miro-automation

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Automate Miro tasks via Rube MCP (Composio): boards, items, sticky notes, frames, sharing, connectors. Always search tools first for current schemas.

AI & Automation 39,227 stars 6374 forks Updated today MIT

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# Miro Automation via Rube MCP Automate Miro whiteboard operations through Composio's Miro toolkit via Rube MCP. ## Prerequisites - Rube MCP must be connected (RUBE_SEARCH_TOOLS available) - Active Miro connection via `RUBE_MANAGE_CONNECTIONS` with toolkit `miro` - Always call `RUBE_SEARCH_TOOLS` first to get current tool schemas ## Setup **Get Rube MCP**: Add `https://rube.app/mcp` as an MCP server in your client configuration. No API keys needed — just add the endpoint and it works. 1. Verify Rube MCP is available by confirming `RUBE_SEARCH_TOOLS` responds 2. Call `RUBE_MANAGE_CONNECTIONS` with toolkit `miro` 3. If connection is not ACTIVE, follow the returned auth link to complete Miro OAuth 4. Confirm connection status shows ACTIVE before running any workflows ## Core Workflows ### 1. List and Browse Boards **When to use**: User wants to find boards or get board details **Tool sequence**: 1. `MIRO_GET_BOARDS2` - List all accessible boards [Required] 2. `MIRO_GET_BOARD` - Get detailed info for a specific board [Optional] **Key parameters**: - `query`: Search term to filter boards by name - `sort`: Sort by 'default', 'last_modified', 'last_opened', 'last_created', 'alphabetically' - `limit`: Number of results per page (max 50) - `offset`: Pagination offset - `board_id`: Specific board ID for detailed retrieval **Pitfalls**: - Pagination uses offset-based approach, not cursor-based - Maximum 50 boards per page; iterate with offset for full list - Board IDs are l...

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Author
sickn33
Repository
sickn33/antigravity-awesome-skills
Created
4 months ago
Last Updated
today
Language
Python
License
MIT

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