thunderclient-mcp
OfficialAllows creating and debugging API requests in Thunder Client collections directly from GitHub Copilot Agent mode.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@thunderclient-mcpGet endpoints from my project and save to a collection called 'My API'"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
Thunder Client MCP Server
The Thunder Client MCP server enables customers to integrate with AI tools to create requests and collections. It is compatible with various AI development environments, including Cline, Continue.dev, and GitHub Copilot.
Requirements
A Business or Enterprise plan subscription is required to use the Thunder Client MCP Server.
View Thunder Client pricing plans here.
Related MCP server: Istek MCP Server
Available Tools
This MCP server provides three powerful tools for managing Thunder Client operations:
1. tc_create
Description:
Saves API endpoints to Thunder Client, automatically creating collections and folders if they do not already exist.
Usage:
Use AI to analyze your current project and automatically generate API requests in Thunder Client, with the appropriate collection and folder created as needed.
Add new requests to a specific collection in Thunder Client.
Dynamically create a request using an AI-generated prompt.
2. tc_debug
Description: Show Thunder Client CLI debug information using tc --debug in the given project directory.
Usage: Troubleshoot and get detailed debug information from Thunder Client
Configuration for Different Environments
For Cline
Open Cline and navigate to the MCP Server section
Click on Installed
Click on Configure the MCP Server
Add the following configuration inside the
mcpServersJSON:
{
"mcpServers": {
"thunderclient": {
"name": "Thunder Client MCP Server",
"type": "stdio",
"command": "npx",
"args": ["-y", "thunderclient-mcp"]
}
}
}Important: Replace thunderclient-mcp with /path/to/thunder-mcp/dist/index.js with your actual index.js location in local Dev mode.
Once configured, you can use all tc_* command tools in Cline's MCP interface.
For Continue.dev
Add a new MCP server to your configuration
Switch to Agent mode instead of Chat mode
Configure using the following YAML structure:
name: Thunder Client MCP Server
version: 0.0.1
schema: v1
mcpServers:
- name: Thunder Client MCP Server
command: npx
args:
- thunderclient-mcpImportant: Replace thunderclient-mcp with /path/to/thunder-mcp/dist/index.js with your actual index.js location in local Dev mode.
For GitHub Copilot
Switch to Agent mode from Chat mode
Click on the Tools icon in the interface
Scroll down and click + Add more tools
Select + Add MCP Server

Choose Stdio as the connection type
Enter the command to run as
npx thunderclient-mcpEnter the mcp name
thunderclient-mcp-server-....Choose where to install MCP, select
GlobalorUserSave the configuration
Important: Replace npx thunderclient-mcp with node /path/to/thunder-mcp/dist/index.js with your actual index.js location in local Dev mode.
Example Prompts
This document contains simple example prompts for the tc_create tool to extract APIs from code files and save them to Thunder Client.
Extract APIs from Code Files
1. Extract APIs from Current Project
"Get the endpoints from the current project and save them with collection name 'My API' using Thunder Client MCP."2. Extract APIs from Files and Folders
"Get the endpoints from app/main.py and save them with collection name 'E-commerce API' and folder name 'Products' using Thunder Client MCP.""Get the endpoints from the src/routes/ folder and save them with collection name 'Node API' using Thunder Client MCP."3. Create Simple HTTP Requests
"Create a POST request to https://api.example.com/users with a JSON body and an Authorization header using Thunder Client MCP."Running Locally
npm i
npm run buildAfter building, a dist folder will be created. Copy the index.js path from the dist folder - this path will be used in your MCP server configuration.
Troubleshooting
If the Agent Is Not Executing Commands Properly
Use Attach Context: Utilize the Attach Context option in your AI environment
Attach Required Files: Include relevant files and specifically attach the
tc_createtool contextProvide Clear Prompts: Give detailed, specific prompts to assist with command execution
Common Issues
Path Issues: Ensure all file paths are absolute and correctly formatted for your operating system
Node.js Version: Verify you're using a compatible Node.js version
Permissions: Check that the MCP server has appropriate file system permissions
Project Directory: Ensure the
projectDirparameter points to a valid Thunder Client workspace
Contributing
Feel free to contribute to this project by submitting issues or pull requests to improve functionality and compatibility with different AI development environments.
Audit
Maintenance
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.
Latest Blog Posts
MCP directory API
We provide all the information about MCP servers via our MCP API.
curl -X GET 'https://glama.ai/api/mcp/v1/servers/thunderclient/thunderclient-mcp'
If you have feedback or need assistance with the MCP directory API, please join our Discord server