A powerful multi-model task management system that can connect to various task management systems and help users choose and use the task management solution that best suits their needs.
- Task Management System: Create, list, update and delete tasks, support status tracking and dependency management
 - Task Decomposition and Analysis: Break down complex tasks into subtasks, support complexity assessment and PRD automatic parsing
 - Python Native Implementation: Built entirely in Python, seamlessly integrated with the Python ecosystem
 - Multi-Model Support: Compatible with multiple models like OpenAI, Claude, etc., not limited to specific API providers
 - Editor Integration: Integrate with editors like Cursor through MCP protocol for smooth development experience
 - Intelligent Workflow: Implement intelligent task management process based on LangGraph's ReAct pattern
 - Multi-System Integration: Can connect to various professional task management systems like mcp-shrimp-task-manager and claude-task-master
 - Cross-Scenario Application: Suitable for general development projects, vertical domain projects, and other task systems
 
# Install using uv (recommended)
uv pip install -e .
# Or install using pip
pip install -e .
# Install Node.js dependencies (for MCP server)
npm installCreate a .env file in the project root directory for configuration:
# Required: API keys (configure at least one)
OPENAI_API_KEY=your_openai_api_key_here
# Or
ANTHROPIC_API_KEY=your_anthropic_api_key_here
# Optional: Model configuration
LLM_MODEL=gpt-4o  # Default model
TEMPERATURE=0.2   # Creativity parameter
MAX_TOKENS=4000   # Maximum tokensThe simplest way to use is through the built-in command line interface:
# Start interactive command line interface
python -m omni_task_agent.cliCommon command examples:
Create task: Optimize website performance Reduce page load time by 50%List all tasksUpdate task 1 status to completedDecompose task 2Analyze project complexity
LangGraph Studio is a development environment specifically designed for LLM applications, used for visualizing, interacting with, and debugging complex agent applications.
First, ensure langgraph-cli is installed (requires version 0.1.55 or higher):
# Install langgraph-cli (requires Python 3.11+)
pip install -U "langgraph-cli[inmem]"Then start the development server in the project root directory (containing langgraph.json):
# Start local development server
langgraph devThis will automatically open a browser and connect to the cloud-hosted Studio interface, where you can:
- Visualize your agent graph structure
 - Test and run agents through the UI interface
 - Modify agent state and debug
 - Add breakpoints for step-by-step agent execution
 - Implement human-machine collaboration processes
 
When modifying code during development, Studio will update automatically without needing to restart the service, facilitating rapid iteration and debugging.
For advanced features like breakpoint debugging:
# Enable debug port
langgraph dev --debug-port 5678- Run the MCP server:
 
# Start STDIO-based MCP service
python run_mcp.py- Configure MCP settings in your editor (like Cursor, VSCode, etc.):
 
{
  "mcpServers": {
    "task-master-agent": {
      "type": "stdio",
      "command": "/path/to/python",
      "args": ["/path/to/run_mcp.py"],
      "env": {
        "OPENAI_API_KEY": "your-key-here"
      }
    }
  }
}omnitaskagent/
├── omni_task_agent/     # Main code package
│   ├── agent.py           # LangGraph agent definition
│   ├── config.py          # Configuration management
│   └── cli.py             # Command line interface
├── examples/              # Example code
│   └── basic_usage.py     # Basic usage example
├── tests/                 # Test cases
├── run_mcp.py             # MCP service entry
├── adapters.py            # MCP adapters
├── langgraph.json         # LangGraph API configuration
├── package.json           # Node.js dependencies
└── pyproject.toml         # Python dependencies
- mcp-shrimp-task-manager - Task management system implemented in JavaScript
 - AutoMCP - Tool for creating MCP services
 - LangGraph - Agent building framework
 - langchain-mcp-adapters - LangChain MCP adapters
 
MIT