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A powerful framework for building realtime voice AI agents ๐Ÿค–๐ŸŽ™๏ธ๐Ÿ“น

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The LiveKit icon, the name of the repository and some sample code in the background.



Looking for the JS/TS library? Check out AgentsJS

โœจ 1.0 release โœจ

This README reflects the 1.0 release. For documentation on the previous 0.x release, see the 0.x branch

What is Agents?

The Agents framework enables you to build voice AI agents that can see, hear, and speak in realtime. It provides a fully open-source platform for creating server-side agentic applications.

Features

  • Flexible integrations: A comprehensive ecosystem to mix and match the right STT, LLM, TTS, and Realtime API to suit your use case.
  • Integrated job scheduling: Built-in task scheduling and distribution with dispatch APIs to connect end users to agents.
  • Extensive WebRTC clients: Build client applications using LiveKit's open-source SDK ecosystem, supporting nearly all major platforms.
  • Telephony integration: Works seamlessly with LiveKit's telephony stack, allowing your agent to make calls to or receive calls from phones.
  • Exchange data with clients: Use RPCs and other Data APIs to seamlessly exchange data with clients.
  • Semantic turn detection: Uses a transformer model to detect when a user is done with their turn, helps to reduce interruptions.
  • Open-source: Fully open-source, allowing you to run the entire stack on your own servers, including LiveKit server, one of the most widely used WebRTC media servers.

Installation

To install the core Agents library, along with plugins for popular model providers:

pip install "livekit-agents[openai,silero,deepgram,cartesia,turn-detector]~=1.0"

Docs and guides

Documentation on the framework and how to use it can be found here

Core concepts

  • Agent: An LLM-based application with defined instructions.
  • AgentSession: A container for agents that manages interactions with end users.
  • entrypoint: The starting point for an interactive session, similar to a request handler in a web server.

Usage

Simple voice agent


from livekit.agents import (
    Agent,
    AgentSession,
    JobContext,
    RunContext,
    WorkerOptions,
    cli,
    function_tool,
)
from livekit.plugins import deepgram, openai, silero

@function_tool
async def lookup_weather(
    context: RunContext,
    location: str,
):
    """Used to look up weather information."""

    return {"weather": "sunny", "temperature": 70}


async def entrypoint(ctx: JobContext):
    await ctx.connect()

    agent = Agent(
        instructions="You are a friendly voice assistant built by LiveKit.",
        tools=[lookup_weather],
    )
    session = AgentSession(
        vad=silero.VAD.load(),
        # any combination of STT, LLM, TTS, or realtime API can be used
        stt=deepgram.STT(model="nova-3"),
        llm=openai.LLM(model="gpt-4o-mini"),
        tts=openai.TTS(voice="ash"),
    )

    await session.start(agent=agent, room=ctx.room)
    await session.generate_reply(instructions="greet the user and ask about their day")


if __name__ == "__main__":
    cli.run_app(WorkerOptions(entrypoint_fnc=entrypoint))

You'll need the following environment variables for this example:

  • LIVEKIT_URL
  • LIVEKIT_API_KEY
  • LIVEKIT_API_SECRET
  • DEEPGRAM_API_KEY
  • OPENAI_API_KEY

Multi-agent handoff


This code snippet is abbreviated. For the full example, see multi_agent.py

...
class IntroAgent(Agent):
    def __init__(self) -> None:
        super().__init__(
            instructions=f"You are a story teller. Your goal is to gather a few pieces of information from the user to make the story personalized and engaging."
            "Ask the user for their name and where they are from"
        )

    async def on_enter(self):
        self.session.generate_reply(instructions="greet the user and gather information")

    @function_tool
    async def information_gathered(
        self,
        context: RunContext,
        name: str,
        location: str,
    ):
        """Called when the user has provided the information needed to make the story personalized and engaging.

        Args:
            name: The name of the user
            location: The location of the user
        """

        context.userdata.name = name
        context.userdata.location = location

        story_agent = StoryAgent(name, location)
        return story_agent, "Let's start the story!"


class StoryAgent(Agent):
    def __init__(self, name: str, location: str) -> None:
        super().__init__(
            instructions=f"You are a storyteller. Use the user's information in order to make the story personalized."
            f"The user's name is {name}, from {location}"
            # override the default model, switching to Realtime API from standard LLMs
            llm=openai.realtime.RealtimeModel(voice="echo"),
            chat_ctx=chat_ctx,
        )

    async def on_enter(self):
        self.session.generate_reply()


async def entrypoint(ctx: JobContext):
    await ctx.connect()

    userdata = StoryData()
    session = AgentSession[StoryData](
        vad=silero.VAD.load(),
        stt=deepgram.STT(model="nova-3"),
        llm=openai.LLM(model="gpt-4o-mini"),
        tts=openai.TTS(voice="echo"),
        userdata=userdata,
    )

    await session.start(
        agent=IntroAgent(),
        room=ctx.room,
    )
...

Examples

๐ŸŽ™๏ธ Starter Agent

A starter agent optimized for voice conversations.

Code

๐Ÿ”„ Multi-user push to talk

Responds to multiple users in the room via push-to-talk.

Code

๐ŸŽต Background audio

Background ambient and thinking audio to improve realism.

Code

๐Ÿ› ๏ธ Dynamic tool creation

Creating function tools dynamically.

Code

โ˜Ž๏ธ Phone Caller

Agent that makes outbound phone calls

Code

๐Ÿ“‹ Structured output

Using structured output from LLM to guide TTS tone.

Code

๐Ÿฝ๏ธ Restaurant ordering and reservations

Full example of an agent that handles calls for a restaurant.

Code

๐Ÿ‘๏ธ Gemini Live vision

Full example (including iOS app) of Gemini Live agent that can see.

Code

Running your agent

Testing in terminal

python myagent.py console

Runs your agent in terminal mode, enabling local audio input and output for testing. This mode doesn't require external servers or dependencies and is useful for quickly validating behavior.

Developing with LiveKit clients

python myagent.py dev

Starts the agent server and enables hot reloading when files change. This mode allows each process to host multiple concurrent agents efficiently.

The agent connects to LiveKit Cloud or your self-hosted server. Set the following environment variables:

  • LIVEKIT_URL
  • LIVEKIT_API_KEY
  • LIVEKIT_API_SECRET

You can connect using any LiveKit client SDK or telephony integration. To get started quickly, try the Agents Playground.

Running for production

python myagent.py start

Runs the agent with production-ready optimizations.

Contributing

The Agents framework is under active development in a rapidly evolving field. We welcome and appreciate contributions of any kind, be it feedback, bugfixes, features, new plugins and tools, or better documentation. You can file issues under this repo, open a PR, or chat with us in LiveKit's Slack community.


LiveKit Ecosystem
LiveKit SDKsBrowser ยท iOS/macOS/visionOS ยท Android ยท Flutter ยท React Native ยท Rust ยท Node.js ยท Python ยท Unity ยท Unity (WebGL)
Server APIsNode.js ยท Golang ยท Ruby ยท Java/Kotlin ยท Python ยท Rust ยท PHP (community) ยท .NET (community)
UI ComponentsReact ยท Android Compose ยท SwiftUI
Agents FrameworksPython ยท Node.js ยท Playground
ServicesLiveKit server ยท Egress ยท Ingress ยท SIP
ResourcesDocs ยท Example apps ยท Cloud ยท Self-hosting ยท CLI