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Project description

LangGraph Wave Orchestrator

A parallel task execution framework built on LangGraph that distributes AI-powered tasks across multiple worker nodes in organized execution waves. Efficiently coordinates complex, multi-step AI workflows while maximizing parallelization and maintaining proper task dependencies.

Features

  • Parallel Wave Execution: Organizes tasks into execution waves for optimal parallel processing
  • Dynamic State Management: Creates flexible worker state handling using Pydantic models
  • Worker Node Management: Manages worker node lifecycle and task distribution
  • Intelligent Task Planning: LLM-powered task decomposition and worker assignment

Installation

Install from PyPI

pip install Lanngraph-Wave-Orchestrator

Install from TestPyPI (for testing)

pip install -i https://test.pypi.org/simple/ Lanngraph-Wave-Orchestrator

Install from Source

git clone https://github.com/benrben/Lanngraph-Wave-Orchestrator.git
cd Lanngraph-Wave-Orchestrator
pip install -e .

Dependencies

The package automatically installs these dependencies:

  • pydantic>=2.0.0 - For data validation and settings management
  • langchain-core>=0.1.0 - Core LangChain functionality
  • langgraph>=0.1.0 - Graph-based LLM application framework
  • python-dotenv>=1.0.0 - Environment variable management

Optional Dependencies

For OpenAI integration (recommended):

pip install langchain-openai

Usage

from langgraph_wave_orchestrator import WaveOrchestrator, WorkerNode
from langchain_openai import ChatOpenAI

# Create LLM and orchestrator
llm = ChatOpenAI(model="gpt-4")
wave_orchestrator = WaveOrchestrator(llm)

# Add worker nodes
wave_orchestrator.add_node(search_node)
wave_orchestrator.add_node(financial_node)

# Compile and use
graph = wave_orchestrator.compile()
result = graph.invoke({"messages": [{"content": "Your query here"}]})

Creating Worker Nodes

1. Define State Model

from pydantic import BaseModel
from typing import List, Annotated
from langchain_core.messages import BaseMessage, add_messages

class SearchModel(BaseModel):
    messages: Annotated[List[BaseMessage], add_messages] = []

2. Create Worker Function

from langchain_core.messages import AIMessage

def search_worker(state):
    # Access the task from state
    task = state.search_state.messages[-1].content
    
    # Process the task (your custom logic here)
    result = f"Search results for: {task}"
    
    # Return updated state
    return {"search_state": {"messages": [AIMessage(content=result)]}}

3. Build and Add Node

search_node = WorkerNode(
    function=search_worker,
    model=SearchModel, 
    state_placeholder="search_state",
    description="search the web for information and current data",
    name="search"
)

wave_orchestrator.add_node(search_node)

Development

Setup

uv sync
pytest tests/

Contributing

  1. Fork the repository
  2. Create a feature branch
  3. Make your changes
  4. Add tests
  5. Submit a pull request

Follow PEP 8 style guidelines and include type hints.

License

MIT License - see LICENSE file for details.

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