# # Copyright (c) 2024-2026, Daily # # SPDX-License-Identifier: BSD 2-Clause License # """RTVIObserver ignored sources example. This example shows how to suppress RTVI messages from a specific pipeline processor so that secondary branches don't leak events to the client. """ import os from dotenv import load_dotenv from loguru import logger from pipecat.audio.vad.silero import SileroVADAnalyzer from pipecat.frames.frames import LLMRunFrame from pipecat.pipeline.parallel_pipeline import ParallelPipeline from pipecat.pipeline.pipeline import Pipeline from pipecat.pipeline.runner import PipelineRunner from pipecat.pipeline.task import PipelineParams, PipelineTask from pipecat.processors.aggregators.llm_context import LLMContext from pipecat.processors.aggregators.llm_response_universal import ( LLMContextAggregatorPair, LLMUserAggregatorParams, ) from pipecat.processors.audio.vad_processor import VADProcessor from pipecat.processors.frameworks.rtvi import RTVIObserverParams from pipecat.runner.types import RunnerArguments from pipecat.runner.utils import create_transport from pipecat.services.cartesia.tts import CartesiaTTSService from pipecat.services.deepgram.stt import DeepgramSTTService from pipecat.services.openai.llm import OpenAILLMService from pipecat.transports.base_transport import BaseTransport, TransportParams from pipecat.transports.daily.transport import DailyParams from pipecat.transports.websocket.fastapi import FastAPIWebsocketParams from pipecat.turns.user_turn_processor import UserTurnProcessor from pipecat.turns.user_turn_strategies import ExternalUserTurnStrategies load_dotenv(override=True) # We use lambdas to defer transport parameter creation until the transport # type is selected at runtime. transport_params = { "daily": lambda: DailyParams( audio_in_enabled=True, audio_out_enabled=True, ), "twilio": lambda: FastAPIWebsocketParams( audio_in_enabled=True, audio_out_enabled=True, ), "webrtc": lambda: TransportParams( audio_in_enabled=True, audio_out_enabled=True, ), } async def run_bot(transport: BaseTransport, runner_args: RunnerArguments): logger.info("Starting bot") stt = DeepgramSTTService(api_key=os.environ["DEEPGRAM_API_KEY"]) tts = CartesiaTTSService( api_key=os.environ["CARTESIA_API_KEY"], settings=CartesiaTTSService.Settings( voice="71a7ad14-091c-4e8e-a314-022ece01c121", # British Reading Lady ), ) # Main LLM — drives the conversation. Its RTVI events reach the client. main_llm = OpenAILLMService( api_key=os.environ["OPENAI_API_KEY"], settings=OpenAILLMService.Settings( system_instruction="You are a helpful assistant in a voice conversation. Your responses will be spoken aloud, so avoid emojis, bullet points, or other formatting that can't be spoken. Respond to what the user said in a creative, helpful, and brief way.", ), ) # Evaluator LLM — silently grades the user's message in the background. # Its RTVI events will be suppressed so the client is unaware of this branch. evaluator_llm = OpenAILLMService( api_key=os.environ["OPENAI_API_KEY"], name="EvaluatorLLM", settings=OpenAILLMService.Settings( system_instruction="You are a silent quality evaluator. When given a user message, respond with a single JSON object: {'score': <1-5>, 'reason': ''}. Do not respond conversationally.", ), ) main_context = LLMContext() evaluator_context = LLMContext() # We use an external VADProcessor because the UserTurnProcessor is shared # across multiple parallel aggregators. The VADProcessor emits # VADUserStartedSpeakingFrame and VADUserStoppedSpeakingFrame which the # UserTurnProcessor needs to manage turn lifecycle. vad_processor = VADProcessor(vad_analyzer=SileroVADAnalyzer()) # We use this external user turn processor. This processor will push # UserStartedSpeakingFrame and UserStoppedSpeakingFrame as well as # interruptions. This can be used in advanced cases when there are multiple # aggregators in the pipeline. user_turn_processor = UserTurnProcessor() # We use external user turn strategies for both aggregators since the turn # management is done by the common UserTurnProcessor. main_context_aggregator = LLMContextAggregatorPair( main_context, user_params=LLMUserAggregatorParams(user_turn_strategies=ExternalUserTurnStrategies()), ) evaluator_context_aggregator = LLMContextAggregatorPair( evaluator_context, user_params=LLMUserAggregatorParams(user_turn_strategies=ExternalUserTurnStrategies()), ) pipeline = Pipeline( [ transport.input(), # Transport user input stt, # STT vad_processor, user_turn_processor, ParallelPipeline( # Main branch: speaks to the user. [ main_context_aggregator.user(), main_llm, tts, transport.output(), main_context_aggregator.assistant(), ], # Evaluator branch: silent background scoring, no audio output. [ evaluator_context_aggregator.user(), evaluator_llm, evaluator_context_aggregator.assistant(), ], ), ] ) task = PipelineTask( pipeline, params=PipelineParams( enable_metrics=True, enable_usage_metrics=True, ), rtvi_observer_params=RTVIObserverParams(ignored_sources=[evaluator_llm]), idle_timeout_secs=runner_args.pipeline_idle_timeout_secs, ) @transport.event_handler("on_client_connected") async def on_client_connected(transport, client): logger.info("Client connected") main_context.add_message( {"role": "developer", "content": "Please introduce yourself to the user."} ) evaluator_context.add_message( {"role": "developer", "content": "Ready to evaluate user messages."} ) await task.queue_frames([LLMRunFrame()]) @transport.event_handler("on_client_disconnected") async def on_client_disconnected(transport, client): logger.info("Client disconnected") await task.cancel() runner = PipelineRunner(handle_sigint=runner_args.handle_sigint) await runner.run(task) async def bot(runner_args: RunnerArguments): """Main bot entry point compatible with Pipecat Cloud.""" transport = await create_transport(runner_args, transport_params) await run_bot(transport, runner_args) if __name__ == "__main__": from pipecat.runner.run import main main()