--- search: exclude: true --- # 빠른 시작 ## 사전 요구 사항 Agents SDK의 기본 [빠른 시작 지침](../quickstart.md)을 따르고 가상 환경을 설정했는지 확인합니다. 그런 다음 SDK에서 선택적 음성 종속성을 설치합니다. ```bash pip install 'openai-agents[voice]' ``` ## 개념 알아야 할 주요 개념은 3단계 프로세스인 [`VoicePipeline`][agents.voice.pipeline.VoicePipeline]입니다. 1. 음성-텍스트 변환 모델을 실행하여 오디오를 텍스트로 변환합니다. 2. 일반적으로 에이전트 워크플로인 코드를 실행하여 결과를 생성합니다. 3. 텍스트-음성 변환 모델을 실행하여 결과 텍스트를 다시 오디오로 변환합니다. ```mermaid graph LR %% Input A["🎤 Audio Input"] %% Voice Pipeline subgraph Voice_Pipeline [Voice Pipeline] direction TB B["Transcribe (speech-to-text)"] C["Your Code"]:::highlight D["Text-to-speech"] B --> C --> D end %% Output E["🎧 Audio Output"] %% Flow A --> Voice_Pipeline Voice_Pipeline --> E %% Custom styling classDef highlight fill:#ffcc66,stroke:#333,stroke-width:1px,font-weight:700; ``` ## 에이전트 먼저 몇 가지 에이전트를 설정하겠습니다. 이 SDK로 에이전트를 만들어 본 적이 있다면 익숙할 것입니다. 몇 개의 에이전트와 하나의 핸드오프, 하나의 도구를 사용합니다. ```python import asyncio import random from agents import ( Agent, function_tool, ) from agents.extensions.handoff_prompt import prompt_with_handoff_instructions @function_tool def get_weather(city: str) -> str: """Get the weather for a given city.""" print(f"[debug] get_weather called with city: {city}") choices = ["sunny", "cloudy", "rainy", "snowy"] return f"The weather in {city} is {random.choice(choices)}." spanish_agent = Agent( name="Spanish", handoff_description="A Spanish-speaking agent.", instructions=prompt_with_handoff_instructions( "You're speaking to a human, so be polite and concise. Speak in Spanish.", ), model="gpt-5.6-sol", ) agent = Agent( name="Assistant", instructions=prompt_with_handoff_instructions( "You're speaking to a human, so be polite and concise. If the user speaks in Spanish, hand off to the Spanish agent.", ), model="gpt-5.6-sol", handoffs=[spanish_agent], tools=[get_weather], ) ``` ## 음성 파이프라인 [`SingleAgentVoiceWorkflow`][agents.voice.workflow.SingleAgentVoiceWorkflow]를 워크플로로 사용하여 간단한 음성 파이프라인을 설정합니다. ```python from agents.voice import SingleAgentVoiceWorkflow, VoicePipeline pipeline = VoicePipeline(workflow=SingleAgentVoiceWorkflow(agent)) ``` ## 파이프라인 실행 ```python import numpy as np import sounddevice as sd from agents.voice import AudioInput # For simplicity, we'll just create 3 seconds of silence # In reality, you'd get microphone data buffer = np.zeros(24000 * 3, dtype=np.int16) audio_input = AudioInput(buffer=buffer) result = await pipeline.run(audio_input) # Create an audio player using `sounddevice` player = sd.OutputStream(samplerate=24000, channels=1, dtype=np.int16) player.start() # Play the audio stream as it comes in async for event in result.stream(): if event.type == "voice_stream_event_audio": player.write(event.data) ``` ## 전체 구성 ```python import asyncio import random import numpy as np import sounddevice as sd from agents import ( Agent, function_tool, set_tracing_disabled, ) from agents.voice import ( AudioInput, SingleAgentVoiceWorkflow, VoicePipeline, ) from agents.extensions.handoff_prompt import prompt_with_handoff_instructions @function_tool def get_weather(city: str) -> str: """Get the weather for a given city.""" print(f"[debug] get_weather called with city: {city}") choices = ["sunny", "cloudy", "rainy", "snowy"] return f"The weather in {city} is {random.choice(choices)}." spanish_agent = Agent( name="Spanish", handoff_description="A Spanish-speaking agent.", instructions=prompt_with_handoff_instructions( "You're speaking to a human, so be polite and concise. Speak in Spanish.", ), model="gpt-5.6-sol", ) agent = Agent( name="Assistant", instructions=prompt_with_handoff_instructions( "You're speaking to a human, so be polite and concise. If the user speaks in Spanish, hand off to the Spanish agent.", ), model="gpt-5.6-sol", handoffs=[spanish_agent], tools=[get_weather], ) async def main(): pipeline = VoicePipeline(workflow=SingleAgentVoiceWorkflow(agent)) buffer = np.zeros(24000 * 3, dtype=np.int16) audio_input = AudioInput(buffer=buffer) result = await pipeline.run(audio_input) # Create an audio player using `sounddevice` player = sd.OutputStream(samplerate=24000, channels=1, dtype=np.int16) player.start() # Play the audio stream as it comes in async for event in result.stream(): if event.type == "voice_stream_event_audio": player.write(event.data) if __name__ == "__main__": asyncio.run(main()) ``` 이 예제를 실행하면 에이전트가 사용자에게 음성으로 응답합니다! 에이전트와 직접 대화할 수 있는 데모는 [examples/voice/static](https://github.com/openai/openai-agents-python/tree/main/examples/voice/static)의 코드 예제를 확인하세요.