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agent_transfer.py
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87 lines (65 loc) · 2.41 KB
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"""
---
title: Agent Transfer
category: multi-agent
tags: [multi-agent, deepgram, openai, cartesia]
difficulty: intermediate
description: Shows how to switch between agents mid-call using function tools.
demonstrates:
- Agent transfer using update_agent()
- Function tools for agent switching
- Lightweight agent design with instructions and tools only
- Shared AgentSession across agent swaps
---
"""
import logging
from dotenv import load_dotenv
from livekit.agents import JobContext, JobProcess, Agent, AgentSession, AgentServer, cli, inference, function_tool
from livekit.plugins import silero
load_dotenv()
logger = logging.getLogger("agent-transfer")
logger.setLevel(logging.INFO)
class ShortAgent(Agent):
def __init__(self) -> None:
super().__init__(
instructions="""
You are a helpful agent. When the user speaks, you listen and respond. Be as brief as possible. Arguably too brief.
"""
)
async def on_enter(self):
self.session.say("Hi. It's Short agent.")
@function_tool
async def change_agent(self):
"""Change the agent to the long agent."""
self.session.update_agent(LongAgent())
class LongAgent(Agent):
def __init__(self) -> None:
super().__init__(
instructions="""
You are a helpful agent. When the user speaks, you listen and respond in overly verbose, flowery, obnoxiously detailed sentences.
"""
)
async def on_enter(self):
self.session.say("Salutations! It is I, your friendly neighborhood long agent.")
@function_tool
async def change_agent(self):
"""Change the agent to the short agent."""
self.session.update_agent(ShortAgent())
server = AgentServer()
def prewarm(proc: JobProcess):
proc.userdata["vad"] = silero.VAD.load()
server.setup_fnc = prewarm
@server.rtc_session()
async def entrypoint(ctx: JobContext):
ctx.log_context_fields = {"room": ctx.room.name}
session = AgentSession(
stt=inference.STT(model="deepgram/nova-3-general"),
llm=inference.LLM(model="openai/gpt-4.1-mini"),
tts=inference.TTS(model="cartesia/sonic-3", voice="9626c31c-bec5-4cca-baa8-f8ba9e84c8bc"),
vad=ctx.proc.userdata["vad"],
preemptive_generation=True,
)
await session.start(agent=ShortAgent(), room=ctx.room)
await ctx.connect()
if __name__ == "__main__":
cli.run_app(server)