
- Create and activate a virtual environment using uv:
uv venv
# Windows
.venv\Scripts\activate
# Linux/Mac
source .venv/bin/activate
- Install dependencies using uv:
uv sync
- Set up environment variables:
cp .env.example .env
# Edit .env with your Azure credentials and service settings
Server Endpoints
Start the Cosmos DB MCP server:
python -m src.cosmos.mcp.server
The server will start on
http://localhost:8001/cosmos/sse
Start the AI Search MCP server:
python -m src.search.mcp.server
The server will start on
http://localhost:8002/search/sse
Setting up the MCP to the client
Add the tools of any MCP server to VSCode or Cursor providing a JSON configuration file below:
VSCode:
{
"servers": {
"cosmos_mcp_local": {
"type": "sse",
"url": "http://localhost:8001/cosmos/sse"
},
"search_mcp_local": {
"type": "sse",
"url": "http://localhost:8002/search/sse"
}
}
}
Cursor:
{
"mcpServers": {
"cosmos_mcp_local": {
"type": "sse",
"url": "http://localhost:8001/cosmos/sse"
},
"search_mcp_local": {
"type": "sse",
"url": "http://localhost:8002/search/sse"
}
}
}
Deployment with Azure Developer CLI (azd)
- Initialize azd (if not already done):
azd init -e dev -l eastus
# -e dev is optional, it will create a new dev environment
# -l eastus is optional, it will create the resources in the eastus region
- Deploy the application:
azd up
This will:
- Packages the project/services
- Provision all the necessary Azure services
- Build and push the Docker images to the Azure Container Registry
- Deploy the images to the Azure Container Apps
Setting up RBAC for Azure Services
Cosmos DB RBAC
- Grant the necessary RBAC role to the system-assigned managed identity:
az cosmosdb sql role assignment create \
--account-name <your-cosmos-account> \
--resource-group <your-resource-group> \
--role-definition-id "00000000-0000-0000-0000-000000000002" \
--principal-id <managed-identity-principal-id> \
--scope "/"
Note: The system-assigned managed identity is assigned to your cosmosdb Container App by default.
AI Search RBAC
- Grant the necessary RBAC role to the system-assigned managed identity:
az role assignment create \
--assignee <managed-identity-principal-id> \
--role "Search Service Contributor" \
--scope /subscriptions/<subscription-id>/resourceGroups/<resource-group>/providers/Microsoft.Search/searchServices/<search-service-name>
Note: The system-assigned managed identity is assigned to your search Container App by default.
Environment Variables
Required environment variables (use a table to list them):
| Variable | Description | Required |
|---|---|---|
AZURE_TENANT_ID | Azure tenant ID | Yes (If using Service Principal) |
AZURE_CLIENT_ID | Client ID for authentication | Yes (If using Service Principal) |
AZURE_CLIENT_SECRET | Client secret for authentication | Yes (If using Service Principal) |
APPLICATIONINSIGHTS_CONNECTION_STRING | Application Insights connection string | No |
Monitoring
To monitor your application:
azd monitor -e dev
Contributing
- Fork the repository
- Create a feature branch
- Commit your changes
- Push to the branch
- Create a Pull Request
License
This project is licensed under the MIT License - see the LICENSE file for details.
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