Confluence MCP Server
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Quick Answer / TL;DR
The Confluence MCP server establishes a secure, local or remote JSON-RPC 2.0 communication tunnel, allowing AI models (like Claude or Cursor) to automatically discover and execute capabilities (tools, prompts, and resources) within the Confluence ecosystem with extremely low latency.
Key Takeaways
- Audit active accounts metrics
- Expose internal datasets
- Trigger workflow endpoints
Core Integration Concept
Connecting the model to Confluence bypasses complex setup. The LLM can auto-discover what endpoints are active, what input variables are expected, and how answers will be delivered.
Verified Use Cases
Setup Overview
Connection Setup Checklist
- Prepare Credentials: Obtain your API Key / Token credentials directly from your Confluence settings.
- Update Config: Add the executable tool command structure directly to your Claude config file.
- Restart & Confirm: Reload the desktop model client to complete the connection handshake sequence.
Sample Connection Schema
{
"jsonrpc": "2.0",
"method": "tools/call",
"params": {
"name": "execute_confluence",
"arguments": {
"query": "status_check"
}
},
"id": 1
}Security Considerations
To guarantee perfect data isolation, safeguard the API Key / Token credentials. Always run integrations in sandboxed contexts to block unsolicited access.
Best Practices
- Configure exact resource boundaries for the Read endpoints feature.
- Configure exact resource boundaries for the Update commands feature.
- Configure exact resource boundaries for the Logs diagnostic feature.
Required Auth Keys
API Key / Token
Deploy Confluence Server
Deploy this Confluence integration to our global edge container cluster. Zero DevOps, instant SSE.
Related Connectors
Confluence - FAQ
Contextual information and technical support details regarding Model Context Protocol integration