Files
pipecat/examples
Paul Kompfner bff741a647 Migrate realtime examples to RealtimeServiceModeConfig
Pass realtime_service_mode=RealtimeServiceModeConfig() through every
realtime LLM service example (base, async-tool, video, text-output,
persistent-context, update-settings, MCP) so context aggregation uses
the new realtime-mode semantics instead of relying on local VAD as a
workaround.

Where examples previously wired SileroVADAnalyzer into
LLMUserAggregatorParams to coax turn frames out of services that don't
emit them server-side (AWS Nova Sonic, Ultravox, Gemini Live), the local
VAD is now removed. realtime_service_mode keeps context writes correct
without it, and the Phase 1.5 server-side InterruptionFrame fixes for
Nova Sonic and Ultravox keep the bot from talking past the user when
they barge in.

Transcript-logging event handlers move from on_user_turn_stopped /
on_assistant_turn_stopped to on_user_message_added /
on_assistant_message_added, which carry the finalized text in realtime
mode (the turn-stopped events fire before the message is finalized, so
their `content` is None in that mode).

For services that don't emit user-turn frames (Gemini Live, AWS Nova
Sonic, Ultravox) the example now carries a Tier 1 comment block that
spells out which downstream processors won't activate, how to add local
VAD if needed, and the caveat that locally-generated turn boundaries
are a heuristic that may diverge from server-side ground truth.

Adds examples/realtime/realtime-openai-local-vad.py, a new variant of
the OpenAI Realtime example that disables OpenAI's server-side turn
detection and drives turn boundaries locally — useful when you want a
turn analyzer like LocalSmartTurnV3 to decide when the user is done
speaking. Server-emitted turn frames are still preferred when available.

The Gemini Live local-VAD variant already existed; it's been updated in
place rather than rewritten.
2026-05-21 11:25:29 -04:00
..
2026-04-21 15:43:31 -04:00
2026-04-21 15:43:31 -04:00
2026-04-21 15:43:31 -04:00
2026-05-18 14:40:56 +02:00

Pipecat Examples

This directory contains examples showing how to build voice and multimodal agents with Pipecat.

Setup

  1. Follow the README steps to get your local environment configured.

    Run from root directory: Make sure you are running the steps from the root directory.

    Using local audio?: The LocalAudioTransport requires a system dependency for portaudio. Install the dependency to use the transport.

  2. Copy the env.example file and add API keys for services you plan to use:

    cp env.example .env
    # Edit .env with your API keys
    
  3. Run any example:

    uv run python getting-started/01-say-one-thing.py
    
  4. Open the web interface at http://localhost:7860/client/ and click "Connect"

Running examples with other transports

Most examples support running with other transports, like Twilio or Daily.

Daily

You need to create a Daily account at https://dashboard.daily.co/u/signup. Once signed up, you can create your own room from the dashboard and set the environment variables DAILY_ROOM_URL and DAILY_API_KEY. Alternatively, you can let the example create a room for you (still needs DAILY_API_KEY environment variable). Then, start any example with -t daily:

uv run getting-started/06-voice-agent.py -t daily

Twilio

It is also possible to run the example through a Twilio phone number. You will need to setup a few things:

  1. Install and run ngrok.
ngrok http 7860
  1. Configure your Twilio phone number. One way is to setup a TwiML app and set the request URL to the ngrok URL from step (1). Then, set your phone number to use the new TwiML app.

Then, run the example with:

uv run getting-started/06-voice-agent.py -t twilio -x NGROK_HOST_NAME

Directory Structure

getting-started/

Progressive introduction to Pipecat, from minimal TTS to a full voice agent with function calling.

voice/

Full STT + LLM + TTS voice agent pipelines showcasing different speech service providers (Deepgram, ElevenLabs, Cartesia, etc.)

function-calling/

Function calling with different LLM providers (OpenAI, Anthropic, Google, etc.)

transcription/

Speech-to-text examples with various STT providers.

vision/

Image description and vision capabilities with different multimodal LLMs.

realtime/

Realtime and multimodal live APIs (OpenAI Realtime, Gemini Live, AWS Nova Sonic, Ultravox, Grok).

persistent-context/

Maintaining conversation context across sessions with different providers.

context-summarization/

Summarizing conversation context to manage token limits.

update-settings/

Changing service settings at runtime, organized by service type:

  • stt/ — Speech-to-text settings
  • tts/ — Text-to-speech settings
  • llm/ — LLM settings

turn-management/

Turn detection, interruption handling, and user input management.

thinking-and-mcp/

LLM thinking/reasoning modes and MCP (Model Context Protocol) tool server integration.

transports/

Transport layer examples (WebRTC, Daily, LiveKit).

video-avatar/

Video avatar integrations (Tavus, HeyGen, Simli, LemonSlice).

video-processing/

Video processing, mirroring, GStreamer, and custom video tracks.

audio/

Audio recording, background sounds, and sound effects.

observability/

Pipeline monitoring: observers, heartbeats, and Sentry metrics.

rag/

Retrieval-augmented generation, grounding, and long-term memory (Mem0, Gemini).

features/

Miscellaneous features: wake phrases, live translation, service switching, voice switching, and more.

Advanced Usage

Customizing Network Settings

uv run python <example-name> --host 0.0.0.0 --port 8080

Troubleshooting

  • No audio/video: Check browser permissions for microphone and camera
  • Connection errors: Verify API keys in .env file
  • Port conflicts: Use --port to change the port

For more examples, visit the pipecat-examples repository.