Figma MCP Server with Chunking
An MCP server for the Figma API, with chunking and pagination to handle large files.
Figma MCP Server with Chunking
A Model Context Protocol (MCP) server for interacting with the Figma API, featuring memory-efficient chunking and pagination capabilities for handling large Figma files.
Overview
This MCP server provides a robust interface to the Figma API with built-in memory management features. It's designed to handle large Figma files efficiently by breaking down operations into manageable chunks and implementing pagination where necessary.
Key Features
- Memory-aware processing with configurable limits
- Chunked data retrieval for large files
- Pagination support for all listing operations
- Node type filtering
- Progress tracking
- Configurable chunk sizes
- Resume capability for interrupted operations
- Debug logging
- Config file support
Installation
Installing via Smithery
To install Figma MCP Server with Chunking for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @ArchimedesCrypto/figma-mcp-chunked --client claude
Manual Installation
# Clone the repository
git clone [repository-url]
cd figma-mcp-chunked
# Install dependencies
npm install
# Build the project
npm run build
Configuration
Environment Variables
FIGMA_ACCESS_TOKEN: Your Figma API access token
Config File
You can provide configuration via a JSON file using the --config flag:
{
"mcpServers": {
"figma": {
"env": {
"FIGMA_ACCESS_TOKEN": "your-access-token"
}
}
}
}
Usage:
node build/index.js --config=path/to/config.json
Tools
get_file_data (New)
Retrieves Figma file data with memory-efficient chunking and pagination.
{
"name": "get_file_data",
"arguments": {
"fileKey": "your-file-key",
"accessToken": "your-access-token",
"pageSize": 100, // Optional: nodes per chunk
"maxMemoryMB": 512, // Optional: memory limit
"nodeTypes": ["FRAME", "COMPONENT"], // Optional: filter by type
"cursor": "next-page-token", // Optional: resume from last position
"depth": 2 // Optional: traversal depth
}
}
Response:
{
"nodes": [...],
"memoryUsage": 256.5,
"nextCursor": "next-page-token",
"hasMore": true
}
list_files
Lists files with pagination support.
{
"name": "list_files",
"arguments": {
"project_id": "optional-project-id",
"team_id": "optional-team-id"
}
}
get_file_versions
Retrieves version history in chunks.
{
"name": "get_file_versions",
"arguments": {
"file_key": "your-file-key"
}
}
get_file_comments
Retrieves comments with pagination.
{
"name": "get_file_comments",
"arguments": {
"file_key": "your-file-key"
}
}
get_file_info
Retrieves file information with chunked node traversal.
{
"name": "get_file_info",
"arguments": {
"file_key": "your-file-key",
"depth": 2, // Optional: traversal depth
"node_id": "specific-node-id" // Optional: start from specific node
}
}
get_components
Retrieves components with chunking support.
{
"name": "get_components",
"arguments": {
"file_key": "your-file-key"
}
}
get_styles
Retrieves styles with chunking support.
{
"name": "get_styles",
"arguments": {
"file_key": "your-file-key"
}
}
get_file_nodes
Retrieves specific nodes with chunking support.
{
"name": "get_file_nodes",
"arguments": {
"file_key": "your-file-key",
"ids": ["node-id-1", "node-id-2"]
}
}
Memory Management
The server implements several strategies to manage memory efficiently:
Chunking Strategy
- Configurable chunk sizes via
pageSize - Memory usage monitoring
- Automatic chunk size adjustment based on memory pressure
- Progress tracking per chunk
- Resume capability using cursors
Best Practices
- Start with smaller chunk sizes (50-100 nodes) and adjust based on performance
- Monitor memory usage through the response metadata
- Use node type filtering when possible to reduce data load
- Implement pagination for large datasets
- Use the resume capability for very large files
Configuration Options
pageSize: Number of nodes per chunk (default: 100)maxMemoryMB: Maximum memory usage in MB (default: 512)nodeTypes: Filter specific node typesdepth: Control traversal depth for nested structures
Debug Logging
The server includes comprehensive debug logging:
// Debug log examples
[MCP Debug] Loading config from config.json
[MCP Debug] Access token found xxxxxxxx...
[MCP Debug] Request { tool: 'get_file_data', arguments: {...} }
[MCP Debug] Response size 2.5 MB
Error Handling
The server provides detailed error messages and suggestions:
// Memory limit error
"Response size too large. Try using a smaller depth value or specifying a node_id.""
// Invalid parameters
"Missing required parameters: fileKey and accessToken"
// API errors
"Figma API error: [detailed message]"
Troubleshooting
Common Issues
-
Memory Errors
- Reduce chunk size
- Use node type filtering
- Implement pagination
- Specify smaller depth values
-
Performance Issues
- Monitor memory usage
- Adjust chunk sizes
- Use appropriate node type filters
- Implement caching for frequently accessed data
-
API Limits
- Implement rate limiting
- Use pagination
- Cache responses when possible
Debug Mode
Enable debug logging for detailed information:
# Set debug environment variable
export DEBUG=true
Contributing
Contributions are welcome! Please read our contributing guidelines and submit pull requests to our repository.
License
This project is licensed under the MIT License - see the LICENSE file for details.
Related Servers
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
MCP VSCode Cline
A guide for using the Cline VSCode extension to interact with Model Context Protocol (MCP) servers.
TestDino MCP
A Model Context Protocol (MCP) server that connects TestDino to AI agents. This server enables you to interact with your TestDino test data directly through natural language commands.
CLI MCP Server
A secure MCP server for executing controlled command-line operations with comprehensive security features.
OpenAI GPT Image
Generate and edit images using OpenAI's GPT-4o image generation and editing APIs with advanced prompt control.
MCP Agent Orchestration System
A state-based agent orchestration system using the Model Context Protocol (MCP).
IdeaJarvis
IdeaJarvis is an idea workspace for product builders. Use AI to structure brainstorming into detailed PRDs, conduct comprehensive market research, build prototypes, and gather real community feedback—turning "what if" into "ready to launch.
Roslyn MCP Server
A C# MCP server using Microsoft's Roslyn compiler for code analysis and navigation in C# codebases.
Arduino MCP Server
Control an Arduino board from your computer using AI commands.
Claude Code History
Retrieve and analyze Claude Code conversation history from local files.
Homebrew MCP
Interact with Homebrew (the package manager for macOS and Linux) using natural language commands.
