PI API MCP Server
An MCP server for interacting with the PI Dashboard API.
PI API MCP Server
A Model Context Protocol (MCP) server that provides standardized tools and resources for interacting with the PI Dashboard API. This implementation enables Claude and other MCP-compatible AI assistants to securely access and manage PI Dashboard resources, including categories and charts.
Utilizing PI with MCP
The following demonstrates typical usage scenarios for this MCP Server after setup completion.
Initial Authentication:
- Execute the following instructions to establish a connection:
Ensure the PI API MCP server is running
Set the API URL to http://localhost:8224/pi/api/v2
Use the authenticate tool for authentication guidance
Check the connection status to verify everything is working
List two charts from the dashboard
Chart Analysis:
- If chart ID 450 contains metadata information, use the following prompt:
Retrieve the metadata from chart ID 450
Extract the chart JSON data from ID 450
Identify chart IDs associated with claims
Obtain JSON data for the identified charts
Analyze the data to generate actionable insights
Example Output:

Installation
Installing via Smithery
To install pi-api-mcp-server for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @mingzilla/pi-api-mcp-server --client claude
Installation - Using Docker (Recommended)
- No MCP Server configuration needed
- MCP client configuration file setup:
{
"mcpServers": {
"pi-api": {
"command": "docker",
"args": [
"run",
"-i",
"--rm",
"-e",
"API_URL=http://localhost:8224/pi/api/v2",
"-e",
"PI_API_KEY=XXXXXXXX",
"mingzilla/pi-api-mcp-server"
],
"disabled": false,
"autoApprove": [
"keep-session-alive",
"check-connection",
"authenticate",
"list-categories",
"get-category",
"list-charts",
"get-chart",
"export-chart",
"get-filterable-attributes",
"export-chart"
]
}
}
}
Important Note: If the --api-url parameter is not provided at initialization, the server will prompt you to configure the API URL using the set-api-url tool before executing any operations. This design enables flexible configuration in environments where the URL is not predetermined at startup.
Configuration File Location
Access your Claude for Desktop application configuration at:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json - Linux: Use other tools for now. e.g. Cline - ask it to show you the MCP config file
Available Tools
Schema Discovery
- get-filterable-attributes: Get the list of attributes that can be used for filtering by examining a sample entity
Get the filterable attributes for chart entities
Connection Management
- check-connection: Check if the current API URL and authentication are valid
- set-api-url: Configure the base API URL for all requests
Set the API URL to http://localhost:8224/pi/api/v2
Authentication
- authenticate: Get guidance on authentication options
- authenticate-with-credentials: Authenticate with username and password (last resort option)
- keep-session-alive: Verify and refresh the current authentication token (also used for token-based authentication)
- logout: Invalidate the current token and end the session
- set-organization: Set the organization ID for subsequent requests
Categories
- list-categories: List all categories with filtering support
- get-category: Get a category by ID
- create-category: Create a new category
- update-category: Update an existing category
- delete-category: Delete a category
- list-category-objects: List all objects for a specific category
Charts
- list-charts: List all charts with filtering support
- get-chart: Get a chart by ID
- delete-chart: Delete a chart
- export-chart: Export a chart in various formats
Available Resources
- auth://status: Get authentication status
- categories://list: List all categories
- categories://{id}: Get a specific category
- categories://{categoryId}/objects: Get objects for a specific category
- charts://list: List all charts
- charts://{id}: Get a specific chart
- charts://{id}/export/{format}: Export a chart in a specific format
Available Prompts
- analyze-categories: Analyze categories in the dashboard
- analyze-charts: Analyze charts in the dashboard
- compare-charts: Compare data between two charts
- category-usage-analysis: Analyze how categories are being used in charts
- use-filters: Shows how to use filters effectively with this API
Claude Integration Examples
Here are some example queries to use with Claude after connecting the server:
Set the API URL
Please use the set-api-url tool to set the PI API URL to http://localhost:8224/pi/api/v2
Authentication
Please help me authenticate to the PI API.
I have a token. Please use the keep-session-alive tool with my token: [YOUR_TOKEN_HERE]
Please check if my connection to the PI API is working properly.
Working with Categories
List all categories in the dashboard.
Get details about category with ID 123.
Working with Charts
List all the charts available in the dashboard.
Export chart with ID 456 as a PDF.
Using Filters
Get the filterable attributes for chart entities to understand what fields I can filter on.
List charts with description containing "revenue" using the filter option.
Using Analysis Prompts
Analyze the categories in the dashboard.
Compare data between charts 123 and 456.
Show me how to use filters effectively with this API.
Development
Local Execution
- Note: you can make use of
start.shto run the dev server as well.
# Clone the repository (SSH or HTTPS option)
git clone [email protected]:mingzilla/pi-api-mcp-server.git
cd pi-api-mcp-server
# Install dependencies
npm install
./dependencies.sh # Installs global dependencies to enable MCP client connection via "@mingzilla/pi-api-mcp-server"
# Build the project
npm run build
# Execute the server
npm start
NPM Installation
# Global installation
npm install -g @mingzilla/pi-api-mcp-server
# Direct execution via npx
npx @mingzilla/pi-api-mcp-server --api-url "http://localhost:8224/pi/api/v2" --auth-token "XXXXXXXX"
MCP Client Configuration
Integration with Claude for Desktop:
Node.js Implementation
- Execute the instructions in the "Local Execution" section
- Ensure
./dependencies.shhas been executed to install required dependencies - Implement the following configuration (Note: "@mingzilla/pi-api-mcp-server" references the package installed through "Local Execution")
{
"mcpServers": {
"pi-api": {
"command": "npx",
"args": [
"-y",
"@mingzilla/pi-api-mcp-server",
"--api-url",
"http://localhost:8224/pi/api/v2",
"--auth-token",
"XXXXXXXX"
],
"autoApprove": [
"keep-session-alive",
"check-connection",
"authenticate",
"list-categories",
"get-category",
"list-charts",
"get-chart",
"export-chart",
"get-filterable-attributes",
"export-chart"
]
}
}
}
Local Development
- run the server using
./start.sh - set the config with the path to the
build/index.jsfile
./start.sh
{
"mcpServers": {
"pi-api": {
"command": "node",
"args": [
"/home/mingzilla/dev/tool-mcp-pi-api-server/build/index.js",
"--api-url",
"http://localhost:8224/pi/api/v2",
"--auth-token",
"XXXXXXXX"
],
"autoApprove": [
"keep-session-alive",
"check-connection",
"authenticate",
"list-categories",
"get-category",
"list-charts",
"get-chart",
"export-chart",
"get-filterable-attributes",
"export-chart"
]
}
}
}
Development Check List
- update code -> start local server -> test local server with file path to index.js
- update readme.md file -> change the mcpServers config section: docker + node + npx
- ./publish.sh - publish to npm
- ./dockerBuild.sh -> ./dockerPublish.sh (edit version number to match package.json) -> test docker config
- push code to github
License
MIT License
Author
Ming Huang (mingzilla)
İlgili Sunucular
Scout Monitoring MCP
sponsorPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
sponsorAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
i18next MCP Server
An MCP server for managing translations in i18next projects, allowing AI assistants to interact directly with translation files.
Tauri Development MCP Server
Build, test, and debug mobile and desktop apps with the Tauri framework faster with automated UI interaction, screenshots, DOM state, and console logs from your app under development.
FileScopeMCP
Analyzes your codebase identifying important files based on dependency relationships. Generates diagrams and importance scores per file, helping AI assistants understand the codebase. Automatically parses popular programming languages, Python, Lua, C, C++, Rust, Zig.
AI Agent Timeline MCP Server
A timeline tool for AI agents to post their thoughts and progress while working.
APIWeaver
Dynamically creates MCP servers from web API configurations, integrating any REST API, GraphQL endpoint, or web service into MCP-compatible tools.
OpenAPI MCP Server
Explore and analyze OpenAPI specifications from local files or remote URLs.
Rakit UI AI
An intelligent tool for AI assistants to present multiple UI component designs for user selection.
Socket
Scan dependencies for vulnerabilities and security issues using the Socket API.
Credential Manager
A server for securely managing API credentials locally through the Model Context Protocol (MCP).
Adaptive Graph of Thoughts
An intelligent scientific reasoning framework that uses graph structures and Neo4j to perform advanced reasoning via the Model Context Protocol (MCP).