PolyNeural.ai Knowledge Graph MCP Bundle
Provides AI agents with persistent memory and knowledge management through a comprehensive knowledge graph platform. Enables storing, searching, and managing entities, relationships, and observations with advanced features like trending analysis and smart ranking.
README
PolyNeural.ai MCP Bundle (@polyneural/mcpb)
An MCP Bundle that provides AI agents with persistent memory through the PolyNeural.ai knowledge graph platform.
🚀 Quick Download
Double-click the .mcpb file to install in Claude Desktop, then configure your PolyNeural.ai API key.
Architecture
This MCP Bundle implements a stdio MCP server that bridges to the PolyNeural.ai backend HTTP MCP endpoints. This approach provides:
- ✅ No code duplication - Uses existing PolyNeural.ai backend MCP endpoints
- ✅ Seamless authentication - Forwards API keys via HTTP headers
- ✅ Protocol translation - Bridges stdio MCP ↔ HTTP MCP endpoints
- ✅ Easy maintenance - Single source of truth for MCP tools and logic
Prerequisites
- PolyNeural.ai Backend Running: The backend must be accessible (default:
https://polyneural.ai) - Valid API Key: You need a PolyNeural.ai API key (format:
kg_xxxxxxxx) - Node.js 16+: Required for running the extension
Installation
Option 1: As MCPB Bundle (Recommended)
- Download the latest
polyneural-mcpb.mcpbfile from the releases page - Install using your MCPB-compatible application:
- Claude Desktop: Double-click the
.mcpbfile to install - Other MCPB clients: Follow your client's installation process
- Claude Desktop: Double-click the
- Configure your PolyNeural.ai API key in the bundle settings UI
Option 2: Manual Installation
- Install dependencies:
npm install
- For Claude Desktop: Add to your
claude_desktop_config.json:
{
"mcpServers": {
"@polyneural/mcpb": {
"command": "node",
"args": ["/path/to/mcpb/server/index.js"],
"env": {
"API_URL": "https://polyneural.ai",
"API_KEY": "kg_your_api_key_here",
"DEBUG": "false",
"TIMEOUT": "30"
}
}
}
}
Configuration
The MCPB bundle supports these user configuration options (set via MCPB client UI or environment variables):
| Variable | Description | Default | Required |
|---|---|---|---|
API_URL |
PolyNeural.ai backend URL | https://polyneural.ai |
No |
API_KEY |
Your PolyNeural.ai API key | - | Yes |
DEBUG |
Enable debug logging | false |
No |
TIMEOUT |
Request timeout in seconds | 30 |
No |
Available Tools
Once installed, Claude will have access to these PolyNeural.ai knowledge graph tools:
Core Operations
create_entities- Store new knowledge entitiescreate_relations- Create relationships between entitiessearch_nodes- Search the knowledge graphopen_nodes- Retrieve specific entitiesread_graph- Get the complete graph structure
Advanced Operations
add_observations- Add details to existing entitiesdelete_entities- Remove entitiesdelete_relations- Remove relationshipsdelete_observations- Remove specific observationsget_entities_by_identifiers- Bulk entity retrievalget_entity_relationships- Get entity connectionsget_entities_by_date_range- Time-based queriesget_recent_changes- Recent activity trackingget_trending_entities- Popular entitiesget_frecency_entities- Frequency + recency rankingsearch_with_frecency- Smart search with ranking
Testing
Manual Testing
# Set environment variables and run
API_URL=https://polyneural.ai API_KEY=kg_your_key DEBUG=true npm start
Create MCPB Bundle
# Install MCPB CLI (if not already installed)
npm install -g @anthropic-ai/mcpb
# Create the bundle
mcpb pack
Integration Testing
# Run the integration test script
node test-integration.js
Troubleshooting
Common Issues
Bundle won't start:
- Verify the PolyNeural.ai backend is running:
curl https://polyneural.ai/health - Check your API key format (must start with
kg_) - Enable debug mode in the bundle configuration
No tools available in Claude:
- Ensure Claude Desktop is restarted after installing the bundle
- Check the logs for authentication errors
- Verify the bundle was installed correctly
Connection timeouts:
- Increase the
TIMEOUTvalue - Check network connectivity to the backend
- Verify the backend MCP endpoints are accessible:
curl -H "Authorization: Bearer kg_your_key" https://polyneural.ai/mcp/initialize
Debug Mode
Enable debug logging to see detailed communication:
DEBUG=true npm start
This will show:
- HTTP request details and responses
- Authentication headers
- MCP message routing
- Error details
Architecture Details
MCP Client (stdio MCP client)
↕ (JSON-RPC over stdio)
@polyneural/mcpb MCP Server (HTTP bridge)
↕ (HTTP with Authorization headers)
PolyNeural.ai Backend (HTTP MCP endpoints)
↕ (Database operations)
Knowledge Graph Database
The MCPB server handles:
- stdio MCP server implementation
- HTTP requests to backend MCP endpoints
- Authentication header forwarding
- Request/response translation
- Error handling and logging
Development
To modify this MCPB bundle:
- Server Logic: Edit
server/index.js(HTTP bridge implementation) - Bundle Configuration: Modify
manifest.jsonfor MCPB-specific settings - Dependencies: Update
package.jsonas needed - Build Bundle: Run
mcpb packto create the.mcpbfile
The beauty of this architecture is that all the actual MCP tool logic remains in the PolyNeural.ai backend - this bundle is purely an HTTP bridge.
MCPB Compliance
This bundle follows the MCPB specification:
- ✅ Valid
manifest.jsonwithmanifest_version: "0.1" - ✅ Backward Compatible: Also includes
dxt_version: "0.1"for current Claude Desktop - ✅ Proper MCP server implementation using
@modelcontextprotocol/sdk - ✅ User configuration via
user_configfield - ✅ Platform compatibility declarations
- ✅ Proper error handling and timeout management
- ✅ Comprehensive tool and capability declarations
Compatibility Note
The manifest includes both manifest_version (MCPB standard) and dxt_version (current Claude Desktop requirement) to ensure compatibility with both current and future versions of MCPB-compatible applications.
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