Teleport Documentation
Search and query Teleport's documentation using embeddings stored in a local Chroma vector database.
teleport-docs-mcp
Build a MCP server for Teleport Documentation
How it works
Embeddings generated from teleport docs are saved in a Chroma database. A MCP tool is provided to do the vector search and return the result from the database. Note that no LLM model is used to interpret the result within the MCP tool. It's up to the AI tool that calls the MCP tool to interpret the result.
Use from Dockerhub
https://hub.docker.com/r/stevetelelport/teleport-docs-mcp
stdio
docker run --rm -i stevetelelport/teleport-docs-mcp:v0.1.0
or in config json format:
{
"mcpServers": {
"teleport-docs": {
"command": "docker",
"args": [
"run",
"--rm",
"-i",
"stevetelelport/teleport-docs-mcp:v0.1.0"
]
}
}
}
note that it takes a few seconds to spin up.
sse
docker run -d --name teleport-docs-mcp-sse -p 8282:8000 stevetelelport/teleport-docs-mcp:v0.1.0 uv run main.py --sse --host 0.0.0.0
Local Development
uv
Install uv:
curl -Ls https://astral.sh/uv/install.sh | sh
And install packages:
uv pip install -r requirement.txt
Build local docker
Build
$ docker build -t teleport-docs-mcp .
Stdio
$ docker run --rm -i teleport-docs-mcp
SSE
$ docker run --name teleport-docs-mcp-sse -d -p 8282:8000 teleport-docs uv main.py --sse --host 0.0.0.0
MCP config (stdio)
Replace with your directory path!
{
"mcpServers": {
"teleport-docs": {
"command": "uv",
"args": [
"--directory",
"/path/to/teleport-docs-mcp",
"run",
"main.py"
]
}
}
}
Rebuild database
The vector database is prepopulated and provided with this repo. You can refresh the data by removing existing indexes, and copy the latest pages from the teleport OSS GitHub repo.
To prep files:
rm -rf docs/pages
rm -rf docs/pages_fixed
cp /path/to/teleport/docs/pages docs/pages`
cp /path/to/teleport/examples docs/examples`
python3 fix_include.py
To generate new db:
rm -rf chroma_index/
python3 embed.py
It takes a while to generate though.
Server Terkait
Facebook Ads Library
Get any answer from the Facebook Ads Library, conduct deep research including messaging, creative testing and comparisons in seconds.
Shodan
Query Shodan's database of internet-connected devices and vulnerabilities using the Shodan API.
Web fetch and search MCP Server
Provides web search, Wikipedia search, and web content fetching capabilities using OCaml.
Travel Planner
A server for travel planning and interacting with Google Maps services.
Memvid
Encodes text data into videos that can be quickly looked up with semantic search.
Krep MCP Server
A high-performance string search server powered by the krep binary.
Azure AI Agent & Search
Search content using Azure AI Agent Service and Azure AI Search.
Wikipedia
Retrieves information from Wikipedia to provide context to Large Language Models (LLMs).
arXiv MCP Server
Search and analyze academic papers on arXiv.
Metasearch
A metasearch server that uses the Tavily API to perform searches based on specified queries.