If you are looking for the MCP server: find it here.
If you are looking for the Python Library, go on… ;)
Smooth Operator Agent Tools - Python Library
This is the official Python library implementation for Smooth Operator Agent Tools, a state-of-the-art toolkit for programmers developing Computer Use Agents on Windows systems.
Overview
The Smooth Operator Agent Tools are a powerful toolkit that handles the complex tasks of interacting with the Windows Automation Tree and Playwright browser control, while providing advanced AI functions such as identifying UI elements through screenshots and textual descriptions.
This Python library provides a convenient wrapper around the Smooth Operator Tools Server API, allowing you to easily integrate these capabilities into your Python applications.
All features can be tested and explored through a convenient Windows user interface before implementing them in code. Try them out at Smooth Operator Tools UI.
Installation
pip install smooth-operator-agent-tools
Prerequisites
Google Chrome
The Smooth Operator Agent Tools library requires Google Chrome (or a compatible Chromium-based browser) to be installed on the system for browser automation features to work.
Server Installation
The Smooth Operator client library includes a server component that needs to be installed in your application data directory. The server files are packaged with the library and will be automatically extracted on first use.
First-Time Execution
When you first use the library, it will automatically:
- Create the directory
%APPDATA%SmoothOperatorAgentToolsServer(or the equivalent on your OS) - Extract the server files from the package
- Start the server process
Note that for Chrome automation features to work, you need to ensure Node.js and Playwright are installed as described in the Prerequisites section.
For Application Installers
If you’re building an application installer that includes this library, you should include steps to install Node.js and Playwright during your application’s installation process for better user experience. See the Prerequisites section for the required installation steps.
Usage
from smooth_operator_agent_tools import SmoothOperatorClient
# Initialize the client with your API key, get it for free at https://screengrasp.com/api.html
client = SmoothOperatorClient(api_key="YOUR_API_KEY")
# Start the Server - this takes a moment
client.start_server()
# Take a screenshot
screenshot = client.screenshot.take()
# Get system overview
overview = client.system.get_overview()
# Perform a mouse click
client.mouse.click(500, 300)
# Find and click a UI element by description
client.mouse.click_by_description("Submit button")
# Type text
client.keyboard.type("Hello, world!")
# Control Chrome browser
client.chrome.open_chrome("https://www.example.com")
client.chrome.get_dom()
# You can also use the to_json_string() method on many objects
# to get a JSON string that can easily be used in a prompt to a LLM
# to utilize AI even more for automated decision making
Features
- Screenshot and Analysis: Capture screenshots and analyze UI elements
- Mouse Control: Precise mouse operations using coordinates or AI-powered element detection
- Keyboard Input: Type text and send key combinations
- Chrome Browser Control: Navigate, interact with elements, and execute JavaScript
- Windows Automation: Interact with Windows applications and UI elements
- System Operations: Open applications and manage system state
Documentation
For detailed API documentation, visit:
- Usage Guide: Detailed examples and explanations for common use cases.
- Example Project: Download, follow step by step instructions and have your first automation running in mintes.
- Documentation: Detailed documentation of all the API endpoints of the server that is doing the work internally.
License
This project is licensed under the MIT License - see the LICENSE file for details.
Smooth Operator Agent Tools
Project Details
- fstandhartinger/smooth-operator-client-python
- MIT License
- Last Updated: 4/21/2025
Recomended MCP Servers
Fair-code workflow automation platform with native AI capabilities. Combine visual building with custom code, self-host or cloud, 400+...
Drug Response Omics association MAp (DROMA, 卓玛)
Analyzes your codebase identifying important files based on dependency relationships. Generates diagrams and importance scores per file, helping...
AutoGen最新架构v0.4正式发布第一个稳定版本,v0.4是对AutoGen的一次从头开始的重写,目的是为构建Agent创建一个更健壮、可扩展、更易用的跨语言库,其应用接口采用分层架构设计,存在多套软件接口用以满足不同的场景需求 。
complete mcp server
Okta MCP Server
A Python-based MCP for use in exposing Notion functionality to LLMs (Claude)
The MCP server for interacting with Blockchain, Swaps, Strategic Planning and more.
AI-powered FastMCP server for intelligent stock photo search, download, and attribution management from Unsplash
这是一个基于 [ALAPI](https://www.alapi.cn) 的 MCP (Model Control Protocol) 服务器实现,可以通过MCP协议直接调用ALAPI的接口
This is an mock MCP server for Oracle Netsuite





