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A lightweight Python package for managing multi-agent orchestration. Easily define agents with custom instructions, tools, and models, and orchestrate their interactions seamlessly. Perfect for building modular, collaborative AI systems.

Project description

Agents Manager

A lightweight Python package for managing multi-agent orchestration. Easily define agents with custom instructions, tools, and models, and orchestrate their interactions seamlessly. Perfect for building modular, collaborative AI systems.

Features

  • Define agents with specific roles and instructions
  • Assign models to agents (e.g., OpenAI models)
  • Equip agents with tools for performing tasks
  • Seamlessly orchestrate interactions between multiple agents

Supported Models

  • OpenAI
  • Grok
  • DeepSeek
  • Anthropic
  • Llama
from agents_manager.models import OpenAi, Grok, DeepSeek, Anthropic, Llama

Installation

Install the package via pip:

pip install agents-manager

Quick Start

from agents_manager import Agent, AgentManager
from agents_manager.models import OpenAi, Grok, DeepSeek, Anthropic, Llama

from dotenv import load_dotenv

load_dotenv()

# Define the OpenAi model
model = OpenAi(name="gpt-4o-mini")


# Define the Grok model
# model = Grok(name="grok-2-latest")


# Define the DeepSeek model
# model = DeepSeek(name="deepseek-chat")


# Define the Anthropic model
# model = Anthropic(
#         name="claude-3-5-sonnet-20241022",
#         max_tokens= 1024,
#         stream=True,
#     )

# Define the Llama model
# model = Llama(name="llama3.1-70b")

def multiply(a: int, b: int) -> int:
    """
    Multiply two numbers.
    """
    return a * b


def transfer_to_agent_3_for_math_calculation() -> Agent:
    """
    Transfer to agent 3 for math calculation.
    """
    return agent3


def transfer_to_agent_2_for_math_calculation() -> Agent:
    """
    Transfer to agent 2 for math calculation.
    """
    return agent2

# Define agents
agent3 = Agent(
    name="agent3",
    instruction="You are a maths teacher, explain properly how you calculated the answer.",
    model=model,
    tools=[multiply]
)

agent2 = Agent(
    name="agent2",
    instruction="You are a maths calculator bro",
    model=model,
    tools=[transfer_to_agent_3_for_math_calculation]
)

agent1 = Agent(
    name="agent1",
    instruction="You are a helpful assistant",
    model=model,
    tools=[transfer_to_agent_2_for_math_calculation]
)

# Initialize Agent Manager and run agent
agent_manager = AgentManager()
agent_manager.add_agent(agent1)

response = agent_manager.run_agent("agent1", "What is 2 multiplied by 3?")

# response = agent_manager.run_agent("agent1", {"role": "user", "content": "What is 2 multiplied by 3?"})
# 
# response = agent_manager.run_agent("agent1", [
#     {"role": "user", "content": "What is 2 multiplied by 3?"},
# ])


print(response)

How It Works

  1. Define Agents: Each agent has a name, a specific role (instruction), and a model.
  2. Assign Tools: Agents can be assigned tools (functions) to perform tasks.
  3. Create an Agent Manager: The AgentManager manages the orchestration of agents.
  4. Run an Agent: Start an agent to process a request and interact with other agents as needed.

Use Cases

  • AI-powered automation systems
  • Multi-agent chatbots
  • Complex workflow orchestration
  • Research on AI agent collaboration

Contributing

Contributions are welcome! Feel free to submit issues and pull requests.

License

MIT License

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