Track MCP LogoTrack MCP
Track MCP LogoTrack MCP

The world's largest repository of Model Context Protocol servers. Discover, explore, and submit MCP tools.

Product

  • Categories
  • Top MCP
  • New & Updated
  • Submit MCP

Company

  • About

Legal

  • Privacy Policy
  • Terms of Service
  • Cookie Policy

© 2026 TrackMCP. All rights reserved.

Built with ❤️ by Krishna Goyal

    Dify Mcp Client

    MCP Client as an Agent Strategy Plugin. Support GUI operation via UI-TARS-SDK. Python-based implementation.

    158 stars
    Python
    Updated Oct 29, 2025
    dify
    dify-plugins
    mcp
    mcp-clients
    ui-tars
    ui-tars-sdk

    Table of Contents

    • How it works
    • ✅ What I did
    • in mcpReAct.py, I added
    • 🔄 Update history
    • 🤖 UI-TARS Integration
    • Key Features
    • Known Limitations
    • Life-time Parameter
    • 🐳 Docker Deployment with Pre-built Node.js
    • Building the Docker Image
    • UI-TARS Configuration
    • ⚠️ Caution and Limitation
    • 🛜Install the plugin from GitHub
    • ⬇️Install the plugin from .difypkg file
    • How to handle errors when installing plugins?
    • Where does this plugin show up?
    • Config
    • Chatflow Example
    • I provide this Dify ChatFlow .yml for testing this plugin.
    • After download DSL(yml) file, import it in Dify and you can test MCP using "Everything MCP server"
    • option1️⃣: Edit MCP server's code
    • option2️⃣: via mcp-proxy
    • Check Node.js has installed and npx(.cmd) Path
    • Wake up stdio MCP server by this command
    • Official plugin dev guide
    • Dify plugin SDK daemon
    • Reference
    • Change directory
    • Install python module
    • Duplicate env.example and rename one to .env
    • Activate Dify plugin
    • Package into .difypkg
    • Useful GitHub repositories for developers
    • Dify Plugin SDKs
    • MCP Python SDK

    Table of Contents

    • How it works
    • ✅ What I did
    • in mcpReAct.py, I added
    • 🔄 Update history
    • 🤖 UI-TARS Integration
    • Key Features
    • Known Limitations
    • Life-time Parameter
    • 🐳 Docker Deployment with Pre-built Node.js
    • Building the Docker Image
    • UI-TARS Configuration
    • ⚠️ Caution and Limitation
    • 🛜Install the plugin from GitHub
    • ⬇️Install the plugin from .difypkg file
    • How to handle errors when installing plugins?
    • Where does this plugin show up?
    • Config
    • Chatflow Example
    • I provide this Dify ChatFlow .yml for testing this plugin.
    • After download DSL(yml) file, import it in Dify and you can test MCP using "Everything MCP server"
    • option1️⃣: Edit MCP server's code
    • option2️⃣: via mcp-proxy
    • Check Node.js has installed and npx(.cmd) Path
    • Wake up stdio MCP server by this command
    • Official plugin dev guide
    • Dify plugin SDK daemon
    • Reference
    • Change directory
    • Install python module
    • Duplicate env.example and rename one to .env
    • Activate Dify plugin
    • Package into .difypkg
    • Useful GitHub repositories for developers
    • Dify Plugin SDKs
    • MCP Python SDK

    Documentation

    dify-mcp-client

    MCP Client as Agent Strategy Plugin with Computer Using Agent (UI-TARS-SDK) support.

    [!IMPORTANT]

    Dify is not MCP Server but MCP Host.

    showcase1

    How it works

    Each MCP client (ReAct Agent) node can connect MCP servers.

    1. Tool, Resource, Prompt lists are converted into Dify Tools.

    2. Your selected LLM can see their name, description, argument type

    3. The LLM calls Tools based on the ReAct loop (Reason → Act → Observe).

    [!NOTE]

    Most of the code in this repository contains the following files.

    #### Dify Official Plugins / Agent Strategies

    https://github.com/langgenius/dify-official-plugins/tree/main/agent-strategies/cot_agent

    ✅ What I did

    • Copied ReAct.py and renamed file as mcpReAct.py
    • Added config_json GUI input field by editing mcpReAct.yaml and class mcpReActParams()

    in mcpReAct.py, I added

    • New 12 functions for MCP
    • __init__() for initializing AsyncExitStack and event loop
    • Some codes in _handle_invoke_action() for MCP
    • MCP setup and cleanup in _invoke()

    [!IMPORTANT]

    ReAct while loop is as they are

    🔄 Update history

    • Add SSE MCP client (v0.0.2)
    • Support multi SSE servers (v0.0.3)
    • Update python module and simplify its dependency (v0.0.4)
    • mcp(v1.1.2→v1.6.0+)
    • dify_plugin(0.0.1b72→v0.1.0)
    • Add UI-TARS SDK integration for GUI automation capabilities (v0.0.5)
    • Support Streamable HTTP MCP client
    • Feat SSE param: /sse?key=value (v0.0.6)

    🤖 UI-TARS Integration

    This plugin includes UI-TARS SDK integration for GUI automation capabilities.

    [!WARNING]

    UI-TARS-SDK integration is supported only Dify Plugin's local debug deployment.

    https://github.com/3dify-project/dify-mcp-client#-how-to-develop-and-deploy-plugin

    Normal difypkg install doesn't work. Because UI-TARS require OS native API, yet Dify plugin env is Linux docker container.

    I'm thinking alternative solusion via Streamable HTTP MCP.

    Key Features

    • On-demand GUI automation: UI-TARS is called only when needed, reducing token consumption
    • Life-time control: Set maximum loop count per task to prevent runaway automation

    Known Limitations

    • Single Monitor Support: UI-TARS currently recognizes the primary monitor only. Multi-monitor setups are not supported.
    • Mac Retina Display Issue: On macOS with Retina displays, UI-TARS requires the display resolution to be set to "Default" instead of the highest quality setting. Otherwise wrong (w,h) point is clicked. https://github.com/bytedance/UI-TARS-desktop/issues/591

    Life-time Parameter

    The life_time parameter controls the maximum number of GUI actions UI-TARS can perform:

    • Default: 10 iterations
    • User-configurable maximum via ui_tars_max_life_time_count
    • Your selected LLM can dynamically adjust within the user-defined limit based on task complexity

    [!NOTE]

    Currently hardcoded to use UI-TARS-1.5-7B model for optimal cost-performance balance.

    🐳 Docker Deployment with Pre-built Node.js

    Building the Docker Image

    This pulldown guide is for TypeScript stdio MCP server user

    bash
    docker build -t dify-mcp-client:latest .

    Or use our pre-built image:

    yaml
    # In your docker-compose.yml
    services:
      plugin-daemon:
        image: memedayo/dify-plugin-daemon:latest  # with Pre-built Node.js
        # ... rest of configuration

    Without Node.js in container, you lose TypeScript stdio MCP support.

    UI-TARS Configuration

    For detailed UI-TARS setup, refer to the UI-TARS Desktop deployment guide.

    The plugin automatically configures UI-TARS as a tool within the ReAct loop. You need to provide:

    • Hugging Face Inference Endpoint URL
    • API Key like (hf_xxxxx)
    • (Optional) Adjust ui_tars_max_life_time_count in agent parameters

    ⚠️ Caution and Limitation

    [!CAUTION]

    This plugin does not implement a human-in-the-loop mechanism by default, so connect reliable mcp server only.

    To avoid it, decrease max itereations(default:3) to 1, and use this Agent node repeatedly in Chatflow.

    However, agent memory is reset by the end of Workflow.

    Use Conversaton Variable to save history and pass it to QUERY.

    Don't forget to add a phrase such as

    *"ask for user's permission when calling tools"* in INSTRUCTION.

    How to use this plugin

    🛜Install the plugin from GitHub

    • Enter the following GitHub repository name
    code
    https://github.com/3dify-project/dify-mcp-client/
    • Dify > PLUGINS > + Install plugin > INSTALL FROM > GitHub

    difyUI1

    ⬇️Install the plugin from .difypkg file

    • Go to Releases https://github.com/3dify-project/dify-mcp-client/releases
    • Select suitable version of .difypkg
    • Dify > PLUGINS > + Install plugin > INSTALL FROM > Local Package File

    difyUI2

    How to handle errors when installing plugins?

    Issue: If you encounter the error message: plugin verification has been enabled, and the plugin you want to install has a bad signature, how to handle the issue?

    Solution: Open /docker/.env and change from true to false:

    code
    FORCE_VERIFYING_SIGNATURE=false

    Run the following commands to restart the Dify service:

    bash
    cd docker
    docker compose down
    docker compose up -d

    Once this field is added, the Dify platform will allow the installation of all plugins that are not listed (and thus not verified) in the Dify Marketplace.

    Where does this plugin show up?

    • It takes few minutes to install
    • Once installed, you can use it any workflows as Agent node
    • Select "mcpReAct" strategy (otherwise no MCP)

    asAgentStrategiesNode

    Config

    MCP Agent Plugin node require config_json like this to command or URL to connect MCP servers

    code
    {
        "mcpServers":{
            "name_of_server1":{
                "url": "http://host.docker.internal:8080/sse"
            },
            "name_of_server2":{
                "url": "http://host.docker.internal:8008/mcp"
            }
        }
    }

    [!WARNING]

    - Each server's port number should be different, like 8080, 8008, ...

    - If you want to use stdio mcp server, there are 3 ways.

    1. Convert it to Streamable HTTP mcp server using mcp-proxy https://github.com/sparfenyuk/mcp-proxy?tab=readme-ov-file#1-stdio-to-ssestreamablehttp

    2. Deploy with source code (NOT by .difypkg or GitHub reposity name install) https://github.com/3dify-project/dify-mcp-client/edit/main/README.md#-how-to-develop-and-deploy-plugin

    3. Pre-install Node.js inside dify-plugin docker (Only TypeScript stdio server)

    Chatflow Example

    showcase2

    [!WARNING]

    - The Tools field should not be left blank. so select Dify tools like "current time".

    I provide this Dify ChatFlow .yml for testing this plugin.

    https://github.com/3dify-project/dify-mcp-client/tree/main/test/chatflow

    After download DSL(yml) file, import it in Dify and you can test MCP using "Everything MCP server"

    https://github.com/modelcontextprotocol/servers/tree/main/src/everything

    How to convert stdio MCP server into Stremable HTTP (or SSE)

    option1️⃣: Edit MCP server's code

    If fastMCP server, change like this

    diff
    if __name__ == "__main__":
    -    mcp.run(transport="stdio")
    +    mcp.run(transport="streamable-http")

    option2️⃣: via mcp-proxy

    [!WARNING]

    Streamable HTTP is recommended instead of deprecated SSE

    Following old SSE setup doesn't work. Read https://github.com/sparfenyuk/mcp-proxy instead.

    SSE setup (NOT Streamable HTTP)

    code
    \mcp-proxy>uv venv -p 3.12
    .venv\Scripts\activate
    uv tool install mcp-proxy

    Check Node.js has installed and npx(.cmd) Path

    (Mac/Linux)

    code
    which npx

    (Windows)

    code
    where npx

    result

    code
    C:\Program Files\nodejs\npx
    C:\Program Files\nodejs\npx.cmd
    C:\Users\USER_NAME\AppData\Roaming\npm\npx
    C:\Users\USER_NAME\AppData\Roaming\npm\npx.cmd

    If claude_desktop_config.json is following schema,

    code
    {
      "mcpServers": {
        "SERVER_NAME": {
           "command": CMD_NAME_OR_PATH 
           "args": {VALUE1, VALUE2}
        }
      }
    }

    Wake up stdio MCP server by this command

    code
    mcp-proxy --sse-port=8080 --pass-environment -- CMD_NAME_OR_PATH --arg1 VALUE1 --arg2 VALUE2 ...

    If your OS is Windows, use npx.cmd instead of npx. Following is example command to convert stdio "everything MCP server" to SSE via mcp-proxy.

    code
    mcp-proxy --sse-port=8080 --pass-environment -- C:\Program Files\nodejs\npx.cmd --arg1 -y --arg2 @modelcontextprotocol/server-everything

    Similarly, on another command line (If you use sample Chatflow for v0.0.3)

    code
    pip install mcp-simple-arxiv
    mcp-proxy --sse-port=8008 --pass-environment -- C:\Users\USER_NAME\AppData\Local\Programs\Python\Python310\python.exe -m -mcp_simple_arxiv

    Following is a mcp-proxy setup log.

    code
    (mcp_proxy) C:\User\USER_NAME\mcp-proxy>mcp-proxy --sse-port=8080 --pass-environment -- C:\Program Files\nodejs\npx.cmd --arg1 -y --arg2 @modelcontextprotocol/server-everything
    DEBUG:root:Starting stdio client and SSE server
    DEBUG:asyncio:Using proactor: IocpProactor
    DEBUG:mcp.server.lowlevel.server:Initializing server 'example-servers/everything'
    DEBUG:mcp.server.sse:SseServerTransport initialized with endpoint: /messages/
    INFO:     Started server process [53104]
    INFO:     Waiting for application startup.
    INFO:     Application startup complete.
    INFO:     Uvicorn running on http://127.0.0.1:8080 (Press CTRL+C to quit)

    🔨 How to develop and deploy plugin

    Official plugin dev guide

    https://github.com/3dify-project/dify-mcp-client/blob/main/GUIDE.md

    Dify plugin SDK daemon

    If your OS is Windows and CPU is Intel or AMD, you need to download the latest dify-plugin-windows-amd64.exe

    Choose your OS-compatible verson here:

    https://github.com/langgenius/dify-plugin-daemon/releases

    1. Rename it as dify.exe for convinence

    2. mkdir "C\User\user\\.local\bin" (Windows) and register it as system path.

    3. Copy dify.exe to under dify-mcp-client/

    [!TIP]

    Following guide is helpful.

    https://docs.dify.ai/plugins/quick-start/develop-plugins/initialize-development-tools

    Reference

    https://docs.dify.ai/plugins/quick-start/develop-plugins/initialize-development-tools

    [!NOTE]

    You can skip this stage if you pull or download codes of this repo

    ```

    dify plugin init

    ```

    Initial settings are as follow

    InitialDifyPluginSetting

    Change directory

    code
    cd dify-mcp-client

    Install python module

    Python3.12+ is compatible. The venv and uv are not necessary, but recommended.

    code
    uv venv -p 3.12
    .venv\Scripts\activate

    Install python modules for plugin development

    code
    uv pip install -r requirements.txt

    For only UI-TARS-SDK user (after installing Node.js v22 LTS)

    code
    npm install

    Duplicate env.example and rename one to .env

    I changed REMOTE_INSTALL_HOST from debug.dify.ai to localhost

    (Docker Compose environment)

    click 🪲bug icon button to see these information

    Activate Dify plugin

    code
    python -m main

    (ctrl+C to stop)

    [!TIP]

    REMOTE_INSTALL_KEY of .env often changes.

    If you encounter error messages like handshake failed, invalid key, renew it.

    Package into .difypkg

    ./dify-mcp-client is my default root name

    code
    dify plugin package ./ROOT_OF_YOUR_PROJECT

    Useful GitHub repositories for developers

    Dify Plugin SDKs

    https://github.com/langgenius/dify-plugin-sdks

    MCP Python SDK

    https://github.com/modelcontextprotocol/python-sdk

    [!TIP]

    MCP client example

    https://github.com/modelcontextprotocol/python-sdk/blob/main/examples/clients/simple-chatbot/mcp_simple_chatbot/main.py

    [!NOTE]

    Dify plugin has requirements.txt which automatically installs python modules.

    I include latest mcp in it, so you don't need to download the MCP SDK separately.

    Similar MCP

    Based on tags & features

    • AW

      Aws Mcp Server

      Python·
      165
    • FA

      Fal Mcp Server

      Python·
      8
    • DA

      Davinci Resolve Mcp

      Python·
      327
    • FH

      Fhir Mcp Server

      Python·
      55

    Trending MCP

    Most active this week

    • PL

      Playwright Mcp

      TypeScript·
      22.1k
    • SE

      Serena

      Python·
      14.5k
    • MC

      Mcp Playwright

      TypeScript·
      4.9k
    • MC

      Mcp Server Cloudflare

      TypeScript·
      3.0k
    View All MCP Servers

    Similar MCP

    Based on tags & features

    • AW

      Aws Mcp Server

      Python·
      165
    • FA

      Fal Mcp Server

      Python·
      8
    • DA

      Davinci Resolve Mcp

      Python·
      327
    • FH

      Fhir Mcp Server

      Python·
      55

    Trending MCP

    Most active this week

    • PL

      Playwright Mcp

      TypeScript·
      22.1k
    • SE

      Serena

      Python·
      14.5k
    • MC

      Mcp Playwright

      TypeScript·
      4.9k
    • MC

      Mcp Server Cloudflare

      TypeScript·
      3.0k