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@ -16,6 +16,8 @@ GEMINI_API_KEY=""
## Hugging Face ## Hugging Face
HUGGINGFACE_TOKEN="" HUGGINGFACE_TOKEN=""
GROQ_API_KEY=""
## Perplexity AI ## Perplexity AI
PPLX_API_KEY="" PPLX_API_KEY=""

@ -140,6 +140,14 @@ markdown_extensions:
nav: nav:
- Home: - Home:
- Overview: "quickstart.md"
- Installation: "swarms/install/install.md"
- Environment Configuration: "swarms/install/env.md"
- Agents: "swarms/agents/index.md"
- Multi-Agent Architectures: "swarms/structs/index.md"
# - Learn More: "swarms/learn_more/index.md"
- Guides:
- Overview: "index.md" - Overview: "index.md"
- Onboarding: - Onboarding:
- Installation: "swarms/install/install.md" - Installation: "swarms/install/install.md"
@ -147,7 +155,6 @@ nav:
- Quickstart: "swarms/install/quickstart.md" - Quickstart: "swarms/install/quickstart.md"
- Feature Set: "swarms/features.md" - Feature Set: "swarms/features.md"
- Agents: - Agents:
# - Overview: "swarms/structs/index.md"
- Overview: "swarms/agents/index.md" - Overview: "swarms/agents/index.md"
- Concepts: - Concepts:
# - Managing Prompts in Production: "swarms/prompts/main.md" # - Managing Prompts in Production: "swarms/prompts/main.md"
@ -260,7 +267,6 @@ nav:
- Examples: - Examples:
- Overview: "examples/index.md" - Overview: "examples/index.md"
- CookBook Index: "examples/cookbook_index.md" - CookBook Index: "examples/cookbook_index.md"
# - PreBuilt Templates: "examples/templates_index.md"
- Basic Examples: - Basic Examples:
- Individual Agents: - Individual Agents:
- Basic Agent: "swarms/examples/basic_agent.md" - Basic Agent: "swarms/examples/basic_agent.md"
@ -320,11 +326,6 @@ nav:
- ConcurrentWorkflow with VLLM Agents: "swarms/examples/vllm.md" - ConcurrentWorkflow with VLLM Agents: "swarms/examples/vllm.md"
- Swarms API Examples:
- Medical Swarm: "swarms/examples/swarms_api_medical.md"
- Finance Swarm: "swarms/examples/swarms_api_finance.md"
# - ML Model Code Generation Swarm: "swarms/examples/swarms_api_ml_model.md"
# - Swarm Models: # - Swarm Models:
# - Overview: "swarms/models/index.md" # - Overview: "swarms/models/index.md"
# # - Models Available: "swarms/models/index.md" # # - Models Available: "swarms/models/index.md"
@ -346,25 +347,29 @@ nav:
# - GPT4VisionAPI: "swarms/models/gpt4v.md" # - GPT4VisionAPI: "swarms/models/gpt4v.md"
- Swarms Cloud API: - Swarms Cloud API:
- Overview: "swarms_cloud/swarms_api.md" - Overview: "swarms_cloud/swarms_api.md"
- Swarms API as MCP: "swarms_cloud/mcp.md" - Quickstart: "swarms_cloud/quickstart.md"
- Swarms API Tools: "swarms_cloud/swarms_api_tools.md" - MCP Server: "swarms_cloud/mcp.md"
- Rate Limits: "swarms_cloud/rate_limits.md"
- Best Practices: "swarms_cloud/best_practices.md"
- Capabilities:
- Agents:
- Individual Agent Completions: "swarms_cloud/agent_api.md" - Individual Agent Completions: "swarms_cloud/agent_api.md"
- Tools: "swarms_cloud/swarms_api_tools.md"
- Multi-Agent:
- Multi Agent Architectures Available: "swarms_cloud/swarm_types.md"
- Examples:
- Medical Swarm: "swarms/examples/swarms_api_medical.md"
- Finance Swarm: "swarms/examples/swarms_api_finance.md"
- Clients: - Clients:
- Swarms API Python Client: "swarms_cloud/python_client.md" - Python Client: "swarms_cloud/python_client.md"
- Swarms API Rust Client: "swarms_cloud/rust_client.md" - Rust Client: "swarms_cloud/rust_client.md"
- Pricing: - Pricing:
- Swarms API Pricing: "swarms_cloud/api_pricing.md" - Pricing: "swarms_cloud/api_pricing.md"
- Swarms API Pricing in Chinese: "swarms_cloud/chinese_api_pricing.md" - Pricing in Chinese: "swarms_cloud/chinese_api_pricing.md"
- Swarms Cloud Subscription Tiers: "swarms_cloud/subscription_tiers.md" - Subscription Tiers: "swarms_cloud/subscription_tiers.md"
- Swarm Ecosystem APIs:
- MCS API: "swarms_cloud/mcs_api.md"
# - CreateNow API: "swarms_cloud/create_api.md"
- Guides:
- Swarms API Best Practices: "swarms_cloud/best_practices.md"
- Multi Agent Architectures Available: "swarms_cloud/swarm_types.md"
- Swarms Marketplace: - Swarms Marketplace:
- Overview: "swarms_platform/index.md" - Overview: "swarms_platform/index.md"

@ -0,0 +1,387 @@
# Welcome to Swarms Docs Home
[![Join our Discord](https://img.shields.io/badge/Discord-Join%20our%20server-5865F2?style=for-the-badge&logo=discord&logoColor=white)](https://discord.gg/jM3Z6M9uMq) [![Subscribe on YouTube](https://img.shields.io/badge/YouTube-Subscribe-red?style=for-the-badge&logo=youtube&logoColor=white)](https://www.youtube.com/@kyegomez3242) [![Connect on LinkedIn](https://img.shields.io/badge/LinkedIn-Connect-blue?style=for-the-badge&logo=linkedin&logoColor=white)](https://www.linkedin.com/in/kye-g-38759a207/) [![Follow on X.com](https://img.shields.io/badge/X.com-Follow-1DA1F2?style=for-the-badge&logo=x&logoColor=white)](https://x.com/swarms_corp)
## What is Swarms?
**Swarms** is the **first and most reliable multi-agent production-grade framework** designed to orchestrate intelligent AI agents at scale. Built for enterprise applications, Swarms enables you to create sophisticated multi-agent systems that can handle complex tasks through collaboration, parallel processing, and intelligent task distribution.
### Key Capabilities
- **🏢 Production-Ready**: Enterprise-grade infrastructure with high reliability, comprehensive logging, and robust error handling
- **🤖 Multi-Agent Orchestration**: Support for hierarchical swarms, parallel processing, sequential workflows, and dynamic agent rearrangement
- **🔄 Flexible Integration**: Multi-model support, custom agent creation, extensive tool library, and multiple memory systems
- **📈 Scalable Architecture**: Concurrent processing, resource management, load balancing, and horizontal scaling capabilities
- **🛠️ Developer-Friendly**: Simple API, extensive documentation, active community, and CLI tools for rapid development
- **🔐 Enterprise Security**: Built-in error handling, rate limiting, monitoring integration, and audit logging
### Why Choose Swarms?
Swarms stands out as the **most reliable multi-agent framework** because it was built from the ground up for production environments. Unlike other frameworks that focus on research or simple demos, Swarms provides the infrastructure, tooling, and best practices needed to deploy multi-agent systems in real-world applications.
Whether you're building financial analysis systems, healthcare diagnostics, manufacturing optimization, or any other complex multi-agent application, Swarms provides the foundation you need to succeed.
Get started learning swarms with the following examples and more.
## Install 💻
```bash
$ pip3 install -U swarms
```
### Using uv (Recommended)
[uv](https://github.com/astral-sh/uv) is a fast Python package installer and resolver, written in Rust.
```bash
# Install uv
$ curl -LsSf https://astral.sh/uv/install.sh | sh
# Install swarms using uv
$ uv pip install swarms
```
### Using poetry
```bash
# Install poetry if you haven't already
$ curl -sSL https://install.python-poetry.org | python3 -
# Add swarms to your project
$ poetry add swarms
```
### From source
```bash
# Clone the repository
$ git clone https://github.com/kyegomez/swarms.git
$ cd swarms
# Install with pip
$ pip install -e .
```
---
## Environment Configuration
[Learn more about the environment configuration here](https://docs.swarms.world/en/latest/swarms/install/env/)
```
OPENAI_API_KEY=""
WORKSPACE_DIR="agent_workspace"
ANTHROPIC_API_KEY=""
GROQ_API_KEY=""
```
### 🤖 Your First Agent
An **Agent** is the fundamental building block of a swarm—an autonomous entity powered by an LLM + Tools + Memory. [Learn more Here](https://docs.swarms.world/en/latest/swarms/structs/agent/)
```python
from swarms import Agent
# Initialize a new agent
agent = Agent(
model_name="gpt-4o-mini", # Specify the LLM
max_loops=1, # Set the number of interactions
interactive=True, # Enable interactive mode for real-time feedback
)
# Run the agent with a task
agent.run("What are the key benefits of using a multi-agent system?")
```
### 🤝 Your First Swarm: Multi-Agent Collaboration
A **Swarm** consists of multiple agents working together. This simple example creates a two-agent workflow for researching and writing a blog post. [Learn More About SequentialWorkflow](https://docs.swarms.world/en/latest/swarms/structs/sequential_workflow/)
```python
from swarms import Agent, SequentialWorkflow
# Agent 1: The Researcher
researcher = Agent(
agent_name="Researcher",
system_prompt="Your job is to research the provided topic and provide a detailed summary.",
model_name="gpt-4o-mini",
)
# Agent 2: The Writer
writer = Agent(
agent_name="Writer",
system_prompt="Your job is to take the research summary and write a beautiful, engaging blog post about it.",
model_name="gpt-4o-mini",
)
# Create a sequential workflow where the researcher's output feeds into the writer's input
workflow = SequentialWorkflow(agents=[researcher, writer])
# Run the workflow on a task
final_post = workflow.run("The history and future of artificial intelligence")
print(final_post)
```
-----
## 🏗️ Multi-Agent Architectures For Production Deployments
`swarms` provides a variety of powerful, pre-built multi-agent architectures enabling you to orchestrate agents in various ways. Choose the right structure for your specific problem to build efficient and reliable production systems.
| **Architecture** | **Description** | **Best For** |
|---|---|---|
| **[SequentialWorkflow](https://docs.swarms.world/en/latest/swarms/structs/sequential_workflow/)** | Agents execute tasks in a linear chain; one agent's output is the next one's input. | Step-by-step processes like data transformation pipelines, report generation. |
| **[ConcurrentWorkflow](https://docs.swarms.world/en/latest/swarms/structs/concurrent_workflow/)** | Agents run tasks simultaneously for maximum efficiency. | High-throughput tasks like batch processing, parallel data analysis. |
| **[AgentRearrange](https://docs.swarms.world/en/latest/swarms/structs/agent_rearrange/)** | Dynamically maps complex relationships (e.g., `a -> b, c`) between agents. | Flexible and adaptive workflows, task distribution, dynamic routing. |
| **[GraphWorkflow](https://docs.swarms.world/en/latest/swarms/structs/graph_workflow/)** | Orchestrates agents as nodes in a Directed Acyclic Graph (DAG). | Complex projects with intricate dependencies, like software builds. |
| **[MixtureOfAgents (MoA)](https://docs.swarms.world/en/latest/swarms/structs/moa/)** | Utilizes multiple expert agents in parallel and synthesizes their outputs. | Complex problem-solving, achieving state-of-the-art performance through collaboration. |
| **[GroupChat](https://docs.swarms.world/en/latest/swarms/structs/group_chat/)** | Agents collaborate and make decisions through a conversational interface. | Real-time collaborative decision-making, negotiations, brainstorming. |
| **[ForestSwarm](https://docs.swarms.world/en/latest/swarms/structs/forest_swarm/)** | Dynamically selects the most suitable agent or tree of agents for a given task. | Task routing, optimizing for expertise, complex decision-making trees. |
| **[SpreadSheetSwarm](https://docs.swarms.world/en/latest/swarms/structs/spreadsheet_swarm/)** | Manages thousands of agents concurrently, tracking tasks and outputs in a structured format. | Massive-scale parallel operations, large-scale data generation and analysis. |
| **[SwarmRouter](https://docs.swarms.world/en/latest/swarms/structs/swarm_router/)** | Universal orchestrator that provides a single interface to run any type of swarm with dynamic selection. | Simplifying complex workflows, switching between swarm strategies, unified multi-agent management. |
-----
### SequentialWorkflow
A `SequentialWorkflow` executes tasks in a strict order, forming a pipeline where each agent builds upon the work of the previous one. `SequentialWorkflow` is Ideal for processes that have clear, ordered steps. This ensures that tasks with dependencies are handled correctly.
```python
from swarms import Agent, SequentialWorkflow
# Initialize agents for a 3-step process
# 1. Generate an idea
idea_generator = Agent(agent_name="IdeaGenerator", system_prompt="Generate a unique startup idea.", model_name="gpt-4o-mini")
# 2. Validate the idea
validator = Agent(agent_name="Validator", system_prompt="Take this startup idea and analyze its market viability.", model_name="gpt-4o-mini")
# 3. Create a pitch
pitch_creator = Agent(agent_name="PitchCreator", system_prompt="Write a 3-sentence elevator pitch for this validated startup idea.", model_name="gpt-4o-mini")
# Create the sequential workflow
workflow = SequentialWorkflow(agents=[idea_generator, validator, pitch_creator])
# Run the workflow
elevator_pitch = workflow.run()
print(elevator_pitch)
```
-----
### ConcurrentWorkflow (with `SpreadSheetSwarm`)
A concurrent workflow runs multiple agents simultaneously. `SpreadSheetSwarm` is a powerful implementation that can manage thousands of concurrent agents and log their outputs to a CSV file. Use this architecture for high-throughput tasks that can be performed in parallel, drastically reducing execution time.
```python
from swarms import Agent, SpreadSheetSwarm
# Define a list of tasks (e.g., social media posts to generate)
platforms = ["Twitter", "LinkedIn", "Instagram"]
# Create an agent for each task
agents = [
Agent(
agent_name=f"{platform}-Marketer",
system_prompt=f"Generate a real estate marketing post for {platform}.",
model_name="gpt-4o-mini",
)
for platform in platforms
]
# Initialize the swarm to run these agents concurrently
swarm = SpreadSheetSwarm(
agents=agents,
autosave_on=True,
save_file_path="marketing_posts.csv",
)
# Run the swarm with a single, shared task description
property_description = "A beautiful 3-bedroom house in sunny California."
swarm.run(task=f"Generate a post about: {property_description}")
# Check marketing_posts.csv for the results!
```
---
### AgentRearrange
Inspired by `einsum`, `AgentRearrange` lets you define complex, non-linear relationships between agents using a simple string-based syntax. [Learn more](https://docs.swarms.world/en/latest/swarms/structs/agent_rearrange/). This architecture is Perfect for orchestrating dynamic workflows where agents might work in parallel, sequence, or a combination of both.
```python
from swarms import Agent, AgentRearrange
# Define agents
researcher = Agent(agent_name="researcher", model_name="gpt-4o-mini")
writer = Agent(agent_name="writer", model_name="gpt-4o-mini")
editor = Agent(agent_name="editor", model_name="gpt-4o-mini")
# Define a flow: researcher sends work to both writer and editor simultaneously
# This is a one-to-many relationship
flow = "researcher -> writer, editor"
# Create the rearrangement system
rearrange_system = AgentRearrange(
agents=[researcher, writer, editor],
flow=flow,
)
# Run the system
# The researcher will generate content, and then both the writer and editor
# will process that content in parallel.
outputs = rearrange_system.run("Analyze the impact of AI on modern cinema.")
print(outputs)
```
<!--
### GraphWorkflow
`GraphWorkflow` orchestrates tasks using a Directed Acyclic Graph (DAG), allowing you to manage complex dependencies where some tasks must wait for others to complete.
**Description:** Essential for building sophisticated pipelines, like in software development or complex project management, where task order and dependencies are critical.
```python
from swarms import Agent, GraphWorkflow, Node, Edge, NodeType
# Define agents and a simple python function as nodes
code_generator = Agent(agent_name="CodeGenerator", system_prompt="Write Python code for the given task.", model_name="gpt-4o-mini")
code_tester = Agent(agent_name="CodeTester", system_prompt="Test the given Python code and find bugs.", model_name="gpt-4o-mini")
# Create nodes for the graph
node1 = Node(id="generator", agent=code_generator)
node2 = Node(id="tester", agent=code_tester)
# Create the graph and define the dependency
graph = GraphWorkflow()
graph.add_nodes([node1, node2])
graph.add_edge(Edge(source="generator", target="tester")) # Tester runs after generator
# Set entry and end points
graph.set_entry_points(["generator"])
graph.set_end_points(["tester"])
# Run the graph workflow
results = graph.run("Create a function that calculates the factorial of a number.")
print(results)
``` -->
----
### SwarmRouter: The Universal Swarm Orchestrator
The `SwarmRouter` simplifies building complex workflows by providing a single interface to run any type of swarm. Instead of importing and managing different swarm classes, you can dynamically select the one you need just by changing the `swarm_type` parameter. [Read the full documentation](https://docs.swarms.world/en/latest/swarms/structs/swarm_router/)
This makes your code cleaner and more flexible, allowing you to switch between different multi-agent strategies with ease. Here's a complete example that shows how to define agents and then use `SwarmRouter` to execute the same task using different collaborative strategies.
```python
from swarms import Agent
from swarms.structs.swarm_router import SwarmRouter, SwarmType
# Define a few generic agents
writer = Agent(agent_name="Writer", system_prompt="You are a creative writer.", model_name="gpt-4o-mini")
editor = Agent(agent_name="Editor", system_prompt="You are an expert editor for stories.", model_name="gpt-4o-mini")
reviewer = Agent(agent_name="Reviewer", system_prompt="You are a final reviewer who gives a score.", model_name="gpt-4o-mini")
# The agents and task will be the same for all examples
agents = [writer, editor, reviewer]
task = "Write a short story about a robot who discovers music."
# --- Example 1: SequentialWorkflow ---
# Agents run one after another in a chain: Writer -> Editor -> Reviewer.
print("Running a Sequential Workflow...")
sequential_router = SwarmRouter(swarm_type=SwarmType.SequentialWorkflow, agents=agents)
sequential_output = sequential_router.run(task)
print(f"Final Sequential Output:\n{sequential_output}\n")
# --- Example 2: ConcurrentWorkflow ---
# All agents receive the same initial task and run at the same time.
print("Running a Concurrent Workflow...")
concurrent_router = SwarmRouter(swarm_type=SwarmType.ConcurrentWorkflow, agents=agents)
concurrent_outputs = concurrent_router.run(task)
# This returns a dictionary of each agent's output
for agent_name, output in concurrent_outputs.items():
print(f"Output from {agent_name}:\n{output}\n")
# --- Example 3: MixtureOfAgents ---
# All agents run in parallel, and a special 'aggregator' agent synthesizes their outputs.
print("Running a Mixture of Agents Workflow...")
aggregator = Agent(
agent_name="Aggregator",
system_prompt="Combine the story, edits, and review into a final document.",
model_name="gpt-4o-mini"
)
moa_router = SwarmRouter(
swarm_type=SwarmType.MixtureOfAgents,
agents=agents,
aggregator_agent=aggregator, # MoA requires an aggregator
)
aggregated_output = moa_router.run(task)
print(f"Final Aggregated Output:\n{aggregated_output}\n")
```
The `SwarmRouter` is a powerful tool for simplifying multi-agent orchestration. It provides a consistent and flexible way to deploy different collaborative strategies, allowing you to build more sophisticated applications with less code.
-------
### MixtureOfAgents (MoA)
The `MixtureOfAgents` architecture processes tasks by feeding them to multiple "expert" agents in parallel. Their diverse outputs are then synthesized by an aggregator agent to produce a final, high-quality result. [Learn more here](https://docs.swarms.world/en/latest/swarms/examples/moa_example/)
```python
from swarms import Agent, MixtureOfAgents
# Define expert agents
financial_analyst = Agent(agent_name="FinancialAnalyst", system_prompt="Analyze financial data.", model_name="gpt-4o-mini")
market_analyst = Agent(agent_name="MarketAnalyst", system_prompt="Analyze market trends.", model_name="gpt-4o-mini")
risk_analyst = Agent(agent_name="RiskAnalyst", system_prompt="Analyze investment risks.", model_name="gpt-4o-mini")
# Define the aggregator agent
aggregator = Agent(
agent_name="InvestmentAdvisor",
system_prompt="Synthesize the financial, market, and risk analyses to provide a final investment recommendation.",
model_name="gpt-4o-mini"
)
# Create the MoA swarm
moa_swarm = MixtureOfAgents(
agents=[financial_analyst, market_analyst, risk_analyst],
aggregator_agent=aggregator,
)
# Run the swarm
recommendation = moa_swarm.run("Should we invest in NVIDIA stock right now?")
print(recommendation)
```
----
### GroupChat
`GroupChat` creates a conversational environment where multiple agents can interact, discuss, and collaboratively solve a problem. You can define the speaking order or let it be determined dynamically. This architecture is ideal for tasks that benefit from debate and multi-perspective reasoning, such as contract negotiation, brainstorming, or complex decision-making.
```python
from swarms import Agent, GroupChat
# Define agents for a debate
tech_optimist = Agent(agent_name="TechOptimist", system_prompt="Argue for the benefits of AI in society.", model_name="gpt-4o-mini")
tech_critic = Agent(agent_name="TechCritic", system_prompt="Argue against the unchecked advancement of AI.", model_name="gpt-4o-mini")
# Create the group chat
chat = GroupChat(
agents=[tech_optimist, tech_critic],
max_loops=4, # Limit the number of turns in the conversation
)
# Run the chat with an initial topic
conversation_history = chat.run(
"Let's discuss the societal impact of artificial intelligence."
)
# Print the full conversation
for message in conversation_history:
print(f"[{message['agent_name']}]: {message['content']}")
```

@ -0,0 +1,884 @@
# Agents Introduction
The Agent class is the core component of the Swarms framework, designed to create intelligent, autonomous AI agents capable of handling complex tasks through multi-modal processing, tool integration, and structured outputs. This comprehensive guide covers all aspects of the Agent class, from basic setup to advanced features.
## Table of Contents
1. [Prerequisites & Installation](#prerequisites--installation)
2. [Basic Agent Configuration](#basic-agent-configuration)
3. [Multi-Modal Capabilities](#multi-modal-capabilities)
4. [Tool Integration](#tool-integration)
5. [Structured Outputs](#structured-outputs)
6. [Advanced Features](#advanced-features)
7. [Best Practices](#best-practices)
8. [Complete Examples](#complete-examples)
## Prerequisites & Installation
### System Requirements
- Python 3.7+
- OpenAI API key (for GPT models)
- Anthropic API key (for Claude models)
### Installation
```bash
pip3 install -U swarms
```
### Environment Setup
Create a `.env` file with your API keys:
```bash
OPENAI_API_KEY="your-openai-api-key"
ANTHROPIC_API_KEY="your-anthropic-api-key"
WORKSPACE_DIR="agent_workspace"
```
## Basic Agent Configuration
### Core Agent Structure
The Agent class provides a comprehensive set of parameters for customization:
```python
from swarms import Agent
# Basic agent initialization
agent = Agent(
agent_name="MyAgent",
agent_description="A specialized AI agent for specific tasks",
system_prompt="You are a helpful assistant...",
model_name="gpt-4o-mini",
max_loops=1,
max_tokens=4096,
temperature=0.7,
output_type="str",
safety_prompt_on=True
)
```
### Key Configuration Parameters
| Parameter | Type | Description | Default |
|-----------|------|-------------|---------|
| `agent_name` | str | Unique identifier for the agent | Required |
| `agent_description` | str | Detailed description of capabilities | Required |
| `system_prompt` | str | Core instructions defining behavior | Required |
| `model_name` | str | AI model to use | "gpt-4o-mini" |
| `max_loops` | int | Maximum execution loops | 1 |
| `max_tokens` | int | Maximum response tokens | 4096 |
| `temperature` | float | Response creativity (0-1) | 0.7 |
| `output_type` | str | Response format type | "str" |
| `multi_modal` | bool | Enable image processing | False |
| `safety_prompt_on` | bool | Enable safety checks | True |
### Simple Example
```python
from swarms import Agent
# Create a basic financial advisor agent
financial_agent = Agent(
agent_name="Financial-Advisor",
agent_description="Personal finance and investment advisor",
system_prompt="""You are an expert financial advisor with deep knowledge of:
- Investment strategies and portfolio management
- Risk assessment and mitigation
- Market analysis and trends
- Financial planning and budgeting
Provide clear, actionable advice while considering risk tolerance.""",
model_name="gpt-4o-mini",
max_loops=1,
temperature=0.3,
output_type="str"
)
# Run the agent
response = financial_agent.run("What are the best investment strategies for a 30-year-old?")
print(response)
```
## Multi-Modal Capabilities
### Image Processing
The Agent class supports comprehensive image analysis through vision-enabled models:
```python
from swarms import Agent
# Create a vision-enabled agent
vision_agent = Agent(
agent_name="Vision-Analyst",
agent_description="Advanced image analysis and quality control agent",
system_prompt="""You are an expert image analyst capable of:
- Detailed visual inspection and quality assessment
- Object detection and classification
- Scene understanding and context analysis
- Defect identification and reporting
Provide comprehensive analysis with specific observations.""",
model_name="gpt-4o-mini", # Vision-enabled model
multi_modal=True, # Enable multi-modal processing
max_loops=1,
output_type="str"
)
# Analyze a single image
response = vision_agent.run(
task="Analyze this image for quality control purposes",
img="path/to/image.jpg"
)
# Process multiple images
response = vision_agent.run(
task="Compare these images and identify differences",
imgs=["image1.jpg", "image2.jpg", "image3.jpg"],
summarize_multiple_images=True
)
```
### Supported Image Formats
| Format | Description | Max Size |
|--------|-------------|----------|
| JPEG/JPG | Standard compressed format | 20MB |
| PNG | Lossless with transparency | 20MB |
| GIF | Animated (first frame only) | 20MB |
| WebP | Modern efficient format | 20MB |
### Quality Control Example
```python
from swarms import Agent
from swarms.prompts.logistics import Quality_Control_Agent_Prompt
def security_analysis(danger_level: str) -> str:
"""Analyze security danger level and return appropriate response."""
danger_responses = {
"low": "No immediate danger detected",
"medium": "Moderate security concern identified",
"high": "Critical security threat detected",
None: "No danger level assessment available"
}
return danger_responses.get(danger_level, "Unknown danger level")
# Quality control agent with tool integration
quality_agent = Agent(
agent_name="Quality-Control-Agent",
agent_description="Advanced quality control and security analysis agent",
system_prompt=f"""
{Quality_Control_Agent_Prompt}
You have access to security analysis tools. When analyzing images:
1. Identify potential safety hazards
2. Assess quality standards compliance
3. Determine appropriate danger levels (low, medium, high)
4. Use the security_analysis function for threat assessment
""",
model_name="gpt-4o-mini",
multi_modal=True,
max_loops=1,
tools=[security_analysis]
)
# Analyze factory image
response = quality_agent.run(
task="Analyze this factory image for safety and quality issues",
img="factory_floor.jpg"
)
```
## Tool Integration
### Creating Custom Tools
Tools are Python functions that extend your agent's capabilities:
```python
import json
import requests
from typing import Optional, Dict, Any
def get_weather_data(city: str, country: Optional[str] = None) -> str:
"""
Get current weather data for a specified city.
Args:
city (str): The city name
country (Optional[str]): Country code (e.g., 'US', 'UK')
Returns:
str: JSON formatted weather data
Example:
>>> weather = get_weather_data("San Francisco", "US")
>>> print(weather)
{"temperature": 18, "condition": "partly cloudy", ...}
"""
try:
# API call logic here
weather_data = {
"city": city,
"country": country,
"temperature": 18,
"condition": "partly cloudy",
"humidity": 65,
"wind_speed": 12
}
return json.dumps(weather_data, indent=2)
except Exception as e:
return json.dumps({"error": f"Weather API error: {str(e)}"})
def calculate_portfolio_metrics(prices: list, weights: list) -> str:
"""
Calculate portfolio performance metrics.
Args:
prices (list): List of asset prices
weights (list): List of portfolio weights
Returns:
str: JSON formatted portfolio metrics
"""
try:
# Portfolio calculation logic
portfolio_value = sum(p * w for p, w in zip(prices, weights))
metrics = {
"total_value": portfolio_value,
"weighted_average": portfolio_value / sum(weights),
"asset_count": len(prices)
}
return json.dumps(metrics, indent=2)
except Exception as e:
return json.dumps({"error": f"Calculation error: {str(e)}"})
```
### Tool Integration Example
```python
from swarms import Agent
# Create agent with custom tools
multi_tool_agent = Agent(
agent_name="Multi-Tool-Assistant",
agent_description="Versatile assistant with weather and financial tools",
system_prompt="""You are a versatile assistant with access to:
- Weather data retrieval for any city
- Portfolio analysis and financial calculations
Use these tools to provide comprehensive assistance.""",
model_name="gpt-4o-mini",
max_loops=1,
tools=[get_weather_data, calculate_portfolio_metrics]
)
# Use the agent with tools
response = multi_tool_agent.run(
"What's the weather in New York and calculate metrics for a portfolio with prices [100, 150, 200] and weights [0.3, 0.4, 0.3]?"
)
```
### API Integration Tools
```python
import requests
import json
from typing import List
def get_cryptocurrency_price(coin_id: str, vs_currency: str = "usd") -> str:
"""Get current cryptocurrency price from CoinGecko API."""
try:
url = "https://api.coingecko.com/api/v3/simple/price"
params = {
"ids": coin_id,
"vs_currencies": vs_currency,
"include_market_cap": True,
"include_24hr_vol": True,
"include_24hr_change": True
}
response = requests.get(url, params=params, timeout=10)
response.raise_for_status()
return json.dumps(response.json(), indent=2)
except Exception as e:
return json.dumps({"error": f"API error: {str(e)}"})
def get_top_cryptocurrencies(limit: int = 10) -> str:
"""Get top cryptocurrencies by market cap."""
try:
url = "https://api.coingecko.com/api/v3/coins/markets"
params = {
"vs_currency": "usd",
"order": "market_cap_desc",
"per_page": limit,
"page": 1
}
response = requests.get(url, params=params, timeout=10)
response.raise_for_status()
return json.dumps(response.json(), indent=2)
except Exception as e:
return json.dumps({"error": f"API error: {str(e)}"})
# Crypto analysis agent
crypto_agent = Agent(
agent_name="Crypto-Analysis-Agent",
agent_description="Cryptocurrency market analysis and price tracking agent",
system_prompt="""You are a cryptocurrency analysis expert with access to:
- Real-time price data for any cryptocurrency
- Market capitalization rankings
- Trading volume and price change data
Provide insightful market analysis and investment guidance.""",
model_name="gpt-4o-mini",
max_loops=1,
tools=[get_cryptocurrency_price, get_top_cryptocurrencies]
)
# Analyze crypto market
response = crypto_agent.run("Analyze the current Bitcoin price and show me the top 5 cryptocurrencies")
```
## Structured Outputs
### Function Schema Definition
Define structured outputs using OpenAI's function calling format:
```python
from swarms import Agent
# Define function schemas for structured outputs
stock_analysis_schema = {
"type": "function",
"function": {
"name": "analyze_stock_performance",
"description": "Analyze stock performance with detailed metrics",
"parameters": {
"type": "object",
"properties": {
"ticker": {
"type": "string",
"description": "Stock ticker symbol (e.g., AAPL, GOOGL)"
},
"analysis_type": {
"type": "string",
"enum": ["technical", "fundamental", "comprehensive"],
"description": "Type of analysis to perform"
},
"time_period": {
"type": "string",
"enum": ["1d", "1w", "1m", "3m", "1y"],
"description": "Time period for analysis"
},
"metrics": {
"type": "array",
"items": {
"type": "string",
"enum": ["price", "volume", "pe_ratio", "market_cap", "volatility"]
},
"description": "Metrics to include in analysis"
}
},
"required": ["ticker", "analysis_type"]
}
}
}
portfolio_optimization_schema = {
"type": "function",
"function": {
"name": "optimize_portfolio",
"description": "Optimize portfolio allocation based on risk and return",
"parameters": {
"type": "object",
"properties": {
"assets": {
"type": "array",
"items": {
"type": "object",
"properties": {
"symbol": {"type": "string"},
"current_weight": {"type": "number"},
"expected_return": {"type": "number"},
"risk_level": {"type": "string", "enum": ["low", "medium", "high"]}
},
"required": ["symbol", "current_weight"]
}
},
"risk_tolerance": {
"type": "string",
"enum": ["conservative", "moderate", "aggressive"]
},
"investment_horizon": {
"type": "integer",
"minimum": 1,
"maximum": 30,
"description": "Investment time horizon in years"
}
},
"required": ["assets", "risk_tolerance"]
}
}
}
# Create agent with structured outputs
structured_agent = Agent(
agent_name="Structured-Financial-Agent",
agent_description="Financial analysis agent with structured output capabilities",
system_prompt="""You are a financial analysis expert that provides structured outputs.
Use the provided function schemas to format your responses consistently.""",
model_name="gpt-4o-mini",
max_loops=1,
tools_list_dictionary=[stock_analysis_schema, portfolio_optimization_schema]
)
# Generate structured analysis
response = structured_agent.run(
"Analyze Apple stock (AAPL) performance with comprehensive analysis for the last 3 months"
)
```
## Advanced Features
### Dynamic Temperature Control
```python
from swarms import Agent
# Agent with dynamic temperature adjustment
adaptive_agent = Agent(
agent_name="Adaptive-Response-Agent",
agent_description="Agent that adjusts response creativity based on context",
system_prompt="You are an adaptive AI that adjusts your response style based on the task complexity.",
model_name="gpt-4o-mini",
dynamic_temperature_enabled=True, # Enable adaptive temperature
max_loops=1,
output_type="str"
)
```
### Output Type Configurations
```python
# Different output type examples
json_agent = Agent(
agent_name="JSON-Agent",
system_prompt="Always respond in valid JSON format",
output_type="json"
)
streaming_agent = Agent(
agent_name="Streaming-Agent",
system_prompt="Provide detailed streaming responses",
output_type="str-all-except-first"
)
final_only_agent = Agent(
agent_name="Final-Only-Agent",
system_prompt="Provide only the final result",
output_type="final"
)
```
### Safety and Content Filtering
```python
from swarms import Agent
# Agent with enhanced safety features
safe_agent = Agent(
agent_name="Safe-Agent",
agent_description="Agent with comprehensive safety measures",
system_prompt="You are a helpful, harmless, and honest AI assistant.",
model_name="gpt-4o-mini",
safety_prompt_on=True, # Enable safety prompts
max_loops=1,
temperature=0.3 # Lower temperature for more consistent, safe responses
)
```
## Best Practices
### Error Handling and Robustness
```python
import logging
from swarms import Agent
# Configure logging
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger(__name__)
def robust_agent_execution(agent, task, max_retries=3):
"""Execute agent with retry logic and error handling."""
for attempt in range(max_retries):
try:
response = agent.run(task)
logger.info(f"Agent execution successful on attempt {attempt + 1}")
return response
except Exception as e:
logger.error(f"Attempt {attempt + 1} failed: {str(e)}")
if attempt == max_retries - 1:
raise
time.sleep(2 ** attempt) # Exponential backoff
return None
# Example usage
try:
result = robust_agent_execution(agent, "Analyze market trends")
print(result)
except Exception as e:
print(f"Agent execution failed: {e}")
```
### Performance Optimization
```python
from swarms import Agent
import time
# Optimized agent configuration
optimized_agent = Agent(
agent_name="Optimized-Agent",
agent_description="Performance-optimized agent configuration",
system_prompt="You are an efficient AI assistant optimized for performance.",
model_name="gpt-4o-mini", # Faster model
max_loops=1, # Minimize loops
max_tokens=2048, # Reasonable token limit
temperature=0.5, # Balanced creativity
output_type="str"
)
# Batch processing example
def process_tasks_batch(agent, tasks, batch_size=5):
"""Process multiple tasks efficiently."""
results = []
for i in range(0, len(tasks), batch_size):
batch = tasks[i:i + batch_size]
batch_results = []
for task in batch:
start_time = time.time()
result = agent.run(task)
execution_time = time.time() - start_time
batch_results.append({
"task": task,
"result": result,
"execution_time": execution_time
})
results.extend(batch_results)
time.sleep(1) # Rate limiting
return results
```
## Complete Examples
### Multi-Modal Quality Control System
```python
from swarms import Agent
from swarms.prompts.logistics import Quality_Control_Agent_Prompt
def security_analysis(danger_level: str) -> str:
"""Analyze security danger level and return appropriate response."""
responses = {
"low": "✅ No immediate danger detected - Safe to proceed",
"medium": "⚠️ Moderate security concern - Requires attention",
"high": "🚨 Critical security threat - Immediate action required",
None: "❓ No danger level assessment available"
}
return responses.get(danger_level, "Unknown danger level")
def quality_assessment(quality_score: int) -> str:
"""Assess quality based on numerical score (1-10)."""
if quality_score >= 8:
return "✅ Excellent quality - Meets all standards"
elif quality_score >= 6:
return "⚠️ Good quality - Minor improvements needed"
elif quality_score >= 4:
return "❌ Poor quality - Significant issues identified"
else:
return "🚨 Critical quality failure - Immediate attention required"
# Advanced quality control agent
quality_control_system = Agent(
agent_name="Advanced-Quality-Control-System",
agent_description="Comprehensive quality control and security analysis system",
system_prompt=f"""
{Quality_Control_Agent_Prompt}
You are an advanced quality control system with the following capabilities:
1. Visual Inspection: Analyze images for defects, compliance, and safety
2. Security Assessment: Identify potential security threats and hazards
3. Quality Scoring: Provide numerical quality ratings (1-10 scale)
4. Detailed Reporting: Generate comprehensive analysis reports
When analyzing images:
- Identify specific defects or issues
- Assess compliance with safety standards
- Determine appropriate danger levels (low, medium, high)
- Provide quality scores and recommendations
- Use available tools for detailed analysis
Always provide specific, actionable feedback.
""",
model_name="gpt-4o-mini",
multi_modal=True,
max_loops=1,
tools=[security_analysis, quality_assessment],
output_type="str"
)
# Process factory images
factory_images = ["factory_floor.jpg", "assembly_line.jpg", "safety_equipment.jpg"]
for image in factory_images:
print(f"\n--- Analyzing {image} ---")
response = quality_control_system.run(
task=f"Perform comprehensive quality control analysis of this image. Assess safety, quality, and provide specific recommendations.",
img=image
)
print(response)
```
### Advanced Financial Analysis Agent
```python
from swarms import Agent
import json
import requests
def get_market_data(symbol: str, period: str = "1y") -> str:
"""Get comprehensive market data for a symbol."""
# Simulated market data (replace with real API)
market_data = {
"symbol": symbol,
"current_price": 150.25,
"change_percent": 2.5,
"volume": 1000000,
"market_cap": 2500000000,
"pe_ratio": 25.5,
"dividend_yield": 1.8,
"52_week_high": 180.50,
"52_week_low": 120.30
}
return json.dumps(market_data, indent=2)
def calculate_risk_metrics(prices: list, benchmark_prices: list) -> str:
"""Calculate risk metrics for a portfolio."""
import numpy as np
try:
returns = np.diff(prices) / prices[:-1]
benchmark_returns = np.diff(benchmark_prices) / benchmark_prices[:-1]
volatility = np.std(returns) * np.sqrt(252) # Annualized
sharpe_ratio = (np.mean(returns) / np.std(returns)) * np.sqrt(252)
max_drawdown = np.max(np.maximum.accumulate(prices) - prices) / np.max(prices)
beta = np.cov(returns, benchmark_returns)[0, 1] / np.var(benchmark_returns)
risk_metrics = {
"volatility": float(volatility),
"sharpe_ratio": float(sharpe_ratio),
"max_drawdown": float(max_drawdown),
"beta": float(beta)
}
return json.dumps(risk_metrics, indent=2)
except Exception as e:
return json.dumps({"error": f"Risk calculation error: {str(e)}"})
# Financial analysis schemas
financial_analysis_schema = {
"type": "function",
"function": {
"name": "comprehensive_financial_analysis",
"description": "Perform comprehensive financial analysis with structured output",
"parameters": {
"type": "object",
"properties": {
"analysis_summary": {
"type": "object",
"properties": {
"overall_rating": {"type": "string", "enum": ["buy", "hold", "sell"]},
"confidence_level": {"type": "number", "minimum": 0, "maximum": 100},
"key_strengths": {"type": "array", "items": {"type": "string"}},
"key_concerns": {"type": "array", "items": {"type": "string"}},
"price_target": {"type": "number"},
"risk_level": {"type": "string", "enum": ["low", "medium", "high"]}
}
},
"technical_analysis": {
"type": "object",
"properties": {
"trend_direction": {"type": "string", "enum": ["bullish", "bearish", "neutral"]},
"support_levels": {"type": "array", "items": {"type": "number"}},
"resistance_levels": {"type": "array", "items": {"type": "number"}},
"momentum_indicators": {"type": "array", "items": {"type": "string"}}
}
}
},
"required": ["analysis_summary", "technical_analysis"]
}
}
}
# Advanced financial agent
financial_analyst = Agent(
agent_name="Advanced-Financial-Analyst",
agent_description="Comprehensive financial analysis and investment advisory agent",
system_prompt="""You are an expert financial analyst with advanced capabilities in:
- Fundamental analysis and valuation
- Technical analysis and chart patterns
- Risk assessment and portfolio optimization
- Market sentiment analysis
- Economic indicator interpretation
Your analysis should be:
- Data-driven and objective
- Risk-aware and practical
- Clearly structured and actionable
- Compliant with financial regulations
Use available tools to gather market data and calculate risk metrics.
Provide structured outputs using the defined schemas.""",
model_name="gpt-4o-mini",
max_loops=1,
tools=[get_market_data, calculate_risk_metrics],
tools_list_dictionary=[financial_analysis_schema],
output_type="json"
)
# Comprehensive financial analysis
analysis_response = financial_analyst.run(
"Perform a comprehensive analysis of Apple Inc. (AAPL) including technical and fundamental analysis with structured recommendations"
)
print(json.dumps(json.loads(analysis_response), indent=2))
```
### Multi-Agent Collaboration System
```python
from swarms import Agent
import json
# Specialized agents for different tasks
research_agent = Agent(
agent_name="Research-Specialist",
agent_description="Market research and data analysis specialist",
system_prompt="You are a market research expert specializing in data collection and analysis.",
model_name="gpt-4o-mini",
max_loops=1,
temperature=0.3
)
strategy_agent = Agent(
agent_name="Strategy-Advisor",
agent_description="Strategic planning and recommendation specialist",
system_prompt="You are a strategic advisor providing high-level recommendations based on research.",
model_name="gpt-4o-mini",
max_loops=1,
temperature=0.5
)
execution_agent = Agent(
agent_name="Execution-Planner",
agent_description="Implementation and execution planning specialist",
system_prompt="You are an execution expert creating detailed implementation plans.",
model_name="gpt-4o-mini",
max_loops=1,
temperature=0.4
)
def collaborative_analysis(topic: str):
"""Perform collaborative analysis using multiple specialized agents."""
# Step 1: Research Phase
research_task = f"Conduct comprehensive research on {topic}. Provide key findings, market data, and trends."
research_results = research_agent.run(research_task)
# Step 2: Strategy Phase
strategy_task = f"Based on this research: {research_results}\n\nDevelop strategic recommendations for {topic}."
strategy_results = strategy_agent.run(strategy_task)
# Step 3: Execution Phase
execution_task = f"Create a detailed implementation plan based on:\nResearch: {research_results}\nStrategy: {strategy_results}"
execution_results = execution_agent.run(execution_task)
return {
"research": research_results,
"strategy": strategy_results,
"execution": execution_results
}
# Example: Collaborative investment analysis
investment_analysis = collaborative_analysis("renewable energy sector investment opportunities")
for phase, results in investment_analysis.items():
print(f"\n=== {phase.upper()} PHASE ===")
print(results)
```
## Support and Resources
Join our community of agent engineers and researchers for technical support, cutting-edge updates, and exclusive access to world-class agent engineering insights!
| Platform | Description | Link |
|----------|-------------|------|
| 📚 Documentation | Official documentation and guides | [docs.swarms.world](https://docs.swarms.world) |
| 📝 Blog | Latest updates and technical articles | [Medium](https://medium.com/@kyeg) |
| 💬 Discord | Live chat and community support | [Join Discord](https://discord.gg/jM3Z6M9uMq) |
| 🐦 Twitter | Latest news and announcements | [@kyegomez](https://twitter.com/kyegomez) |
| 👥 LinkedIn | Professional network and updates | [The Swarm Corporation](https://www.linkedin.com/company/the-swarm-corporation) |
| 📺 YouTube | Tutorials and demos | [Swarms Channel](https://www.youtube.com/channel/UC9yXyitkbU_WSy7bd_41SqQ) |
| 🎫 Events | Join our community events | [Sign up here](https://lu.ma/5p2jnc2v) |
| 🚀 Onboarding Session | Get onboarded with Kye Gomez, creator and lead maintainer of Swarms | [Book Session](https://cal.com/swarms/swarms-onboarding-session) |
### Getting Help
If you encounter issues or need assistance:
1. **Check the Documentation**: Start with the official docs for comprehensive guides
2. **Search Issues**: Look through existing GitHub issues for similar problems
3. **Join Discord**: Get real-time help from the community
4. **Create an Issue**: Report bugs or request features on GitHub
5. **Follow Updates**: Stay informed about new releases and improvements
### Contributing
We welcome contributions! Here's how to get involved:
- **Report Bugs**: Help us improve by reporting issues
- **Suggest Features**: Share your ideas for new capabilities
- **Submit Code**: Contribute improvements and new features
- **Improve Documentation**: Help make our docs better
- **Share Examples**: Show how you're using Swarms in your projects
---
*This guide covers the essential aspects of the Swarms Agent class. For the most up-to-date information and advanced features, please refer to the official documentation and community resources.*

@ -4,23 +4,20 @@ The InteractiveGroupChat is a sophisticated multi-agent system that enables inte
## Features ## Features
- **@mentions Support**: Direct tasks to specific agents using @agent_name syntax | Feature | Description |
|---------|-------------|
- **Multi-Agent Collaboration**: Multiple mentioned agents can see and respond to each other's tasks | **@mentions Support** | Direct tasks to specific agents using @agent_name syntax |
| **Multi-Agent Collaboration** | Multiple mentioned agents can see and respond to each other's tasks |
- **Enhanced Collaborative Prompts**: Agents are trained to acknowledge, build upon, and synthesize each other's responses | **Enhanced Collaborative Prompts** | Agents are trained to acknowledge, build upon, and synthesize each other's responses |
| **Speaker Functions** | Control the order in which agents respond (round robin, random, priority, custom) |
- **Speaker Functions**: Control the order in which agents respond (round robin, random, priority, custom) | **Dynamic Speaker Management** | Change speaker functions and priorities during runtime |
| **Random Dynamic Speaker** | Advanced speaker function that follows @mentions in agent responses |
- **Dynamic Speaker Management**: Change speaker functions and priorities during runtime | **Parallel and Sequential Strategies** | Support for both parallel and sequential agent execution |
| **Callable Function Support** | Supports both Agent instances and callable functions as chat participants |
- **Callable Function Support**: Supports both Agent instances and callable functions as chat participants | **Comprehensive Error Handling** | Custom error classes for different scenarios |
| **Conversation History** | Maintains a complete history of the conversation |
- **Comprehensive Error Handling**: Custom error classes for different scenarios | **Flexible Output Formatting** | Configurable output format for conversation history |
| **Interactive Terminal Mode** | Full REPL interface for real-time chat with agents |
- **Conversation History**: Maintains a complete history of the conversation
- **Flexible Output Formatting**: Configurable output format for conversation history
## Installation ## Installation
@ -46,7 +43,7 @@ Initializes a new InteractiveGroupChat instance with the specified configuration
| `max_loops` | int | Maximum conversation turns | 1 | | `max_loops` | int | Maximum conversation turns | 1 |
| `output_type` | str | Type of output format | "string" | | `output_type` | str | Type of output format | "string" |
| `interactive` | bool | Whether to enable interactive mode | False | | `interactive` | bool | Whether to enable interactive mode | False |
| `speaker_function` | Callable | Function to determine speaking order | round_robin_speaker | | `speaker_function` | Union[str, Callable] | Function to determine speaking order | round_robin_speaker |
| `speaker_state` | dict | Initial state for speaker function | {"current_index": 0} | | `speaker_state` | dict | Initial state for speaker function | {"current_index": 0} |
**Example:** **Example:**
@ -90,6 +87,8 @@ Processes a task and gets responses from mentioned agents. This is the main meth
**Arguments:** **Arguments:**
- `task` (str): The input task containing @mentions to agents - `task` (str): The input task containing @mentions to agents
- `img` (Optional[str]): Optional image for the task
- `imgs` (Optional[List[str]]): Optional list of images for the task
**Returns:** **Returns:**
@ -104,6 +103,10 @@ print(response)
# Multiple agent collaboration # Multiple agent collaboration
response = chat.run("@FinancialAdvisor and @TaxExpert, how can I minimize taxes on my investments?") response = chat.run("@FinancialAdvisor and @TaxExpert, how can I minimize taxes on my investments?")
print(response) print(response)
# With image input
response = chat.run("@FinancialAdvisor analyze this chart", img="chart.png")
print(response)
``` ```
### Start Interactive Session (`start_interactive_session`) ### Start Interactive Session (`start_interactive_session`)
@ -114,6 +117,13 @@ Starts an interactive terminal session for real-time chat with agents. This crea
**Arguments:** **Arguments:**
None None
**Features:**
- Real-time chat with agents using @mentions
- View available agents and their descriptions
- Change speaker functions during the session
- Built-in help system
- Graceful exit with 'exit' or 'quit' commands
**Example:** **Example:**
```python ```python
@ -127,6 +137,119 @@ chat = InteractiveGroupChat(
chat.start_interactive_session() chat.start_interactive_session()
``` ```
**Interactive Session Commands:**
- `@agent_name message` - Mention specific agents
- `help` or `?` - Show help information
- `speaker` - Change speaker function
- `exit` or `quit` - End the session
### Set Speaker Function (`set_speaker_function`)
**Description:**
Dynamically changes the speaker function and optional state during runtime.
**Arguments:**
- `speaker_function` (Union[str, Callable]): Function that determines speaking order
- String options: "round-robin-speaker", "random-speaker", "priority-speaker", "random-dynamic-speaker"
- Callable: Custom function that takes (agents: List[str], **kwargs) -> str
- `speaker_state` (dict, optional): State for the speaker function
**Example:**
```python
from swarms.structs.interactive_groupchat import random_speaker, priority_speaker
# Change to random speaker function
chat.set_speaker_function(random_speaker)
# Change to priority speaker with custom priorities
chat.set_speaker_function(priority_speaker, {"financial_advisor": 3, "tax_expert": 2})
# Change to random dynamic speaker
chat.set_speaker_function("random-dynamic-speaker")
```
### Get Available Speaker Functions (`get_available_speaker_functions`)
**Description:**
Returns a list of all available built-in speaker function names.
**Arguments:**
None
**Returns:**
- List[str]: List of available speaker function names
**Example:**
```python
available_functions = chat.get_available_speaker_functions()
print(available_functions)
# Output: ['round-robin-speaker', 'random-speaker', 'priority-speaker', 'random-dynamic-speaker']
```
### Get Current Speaker Function (`get_current_speaker_function`)
**Description:**
Returns the name of the currently active speaker function.
**Arguments:**
None
**Returns:**
- str: Name of the current speaker function, or "custom" if it's a custom function
**Example:**
```python
current_function = chat.get_current_speaker_function()
print(current_function) # Output: "round-robin-speaker"
```
### Set Priorities (`set_priorities`)
**Description:**
Sets agent priorities for priority-based speaking order.
**Arguments:**
- `priorities` (dict): Dictionary mapping agent names to priority weights
**Example:**
```python
# Set agent priorities (higher numbers = higher priority)
chat.set_priorities({
"financial_advisor": 5,
"tax_expert": 3,
"investment_analyst": 1
})
```
### Set Dynamic Strategy (`set_dynamic_strategy`)
**Description:**
Sets the strategy for the random-dynamic-speaker function.
**Arguments:**
- `strategy` (str): Either "sequential" or "parallel"
- "sequential": Process one agent at a time based on @mentions
- "parallel": Process all mentioned agents simultaneously
**Example:**
```python
# Set to sequential strategy (one agent at a time)
chat.set_dynamic_strategy("sequential")
# Set to parallel strategy (all mentioned agents respond simultaneously)
chat.set_dynamic_strategy("parallel")
```
### Extract Mentions (`_extract_mentions`) ### Extract Mentions (`_extract_mentions`)
**Description:** **Description:**
@ -207,49 +330,6 @@ chat = InteractiveGroupChat(agents=[financial_advisor, tax_expert])
# Each agent now knows about the other participants and how to collaborate effectively # Each agent now knows about the other participants and how to collaborate effectively
``` ```
### Set Speaker Function (`set_speaker_function`)
**Description:**
Dynamically changes the speaker function and optional state during runtime.
**Arguments:**
- `speaker_function` (Callable): Function that determines speaking order
- `speaker_state` (dict, optional): State for the speaker function
**Example:**
```python
from swarms.structs.interactive_groupchat import random_speaker, priority_speaker
# Change to random speaker function
chat.set_speaker_function(random_speaker)
# Change to priority speaker with custom priorities
chat.set_speaker_function(priority_speaker, {"financial_advisor": 3, "tax_expert": 2})
```
### Set Priorities (`set_priorities`)
**Description:**
Sets agent priorities for priority-based speaking order.
**Arguments:**
- `priorities` (dict): Dictionary mapping agent names to priority weights
**Example:**
```python
# Set agent priorities (higher numbers = higher priority)
chat.set_priorities({
"financial_advisor": 5,
"tax_expert": 3,
"investment_analyst": 1
})
```
### Get Speaking Order (`_get_speaking_order`) ### Get Speaking Order (`_get_speaking_order`)
**Description:** **Description:**
@ -345,6 +425,41 @@ chat = InteractiveGroupChat(
- Good for hierarchical teams or expert-led discussions - Good for hierarchical teams or expert-led discussions
#### Random Dynamic Speaker (`random_dynamic_speaker`)
Advanced speaker function that follows @mentions in agent responses, enabling dynamic conversation flow.
```python
from swarms.structs.interactive_groupchat import InteractiveGroupChat, random_dynamic_speaker
chat = InteractiveGroupChat(
agents=agents,
speaker_function=random_dynamic_speaker,
speaker_state={"strategy": "parallel"}, # or "sequential"
interactive=False,
)
```
**Behavior:**
- **First Call**: Randomly selects an agent to start the conversation
- **Subsequent Calls**: Extracts @mentions from the previous agent's response and selects the next speaker(s)
- **Two Strategies**:
- **Sequential**: Processes one agent at a time based on @mentions
- **Parallel**: Processes all mentioned agents simultaneously
**Example Dynamic Flow:**
```python
# Agent A responds: "I think @AgentB should analyze this data and @AgentC should review the methodology"
# With sequential strategy: Agent B speaks next
# With parallel strategy: Both Agent B and Agent C speak simultaneously
```
**Use Cases:**
- Complex problem-solving where agents need to delegate to specific experts
- Dynamic workflows where the conversation flow depends on agent responses
- Collaborative decision-making processes
### Custom Speaker Functions ### Custom Speaker Functions
You can create your own speaker functions to implement custom logic: You can create your own speaker functions to implement custom logic:
@ -394,6 +509,10 @@ chat.set_speaker_function(random_speaker)
# Change to priority with custom priorities # Change to priority with custom priorities
chat.set_priorities({"financial_advisor": 5, "tax_expert": 3, "analyst": 1}) chat.set_priorities({"financial_advisor": 5, "tax_expert": 3, "analyst": 1})
chat.set_speaker_function(priority_speaker) chat.set_speaker_function(priority_speaker)
# Change to dynamic speaker with parallel strategy
chat.set_speaker_function("random-dynamic-speaker")
chat.set_dynamic_strategy("parallel")
``` ```
## Enhanced Collaborative Behavior ## Enhanced Collaborative Behavior
@ -518,6 +637,8 @@ except InvalidSpeakerFunctionError as e:
| Agent Naming | Use clear, unique names for agents to avoid confusion | `financial_advisor`, `tax_expert` | | Agent Naming | Use clear, unique names for agents to avoid confusion | `financial_advisor`, `tax_expert` |
| Task Format | Always use @mentions to direct tasks to specific agents | `@financial_advisor What's your investment advice?` | | Task Format | Always use @mentions to direct tasks to specific agents | `@financial_advisor What's your investment advice?` |
| Speaker Functions | Choose appropriate speaker functions for your use case | Round robin for fairness, priority for expert-led discussions | | Speaker Functions | Choose appropriate speaker functions for your use case | Round robin for fairness, priority for expert-led discussions |
| Dynamic Speaker | Use random-dynamic-speaker for complex workflows with delegation | When agents need to call on specific experts |
| Strategy Selection | Choose sequential for focused discussions, parallel for brainstorming | Sequential for analysis, parallel for idea generation |
| Collaborative Design | Design agents with complementary expertise for better collaboration | Analyst + Researcher + Strategist | | Collaborative Design | Design agents with complementary expertise for better collaboration | Analyst + Researcher + Strategist |
| Error Handling | Implement proper error handling for various scenarios | `try/except` blocks for `AgentNotFoundError` | | Error Handling | Implement proper error handling for various scenarios | `try/except` blocks for `AgentNotFoundError` |
| Context Management | Be aware that agents can see the full conversation history | Monitor conversation length and relevance | | Context Management | Be aware that agents can see the full conversation history | Monitor conversation length and relevance |
@ -614,6 +735,53 @@ response = chat.run(task)
print(response) print(response)
``` ```
### Dynamic Speaker Function with Delegation
```python
from swarms.structs.interactive_groupchat import InteractiveGroupChat, random_dynamic_speaker
# Create specialized medical agents
cardiologist = Agent(
agent_name="cardiologist",
system_prompt="You are a cardiologist specializing in heart conditions.",
llm="gpt-4",
)
oncologist = Agent(
agent_name="oncologist",
system_prompt="You are an oncologist specializing in cancer treatment.",
llm="gpt-4",
)
endocrinologist = Agent(
agent_name="endocrinologist",
system_prompt="You are an endocrinologist specializing in hormone disorders.",
llm="gpt-4",
)
# Create dynamic group chat
chat = InteractiveGroupChat(
name="Medical Panel Discussion",
description="A collaborative panel of medical specialists",
agents=[cardiologist, oncologist, endocrinologist],
speaker_function=random_dynamic_speaker,
speaker_state={"strategy": "sequential"},
interactive=False,
)
# Complex medical case with dynamic delegation
case = """CASE PRESENTATION:
A 65-year-old male with Type 2 diabetes, hypertension, and recent diagnosis of
stage 3 colon cancer presents with chest pain and shortness of breath.
ECG shows ST-segment elevation. Recent blood work shows elevated blood glucose (280 mg/dL)
and signs of infection (WBC 15,000, CRP elevated).
@cardiologist @oncologist @endocrinologist please provide your assessment and treatment recommendations."""
response = chat.run(case)
print(response)
```
### Dynamic Speaker Function Changes ### Dynamic Speaker Function Changes
```python ```python
@ -621,7 +789,8 @@ from swarms.structs.interactive_groupchat import (
InteractiveGroupChat, InteractiveGroupChat,
round_robin_speaker, round_robin_speaker,
random_speaker, random_speaker,
priority_speaker priority_speaker,
random_dynamic_speaker
) )
# Create brainstorming agents # Create brainstorming agents
@ -647,10 +816,16 @@ chat.set_speaker_function(priority_speaker)
task2 = "Now let's analyze the feasibility of these ideas. @creative @analytical @practical" task2 = "Now let's analyze the feasibility of these ideas. @creative @analytical @practical"
response2 = chat.run(task2) response2 = chat.run(task2)
# Phase 3: Implementation (round robin for equal input) # Phase 3: Dynamic delegation (agents mention each other)
chat.set_speaker_function(round_robin_speaker) chat.set_speaker_function(random_dynamic_speaker)
task3 = "Finally, let's plan implementation. @creative @analytical @practical" chat.set_dynamic_strategy("sequential")
task3 = "Let's plan implementation with dynamic delegation. @creative @analytical @practical"
response3 = chat.run(task3) response3 = chat.run(task3)
# Phase 4: Final synthesis (round robin for equal input)
chat.set_speaker_function(round_robin_speaker)
task4 = "Finally, let's synthesize our findings. @creative @analytical @practical"
response4 = chat.run(task4)
``` ```
### Custom Speaker Function ### Custom Speaker Function
@ -726,38 +901,47 @@ chat.start_interactive_session()
3. **Better Delegation**: Agents naturally delegate to appropriate experts 3. **Better Delegation**: Agents naturally delegate to appropriate experts
4. **Enhanced Problem Solving**: Complex problems are addressed systematically 4. **Enhanced Problem Solving**: Complex problems are addressed systematically
5. **More Natural Interactions**: Agents respond like real team members 5. **More Natural Interactions**: Agents respond like real team members
6. **Dynamic Workflows**: Conversation flow adapts based on agent responses
7. **Flexible Execution**: Support for both sequential and parallel processing
### Use Cases ### Use Cases
| Use Case Category | Specific Use Case | Agent Team Composition | | Use Case Category | Specific Use Case | Agent Team Composition | Recommended Speaker Function |
|------------------|-------------------|----------------------| |------------------|-------------------|----------------------|------------------------------|
| **Business Analysis and Strategy** | Data Analysis | Analyst + Researcher + Strategist | | **Business Analysis and Strategy** | Data Analysis | Analyst + Researcher + Strategist | Round Robin |
| | Market Research | Multiple experts analyzing different aspects | | | Market Research | Multiple experts analyzing different aspects | Random Dynamic |
| | Strategic Planning | Expert-led discussions with collaborative input | | | Strategic Planning | Expert-led discussions with collaborative input | Priority |
| **Product Development** | Requirements Gathering | Product Manager + Developer + Designer | | **Product Development** | Requirements Gathering | Product Manager + Developer + Designer | Round Robin |
| | Technical Architecture | Senior + Junior developers with different expertise | | | Technical Architecture | Senior + Junior developers with different expertise | Priority |
| | User Experience | UX Designer + Product Manager + Developer | | | User Experience | UX Designer + Product Manager + Developer | Random Dynamic |
| **Research and Development** | Scientific Research | Multiple researchers with different specializations | | **Research and Development** | Scientific Research | Multiple researchers with different specializations | Random Dynamic |
| | Literature Review | Different experts reviewing various aspects | | | Literature Review | Different experts reviewing various aspects | Round Robin |
| | Experimental Design | Statistician + Domain Expert + Methodologist | | | Experimental Design | Statistician + Domain Expert + Methodologist | Priority |
| **Creative Projects** | Content Creation | Writer + Editor + Designer | | **Creative Projects** | Content Creation | Writer + Editor + Designer | Random |
| | Marketing Campaigns | Creative + Analyst + Strategist | | | Marketing Campaigns | Creative + Analyst + Strategist | Random Dynamic |
| | Design Projects | Designer + Developer + Product Manager | | | Design Projects | Designer + Developer + Product Manager | Round Robin |
| **Problem Solving** | Troubleshooting | Technical + Business + User perspective experts | | **Problem Solving** | Troubleshooting | Technical + Business + User perspective experts | Priority |
| | Crisis Management | Emergency + Communication + Technical teams | | | Crisis Management | Emergency + Communication + Technical teams | Priority |
| | Decision Making | Executive + Analyst + Specialist | | | Decision Making | Executive + Analyst + Specialist | Priority |
| **Medical Consultation** | Complex Cases | Multiple specialists (Cardiologist + Oncologist + Endocrinologist) | Random Dynamic |
| | Treatment Planning | Senior + Junior doctors with different expertise | Priority |
| | Research Review | Multiple researchers reviewing different aspects | Round Robin |
### Speaker Function Selection Guide ### Speaker Function Selection Guide
| Use Case | Recommended Speaker Function | Reasoning | | Use Case | Recommended Speaker Function | Strategy | Reasoning |
|----------|------------------------------|-----------| |----------|------------------------------|----------|-----------|
| Team Meetings | Round Robin | Ensures equal participation | | Team Meetings | Round Robin | N/A | Ensures equal participation |
| Brainstorming | Random | Prevents bias and encourages creativity | | Brainstorming | Random | N/A | Prevents bias and encourages creativity |
| Expert Consultation | Priority | Senior experts speak first | | Expert Consultation | Priority | N/A | Senior experts speak first |
| Problem Solving | Priority | Most relevant experts prioritize | | Problem Solving | Priority | N/A | Most relevant experts prioritize |
| Creative Sessions | Random | Encourages diverse perspectives | | Creative Sessions | Random | N/A | Encourages diverse perspectives |
| Decision Making | Priority | Decision makers speak first | | Decision Making | Priority | N/A | Decision makers speak first |
| Research Review | Round Robin | Equal contribution from all reviewers | | Research Review | Round Robin | N/A | Equal contribution from all reviewers |
| Complex Workflows | Random Dynamic | Sequential | Follows natural conversation flow |
| Parallel Analysis | Random Dynamic | Parallel | Multiple agents work simultaneously |
| Medical Panels | Random Dynamic | Sequential | Specialists delegate to relevant experts |
| Technical Architecture | Random Dynamic | Sequential | Senior architects guide the discussion |
## Contributing ## Contributing

File diff suppressed because it is too large Load Diff

@ -0,0 +1,59 @@
# Swarms API Rate Limits
The Swarms API implements rate limiting to ensure fair usage and system stability. Here are the current limits:
## Standard Rate Limits
- **General API Requests**: 100 requests per minute
- **Batch Operations**: Maximum 10 requests per batch for agent/swarm batch operations
## Rate Limit Response
When you exceed the rate limit, the API will return a 429 (Too Many Requests) status code with the following message:
```json
{
"detail": "Rate limit exceeded. Please try again later."
}
```
## Batch Operation Limits
For batch operations (`/v1/agent/batch/completions` and `/v1/swarm/batch/completions`):
- Maximum 10 concurrent requests per batch
- Exceeding this limit will result in a 400 (Bad Request) error
## Increasing Your Rate Limits
Need higher rate limits for your application? You can increase your limits by subscribing to a higher tier plan at [swarms.world/pricing](https://swarms.world/pricing).
Higher tier plans offer:
- Increased rate limits
- Higher batch operation limits
- Priority processing
- Dedicated support
## Best Practices
To make the most of your rate limits:
1. Implement proper error handling for rate limit responses
2. Use batch operations when processing multiple requests
3. Add appropriate retry logic with exponential backoff
4. Monitor your API usage to stay within limits
## Rate Limit Headers
The API does not currently expose rate limit headers. We recommend implementing your own request tracking to stay within the limits.
---
For questions about rate limits or to request a custom plan for higher limits, please contact our support team or visit [swarms.world/pricing](https://swarms.world/pricing).

@ -1,54 +1,30 @@
### Available Swarms in The Swarms API # Multi-Agent Architectures
| Swarm Type | Description (English) | Description (Chinese) | Each multi-agent architecture type is designed for specific use cases and can be combined to create powerful multi-agent systems. Here's a comprehensive overview of each available swarm:
|----------------------|-----------------------------------------------------------------------------|----------------------------------------------------------------------------|
| AgentRearrange | A swarm type focused on rearranging agents for optimal performance. | 一种专注于重新排列代理以实现最佳性能的群类型。 |
| MixtureOfAgents | Combines different types of agents to achieve a specific goal. | 结合不同类型的代理以实现特定目标。 |
| SpreadSheetSwarm | Utilizes spreadsheet-like structures for data management and operations. | 利用类似电子表格的结构进行数据管理和操作。 |
| SequentialWorkflow | Executes tasks in a sequential manner. | 以顺序方式执行任务。 |
| ConcurrentWorkflow | Allows tasks to be executed concurrently for efficiency. | 允许任务并发执行以提高效率。 |
| GroupChat | Facilitates communication among agents in a group chat format. | 以群聊格式促进代理之间的沟通。 |
| MultiAgentRouter | Routes tasks and information among multiple agents. | 在多个代理之间路由任务和信息。 |
| AutoSwarmBuilder | Automatically builds and configures swarms based on predefined criteria. | 根据预定义标准自动构建和配置群。 |
| HiearchicalSwarm | Organizes agents in a hierarchical structure for task delegation. | 以层次结构组织代理以进行任务委派。 |
| auto | Automatically selects the best swarm type based on the context. | 根据上下文自动选择最佳群类型。 |
| MajorityVoting | Uses majority voting among agents to make decisions. | 使用代理之间的多数投票来做出决策。 |
| MALT | A specialized swarm type for specific tasks (details needed). | 一种专门为特定任务设计的群类型(需要详细信息)。 |
### Documentation for Swarms | Swarm Type | Description | Learn More |
|---------------------|------------------------------------------------------------------------------|------------|
| AgentRearrange | Dynamically reorganizes agents to optimize task performance and efficiency. Optimizes agent performance by dynamically adjusting their roles and positions within the workflow. This architecture is particularly useful when the effectiveness of agents depends on their sequence or arrangement. | [Learn More](/swarms/structs/agent_rearrange) |
| MixtureOfAgents | Creates diverse teams of specialized agents, each bringing unique capabilities to solve complex problems. Each agent contributes unique skills to achieve the overall goal, making it excel at tasks requiring multiple types of expertise or processing. | [Learn More](/swarms/structs/moa) |
| SpreadSheetSwarm | Provides a structured approach to data management and operations, making it ideal for tasks involving data analysis, transformation, and systematic processing in a spreadsheet-like structure. | [Learn More](/swarms/structs/spreadsheet_swarm) |
| SequentialWorkflow | Ensures strict process control by executing tasks in a predefined order. Perfect for workflows where each step depends on the completion of previous steps. | [Learn More](/swarms/structs/sequential_workflow) |
| ConcurrentWorkflow | Maximizes efficiency by running independent tasks in parallel, significantly reducing overall processing time for complex operations. Ideal for independent tasks that can be processed simultaneously. | [Learn More](/swarms/structs/concurrentworkflow) |
| GroupChat | Enables dynamic collaboration between agents through a chat-based interface, facilitating real-time information sharing and decision-making. | [Learn More](/swarms/structs/group_chat) |
| MultiAgentRouter | Acts as an intelligent task dispatcher, ensuring optimal distribution of work across available agents based on their capabilities and current workload. | [Learn More](/swarms/structs/multi_agent_router) |
| AutoSwarmBuilder | Simplifies swarm creation by automatically configuring agent architectures based on task requirements and performance metrics. | [Learn More](/swarms/structs/auto_swarm_builder) |
| HiearchicalSwarm | Implements a structured approach to task management, with clear lines of authority and delegation across multiple agent levels. | [Learn More](/swarms/structs/multi_swarm_orchestration) |
| auto | Provides intelligent swarm selection based on context, automatically choosing the most effective architecture for given tasks. | [Learn More](/swarms/concept/how_to_choose_swarms) |
| MajorityVoting | Implements robust decision-making through consensus, particularly useful for tasks requiring collective intelligence or verification. | [Learn More](/swarms/structs/majorityvoting) |
| MALT | Specialized framework for language-based tasks, optimizing agent collaboration for complex language processing operations. | [Learn More](/swarms/structs/malt) |
1. **AgentRearrange**: This swarm type is designed to rearrange agents to optimize their performance in a given task. It is useful in scenarios where agent positioning or order affects the outcome. # Learn More
- 这种群类型旨在重新排列代理以优化其在给定任务中的性能。它在代理位置或顺序影响结果的情况下非常有用。
2. **MixtureOfAgents**: This type combines various agents, each with unique capabilities, to work together towards a common goal. It leverages the strengths of different agents to enhance overall performance. To learn more about Swarms architecture and how different swarm types work together, visit our comprehensive guides:
- 这种类型结合了各种代理,每个代理都有独特的能力,共同努力实现共同目标。它利用不同代理的优势来提高整体性能。
3. **SpreadSheetSwarm**: This swarm type uses spreadsheet-like structures to manage and operate on data. It is ideal for tasks that require organized data manipulation and analysis. - [Introduction to Multi-Agent Architectures](/swarms/concept/swarm_architectures)
- 这种群类型使用类似电子表格的结构来管理和操作数据。它非常适合需要有组织的数据操作和分析的任务。
4. **SequentialWorkflow**: Tasks are executed one after another in this swarm type, ensuring that each step is completed before the next begins. It is suitable for processes that require strict order. - [How to Choose the Right Multi-Agent Architecture](/swarms/concept/how_to_choose_swarms)
- 在这种群类型中,任务一个接一个地执行,确保每个步骤在下一个步骤开始之前完成。它适用于需要严格顺序的流程。
5. **ConcurrentWorkflow**: This type allows multiple tasks to be executed simultaneously, improving efficiency and reducing time for completion. It is best for independent tasks that do not rely on each other. - [Framework Architecture Overview](/swarms/concept/framework_architecture)
- 这种类型允许多个任务同时执行,提高效率并减少完成时间。它最适合不相互依赖的独立任务。
6. **GroupChat**: Facilitates communication among agents in a group chat format, enabling real-time collaboration and decision-making. - [Building Custom Swarms](/swarms/structs/custom_swarm)
- 以群聊格式促进代理之间的沟通,实现实时协作和决策。
7. **MultiAgentRouter**: This swarm type routes tasks and information among multiple agents, ensuring that each agent receives the necessary data to perform its function.
- 这种群类型在多个代理之间路由任务和信息,确保每个代理接收到执行其功能所需的数据。
8. **AutoSwarmBuilder**: Automatically builds and configures swarms based on predefined criteria, reducing the need for manual setup and configuration.
- 根据预定义标准自动构建和配置群,减少手动设置和配置的需要。
9. **HiearchicalSwarm**: Organizes agents in a hierarchical structure, allowing for efficient task delegation and management.
- 以层次结构组织代理,允许高效的任务委派和管理。
10. **auto**: Automatically selects the most appropriate swarm type based on the context and requirements of the task.
- 根据任务的上下文和要求自动选择最合适的群类型。
11. **MajorityVoting**: Uses a majority voting mechanism among agents to make decisions, ensuring that the most popular choice is selected.
- 使用代理之间的多数投票机制来做出决策,确保选择最受欢迎的选项。
12. **MALT**: A specialized swarm type designed for specific tasks. Further details are needed to fully document this type.
- 一种专门为特定任务设计的群类型。需要进一步的详细信息来完整记录这种类型。

@ -0,0 +1,163 @@
"""
Medical Panel Discussion Example
This example demonstrates a panel of medical specialists discussing treatment solutions
for various diseases using InteractiveGroupChat with different speaker functions:
- Round Robin: Doctors speak in a fixed order
- Random: Doctors speak in random order
- Priority: Senior doctors speak first
- Custom: Disease-specific speaker function
The panel includes specialists from different medical fields who can collaborate
on complex medical cases and treatment plans.
"""
from swarms import Agent
from swarms.structs.interactive_groupchat import (
InteractiveGroupChat,
)
def create_medical_panel():
"""Create a panel of medical specialists for discussion."""
# Cardiologist - Heart and cardiovascular system specialist
cardiologist = Agent(
agent_name="cardiologist",
system_prompt="""You are Dr. Sarah Chen, a board-certified cardiologist with 15 years of experience.
You specialize in cardiovascular diseases, heart failure, arrhythmias, and interventional cardiology.
You have expertise in:
- Coronary artery disease and heart attacks
- Heart failure and cardiomyopathy
- Arrhythmias and electrophysiology
- Hypertension and lipid disorders
- Cardiac imaging and diagnostic procedures
When discussing cases, provide evidence-based treatment recommendations,
consider patient risk factors, and collaborate with other specialists for comprehensive care.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Oncologist - Cancer specialist
oncologist = Agent(
agent_name="oncologist",
system_prompt="""You are Dr. Michael Rodriguez, a medical oncologist with 12 years of experience.
You specialize in the diagnosis and treatment of various types of cancer.
You have expertise in:
- Solid tumors (lung, breast, colon, prostate, etc.)
- Hematologic malignancies (leukemia, lymphoma, multiple myeloma)
- Targeted therapy and immunotherapy
- Clinical trials and novel treatments
- Palliative care and symptom management
When discussing cases, consider the cancer type, stage, molecular profile,
patient performance status, and available treatment options including clinical trials.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Neurologist - Nervous system specialist
neurologist = Agent(
agent_name="neurologist",
system_prompt="""You are Dr. Emily Watson, a neurologist with 10 years of experience.
You specialize in disorders of the nervous system, brain, and spinal cord.
You have expertise in:
- Stroke and cerebrovascular disease
- Neurodegenerative disorders (Alzheimer's, Parkinson's, ALS)
- Multiple sclerosis and demyelinating diseases
- Epilepsy and seizure disorders
- Headache and migraine disorders
- Neuromuscular diseases
When discussing cases, consider neurological symptoms, imaging findings,
and the impact of neurological conditions on overall patient care.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Endocrinologist - Hormone and metabolism specialist
endocrinologist = Agent(
agent_name="endocrinologist",
system_prompt="""You are Dr. James Thompson, an endocrinologist with 8 years of experience.
You specialize in disorders of the endocrine system and metabolism.
You have expertise in:
- Diabetes mellitus (Type 1, Type 2, gestational)
- Thyroid disorders (hyperthyroidism, hypothyroidism, thyroid cancer)
- Adrenal disorders and Cushing's syndrome
- Pituitary disorders and growth hormone issues
- Osteoporosis and calcium metabolism
- Reproductive endocrinology
When discussing cases, consider metabolic factors, hormone levels,
and how endocrine disorders may affect other organ systems.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Infectious Disease Specialist
infectious_disease = Agent(
agent_name="infectious_disease",
system_prompt="""You are Dr. Lisa Park, an infectious disease specialist with 11 years of experience.
You specialize in the diagnosis and treatment of infectious diseases.
You have expertise in:
- Bacterial, viral, fungal, and parasitic infections
- Antibiotic resistance and antimicrobial stewardship
- HIV/AIDS and opportunistic infections
- Travel medicine and tropical diseases
- Hospital-acquired infections
- Emerging infectious diseases
When discussing cases, consider the infectious agent, antimicrobial susceptibility,
host factors, and infection control measures.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
return [
cardiologist,
oncologist,
neurologist,
endocrinologist,
infectious_disease,
]
def example_round_robin_panel():
"""Example with round robin speaking order."""
print("=== ROUND ROBIN MEDICAL PANEL ===\n")
agents = create_medical_panel()
group_chat = InteractiveGroupChat(
name="Medical Panel Discussion",
description="A collaborative panel of medical specialists discussing complex cases",
agents=agents,
speaker_function="round-robin-speaker",
interactive=False,
)
print(group_chat.speaker_function)
# Case 1: Complex patient with multiple conditions
case1 = """CASE PRESENTATION:
A 65-year-old male with Type 2 diabetes, hypertension, and recent diagnosis of
stage 3 colon cancer presents with chest pain and shortness of breath.
ECG shows ST-segment elevation. Recent blood work shows elevated blood glucose (280 mg/dL)
and signs of infection (WBC 15,000, CRP elevated).
@cardiologist @oncologist @endocrinologist @infectious_disease please provide your
assessment and treatment recommendations for this complex case."""
response = group_chat.run(case1)
print(f"Response:\n{response}\n")
print("=" * 80 + "\n")
if __name__ == "__main__":
example_round_robin_panel()

@ -0,0 +1,162 @@
"""
Medical Panel Discussion Example
This example demonstrates a panel of medical specialists discussing treatment solutions
for various diseases using InteractiveGroupChat with different speaker functions:
- Round Robin: Doctors speak in a fixed order
- Random: Doctors speak in random order
- Priority: Senior doctors speak first
- Custom: Disease-specific speaker function
The panel includes specialists from different medical fields who can collaborate
on complex medical cases and treatment plans.
"""
from swarms import Agent
from swarms.structs.interactive_groupchat import (
InteractiveGroupChat,
round_robin_speaker,
)
def create_medical_panel():
"""Create a panel of medical specialists for discussion."""
# Cardiologist - Heart and cardiovascular system specialist
cardiologist = Agent(
agent_name="cardiologist",
system_prompt="""You are Dr. Sarah Chen, a board-certified cardiologist with 15 years of experience.
You specialize in cardiovascular diseases, heart failure, arrhythmias, and interventional cardiology.
You have expertise in:
- Coronary artery disease and heart attacks
- Heart failure and cardiomyopathy
- Arrhythmias and electrophysiology
- Hypertension and lipid disorders
- Cardiac imaging and diagnostic procedures
When discussing cases, provide evidence-based treatment recommendations,
consider patient risk factors, and collaborate with other specialists for comprehensive care.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Oncologist - Cancer specialist
oncologist = Agent(
agent_name="oncologist",
system_prompt="""You are Dr. Michael Rodriguez, a medical oncologist with 12 years of experience.
You specialize in the diagnosis and treatment of various types of cancer.
You have expertise in:
- Solid tumors (lung, breast, colon, prostate, etc.)
- Hematologic malignancies (leukemia, lymphoma, multiple myeloma)
- Targeted therapy and immunotherapy
- Clinical trials and novel treatments
- Palliative care and symptom management
When discussing cases, consider the cancer type, stage, molecular profile,
patient performance status, and available treatment options including clinical trials.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Neurologist - Nervous system specialist
neurologist = Agent(
agent_name="neurologist",
system_prompt="""You are Dr. Emily Watson, a neurologist with 10 years of experience.
You specialize in disorders of the nervous system, brain, and spinal cord.
You have expertise in:
- Stroke and cerebrovascular disease
- Neurodegenerative disorders (Alzheimer's, Parkinson's, ALS)
- Multiple sclerosis and demyelinating diseases
- Epilepsy and seizure disorders
- Headache and migraine disorders
- Neuromuscular diseases
When discussing cases, consider neurological symptoms, imaging findings,
and the impact of neurological conditions on overall patient care.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Endocrinologist - Hormone and metabolism specialist
endocrinologist = Agent(
agent_name="endocrinologist",
system_prompt="""You are Dr. James Thompson, an endocrinologist with 8 years of experience.
You specialize in disorders of the endocrine system and metabolism.
You have expertise in:
- Diabetes mellitus (Type 1, Type 2, gestational)
- Thyroid disorders (hyperthyroidism, hypothyroidism, thyroid cancer)
- Adrenal disorders and Cushing's syndrome
- Pituitary disorders and growth hormone issues
- Osteoporosis and calcium metabolism
- Reproductive endocrinology
When discussing cases, consider metabolic factors, hormone levels,
and how endocrine disorders may affect other organ systems.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Infectious Disease Specialist
infectious_disease = Agent(
agent_name="infectious_disease",
system_prompt="""You are Dr. Lisa Park, an infectious disease specialist with 11 years of experience.
You specialize in the diagnosis and treatment of infectious diseases.
You have expertise in:
- Bacterial, viral, fungal, and parasitic infections
- Antibiotic resistance and antimicrobial stewardship
- HIV/AIDS and opportunistic infections
- Travel medicine and tropical diseases
- Hospital-acquired infections
- Emerging infectious diseases
When discussing cases, consider the infectious agent, antimicrobial susceptibility,
host factors, and infection control measures.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
return [
cardiologist,
oncologist,
neurologist,
endocrinologist,
infectious_disease,
]
def example_round_robin_panel():
"""Example with round robin speaking order."""
print("=== ROUND ROBIN MEDICAL PANEL ===\n")
agents = create_medical_panel()
group_chat = InteractiveGroupChat(
name="Medical Panel Discussion",
description="A collaborative panel of medical specialists discussing complex cases",
agents=agents,
speaker_function=round_robin_speaker,
interactive=False,
)
# Case 1: Complex patient with multiple conditions
case1 = """CASE PRESENTATION:
A 65-year-old male with Type 2 diabetes, hypertension, and recent diagnosis of
stage 3 colon cancer presents with chest pain and shortness of breath.
ECG shows ST-segment elevation. Recent blood work shows elevated blood glucose (280 mg/dL)
and signs of infection (WBC 15,000, CRP elevated).
@cardiologist @oncologist @endocrinologist @infectious_disease please provide your
assessment and treatment recommendations for this complex case."""
response = group_chat.run(case1)
print(f"Response:\n{response}\n")
print("=" * 80 + "\n")
if __name__ == "__main__":
example_round_robin_panel()

@ -24,7 +24,7 @@ def create_example_agents():
analyst = Agent( analyst = Agent(
agent_name="analyst", agent_name="analyst",
system_prompt="You are a data analyst. You excel at analyzing data, creating charts, and providing insights.", system_prompt="You are a data analyst. You excel at analyzing data, creating charts, and providing insights.",
model_name="gpt-4.1", model_name="claude-3-5-sonnet-20240620",
streaming_on=True, streaming_on=True,
print_on=True, print_on=True,
) )
@ -32,7 +32,7 @@ def create_example_agents():
researcher = Agent( researcher = Agent(
agent_name="researcher", agent_name="researcher",
system_prompt="You are a research specialist. You are great at gathering information, fact-checking, and providing detailed research.", system_prompt="You are a research specialist. You are great at gathering information, fact-checking, and providing detailed research.",
model_name="gpt-4.1", model_name="claude-3-5-sonnet-20240620",
streaming_on=True, streaming_on=True,
print_on=True, print_on=True,
) )
@ -40,7 +40,7 @@ def create_example_agents():
writer = Agent( writer = Agent(
agent_name="writer", agent_name="writer",
system_prompt="You are a content writer. You excel at writing clear, engaging content and summarizing information.", system_prompt="You are a content writer. You excel at writing clear, engaging content and summarizing information.",
model_name="gpt-4.1", model_name="claude-3-5-sonnet-20240620",
streaming_on=True, streaming_on=True,
print_on=True, print_on=True,
) )
@ -61,7 +61,7 @@ def example_random():
) )
# Test the random behavior # Test the random behavior
task = "Let's create a marketing strategy. @analyst @researcher @writer please contribute." task = "Let's create a marketing strategy for a personal healthcare ai consumer assistant app. @analyst @researcher @writer please contribute."
response = group_chat.run(task) response = group_chat.run(task)
print(f"Response:\n{response}\n") print(f"Response:\n{response}\n")

@ -3,10 +3,12 @@ from swarms import Agent
# Enable real-time streaming # Enable real-time streaming
agent = Agent( agent = Agent(
agent_name="StoryAgent", agent_name="StoryAgent",
model_name="gpt-4o-mini", # model_name="groq/llama-3.1-8b-instant",
model_name="claude-3-5-sonnet-20240620",
# system_prompt="",
streaming_on=True, # 🔥 This enables real streaming! streaming_on=True, # 🔥 This enables real streaming!
max_loops=1, max_loops=1,
print_on=False, print_on=True,
output_type="all", output_type="all",
) )

@ -5,7 +5,7 @@ build-backend = "poetry.core.masonry.api"
[tool.poetry] [tool.poetry]
name = "swarms" name = "swarms"
version = "7.8.9" version = "7.9.0"
description = "Swarms - TGSC" description = "Swarms - TGSC"
license = "MIT" license = "MIT"
authors = ["Kye Gomez <kye@apac.ai>"] authors = ["Kye Gomez <kye@apac.ai>"]

@ -0,0 +1,162 @@
"""
Medical Panel Discussion Example
This example demonstrates a panel of medical specialists discussing treatment solutions
for various diseases using InteractiveGroupChat with different speaker functions:
- Round Robin: Doctors speak in a fixed order
- Random: Doctors speak in random order
- Priority: Senior doctors speak first
- Custom: Disease-specific speaker function
The panel includes specialists from different medical fields who can collaborate
on complex medical cases and treatment plans.
"""
from swarms import Agent
from swarms.structs.interactive_groupchat import (
InteractiveGroupChat,
)
def create_medical_panel():
"""Create a panel of medical specialists for discussion."""
# Cardiologist - Heart and cardiovascular system specialist
cardiologist = Agent(
agent_name="cardiologist",
system_prompt="""You are Dr. Sarah Chen, a board-certified cardiologist with 15 years of experience.
You specialize in cardiovascular diseases, heart failure, arrhythmias, and interventional cardiology.
You have expertise in:
- Coronary artery disease and heart attacks
- Heart failure and cardiomyopathy
- Arrhythmias and electrophysiology
- Hypertension and lipid disorders
- Cardiac imaging and diagnostic procedures
When discussing cases, provide evidence-based treatment recommendations,
consider patient risk factors, and collaborate with other specialists for comprehensive care.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Oncologist - Cancer specialist
oncologist = Agent(
agent_name="oncologist",
system_prompt="""You are Dr. Michael Rodriguez, a medical oncologist with 12 years of experience.
You specialize in the diagnosis and treatment of various types of cancer.
You have expertise in:
- Solid tumors (lung, breast, colon, prostate, etc.)
- Hematologic malignancies (leukemia, lymphoma, multiple myeloma)
- Targeted therapy and immunotherapy
- Clinical trials and novel treatments
- Palliative care and symptom management
When discussing cases, consider the cancer type, stage, molecular profile,
patient performance status, and available treatment options including clinical trials.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Neurologist - Nervous system specialist
neurologist = Agent(
agent_name="neurologist",
system_prompt="""You are Dr. Emily Watson, a neurologist with 10 years of experience.
You specialize in disorders of the nervous system, brain, and spinal cord.
You have expertise in:
- Stroke and cerebrovascular disease
- Neurodegenerative disorders (Alzheimer's, Parkinson's, ALS)
- Multiple sclerosis and demyelinating diseases
- Epilepsy and seizure disorders
- Headache and migraine disorders
- Neuromuscular diseases
When discussing cases, consider neurological symptoms, imaging findings,
and the impact of neurological conditions on overall patient care.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Endocrinologist - Hormone and metabolism specialist
endocrinologist = Agent(
agent_name="endocrinologist",
system_prompt="""You are Dr. James Thompson, an endocrinologist with 8 years of experience.
You specialize in disorders of the endocrine system and metabolism.
You have expertise in:
- Diabetes mellitus (Type 1, Type 2, gestational)
- Thyroid disorders (hyperthyroidism, hypothyroidism, thyroid cancer)
- Adrenal disorders and Cushing's syndrome
- Pituitary disorders and growth hormone issues
- Osteoporosis and calcium metabolism
- Reproductive endocrinology
When discussing cases, consider metabolic factors, hormone levels,
and how endocrine disorders may affect other organ systems.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
# Infectious Disease Specialist
infectious_disease = Agent(
agent_name="infectious_disease",
system_prompt="""You are Dr. Lisa Park, an infectious disease specialist with 11 years of experience.
You specialize in the diagnosis and treatment of infectious diseases.
You have expertise in:
- Bacterial, viral, fungal, and parasitic infections
- Antibiotic resistance and antimicrobial stewardship
- HIV/AIDS and opportunistic infections
- Travel medicine and tropical diseases
- Hospital-acquired infections
- Emerging infectious diseases
When discussing cases, consider the infectious agent, antimicrobial susceptibility,
host factors, and infection control measures.""",
model_name="claude-3-5-sonnet-20240620",
streaming_on=True,
print_on=True,
)
return [
cardiologist,
oncologist,
neurologist,
endocrinologist,
infectious_disease,
]
def example_round_robin_panel():
"""Example with round robin speaking order."""
print("=== ROUND ROBIN MEDICAL PANEL ===\n")
agents = create_medical_panel()
group_chat = InteractiveGroupChat(
name="Medical Panel Discussion",
description="A collaborative panel of medical specialists discussing complex cases",
agents=agents,
speaker_function="random-dynamic-speaker",
interactive=False,
)
print(group_chat.speaker_function)
print(group_chat.get_current_speaker_function())
# Case 1: Complex patient with multiple conditions
case1 = """CASE PRESENTATION:
A 65-year-old male with Type 2 diabetes, hypertension, and recent diagnosis of
stage 3 colon cancer presents with chest pain and shortness of breath.
ECG shows ST-segment elevation. Recent blood work shows elevated blood glucose (280 mg/dL)
and signs of infection (WBC 15,000, CRP elevated).
@cardiologist @oncologist @endocrinologist @infectious_disease please provide your
assessment and treatment recommendations for this complex case."""
group_chat.run(case1)
if __name__ == "__main__":
example_round_robin_panel()

@ -83,7 +83,14 @@ from swarms.structs.swarming_architectures import (
staircase_swarm, staircase_swarm,
star_swarm, star_swarm,
) )
from swarms.structs.interactive_groupchat import InteractiveGroupChat from swarms.structs.interactive_groupchat import (
InteractiveGroupChat,
speaker_function,
round_robin_speaker,
random_speaker,
priority_speaker,
random_dynamic_speaker,
)
__all__ = [ __all__ = [
"Agent", "Agent",
@ -156,4 +163,9 @@ __all__ = [
"find_agent_by_name", "find_agent_by_name",
"run_agent", "run_agent",
"InteractiveGroupChat", "InteractiveGroupChat",
"speaker_function",
"round_robin_speaker",
"random_speaker",
"priority_speaker",
"random_dynamic_speaker",
] ]

@ -1524,10 +1524,13 @@ class Agent:
f"The model '{self.model_name}' does not support function calling. Please use a model that supports function calling." f"The model '{self.model_name}' does not support function calling. Please use a model that supports function calling."
) )
try:
if self.max_tokens > get_max_tokens(self.model_name): if self.max_tokens > get_max_tokens(self.model_name):
raise AgentInitializationError( raise AgentInitializationError(
f"Max tokens is set to {self.max_tokens}, but the model '{self.model_name}' only supports {get_max_tokens(self.model_name)} tokens. Please set max tokens to {get_max_tokens(self.model_name)} or less." f"Max tokens is set to {self.max_tokens}, but the model '{self.model_name}' only supports {get_max_tokens(self.model_name)} tokens. Please set max tokens to {get_max_tokens(self.model_name)} or less."
) )
except Exception:
pass
if self.model_name not in model_list: if self.model_name not in model_list:
logger.warning( logger.warning(

@ -121,6 +121,71 @@ def priority_speaker(
return available_agents[-1] # Fallback return available_agents[-1] # Fallback
def random_dynamic_speaker(
agents: List[str],
response: str = "",
strategy: str = "parallel",
**kwargs,
) -> Union[str, List[str]]:
"""
Random dynamic speaker function that selects agents based on @mentions in responses.
This function works in two phases:
1. If no response is provided (first call), randomly selects an agent
2. If a response is provided, extracts @mentions and returns agent(s) based on strategy
Args:
agents: List of available agent names
response: The response from the previous agent (may contain @mentions)
strategy: How to handle multiple mentions - "sequential" or "parallel"
**kwargs: Additional arguments (ignored)
Returns:
For sequential strategy: str (single agent name)
For parallel strategy: List[str] (list of agent names)
"""
if not agents:
raise ValueError(
"No agents provided for random dynamic selection"
)
# If no response provided, randomly select first agent
if not response:
return random.choice(agents)
# Extract @mentions from the response
mentions = re.findall(r"@(\w+)", response)
# Filter mentions to only include valid agents
valid_mentions = [
mention for mention in mentions if mention in agents
]
if not valid_mentions:
# If no valid mentions, randomly select from all agents
return random.choice(agents)
# Handle multiple mentions based on strategy
if strategy == "sequential":
# Return the first mentioned agent for sequential execution
return valid_mentions[0]
elif strategy == "parallel":
# Return all mentioned agents for parallel execution
return valid_mentions
else:
raise ValueError(
f"Invalid strategy: {strategy}. Must be 'sequential' or 'parallel'"
)
speaker_functions = {
"round-robin-speaker": round_robin_speaker,
"random-speaker": random_speaker,
"priority-speaker": priority_speaker,
"random-dynamic-speaker": random_dynamic_speaker,
}
class InteractiveGroupChat: class InteractiveGroupChat:
""" """
An interactive group chat system that enables conversations with multiple agents using @mentions. An interactive group chat system that enables conversations with multiple agents using @mentions.
@ -145,11 +210,38 @@ class InteractiveGroupChat:
max_loops (int, optional): Maximum conversation turns. Defaults to 1. max_loops (int, optional): Maximum conversation turns. Defaults to 1.
output_type (str, optional): Type of output format. Defaults to "string". output_type (str, optional): Type of output format. Defaults to "string".
interactive (bool, optional): Whether to enable interactive terminal mode. Defaults to False. interactive (bool, optional): Whether to enable interactive terminal mode. Defaults to False.
speaker_function (Callable, optional): Function to determine speaking order. Defaults to round_robin_speaker. speaker_function (Union[str, Callable], optional): Function to determine speaking order. Can be:
- A string name: "round-robin-speaker", "random-speaker", "priority-speaker", "random-dynamic-speaker"
- A custom callable function
- None (defaults to round_robin_speaker)
speaker_state (dict, optional): Initial state for speaker function. Defaults to empty dict. speaker_state (dict, optional): Initial state for speaker function. Defaults to empty dict.
Raises: Raises:
ValueError: If invalid initialization parameters are provided ValueError: If invalid initialization parameters are provided
InvalidSpeakerFunctionError: If the speaker function is invalid
Examples:
# Initialize with string-based speaker function
group_chat = InteractiveGroupChat(
agents=[agent1, agent2, agent3],
speaker_function="random-speaker"
)
# Initialize with priority speaker function
group_chat = InteractiveGroupChat(
agents=[agent1, agent2, agent3],
speaker_function="priority-speaker",
speaker_state={"priorities": {"agent1": 3, "agent2": 2, "agent3": 1}}
)
# Initialize with dynamic speaker function (agents mention each other)
group_chat = InteractiveGroupChat(
agents=[agent1, agent2, agent3],
speaker_function="random-dynamic-speaker"
)
# Change speaker function during runtime
group_chat.set_speaker_function("round-robin-speaker")
""" """
def __init__( def __init__(
@ -161,7 +253,7 @@ class InteractiveGroupChat:
max_loops: int = 1, max_loops: int = 1,
output_type: str = "string", output_type: str = "string",
interactive: bool = False, interactive: bool = False,
speaker_function: Optional[Callable] = None, speaker_function: Optional[Union[str, Callable]] = None,
speaker_state: Optional[dict] = None, speaker_state: Optional[dict] = None,
): ):
self.id = id self.id = id
@ -173,9 +265,27 @@ class InteractiveGroupChat:
self.interactive = interactive self.interactive = interactive
# Speaker function configuration # Speaker function configuration
self.speaker_function = ( if speaker_function is None:
speaker_function or round_robin_speaker self.speaker_function = round_robin_speaker
elif isinstance(speaker_function, str):
if speaker_function not in speaker_functions:
available_functions = ", ".join(
speaker_functions.keys()
)
raise InvalidSpeakerFunctionError(
f"Invalid speaker function: '{speaker_function}'. "
f"Available functions: {available_functions}"
) )
self.speaker_function = speaker_functions[
speaker_function
]
elif callable(speaker_function):
self.speaker_function = speaker_function
else:
raise InvalidSpeakerFunctionError(
"Speaker function must be either a string, callable, or None"
)
self.speaker_state = speaker_state or {"current_index": 0} self.speaker_state = speaker_state or {"current_index": 0}
# Validate speaker function # Validate speaker function
@ -197,6 +307,230 @@ class InteractiveGroupChat:
self._setup_conversation_context() self._setup_conversation_context()
self._update_agent_prompts() self._update_agent_prompts()
def set_speaker_function(
self,
speaker_function: Union[str, Callable],
speaker_state: Optional[dict] = None,
) -> None:
"""
Set the speaker function using either a string name or a custom callable.
Args:
speaker_function: Either a string name of a predefined function or a custom callable
String options:
- "round-robin-speaker": Cycles through agents in order
- "random-speaker": Selects agents randomly
- "priority-speaker": Selects based on priority weights
- "random-dynamic-speaker": Randomly selects first agent, then follows @mentions in responses
Callable: Custom function that takes (agents: List[str], **kwargs) -> str
speaker_state: Optional state for the speaker function
Raises:
InvalidSpeakerFunctionError: If the speaker function is invalid
"""
if isinstance(speaker_function, str):
# Handle string-based speaker function
if speaker_function not in speaker_functions:
available_functions = ", ".join(
speaker_functions.keys()
)
raise InvalidSpeakerFunctionError(
f"Invalid speaker function: '{speaker_function}'. "
f"Available functions: {available_functions}"
)
self.speaker_function = speaker_functions[
speaker_function
]
logger.info(
f"Speaker function set to: {speaker_function}"
)
elif callable(speaker_function):
# Handle callable speaker function
self.speaker_function = speaker_function
logger.info(
f"Custom speaker function set to: {speaker_function.__name__}"
)
else:
raise InvalidSpeakerFunctionError(
"Speaker function must be either a string or a callable"
)
# Update speaker state if provided
if speaker_state:
self.speaker_state.update(speaker_state)
# Validate the speaker function
self._validate_speaker_function()
def set_priorities(self, priorities: dict) -> None:
"""
Set agent priorities for priority-based speaking order.
Args:
priorities: Dictionary mapping agent names to priority weights
"""
self.speaker_state["priorities"] = priorities
logger.info(f"Agent priorities set: {priorities}")
def get_available_speaker_functions(self) -> List[str]:
"""
Get a list of available speaker function names.
Returns:
List[str]: List of available speaker function names
"""
return list(speaker_functions.keys())
def get_current_speaker_function(self) -> str:
"""
Get the name of the current speaker function.
Returns:
str: Name of the current speaker function, or "custom" if it's a custom function
"""
for name, func in speaker_functions.items():
if self.speaker_function == func:
return name
return "custom"
def start_interactive_session(self):
"""
Start an interactive terminal session for chatting with agents.
This method creates a REPL (Read-Eval-Print Loop) that allows users to:
- Chat with agents using @mentions
- See available agents and their descriptions
- Exit the session using 'exit' or 'quit'
- Get help using 'help' or '?'
"""
if not self.interactive:
raise InteractiveGroupChatError(
"Interactive mode is not enabled. Initialize with interactive=True"
)
print(f"\nWelcome to {self.name}!")
print(f"Description: {self.description}")
print(
f"Current speaker function: {self.get_current_speaker_function()}"
)
print("\nAvailable agents:")
for name, agent in self.agent_map.items():
if isinstance(agent, Agent):
print(
f"- @{name}: {agent.system_prompt.splitlines()[0]}"
)
else:
print(f"- @{name}: Custom callable function")
print("\nCommands:")
print("- Type 'help' or '?' for help")
print("- Type 'exit' or 'quit' to end the session")
print("- Type 'speaker' to change speaker function")
print("- Use @agent_name to mention agents")
print("\nStart chatting:")
while True:
try:
# Get user input
user_input = input("\nYou: ").strip()
# Handle special commands
if user_input.lower() in ["exit", "quit"]:
print("Goodbye!")
break
if user_input.lower() in ["help", "?"]:
print("\nHelp:")
print("1. Mention agents using @agent_name")
print(
"2. You can mention multiple agents in one task"
)
print("3. Available agents:")
for name in self.agent_map:
print(f" - @{name}")
print(
"4. Type 'speaker' to change speaker function"
)
print(
"5. Type 'exit' or 'quit' to end the session"
)
continue
if user_input.lower() == "speaker":
print(
f"\nCurrent speaker function: {self.get_current_speaker_function()}"
)
print("Available speaker functions:")
for i, func_name in enumerate(
self.get_available_speaker_functions(), 1
):
print(f" {i}. {func_name}")
try:
choice = input(
"\nEnter the number or name of the speaker function: "
).strip()
# Try to parse as number first
try:
func_index = int(choice) - 1
if (
0
<= func_index
< len(
self.get_available_speaker_functions()
)
):
selected_func = self.get_available_speaker_functions()[
func_index
]
else:
print(
"Invalid number. Please try again."
)
continue
except ValueError:
# Try to parse as name
selected_func = choice
self.set_speaker_function(selected_func)
print(
f"Speaker function changed to: {self.get_current_speaker_function()}"
)
except InvalidSpeakerFunctionError as e:
print(f"Error: {e}")
except Exception as e:
print(f"An error occurred: {e}")
continue
if not user_input:
continue
# Process the task and get responses
try:
self.run(user_input)
print("\nChat:")
# print(response)
except NoMentionedAgentsError:
print(
"\nError: Please mention at least one agent using @agent_name"
)
except AgentNotFoundError as e:
print(f"\nError: {str(e)}")
except Exception as e:
print(f"\nAn error occurred: {str(e)}")
except KeyboardInterrupt:
print("\nSession terminated by user. Goodbye!")
break
except Exception as e:
print(f"\nAn unexpected error occurred: {str(e)}")
print(
"The session will continue. You can type 'exit' to end it."
)
def _validate_speaker_function(self) -> None: def _validate_speaker_function(self) -> None:
""" """
Validates the speaker function. Validates the speaker function.
@ -287,6 +621,7 @@ IMPORTANT: You are part of a collaborative group chat where you can interact wit
2. ACKNOWLEDGE: Reference and acknowledge what other agents have said 2. ACKNOWLEDGE: Reference and acknowledge what other agents have said
3. BUILD UPON: Add your perspective while building upon their insights 3. BUILD UPON: Add your perspective while building upon their insights
4. MENTION: Use @agent_name to call on other agents when needed 4. MENTION: Use @agent_name to call on other agents when needed
5. COMPLETE: Acknowledge when your part is done and what still needs to be done
HOW TO MENTION OTHER AGENTS: HOW TO MENTION OTHER AGENTS:
- Use @agent_name to mention another agent in your response - Use @agent_name to mention another agent in your response
@ -325,24 +660,33 @@ COLLABORATION GUIDELINES:
- ASK CLARIFYING QUESTIONS if you need more information from other agents - ASK CLARIFYING QUESTIONS if you need more information from other agents
- DELEGATE appropriately: "Let me ask @expert_agent to verify this" or "@specialist, can you elaborate on this point?" - DELEGATE appropriately: "Let me ask @expert_agent to verify this" or "@specialist, can you elaborate on this point?"
TASK COMPLETION GUIDELINES:
- ACKNOWLEDGE when you are done with your part of the task
- CLEARLY STATE what still needs to be done before the overall task is finished
- If you mention other agents, explain what specific input you need from them
- Use phrases like "I have completed [specific part]" or "The task still requires [specific actions]"
- Provide a clear status update: "My analysis is complete. The task now needs @writer to create content and @reviewer to validate the approach."
RESPONSE STRUCTURE: RESPONSE STRUCTURE:
1. ACKNOWLEDGE: "I've reviewed the responses from @agent1 and @agent2..." 1. ACKNOWLEDGE: "I've reviewed the responses from @agent1 and @agent2..."
2. BUILD: "Building on @agent1's analysis of the data..." 2. BUILD: "Building on @agent1's analysis of the data..."
3. CONTRIBUTE: "From my perspective, I would add..." 3. CONTRIBUTE: "From my perspective, I would add..."
4. COLLABORATE: "To get a complete picture, let me ask @agent3 to..." 4. COLLABORATE: "To get a complete picture, let me ask @agent3 to..."
5. SYNTHESIZE: "Combining our insights, the key findings are..." 5. COMPLETE: "I have completed [my part]. The task still requires [specific next steps]"
6. SYNTHESIZE: "Combining our insights, the key findings are..."
EXAMPLES OF GOOD COLLABORATION: EXAMPLES OF GOOD COLLABORATION:
- "I've reviewed @analyst's data analysis and @researcher's market insights. The data shows strong growth potential, and I agree with @researcher that we should focus on emerging markets. Let me add that from a content perspective, we should @writer to create targeted messaging for these markets." - "I've reviewed @analyst's data analysis and @researcher's market insights. The data shows strong growth potential, and I agree with @researcher that we should focus on emerging markets. Let me add that from a content perspective, we should @writer to create targeted messaging for these markets. I have completed my market analysis. The task now requires @writer to develop content and @reviewer to validate our approach."
- "Building on @researcher's findings about customer behavior, I can see that @analyst's data supports this trend. To get a complete understanding, let me ask @writer to help us craft messaging that addresses these specific customer needs." - "Building on @researcher's findings about customer behavior, I can see that @analyst's data supports this trend. To get a complete understanding, let me ask @writer to help us craft messaging that addresses these specific customer needs. My data analysis is complete. The task still needs @writer to create messaging and @reviewer to approve the final strategy."
AVOID: AVOID:
- Ignoring other agents' responses - Ignoring other agents' responses
- Repeating what others have already said - Repeating what others have already said
- Making assumptions without consulting relevant experts - Making assumptions without consulting relevant experts
- Responding in isolation without considering the group's collective knowledge - Responding in isolation without considering the group's collective knowledge
- Not acknowledging task completion status
Remember: You are part of a team. Your response should reflect that you've read, understood, and built upon the contributions of others. Remember: You are part of a team. Your response should reflect that you've read, understood, and are building upon the contributions of others, and clearly communicate your task completion status.
""" """
# Update the agent's system prompt # Update the agent's system prompt
@ -438,6 +782,12 @@ Remember: You are part of a team. Your response should reflect that you've read,
) )
return sorted_agents return sorted_agents
elif self.speaker_function == random_dynamic_speaker:
# For dynamic speaker, we need to handle it differently
# The dynamic speaker will be called during the run method
# For now, just return the original order
return mentioned_agents
else: else:
# Custom speaker function # Custom speaker function
# For custom functions, we'll use the first agent returned # For custom functions, we'll use the first agent returned
@ -460,138 +810,138 @@ Remember: You are part of a team. Your response should reflect that you've read,
# Fallback to original order # Fallback to original order
return mentioned_agents return mentioned_agents
def set_speaker_function( def run(
self, self,
speaker_function: Callable, task: str,
speaker_state: Optional[dict] = None, img: Optional[str] = None,
) -> None: imgs: Optional[List[str]] = None,
""" ) -> str:
Set a custom speaker function and optional state.
Args:
speaker_function: Function that determines speaking order
speaker_state: Optional state for the speaker function
""" """
self.speaker_function = speaker_function Process a task and get responses from mentioned agents.
if speaker_state: If interactive mode is enabled, this will be called by start_interactive_session().
self.speaker_state.update(speaker_state) Otherwise, it can be called directly for single task processing.
self._validate_speaker_function()
logger.info(
f"Speaker function updated to: {speaker_function.__name__}"
)
def set_priorities(self, priorities: dict) -> None:
""" """
Set agent priorities for priority-based speaking order. try:
# Extract mentioned agents
mentioned_agents = self._extract_mentions(task)
Args: if not mentioned_agents:
priorities: Dictionary mapping agent names to priority weights raise NoMentionedAgentsError(
""" "No valid agents mentioned in the task"
self.speaker_state["priorities"] = priorities )
logger.info(f"Agent priorities set: {priorities}")
def start_interactive_session(self): # Add user task to conversation
""" self.conversation.add(role="User", content=task)
Start an interactive terminal session for chatting with agents.
This method creates a REPL (Read-Eval-Print Loop) that allows users to: # Handle dynamic speaker function differently
- Chat with agents using @mentions if self.speaker_function == random_dynamic_speaker:
- See available agents and their descriptions # Get strategy from speaker state (default to sequential)
- Exit the session using 'exit' or 'quit' strategy = self.speaker_state.get(
- Get help using 'help' or '?' "strategy", "sequential"
"""
if not self.interactive:
raise InteractiveGroupChatError(
"Interactive mode is not enabled. Initialize with interactive=True"
) )
print(f"\nWelcome to {self.name}!") # For dynamic speaker, we'll determine the next speaker after each response
print(f"Description: {self.description}") # Track which agents have spoken to ensure all get a chance
print("\nAvailable agents:") spoken_agents = set()
for name, agent in self.agent_map.items(): last_response = ""
if isinstance(agent, Agent): max_iterations = (
print( len(mentioned_agents) * 3
f"- @{name}: {agent.system_prompt.splitlines()[0]}" ) # Allow more iterations for parallel
iteration = 0
while iteration < max_iterations and len(
spoken_agents
) < len(mentioned_agents):
# Determine next speaker(s) using dynamic function
next_speakers = self.speaker_function(
mentioned_agents, # Use all mentioned agents, not remaining_agents
last_response,
strategy=strategy,
**self.speaker_state,
) )
else:
print(f"- @{name}: Custom callable function")
print("\nCommands:") # Handle both single agent and multiple agents
print("- Type 'help' or '?' for help") if isinstance(next_speakers, str):
print("- Type 'exit' or 'quit' to end the session") next_speakers = [next_speakers]
print("- Use @agent_name to mention agents")
print("\nStart chatting:")
while True: # Filter out invalid agents
try: valid_next_speakers = [
# Get user input agent
user_input = input("\nYou: ").strip() for agent in next_speakers
if agent in mentioned_agents
]
# Handle special commands if not valid_next_speakers:
if user_input.lower() in ["exit", "quit"]: # If no valid mentions found, randomly select from unspoken agents
print("Goodbye!") unspoken_agents = [
agent
for agent in mentioned_agents
if agent not in spoken_agents
]
if unspoken_agents:
valid_next_speakers = [
random.choice(unspoken_agents)
]
else:
# All agents have spoken, break the loop
break break
if user_input.lower() in ["help", "?"]: # Process agents based on strategy
print("\nHelp:") if strategy == "sequential":
print("1. Mention agents using @agent_name") # Process one agent at a time
print( for next_speaker in valid_next_speakers:
"2. You can mention multiple agents in one task" if next_speaker in spoken_agents:
) continue # Skip if already spoken
print("3. Available agents:")
for name in self.agent_map:
print(f" - @{name}")
print(
"4. Type 'exit' or 'quit' to end the session"
)
continue
if not user_input:
continue
# Process the task and get responses
try:
self.run(user_input)
print("\nChat:")
# print(response)
except NoMentionedAgentsError: response = self._get_agent_response(
print( next_speaker, img, imgs
"\nError: Please mention at least one agent using @agent_name"
)
except AgentNotFoundError as e:
print(f"\nError: {str(e)}")
except Exception as e:
print(f"\nAn error occurred: {str(e)}")
except KeyboardInterrupt:
print("\nSession terminated by user. Goodbye!")
break
except Exception as e:
print(f"\nAn unexpected error occurred: {str(e)}")
print(
"The session will continue. You can type 'exit' to end it."
) )
if response:
last_response = response
spoken_agents.add(next_speaker)
break # Only process one agent in sequential mode
elif strategy == "parallel":
# Process all mentioned agents in parallel
import concurrent.futures
# Get responses from all valid agents
responses = []
with concurrent.futures.ThreadPoolExecutor() as executor:
future_to_agent = {
executor.submit(
self._get_agent_response,
agent,
img,
imgs,
): agent
for agent in valid_next_speakers
if agent not in spoken_agents
}
def run(self, task: str) -> str: for (
""" future
Process a task and get responses from mentioned agents. ) in concurrent.futures.as_completed(
If interactive mode is enabled, this will be called by start_interactive_session(). future_to_agent
Otherwise, it can be called directly for single task processing. ):
""" agent = future_to_agent[future]
try: try:
# Extract mentioned agents response = future.result()
mentioned_agents = self._extract_mentions(task) if response:
responses.append(response)
if not mentioned_agents: spoken_agents.add(agent)
raise NoMentionedAgentsError( except Exception as e:
"No valid agents mentioned in the task" logger.error(
f"Error getting response from {agent}: {e}"
) )
# Add user task to conversation # Combine responses for next iteration
self.conversation.add(role="User", content=task) if responses:
last_response = "\n\n".join(responses)
# Determine speaking order using speaker function iteration += 1
else:
# For non-dynamic speaker functions, use the original logic
speaking_order = self._get_speaking_order( speaking_order = self._get_speaking_order(
mentioned_agents mentioned_agents
) )
@ -601,6 +951,40 @@ Remember: You are part of a team. Your response should reflect that you've read,
# Get responses from mentioned agents in the determined order # Get responses from mentioned agents in the determined order
for agent_name in speaking_order: for agent_name in speaking_order:
response = self._get_agent_response(
agent_name, img, imgs
)
return history_output_formatter(
self.conversation, self.output_type
)
except InteractiveGroupChatError as e:
logger.error(f"GroupChat error: {e}")
raise
except Exception as e:
logger.error(f"Unexpected error: {e}")
raise InteractiveGroupChatError(
f"Unexpected error occurred: {str(e)}"
)
def _get_agent_response(
self,
agent_name: str,
img: Optional[str] = None,
imgs: Optional[List[str]] = None,
) -> Optional[str]:
"""
Get response from a specific agent.
Args:
agent_name: Name of the agent to get response from
img: Optional image for the task
imgs: Optional list of images for the task
Returns:
The agent's response or None if error
"""
agent = self.agent_map.get(agent_name) agent = self.agent_map.get(agent_name)
if not agent: if not agent:
raise AgentNotFoundError( raise AgentNotFoundError(
@ -609,9 +993,7 @@ Remember: You are part of a team. Your response should reflect that you've read,
try: try:
# Get the complete conversation history # Get the complete conversation history
context = ( context = self.conversation.return_history_as_string()
self.conversation.return_history_as_string()
)
# Get response from agent # Get response from agent
if isinstance(agent, Agent): if isinstance(agent, Agent):
@ -626,9 +1008,19 @@ IMPORTANT INSTRUCTIONS:
4. If you need input from other agents, mention them using @agent_name 4. If you need input from other agents, mention them using @agent_name
5. Provide your unique expertise while showing you understand the group's collective knowledge 5. Provide your unique expertise while showing you understand the group's collective knowledge
TASK COMPLETION GUIDELINES:
- Acknowledge when you are done with your part of the task
- Clearly state what still needs to be done before the overall task is finished
- If you mention other agents, explain what specific input you need from them
- Use phrases like "I have completed [specific part]" or "The task still requires [specific actions]"
Remember: You are part of a collaborative team. Your response should demonstrate that you've read, understood, and are building upon the contributions of others.""" Remember: You are part of a collaborative team. Your response should demonstrate that you've read, understood, and are building upon the contributions of others."""
response = agent.run(task=collaborative_task) response = agent.run(
task=collaborative_task,
img=img,
imgs=imgs,
)
else: else:
# For callable functions # For callable functions
response = agent(context) response = agent(context)
@ -639,6 +1031,7 @@ Remember: You are part of a collaborative team. Your response should demonstrate
role=agent_name, content=response role=agent_name, content=response
) )
logger.info(f"Agent {agent_name} responded") logger.info(f"Agent {agent_name} responded")
return response
except Exception as e: except Exception as e:
logger.error( logger.error(
@ -648,16 +1041,23 @@ Remember: You are part of a collaborative team. Your response should demonstrate
role=agent_name, role=agent_name,
content=f"Error: Unable to generate response - {str(e)}", content=f"Error: Unable to generate response - {str(e)}",
) )
return f"Error: Unable to generate response - {str(e)}"
return history_output_formatter( return None
self.conversation, self.output_type
)
except InteractiveGroupChatError as e: def set_dynamic_strategy(self, strategy: str) -> None:
logger.error(f"GroupChat error: {e}") """
raise Set the strategy for the random-dynamic-speaker function.
except Exception as e:
logger.error(f"Unexpected error: {e}") Args:
raise InteractiveGroupChatError( strategy: Either "sequential" or "parallel"
f"Unexpected error occurred: {str(e)}" - "sequential": Process one agent at a time based on @mentions
- "parallel": Process all mentioned agents simultaneously
"""
if strategy not in ["sequential", "parallel"]:
raise ValueError(
"Strategy must be either 'sequential' or 'parallel'"
) )
self.speaker_state["strategy"] = strategy
logger.info(f"Dynamic speaker strategy set to: {strategy}")

@ -86,6 +86,7 @@ models = [
"o4-mini", "o4-mini",
"o3", "o3",
"gpt-4.1", "gpt-4.1",
"groq/llama-3.1-8b-instant",
"gpt-4.1-nano", "gpt-4.1-nano",
] ]

@ -182,6 +182,7 @@ class SwarmRouter:
list_all_agents: bool = False, list_all_agents: bool = False,
conversation: Any = None, conversation: Any = None,
agents_config: Optional[Dict[Any, Any]] = None, agents_config: Optional[Dict[Any, Any]] = None,
speaker_function: str = None,
*args, *args,
**kwargs, **kwargs,
): ):
@ -208,6 +209,7 @@ class SwarmRouter:
self.list_all_agents = list_all_agents self.list_all_agents = list_all_agents
self.conversation = conversation self.conversation = conversation
self.agents_config = agents_config self.agents_config = agents_config
self.speaker_function = speaker_function
# Reliability check # Reliability check
self.reliability_check() self.reliability_check()
@ -358,6 +360,7 @@ class SwarmRouter:
agents=self.agents, agents=self.agents,
max_loops=self.max_loops, max_loops=self.max_loops,
output_type=self.output_type, output_type=self.output_type,
speaker_function=self.speaker_function,
) )
elif self.swarm_type == "DeepResearchSwarm": elif self.swarm_type == "DeepResearchSwarm":

@ -151,6 +151,8 @@ class LiteLLM:
retries # Add retries for better reliability retries # Add retries for better reliability
) )
litellm.drop_params = True
def output_for_tools(self, response: any): def output_for_tools(self, response: any):
if self.mcp_call is True: if self.mcp_call is True:
out = response.choices[0].message.tool_calls[0].function out = response.choices[0].message.tool_calls[0].function

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