
mcp-tinybird
3 years
Works with Finder
2
Github Watches
9
Github Forks
57
Github Stars
Tinybird MCP server
An MCP server to interact with a Tinybird Workspace from any MCP client.
Features
- Query Tinybird Data Sources using the Tinybird Query API
- Get the result of existing Tinybird API Endpoints with HTTP requests
- Push Datafiles
It supports both SSE and STDIO modes.
Usage examples
Setup
Installation
Using MCP package managers
Smithery
To install Tinybird MCP for Claude Desktop automatically via Smithery:
npx @smithery/cli install @tinybirdco/mcp-tinybird --client claude
mcp-get
You can install the Tinybird MCP server using mcp-get:
npx @michaellatman/mcp-get@latest install mcp-tinybird
Prerequisites
MCP is still very new and evolving, we recommend following the MCP documentation to get the MCP basics up and running.
You'll need:
Configuration
1. Configure Claude Desktop
Create the following file depending on your OS:
On MacOS: ~/Library/Application Support/Claude/claude_desktop_config.json
On Windows: %APPDATA%/Claude/claude_desktop_config.json
Paste this template in the file and replace <TINYBIRD_API_URL>
and <TINYBIRD_ADMIN_TOKEN>
with your Tinybird API URL and Admin Token:
{
"mcpServers": {
"mcp-tinybird": {
"command": "uvx",
"args": [
"mcp-tinybird",
"stdio"
],
"env": {
"TB_API_URL": "<TINYBIRD_API_URL>",
"TB_ADMIN_TOKEN": "<TINYBIRD_ADMIN_TOKEN>"
}
}
}
}
2. Restart Claude Desktop
SSE mode
Alternatively, you can run the MCP server in SSE mode by running the following command:
uvx mcp-tinybird sse
This mode is useful to integrate with an MCP client that supports SSE (like a web app).
Prompts
The server provides a single prompt:
-
tinybird-default: Assumes you have loaded some data in Tinybird and want help exploring it.
- Requires a "topic" argument which defines the topic of the data you want to explore, for example, "Bluesky data" or "retail sales".
You can configure additional prompt workflows:
- Create a prompts Data Source in your workspace with this schema and append your prompts. The MCP loads
prompts
on initialization so you can configure it to your needs:
SCHEMA >
`name` String `json:$.name`,
`description` String `json:$.description`,
`timestamp` DateTime `json:$.timestamp`,
`arguments` Array(String) `json:$.arguments[:]`,
`prompt` String `json:$.prompt`
Tools
The server implements several tools to interact with the Tinybird Workspace:
-
list-data-sources
: Lists all Data Sources in the Tinybird Workspace -
list-pipes
: Lists all Pipe Endpoints in the Tinybird Workspace -
get-data-source
: Gets the information of a Data Source given its name, including the schema. -
get-pipe
: Gets the information of a Pipe Endpoint given its name, including its nodes and SQL transformation to understand what insights it provides. -
request-pipe-data
: Requests data from a Pipe Endpoints via an HTTP request. Pipe endpoints can have parameters to filter the analytical data. -
run-select-query
: Allows to run a select query over a Data Source to extract insights. -
append-insight
: Adds a new business insight to the memo resource -
llms-tinybird-docs
: Contains the whole Tinybird product documentation, so you can use it to get context about what Tinybird is, what it does, API reference and more. -
save-event
: This allows to send an event to a Tinybird Data Source. Use it to save a user generated prompt to the prompts Data Source. The MCP server feeds from the prompts Data Source on initialization so the user can instruct the LLM the workflow to follow. -
analyze-pipe
: Uses the Tinybird analyze API to run a ClickHouse explain on the Pipe Endpoint query and check if indexes, sorting key, and partition key are being used and propose optimizations suggestions -
push-datafile
: Creates a remote Data Source or Pipe in the Tinybird Workspace from a local datafile. Use the Filesystem MCP to save files generated by this MCP server.
Development
Config
If you are working locally add two environment variables to a .env
file in the root of the repository:
TB_API_URL=
TB_ADMIN_TOKEN=
For local development, update your Claude Desktop configuration:
{
"mcpServers": {
"mcp-tinybird_local": {
"command": "uv",
"args": [
"--directory",
"/path/to/your/mcp-tinybird",
"run",
"mcp-tinybird",
"stdio"
]
}
}
}
Published Servers Configuration
"mcpServers": {
"mcp-tinybird": {
"command": "uvx",
"args": [
"mcp-tinybird"
]
}
}
Building and Publishing
To prepare the package for distribution:
- Sync dependencies and update lockfile:
uv sync
- Build package distributions:
uv build
This will create source and wheel distributions in the dist/
directory.
- Publish to PyPI:
uv publish
Note: You'll need to set PyPI credentials via environment variables or command flags:
- Token:
--token
orUV_PUBLISH_TOKEN
- Or username/password:
--username
/UV_PUBLISH_USERNAME
and--password
/UV_PUBLISH_PASSWORD
Debugging
Since MCP servers run over stdio, debugging can be challenging. For the best debugging experience, we strongly recommend using the MCP Inspector.
You can launch the MCP Inspector via npm
with this command:
npx @modelcontextprotocol/inspector uv --directory /Users/alrocar/gr/mcp-tinybird run mcp-tinybird
Upon launching, the Inspector will display a URL that you can access in your browser to begin debugging.
Monitoring
To monitor the MCP server, you can use any compatible Prometheus client such as Grafana. Learn how to monitor your MCP server here.
相关推荐
I find academic articles and books for research and literature reviews.
Converts Figma frames into front-end code for various mobile frameworks.
Confidential guide on numerology and astrology, based of GG33 Public information
Embark on a thrilling diplomatic quest across a galaxy on the brink of war. Navigate complex politics and alien cultures to forge peace and avert catastrophe in this immersive interstellar adventure.
Advanced software engineer GPT that excels through nailing the basics.
Delivers concise Python code and interprets non-English comments
💬 MaxKB is a ready-to-use AI chatbot that integrates Retrieval-Augmented Generation (RAG) pipelines, supports robust workflows, and provides advanced MCP tool-use capabilities.
Micropython I2C-based manipulation of the MCP series GPIO expander, derived from Adafruit_MCP230xx
MCP server to provide Figma layout information to AI coding agents like Cursor
The all-in-one Desktop & Docker AI application with built-in RAG, AI agents, No-code agent builder, MCP compatibility, and more.
Python code to use the MCP3008 analog to digital converter with a Raspberry Pi or BeagleBone black.
Reviews

user_OigH54Vm
As a dedicated user of mcp applications, I must say mcp-tinybird by tinybirdco is fantastic! Its seamless integration and intuitive interface make it incredibly user-friendly. It's great for handling data pipelines efficiently, and I appreciate the comprehensive documentation available on the GitHub page. A must-try for anyone looking to streamline their data processing workflows!