Swarm-Plus is a Python framework developed by Vishnu D. for developing AI agents equipped with specialized roles and tools to handle complex user requests efficiently. Users have 100 percent control over their prompts.
Project description
Swarm-Plus
Overview:
Swarm-Plus is a versatile Python framework developed by Vishnu Durairaj, designed to facilitate the creation of intelligent AI agents equipped with a diverse range of tools and functionalities. This open-source framework simplifies the development of sophisticated AI systems capable of handling various tasks through role-based agents and supports advanced multi-agent orchestration.
Features
- Create AI Agents with Tools: Easily build AI agents with a diverse set of tools, from Python execution to file operations and terminal commands.
- Role-Based Agents: Define agents with specific roles and responsibilities to handle different tasks and collaborate effectively.
- Interacting Entities: Simulate scenarios where multiple agents or companies work together to complete user requests.
- Flexible Integration: Supports both Anthropic and OpenAI models, providing flexibility in choosing the best AI model for your needs.
- Memory Management: Efficiently handle conversation history with various memory options:
- ConversationBufferMemory: Retains the entire conversation history. Use this when you need to maintain a complete record of all interactions without any summarization or truncation.
- ConversationBufferWindowMemory: Retains only the last K messages in the conversation. Ideal for scenarios where you want to limit memory usage and only keep the most recent interactions. (
memory = ConversationBufferWindowMemory(last_k=3)
) - ConversationSummaryMemory: Automatically summarizes the conversation once it exceeds a specified number of messages. Use this to manage lengthy conversations by creating concise summaries while retaining overall context. (
memory = ConversationSummaryMemory(number_of_messages=5)
) - ConversationSummaryBufferMemory: Combines summarization with selective message retention. Summarizes the conversation after a certain point and retains only the most recent N messages. Perfect for balancing context preservation with memory constraints by keeping key recent interactions while summarizing earlier ones. (
memory = ConversationSummaryBufferMemory(buffer_size=5)
)
Colab Notebook
You can try out the notebook directly in Google Colab using the following link:
Installation
You can install the Swarm-Plus framework using pip:
pip install Swarm-Plus
Example Use Case
1. Agents With Tools
Here’s an example of how to create a agent with tools using SwarmPlus:
Step 1: Import Required Modules
import os
import nest_asyncio
from SwarmPlus.helper import print_colored
from SwarmPlus.agent import Agent
from SwarmPlus.models import OpenaiChatModel
from SwarmPlus.memory import ConversationBufferMemory
from SwarmPlus.tools.FileOperationsTool import SaveFile, CreateFolder
Step 2. If you are running this script in a notebook uncomment this
# nest_asyncio.apply()
Step 3. Prepare Agent Description and Instructions
# This concise description helps in understanding the agent's responsibilities and guides the system
# in determining what types of tasks should be assigned to this agent.
description = "Responsible for writing story."
# Provide instructions for the agent (System Prompt)
instruction = "You are a creative storyteller who crafts imaginative narratives with vivid details, rich characters, and unexpected plot twists."
Step 4: Load pre-defined tools that the agent will use
# These tools enable the agent to create folders and save files
tools = [CreateFolder, SaveFile]
Step 5: Set your OpenAI API key
openai_api_key = "Your API Key"
# openai_api_key = os.getenv('OPENAI_API_KEY')
Step 6: Initialize the large language model for the agent
model = OpenaiChatModel(model_name="gpt-4o-mini", api_key=openai_api_key, temperature=0)
Step 7: Initialize memory - 4 different techniques are available.
memory = ConversationBufferMemory()
# This option retains the entire conversation history.
# Use this when you need to maintain a complete record of all interactions without any summarization or truncation.
# memory = ConversationBufferWindowMemory(last_k=3)
# This option retains only the last K messages in the conversation.
# Ideal for scenarios where you want to limit memory usage and only keep the most recent interactions.
# memory = ConversationSummaryMemory(number_of_messages=5)
# This option automatically summarizes the conversation once it exceeds a specified number of messages.
# Use this to manage lengthy conversations by creating concise summaries while retaining overall context.
# memory = ConversationSummaryBufferMemory(buffer_size=5)
# This option combines summarization with selective message retention. It summarizes the conversation after a certain point and retains only the most recent N messages.
# Perfect for balancing context preservation with memory constraints by keeping key recent interactions while summarizing earlier ones.
Step 8: Initialize the agent with the model, description, instructions, and tools. Set verbose to True to see the steps by step actions.
agent = Agent(model=model, agent_name="AI Assistant", agent_description=description, agent_instructions=instruction, tools=tools, assistant_agents=[],max_allowed_attempts=5, verbose=True,memory=memory)
Step 9: Start the conversation
print_colored("Starting the application...........", "green")
# Example user input
# user_input = "Create a story about AI agents and save it in a new folder. The story should have two chapters, and each chapter should be saved separately inside the folder"
# ---------------- With UI -------------------------
from SwarmPlus.demo import run_ui_demo
demo = run_ui_demo(agent=agent)
if __name__ == "__main__":
demo.run()
# ---------------- In Terminal -------------------------
user_input = input("User : ")
# Initialize the messages list to store conversation history
messages = []
# Step 8: Process user input and interact with the agent
while user_input != "bye":
# The agent processes the user input and generates a response
output = agent.run(user_input, messages)
# Update the messages list with the agent's response
messages = output.messages
# If verbose=False is set during agent initialization, uncomment the following line to see the agent's responses
# print_colored(f"Assistant : {output}", "purple")
# Prompt the user for the next input
user_input = input("User Input : ")
2. Creating Custom Tools
Here’s an example of how to create a custom tool using pydantic base model:
import os
from typing import List
from pydantic import BaseModel,Field
class AppendToFile(BaseModel):
# Based on this docstring, the model will determine when to use this tool. Ensure it clearly describes the tool's purpose.
"""
Use this tool to append content to an existing file.
"""
# Provides justification for selecting this tool, helping to ensure it is chosen appropriately and not at random. You can ignore this.
reasoning :List[str] = Field(description="Why you are using this tool")
# Thses are the required argument with its data types clearly declared.
file_name: str = Field(..., description="File name to append to.")
content: str = Field(..., description="Content to append.")
# Every tool must include a `run` method. This method will be called dynamically during interactions to perform the tool's primary function.
def run(self):
try:
with open(self.file_name, "a") as file:
file.write(self.content)
return f"Content appended to file: {self.file_name}"
except Exception as e:
return f"An error occurred while appending to the file: {str(e)}"
AppendToFile(reasoning=["Thoughts"],file_name="path to the file",content="content to append").run()
3. Multi-Agents
Here’s an example of how to create multiple agents with tools using SwarmPlus:
import nest_asyncio
from SwarmPlus.agent import Agent
from SwarmPlus.demo import run_ui_demo
from SwarmPlus.models import OpenaiChatModel
from SwarmPlus.memory import ConversationBufferMemory
from SwarmPlus.tools.FileOperationsTool import SaveFile, CreateFolder
nest_asyncio.apply()
# Define OpenAI API key
openai_api_key = "OPENAI_API_KEY"
# Shared tools for file and folder operations
tools = [CreateFolder, SaveFile]
# Memory setup for agents
memory = ConversationBufferMemory()
# Step 1: Define the HR Agent
hr_description = "Responsible for handling HR operations, including manpower and staffing queries."
hr_instruction = """
You are the HR manager. Handle all queries related to manpower, hiring, and employee relations.
Here are some current HR details you can reference:
- Total Employees: 150
- Current Open Positions: 5 (Software Engineer, Data Analyst, HR Specialist, Marketing Coordinator, and Sales Executive)
- Employee Satisfaction Rating: 4.2/5
- Average Tenure: 3 years
- Recent Hires: John Doe (Software Engineer), Sarah Lee (Data Analyst)
- Current Hiring Goals: 3 additional hires for the Sales team, 2 for the Customer Support team
- Upcoming Initiatives: Employee wellness program, leadership training sessions for middle management
Feel free to provide this information in response to queries from the CEO.
"""
hr_model = OpenaiChatModel(model_name="gpt-4o-mini", api_key=openai_api_key, temperature=0)
hr_agent = Agent(
model=hr_model,
agent_name="HR Agent",
agent_description=hr_description,
agent_instructions=hr_instruction,
tools=tools,
assistant_agents=[], # This agent doesn't interact with others in this setup
max_allowed_attempts=50,
verbose=True,
memory=ConversationBufferMemory(), # Separate memory for HR
)
# Step 2: Define the Sales Agent
sales_description = "Handles all queries and tasks related to sales, including revenue targets and client relations."
sales_instruction = """
You are the Sales manager. Handle all queries related to sales performance, targets, and client relations.
Here are some current Sales details you can reference:
- Monthly Sales Target: $500,000
- Current Month-to-Date Sales: $320,000
- Top Clients: Acme Corp, Globex Industries, Initech, Umbrella Corporation
- Recent Deals Closed: $75,000 with Initech, $45,000 with Globex Industries
- Current Opportunities in Pipeline: 8 (2 in final negotiation, 3 in initial discussions, 3 in proposal review)
- Sales Team Size: 10 members (including 3 senior sales executives, 5 mid-level, 2 junior)
- Quarterly Sales Growth: 8%
- Upcoming Initiatives: New CRM implementation, sales training on advanced negotiation techniques
Feel free to provide this information in response to queries from the CEO.
"""
sales_model = OpenaiChatModel(model_name="gpt-4o-mini", api_key=openai_api_key, temperature=0)
sales_agent = Agent(
model=sales_model,
agent_name="Sales Agent",
agent_description=sales_description,
agent_instructions=sales_instruction,
tools=tools,
assistant_agents=[], # This agent doesn't interact with others in this setup
max_allowed_attempts=50,
verbose=True,
memory=ConversationBufferMemory(), # Separate memory for Sales
)
# Step 3: Define the CEO Agent
ceo_description = "CEO responsible for overseeing company operations and interacting with HR and Sales for strategic decisions. Also, help the users with their requests through available sources."
ceo_instruction = "You are the CEO of the company. Communicate with HR for manpower and staffing queries and with Sales for sales strategies and metrics."
ceo_model = OpenaiChatModel(model_name="gpt-4o-mini", api_key=openai_api_key, temperature=0)
ceo_agent = Agent(
model=ceo_model,
agent_name="CEO Agent",
agent_description=ceo_description,
agent_instructions=ceo_instruction,
tools=tools,
assistant_agents=[hr_agent,sales_agent], # HR and Sales will be added below
max_allowed_attempts=50, # How many attempts the agent can make to answer the user's question
verbose=True, # If you want to print the COT in terminal set True
memory=memory,
)
# Step 5: Run the UI demo with the CEO agent that interacts with HR and Sales agents
demo = run_ui_demo(agent=ceo_agent)
if __name__ == "__main__":
demo.run()
4. Async Implementation
Here’s an example of async implementation:
import os,nest_asyncio,asyncio
from SwarmPlus.helper import print_colored
from SwarmPlus.agent import Agent
from SwarmPlus.models import OpenaiChatModel
from SwarmPlus.tools.FileOperationsTool import SaveFile, CreateFolder
from SwarmPlus.memory import ConversationSummaryBufferMemory,ConversationSummaryMemory,ConversationBufferWindowMemory,ConversationBufferMemory
# If you are running this script in a notebook
# nest_asyncio.apply()
# Step 1: This concise description helps in understanding the agent's responsibilities and guides the system
# in determining what types of tasks should be assigned to this agent.
description = "Responsible for writing story."
# Step 2: Provide instructions for the agent (System Prompt)
instruction = "You are a creative storyteller who crafts imaginative narratives with vivid details, rich characters, and unexpected plot twists."
# Step 3: Load pre-defined tools that the agent will use
# These tools enable the agent to create folders and save files
tools = [CreateFolder, SaveFile]
# Step 4: Set your OpenAI API key
openai_api_key = "Your API Key"
# openai_api_key = os.getenv('OPENAI_API_KEY')
# Step 5: Initialize the language model for the agent
model = OpenaiChatModel(model_name="gpt-4o-mini", api_key=openai_api_key, temperature=0)
# Step 6: Initialize memory - 4 different techniques are available.
# This option retains the entire conversation history.
# Use this when you need to maintain a complete record of all interactions without any summarization or truncation.
memory = ConversationBufferMemory()
# Initialize the agent
agent = Agent(model=model, agent_name="AI Assistant", agent_description=description, agent_instructions=instruction, tools=tools, assistant_agents=[],max_allowed_attempts=50, verbose=True,memory=memory)
if __name__ =="__main__":
async def main():
print_colored("Starting the application...........", "green")
# Example user input
# user_input = "Create a story about AI agents and save it in a new folder. The story should have two chapters, and each chapter should be saved separately inside the folder"
user_input = input("User : ")
# Initialize the messages list to store conversation history
messages = []
# Step 8: Process user input and interact with the agent
while user_input != "bye":
# The agent processes the user input and generates a response
output = await agent.arun(user_input, messages)
# Update the messages list with the agent's response
messages = output.messages
# If verbose=False is set during agent initialization, uncomment the following line to see the agent's responses
# print_colored(f"Assistant : {output}", "purple")
# Prompt the user for the next input
user_input = input("User Input : ")
asyncio.run(main())
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License
This project is licensed under the MIT License. - see the LICENSE file for details.
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