here is the docs for swarm library(follow this closely and accurately)
do not use any code or imports other than what is provided in the docs
Usage:
from swarm import Swarm, Agent
from swarm.types import Result
client = Swarm()
def transfer_to_agent_b():
return agent_b
agent_a = Agent(
name="Agent A",
instructions="You are a helpful agent.",
functions=[transfer_to_agent_b],
)
agent_b = Agent(
name="Agent B",
instructions="Only speak in Haikus.",
)
response = client.run(
agent=agent_a,
messages=[{"role": "user", "content": "I want to talk to agent B."}],
)
print(response.messages[-1]["content"])
Hope glimmers brightly,
New paths converge gracefully,
What can I assist?
Table of Contents
Overview
Examples
Documentation
Running Swarm
Agents
Functions
Streaming
Evaluations
Utils
Overview
Swarm focuses on making agent coordination and execution lightweight, highly controllable, and easily testable.
It accomplishes this through two primitive abstractions: Agents and handoffs. An Agent encompasses instructions and tools, and can at any point choose to hand off a conversation to another Agent.
These primitives are powerful enough to express rich dynamics between tools and networks of agents, allowing you to build scalable, real-world solutions while avoiding a steep learning curve.
Note
Swarm Agents are not related to Assistants in the Assistants API. They are named similarly for convenience, but are otherwise completely unrelated. Swarm is entirely powered by the Chat Completions API and is hence stateless between calls.
Why Swarm
Swarm is lightweight, scalable, and highly customizable by design. It is best suited for situations dealing with a large number of independent capabilities and instructions that are difficult to encode into a single prompt.
The Assistants API is a great option for developers looking for fully-hosted threads and built in memory management and retrieval. However, Swarm is optimal for developers who want full transparency and fine-grained control over context, steps, and tool calls. Swarm runs (almost) entirely on the client and, much like the Chat Completions API, does not store state between calls.
Examples
Check out /examples for inspiration! Learn more about each one in its README.
basic: Simple examples of fundamentals like setup, function calling, handoffs, and context variables
triage_agent: Simple example of setting up a basic triage step to hand off to the right agent
weather_agent: Simple example of function calling
airline: A multi-agent setup for handling different customer service requests in an airline context.
support_bot: A customer service bot which includes a user interface agent and a help center agent with several tools
personal_shopper: A personal shopping agent that can help with making sales and refunding orders
Documentation
Swarm Diagram
Running Swarm
Start by instantiating a Swarm client (which internally just instantiates an OpenAI client).
from swarm import Swarm
client = Swarm()
client.run()
Swarm's run() function is analogous to the chat.completions.create() function in the Chat Completions API – it takes messages and returns messages and saves no state between calls. Importantly, however, it also handles Agent function execution, hand-offs, context variable references, and can take multiple turns before returning to the user.
At its core, Swarm's client.run() implements the following loop:
Get a completion from the current Agent
Execute tool calls and append results
Switch Agent if necessary
Update context variables, if necessary
If no new function calls, return
Arguments
Argument Type Description Default
agent Agent The (initial) agent to be called. (required)
messages List A list of message objects, identical to Chat Completions messages (required)
context_variables dict A dictionary of additional context variables, available to functions and Agent instructions {}
max_turns int The maximum number of conversational turns allowed float("inf")
model_override str An optional string to override the model being used by an Agent None
execute_tools bool If False, interrupt execution and immediately returns tool_calls message when an Agent tries to call a function True
stream bool If True, enables streaming responses False
debug bool If True, enables debug logging False
Once client.run() is finished (after potentially multiple calls to agents and tools) it will return a Response containing all the relevant updated state. Specifically, the new messages, the last Agent to be called, and the most up-to-date context_variables. You can pass these values (plus new user messages) in to your next execution of client.run() to continue the interaction where it left off – much like chat.completions.create(). (The run_demo_loop function implements an example of a full execution loop in /swarm/repl/repl.py.)
Response Fields
Field Type Description
messages List A list of message objects generated during the conversation. Very similar to Chat Completions messages, but with a sender field indicating which Agent the message originated from.
agent Agent The last agent to handle a message.
context_variables dict The same as the input variables, plus any changes.
Agents
An Agent simply encapsulates a set of instructions with a set of functions (plus some additional settings below), and has the capability to hand off execution to another Agent.
While it's tempting to personify an Agent as "someone who does X", it can also be used to represent a very specific workflow or step defined by a set of instructions and functions (e.g. a set of steps, a complex retrieval, single step of data transformation, etc). This allows Agents to be composed into a network of "agents", "workflows", and "tasks", all represented by the same primitive.
Agent Fields
Field Type Description Default
name str The name of the agent. "Agent"
model str The model to be used by the agent. "gpt-4o"
instructions str or func() -> str Instructions for the agent, can be a string or a callable returning a string. "You are a helpful agent."
functions List A list of functions that the agent can call. []
tool_choice str The tool choice for the agent, if any. None
Instructions
Agent instructions are directly converted into the system prompt of a conversation (as the first message). Only the instructions of the active Agent will be present at any given time (e.g. if there is an Agent handoff, the system prompt will change, but the chat history will not.)
agent = Agent(
instructions="You are a helpful agent."
)
The instructions can either be a regular str, or a function that returns a str. The function can optionally receive a context_variables parameter, which will be populated by the context_variables passed into client.run().
def instructions(context_variables):
user_name = context_variables["user_name"]
return f"Help the user, {user_name}, do whatever they want."
agent = Agent(
instructions=instructions
)
response = client.run(
agent=agent,
messages=[{"role":"user", "content": "Hi!"}],
context_variables={"user_name":"John"}
)
print(response.messages[-1]["content"])
Hi John, how can I assist you today?
Functions
Swarm Agents can call python functions directly.
Function should usually return a str (values will be attempted to be cast as a str).
If a function returns an Agent, execution will be transfered to that Agent.
If a function defines a context_variables parameter, it will be populated by the context_variables passed into client.run().
def greet(context_variables, language):
user_name = context_variables["user_name"]
greeting = "Hola" if language.lower() == "spanish" else "Hello"
print(f"{greeting}, {user_name}!")
return "Done"
agent = Agent(
functions=[print_hello]
)
client.run(
agent=agent,
messages=[{"role": "user", "content": "Usa greet() por favor."}],
context_variables={"user_name": "John"}
)
Hola, John!
If an Agent function call has an error (missing function, wrong argument, error) an error response will be appended to the chat so the Agent can recover gracefully.
If multiple functions are called by the Agent, they will be executed in that order.
Handoffs and Updating Context Variables
An Agent can hand off to another Agent by returning it in a function.
sales_agent = Agent(name="Sales Agent")
def transfer_to_sales():
return sales_agent
agent = Agent(functions=[transfer_to_sales])
response = client.run(agent, [{"role":"user", "content":"Transfer me to sales."}])
print(response.agent.name)
Sales Agent
It can also update the context_variables by returning a more complete Result object. This can also contain a value and an agent, in case you want a single function to return a value, update the agent, and update the context variables (or any subset of the three).
sales_agent = Agent(name="Sales Agent")
def talk_to_sales():
print("Hello, World!")
return Result(
value="Done",
agent=sales_agent,
context_variables={"department": "sales"}
)
agent = Agent(functions=[talk_to_sales])
response = client.run(
agent=agent,
messages=[{"role": "user", "content": "Transfer me to sales"}],
context_variables={"user_name": "John"}
)
print(response.agent.name)
print(response.context_variables)
Sales Agent
{'department': 'sales', 'user_name': 'John'}
Note
If an Agent calls multiple functions to hand-off to an Agent, only the last handoff function will be used.
Function Schemas
Swarm automatically converts functions into a JSON Schema that is passed into Chat Completions tools.
Docstrings are turned into the function description.
Parameters without default values are set to required.
Type hints are mapped to the parameter's type (and default to string).
Per-parameter descriptions are not explicitly supported, but should work similarly if just added in the docstring. (In the future docstring argument parsing may be added.)
def greet(name, age: int, location: str = "New York"):
"""Greets the user. Make sure to get their name and age before calling.
Args:
name: Name of the user.
age: Age of the user.
location: Best place on earth.
"""
print(f"Hello {name}, glad you are {age} in {location}!")
{
"type": "function",
"function": {
"name": "greet",
"description": "Greets the user. Make sure to get their name and age before calling.\n\nArgs:\n name: Name of the user.\n age: Age of the user.\n location: Best place on earth.",
"parameters": {
"type": "object",
"properties": {
"name": {"type": "string"},
"age": {"type": "integer"},
"location": {"type": "string"}
},
"required": ["name", "age"]
}
}
}
Streaming
stream = client.run(agent, messages, stream=True)
for chunk in stream:
print(chunk)
Uses the same events as Chat Completions API streaming. See process_and_print_streaming_response in /swarm/repl/repl.py as an example.
Two new event types have been added:
{"delim":"start"} and {"delim":"start"}, to signal each time an Agent handles a single message (response or function call). This helps identify switches between Agents.
{"response": Response} will return a Response object at the end of a stream with the aggregated (complete) response, for convenience.
Evaluations
Evaluations are crucial to any project, and we encourage developers to bring their own eval suites to test the performance of their swarms. For reference, we have some examples for how to eval swarm in the airline, weather_agent and triage_agent quickstart examples. See the READMEs for more details.
Utils
Use the run_demo_loop to test out your swarm! This will run a REPL on your command line. Supports streaming.
from swarm.repl import run_demo_loop
...
run_demo_loop(agent, stream=True)
do not use any code or imports other than what is provided in the docs
HERE IS how we can call perplexity:
import openai
import os
openai.api_key = os.getenv('PERPLEXITY_API_KEY')
openai.base_url = 'https://api.perplexity.ai'
response = openai.chat.completions.create(
model="llama-3.1-sonar-small-128k-online",
messages=[
{"role": "system", "content": "You are a helpful assistant."},
{"role": "user", "content": "What is the meaning of life?"}
]
)
print(response.choices[0].message.content)
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Created: 10/13/2024
Updated: 10/14/2024
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