A Model Context Protocol (MCP) server that integrates AI assistants with the Terraform Cloud API, allowing you to manage your infrastructure through natural conversation. Built with Pydantic models and structured around domain-specific modules, this server is compatible with any MCP-supporting platform including Claude, Claude Code CLI, Claude Desktop, Cursor, Copilot Studio, and others.
uv
package manager (recommended) or pip
# Clone the repository
git clone https://github.com/severity1/terraform-cloud-mcp.git
cd terraform-cloud-mcp
# Create virtual environment and activate it
uv venv
source .venv/bin/activate
# Install package
uv pip install .
# Add to Claude Code with your Terraform Cloud token
claude mcp add -e TFC_TOKEN=YOUR_TF_TOKEN -s user terraform-cloud-mcp -- "terraform-cloud-mcp"
Create a claude_desktop_config.json
configuration file:
{
"mcpServers": {
"terraform-cloud-mcp": {
"command": "/path/to/uv", # Get this by running: `which uv`
"args": [
"--directory",
"/path/to/your/terraform-cloud-mcp", # Full path to this project
"run",
"terraform-cloud-mcp"
],
"env": {
"TFC_TOKEN": "my token..." # replace with actual token
}
}
}
}
Replace your_terraform_cloud_token
with your actual Terraform Cloud API token.
For other platforms (like Cursor, Copilot Studio, or Glama), follow their platform-specific instructions for adding an MCP server. Most platforms require:
get_account_details()
: Gets account information for the authenticated user or service account.list_workspaces(organization, page_number, page_size, search)
: List and filter workspaces.get_workspace_details(workspace_id, organization, workspace_name)
: Get detailed information about a specific workspace.create_workspace(organization, name, params)
: Create a new workspace with optional parameters.update_workspace(organization, workspace_name, params)
: Update an existing workspace's configuration.delete_workspace(organization, workspace_name)
: Delete a workspace and all its content.safe_delete_workspace(organization, workspace_name)
: Delete only if the workspace isn't managing any resources.lock_workspace(workspace_id, reason)
: Lock a workspace to prevent runs.unlock_workspace(workspace_id)
: Unlock a workspace to allow runs.force_unlock_workspace(workspace_id)
: Force unlock a workspace locked by another user.create_run(workspace_id, params)
: Create and queue a Terraform run in a workspace using its ID.list_runs_in_workspace(workspace_id, ...)
: List and filter runs in a specific workspace using its ID.list_runs_in_organization(organization, ...)
: List and filter runs across an entire organization.get_run_details(run_id)
: Get detailed information about a specific run.apply_run(run_id, comment)
: Apply a run waiting for confirmation.discard_run(run_id, comment)
: Discard a run waiting for confirmation.cancel_run(run_id, comment)
: Cancel a run currently planning or applying.force_cancel_run(run_id, comment)
: Forcefully cancel a run immediately.force_execute_run(run_id)
: Forcefully execute a pending run by canceling prior runs.get_plan_details(plan_id)
: Get detailed information about a specific plan.get_plan_json_output(plan_id)
: Retrieve the JSON execution plan for a specific plan with proper redirect handling.get_run_plan_json_output(run_id)
: Retrieve the JSON execution plan from a run with proper redirect handling.get_apply_details(apply_id)
: Get detailed information about a specific apply.get_errored_state(apply_id)
: Retrieve the errored state from a failed apply for recovery.get_organization_details(organization)
: Get detailed information about a specific organization.get_organization_entitlements(organization)
: Show entitlement set for organization features.list_organizations(page_number, page_size, query, query_email, query_name)
: List and filter organizations.create_organization(name, email, params)
: Create a new organization with optional parameters.update_organization(organization, params)
: Update an existing organization's settings.delete_organization(organization)
: Delete an organization and all its content.For detailed development guidance including code standards, Pydantic patterns, and contribution workflows, see our Development Documentation.
# Clone the repository
git clone https://github.com/severity1/terraform-cloud-mcp.git
cd terraform-cloud-mcp
# Create virtual environment and activate it
uv venv
source .venv/bin/activate # On Windows: .venv\Scripts\activate
# Install in development mode with development dependencies
uv pip install -e .
uv pip install black mypy pydantic ruff
# Run the server in development mode
mcp dev terraform_cloud_mcp/server.py
# Run tests and quality checks
uv run -m mypy .
uv run -m ruff check .
uv run -m black .
For detailed information on code organization, architecture, development workflows, and code quality guidelines, refer to docs/DEVELOPMENT.md.
The codebase includes comprehensive documentation:
docs/
directory contains detailed examples for each domain:
docs/DEVELOPMENT.md
: Development standards and coding guidelinesdocs/CONTRIBUTING.md
: Guidelines for contributing to the projectdocs/models/
: Usage examples for all model typesdocs/tools/
: Detailed usage examples for each tooldocs/conversations/
: Sample conversation flows with the APIserver.py
:
import logging
logging.basicConfig(level=logging.DEBUG)
Contributions are welcome! Please open an issue or pull request if you'd like to contribute to this project.
See our Contributing Guide for detailed instructions on how to get started, code quality standards, and the pull request process.
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