Terragrunt documentation always up to date.
A Model Context Protocol (MCP) server built with Deno and TypeScript, designed to provide contextual information related to Terragrunt.
This server acts as an MCP provider, exposing tools and resources that allow AI agents or other MCP clients to query information about Terragrunt documentation and development information, such as GitHub issues.
When writing IaC configurations, mostly in terragrunt, the IDE support isn't that good, in VSCode the terraform plugin is good, but not for terragrunt; it does not recognize the terragrunt blocks and does not provide any autocompletion. When interacting with AI autocompletion, it's common to get incorrect results, or false-positive linting errors. With this MCP server, you can provide to your LLM/AI assistant the latest documentation and issues from the Terragrunt GitHub repository, so it can use that to provide you with the most accurate information.
Note: All tools require a valid GitHub token set as an environment variable:
GITHUB_TOKEN
,GH_TOKEN
, orGITHUB_PERSONAL_ACCESS_TOKEN
.
Tool Name | Purpose | Inputs | Outputs | Use Case |
---|---|---|---|---|
list-doc-categories | Retrieve all documentation categories from Terragrunt docs. | None | Array of objects with name (string) and link (string) properties | Use when you need to explore the available documentation structure or when building a documentation navigation system. This is typically the first tool to call when starting to work with Terragrunt docs. |
list-all-docs-by-category | List all docs in a specific category. | category (string) | Array of objects with name (string), link (string), and content (string) | Use when you need to see all available documentation within a specific category, such as when building a category-specific documentation viewer or when you need to scan through all docs in a particular area. |
read-document-from-category | Read a specific doc from a category. | category (string), document (string) | Object containing content (string) with the full markdown content | Use when you need to access the complete content of a specific document, such as when implementing documentation search or when you need to reference specific documentation in your application. |
read-all-docs-from-category | Retrieve and merge all docs in a category into one response. | category (string) | Object containing content (string) with all docs merged into one | Use when you need a comprehensive view of all documentation within a category, such as when building a documentation search feature or when you need to analyze the complete documentation set for a specific topic. |
get-all-open-issues | Retrieve all open issues from Terragrunt GitHub repo. | all (boolean, optional) | Array of objects with title (string), number (number), state (string), created_at (string), updated_at (string), body (string), and labels (string[]) | Use when you need to track or analyze current issues in the Terragrunt project, such as when building an issue dashboard, performing issue triage, or when you need to stay updated with the latest project challenges and discussions. |
Install Deno:
Clone the repository:
git clone https://github.com/Excoriate/mcp-terragrunt-docs.git
cd mcp-terragrunt-docs
Set your GitHub token as an environment variable:
On Unix/macOS:
export GITHUB_TOKEN=ghp_xxx... # or GH_TOKEN or GITHUB_PERSONAL_ACCESS_TOKEN
On Windows (cmd):
set GITHUB_TOKEN=ghp_xxx...
Note: You can also set the token in the
.env
file.
Run the MCP server:
# directly using deno
deno run -A main.ts
# Using the justfile
just run
# You can also debug it, and inspect it locally
just inspect
The most straightforward method is to use it directly from JSR (Javascript Registry ❤️)
# export your github token
export GITHUB_TOKEN=ghp_xxx...
# run it
deno run -A jsr:@excoriate/mcp-terragrunt-docs@0.1.0
To use this Deno-based MCP server with Claude Desktop, add the following to your claude_desktop_config.json
:
{
"mcpServers": {
"terragrunt_docs": {
"command": "deno",
"args": [
"run",
"-A",
"main.ts"
],
"env": {
"GITHUB_TOKEN": "<YOUR_TOKEN>"
},
}
}
}
{
"mcpServers": {
"terragrunt_docs": {
"command": "docker",
"args": [
"run",
"-e", "GITHUB_TOKEN=<YOUR_TOKEN>", "mcp-terragrunt-docs"
],
"env": {
"GITHUB_TOKEN": "<YOUR_TOKEN>"
}
}
}
}
{
"mcpServers": {
"terragrunt_docs": {
"command": "deno",
"args": [
"run",
"-A",
"jsr:@excoriate/mcp-terragrunt-docs@0.1.0"
],
"env": {
"GITHUB_TOKEN": "<YOUR_TOKEN>"
}
}
}
}
docker build -t mcp-terragrunt-docs .
docker run -it --rm \
-e GITHUB_TOKEN=ghp_xxx... \
mcp-terragrunt-docs
ghp_xxx...
with your GitHub Personal Access Token with appropriate permissions.GH_TOKEN
or GITHUB_PERSONAL_ACCESS_TOKEN
as the environment variable name..env
file, you can pass it with --env-file .env
.See docs/CONTRIBUTING.md for detailed contribution guidelines, including setup, code style, PR process, and codebase structure reference.
See SECURITY.md for the project's security policy, including how to report vulnerabilities and responsible disclosure guidelines.
This project is licensed under the MIT License.
Token-efficient access to OpenAPI/Swagger specs via MCP Resources
Boost security in your dev lifecycle via SAST, SCA, Secrets & IaC scanning with Cycode.
Run and manage docker containers, docker compose, and logs
Enable AI agents to secure code with Semgrep.
GXtract is a MCP server designed to integrate with VS Code and other compatible editors. It provides a suite of tools for interacting with the GroundX platform, enabling you to leverage its powerful document understanding capabilities directly within your development environment.
Set up and interact with your unstructured data processing workflows in Unstructured Platform
MCP server to provide golang packages and their information from pkg.go.dev
Equip AI agents with evaluation and self-improvement capabilities with Root Signals.
MCP server for interacting with the Godot game engine, providing tools for editing, running, debugging, and managing scenes in Godot projects.
APIMatic MCP Server is used to validate OpenAPI specifications using APIMatic. The server processes OpenAPI files and returns validation summaries by leveraging APIMatic’s API.