chat-mcp
by aiqlcom
A Desktop Chat App that leverages MCP(Model Context Protocol) to interface with other LLMs.
What is chat-mcp
MCP Chat Desktop App
A Cross-Platform Interface for LLMs
This desktop application utilizes the MCP (Model Context Protocol) to seamlessly connect and interact with various Large Language Models (LLMs). Built on Electron, the app ensures full cross-platform compatibility, enabling smooth operation across different operating systems.
The primary objective of this project is to deliver a clean, minimalistic codebase that simplifies understanding the core principles of MCP. Additionally, it provides a quick and efficient way to test multiple servers and LLMs, making it an ideal tool for developers and researchers alike.
News
This project originated as a modified version of Chat-UI, initially adopting a minimalist code approach to implement core MCP functionality for educational purposes.
Through iterative updates to MCP, I received community feedback advocating for a completely new architecture - one that eliminates third-party CDN dependencies and establishes clearer modular structure to better support derivative development and debugging workflows.
This led to the creation of Tool-Unified UI, a restructured desktop application optimized for AI-powered development. Building upon the original foundation, TUUI serves as a practical AI-assisted development paradigm, if you're interested, you can also leverage AI to develop new features for TUUI. The platform employs a strict linting and formatting system to ensure AI-generated code adheres to coding standards..
Features
-
Cross-Platform Compatibility: Supports Linux, macOS, and Windows.
-
Flexible Apache-2.0 License: Allows easy modification and building of your own desktop applications.
-
Dynamic LLM Configuration: Compatible with all OpenAI SDK-supported LLMs, enabling quick testing of multiple backends through manual or preset configurations.
-
Multi-Client Management: Configure and manage multiple clients to connect to multiple servers using MCP config.
-
UI Adaptability: The UI can be directly extracted for web use, ensuring consistent ecosystem and interaction logic across web and desktop versions.
Architecture
Adopted a straightforward architecture consistent with the MCP documentation to facilitate a clear understanding of MCP principles.
erDiagram
Renderer ||--o{ APP : IPC
APP ||--|{ Client : contains
Client }|..|{ Server : Stdio
Only three key files need to be understood: main.ts
, client.ts
, and preload.ts
, to grasp the essence of the project.
How to use
After cloning or downloading this repository:
-
Please modify the
config.json
file located in src/main.
Ensure that thecommand
andpath
specified in theargs
are valid. -
Please ensure that Node.js is installed on your system.
You can verify this by runningnode -v
andnpm -v
in your terminal to check their respective versions. -
npm install
-
npm start
Configuration
Create a .json
file and paste the following content into it. This file can then be provided as the interface configuration for the Chat UI.
-
gtp-api.json
{ "chatbotStore": { "apiKey": "", "url": "https://api.aiql.com", "path": "/v1/chat/completions", "model": "gpt-4o-mini", "max_tokens_value": "", "mcp": true }, "defaultChoiceStore": { "model": [ "gpt-4o-mini", "gpt-4o", "gpt-4", "gpt-4-turbo" ] } }
You can replace the 'url' if you have direct access to the OpenAI API.
Alternatively, you can also use another API endpoint that supports function calls:
-
qwen-api.json
{ "chatbotStore": { "apiKey": "", "url": "https://dashscope.aliyuncs.com/compatible-mode", "path": "/v1/chat/completions", "model": "qwen-turbo", "max_tokens_value": "", "mcp": true }, "defaultChoiceStore": { "model": [ "qwen-turbo", "qwen-plus", "qwen-max" ] } }
-
deepinfra.json
{ "chatbotStore": { "apiKey": "", "url": "https://api.deepinfra.com", "path": "/v1/openai/chat/completions", "model": "meta-llama/Meta-Llama-3.1-70B-Instruct", "max_tokens_value": "32000", "mcp": true }, "defaultChoiceStore": { "model": [ "meta-llama/Meta-Llama-3.1-70B-Instruct", "meta-llama/Meta-Llama-3.1-405B-Instruct", "meta-llama/Meta-Llama-3.1-8B-Instruct" ] } }
Build Application
You can build your own desktop application by:
npm run build-app
This CLI helps you build and package your application for your current OS, with artifacts stored in the /artifacts directory.
For Debian/Ubuntu users experiencing RPM build issues, try one of the following solutions:
-
Edit
package.json
to skip the RPM build step. Or -
Install
rpm
usingsudo apt-get install rpm
(You may need to runsudo apt update
to ensure your package list is up-to-date)
Troubleshooting
Error: spawn npx ENOENT - ISSUE 40
Modify the config.json
in src/main
On windows, npx may not work, please refer my workaround: ISSUE 101
- Or you can use
node
in config.json:{ "mcpServers": { "filesystem": { "command": "node", "args": [ "node_modules/@modelcontextprotocol/server-filesystem/dist/index.js", "D:/Github/mcp-test" ] } } }
Please ensure that the provided path is valid, especially if you are using a relative path. It is highly recommended to provide an absolute path for better clarity and accuracy.
By default, I will install server-everything
, server-filesystem
, and server-puppeteer
for test purposes. However, you can install additional server libraries or use npx
to utilize other server libraries as needed.
Installation timeout
Generally, after executing npm install
for the entire project, the total size of files in the node_modules
directory typically exceeds 500MB.
If the installation process stalls at less than 300MB and the progress bar remains static, it is likely due to a timeout during the installation of the latter part, specifically Electron.
This issue often arises because the download speed from Electron's default server is excessively slow or even inaccessible in certain regions. To resolve this, you can modify the environment or global variable ELECTRON_MIRROR
to switch to an Electron mirror site that is accessible from your location.
Electron builder timeout
When using electron-builder to package files, it automatically downloads several large release packages from GitHub. If the network connection is unstable, this process may be interrupted or timeout.
On Windows, you may need to clear the cache located under the electron
and electron-builder
directories within C:\Users\YOURUSERNAME\AppData\Local
before attempting to retry.
Due to potential terminal permission issues, it is recommended to use the default shell terminal instead of VSCode's built-in terminal.
Demo
Multimodal Support
Reasoning and Latex Support
MCP Tools Visualization
MCP Toolcall Process Overview
MCP Prompts Template
Dynamic LLM Config
DevTool Troubleshooting
Leave a Comment
Comments section will be available soon. Stay tuned!
Frequently Asked Questions
What is MCP?
MCP (Model Context Protocol) is an open protocol that standardizes how applications provide context to LLMs. Think of MCP like a USB-C port for AI applications, providing a standardized way to connect AI models to different data sources and tools.
What are MCP Servers?
MCP Servers are lightweight programs that expose specific capabilities through the standardized Model Context Protocol. They act as bridges between LLMs like Claude and various data sources or services, allowing secure access to files, databases, APIs, and other resources.
How do MCP Servers work?
MCP Servers follow a client-server architecture where a host application (like Claude Desktop) connects to multiple servers. Each server provides specific functionality through standardized endpoints and protocols, enabling Claude to access data and perform actions through the standardized protocol.
Are MCP Servers secure?
Yes, MCP Servers are designed with security in mind. They run locally with explicit configuration and permissions, require user approval for actions, and include built-in security features to prevent unauthorized access and ensure data privacy.
Related MCP Servers
Ableton Live MCP Server
MCP Server implementation for Ableton Live OSC control
Airbnb MCP Server
AI Agent Marketplace Index Search MCP Server
MCP Server for AI Agent Marketplace Index from DeepNLP
Algorand MCP Implementation
Algorand Model Context Protocol (Server & Client)
mcp-server-apache-airflow
pypi.org/project/mcp-server-apache-airflow/
airtable-mcp-server
๐๏ธ๐ค Airtable Model Context Protocol Server, for allowing AI systems to interact with your Airtable bases
Airtable MCP Server
Search, create and update Airtable bases, tables, fields, and records using Claude Desktop and MCP (Model Context Protocol) clients
Alphavantage MCP Server
A MCP server for the stock market data API, Alphavantage API.
Amadeus MCP Server
Amadeus MCP(Model Context Protocol) Server
Anki MCP Server
An MCP server for Anki
Submit Your MCP Server
Share your MCP server with the community
Submit Now