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* fix: fix transition logic for realtime providers * chore: run formatter * chore: generate SDK and fix other realtime providers * fix: fix ultravox node transitions
704 lines
27 KiB
Python
704 lines
27 KiB
Python
"""Paygent live-call collector.
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Attaches to the pipecat pipeline as a ``BaseObserver`` to accumulate per-call
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usage metrics (STT audio seconds, LLM tokens, TTS characters, STS metadata)
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in memory during the call. No network I/O happens here; all delivery is
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deferred to the post-call completion handler.
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Design mirrors ``api/services/integrations/tuner/collector.py`` exactly:
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- Attach to the task in ``PaygentRuntimeSession.attach``
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- Build a serialisable snapshot in ``build_snapshot``
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- Return it from ``on_call_finished`` so it lands in ``workflow_run.logs``
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"""
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from __future__ import annotations
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import time
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from dataclasses import dataclass, field
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from typing import Any, Dict
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from loguru import logger
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from pipecat.frames.frames import (
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CancelFrame,
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EndFrame,
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MetricsFrame,
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StartFrame,
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TTSTextFrame,
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UserStartedSpeakingFrame,
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UserStoppedSpeakingFrame,
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)
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from pipecat.metrics.metrics import (
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LLMTokenUsage,
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LLMUsageMetricsData,
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TTSUsageMetricsData,
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)
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from pipecat.observers.base_observer import BaseObserver, FramePushed
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from pipecat.processors.frame_processor import FrameDirection
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def _detect_provider(name: str, fallback: str = "unknown") -> str:
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"""Map a processor/model name to a canonical Paygent provider slug dynamically."""
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if not name:
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return fallback
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clean_name = name.lower().strip()
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if "gemini" in clean_name:
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return "google"
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suffixes = [
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"service",
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"multimodallive",
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"realtime",
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"vertex",
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"llm",
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"tts",
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"stt",
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"helper",
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"transport",
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]
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changed = True
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while changed:
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changed = False
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for suffix in suffixes:
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if clean_name.endswith(suffix):
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clean_name = clean_name[: -len(suffix)].rstrip("_").rstrip("-")
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changed = True
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break
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return clean_name or fallback
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@dataclass
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class _UsageAccumulator:
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"""In-memory accumulator for per-call usage data."""
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# STT
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stt_audio_seconds: float = 0.0
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# LLM (aggregated across all turns)
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llm_prompt_tokens: int = 0
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llm_completion_tokens: int = 0
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llm_cached_tokens: int = 0
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# TTS
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tts_characters: int = 0
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_has_tts_metrics: bool = False
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# STS / realtime (last seen usage_metadata dict; callers merge these)
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sts_usage_metadata: dict[str, Any] | None = None
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# Call timing
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call_start_abs_ns: int = field(default_factory=time.time_ns)
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call_end_abs_ns: int | None = None
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# STT: timestamp of when user started speaking; None when not speaking
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_user_started_speaking_ns: int | None = field(default=None, repr=False)
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@property
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def total_duration_seconds(self) -> int:
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if self.call_end_abs_ns is None:
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return int((time.time_ns() - self.call_start_abs_ns) / 1_000_000_000)
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return int((self.call_end_abs_ns - self.call_start_abs_ns) / 1_000_000_000)
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def get_stt_audio_seconds(self) -> float:
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"""Return measured STT audio seconds accumulated from the pipeline.
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NOTE: This is the real measured STT audio duration collected from the
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pipeline's STT metrics frames, NOT the total call wall-clock duration.
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The call wall-clock duration is available separately via
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``total_duration_seconds``.
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"""
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return self.stt_audio_seconds
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def add_llm(self, usage: LLMTokenUsage) -> None:
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self.llm_prompt_tokens += usage.prompt_tokens or 0
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self.llm_completion_tokens += usage.completion_tokens or 0
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self.llm_cached_tokens += (usage.cache_read_input_tokens or 0) + (
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usage.cache_creation_input_tokens or 0
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)
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def add_tts_metrics(self, data: Any) -> None:
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if not self._has_tts_metrics:
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self._has_tts_metrics = True
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self.tts_characters = 0 # Ignore manual count if metrics emit natively
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# Extremely robust extraction
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val = 0
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if isinstance(data, (int, float)):
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val = data
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elif hasattr(data, "value"):
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val = getattr(data, "value", 0) or 0
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elif hasattr(data, "characters"):
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val = getattr(data, "characters", 0) or 0
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elif isinstance(data, dict):
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val = data.get("value") or data.get("characters") or 0
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try:
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self.tts_characters += int(val or 0)
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except Exception as exc:
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logger.warning(
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"[paygent] Failed to accumulate TTS characters (val={!r}): {}", val, exc
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)
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def add_tts_manual(self, text: str) -> None:
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if not self._has_tts_metrics:
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self.tts_characters += len(text)
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def on_user_started_speaking(self) -> None:
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"""Mark the start of a user utterance for STT audio metering."""
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if self._user_started_speaking_ns is None:
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self._user_started_speaking_ns = time.time_ns()
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def on_user_stopped_speaking(self) -> None:
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"""Accumulate the completed utterance duration into stt_audio_seconds."""
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if self._user_started_speaking_ns is not None:
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elapsed_s = (
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time.time_ns() - self._user_started_speaking_ns
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) / 1_000_000_000
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self.stt_audio_seconds += elapsed_s
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self._user_started_speaking_ns = None
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def finalize(self) -> None:
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if self.call_end_abs_ns is None:
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self.call_end_abs_ns = time.time_ns()
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# If user was mid-utterance when the call ended, close the interval.
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self.on_user_stopped_speaking()
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def _google_live_usage_to_sts_metadata(usage: Dict[str, Any]) -> Dict[str, Any]:
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"""
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Pure Python translation of Google GenAI Live usage_metadata to
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Paygent's canonical speech-to-speech /api/v1/voice/speech-to-speech API schema.
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"""
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if not usage:
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return {"schemaVersion": 1}
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def _get_val(obj, *keys):
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if not obj:
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return None
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for k in keys:
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if isinstance(obj, dict):
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if k in obj:
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return obj[k]
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else:
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if hasattr(obj, k):
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return getattr(obj, k)
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return None
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def _get_list(obj, *keys):
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val = _get_val(obj, *keys)
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if val is None:
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return None
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return list(val) if not isinstance(val, list) else val
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def _optional_int(obj, *keys):
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val = _get_val(obj, *keys)
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if val is not None:
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try:
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return int(val)
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except (TypeError, ValueError):
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return None
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return None
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def _modality_token_count(details, modality_name):
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if not details:
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return 0
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want = modality_name.upper()
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total = 0
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for d in details:
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try:
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mod = _get_val(d, "modality")
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if mod is None:
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continue
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label = _get_val(mod, "name") or _get_val(mod, "value") or mod
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if str(label).upper() != want:
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continue
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tc = _get_val(d, "token_count", "tokenCount")
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total += int(tc or 0)
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except Exception:
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continue
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return total
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prompt_details = _get_list(usage, "prompt_tokens_details", "promptTokensDetails")
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response_details = _get_list(
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usage, "response_tokens_details", "responseTokensDetails"
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)
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tool_details = _get_list(
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usage, "tool_use_prompt_tokens_details", "toolUsePromptTokensDetails"
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)
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cache_details = _get_list(usage, "cache_tokens_details", "cacheTokensDetails")
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# input side: TEXT + DOCUMENT + AUDIO + IMAGE + VIDEO
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text_in = _modality_token_count(prompt_details, "TEXT") + _modality_token_count(
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tool_details, "TEXT"
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)
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audio_in = _modality_token_count(prompt_details, "AUDIO") + _modality_token_count(
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tool_details, "AUDIO"
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)
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image_in = _modality_token_count(prompt_details, "IMAGE") + _modality_token_count(
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tool_details, "IMAGE"
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)
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video_in = _modality_token_count(prompt_details, "VIDEO") + _modality_token_count(
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tool_details, "VIDEO"
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)
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doc_as_text = _modality_token_count(
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prompt_details, "DOCUMENT"
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) + _modality_token_count(tool_details, "DOCUMENT")
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text_in += doc_as_text
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# fallback aggregate mapping
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tutc = _optional_int(
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usage, "tool_use_prompt_token_count", "toolUsePromptTokenCount"
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)
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if tutc is not None and not tool_details:
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text_in += int(tutc)
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ptc = _optional_int(usage, "prompt_token_count", "promptTokenCount")
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if ptc is not None and not prompt_details and not tool_details:
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text_in += int(ptc)
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# output side: TEXT + DOCUMENT + AUDIO + VIDEO + THINKING
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text_out = _modality_token_count(response_details, "TEXT") + _modality_token_count(
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response_details, "DOCUMENT"
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)
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audio_out = _modality_token_count(
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response_details, "AUDIO"
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) + _modality_token_count(response_details, "VIDEO")
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rtc = _optional_int(usage, "response_token_count", "responseTokenCount")
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if text_out == 0 and audio_out == 0 and rtc is not None:
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# Default fallback to audio output for STS audio connection
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audio_out = int(rtc)
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# Thinking / reasoning tokens (Gemini 2.5+ thinking models).
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# Emitted as a separate output modality so Paygent has full billing visibility.
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thinking_tokens = (
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_optional_int(
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usage,
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"thoughts_token_count",
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"thoughtsTokenCount",
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"thinking_token_count",
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"thinkingTokenCount",
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)
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or 0
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)
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# Cache breakdowns
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cached_text = _modality_token_count(cache_details, "TEXT") + _modality_token_count(
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cache_details, "DOCUMENT"
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)
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cached_audio = _modality_token_count(
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cache_details, "AUDIO"
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) + _modality_token_count(cache_details, "VIDEO")
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cached_image = _modality_token_count(cache_details, "IMAGE")
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cached_legacy = _optional_int(
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usage, "cached_content_token_count", "cachedContentTokenCount"
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)
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# Build response payload
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out = {"schemaVersion": 1}
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# Input Side
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inp = {}
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if text_in > 0:
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inp["text"] = {"tokens": text_in}
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if audio_in > 0:
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inp["audio"] = {"tokens": audio_in}
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if image_in > 0:
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inp["image"] = {"tokens": image_in}
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if video_in > 0:
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inp["video"] = {"tokens": video_in}
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if inp:
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out["input"] = inp
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# Output Side
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o = {}
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if text_out > 0:
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o["text"] = {"tokens": text_out}
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if audio_out > 0:
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o["audio"] = {"tokens": audio_out}
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if thinking_tokens > 0:
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o["thinking"] = {"tokens": thinking_tokens}
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if o:
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out["output"] = o
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# Cached breakdown
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has_split = bool(cached_text or cached_audio or cached_image)
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if cached_legacy is not None and cached_legacy > 0 and not has_split:
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out["cached"] = {"tokens": int(cached_legacy)}
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elif has_split:
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cd = {}
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if cached_text > 0:
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cd["text"] = {"tokens": cached_text}
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if cached_audio > 0:
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cd["audio"] = {"tokens": cached_audio}
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if cached_image > 0:
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cd["image"] = {"tokens": cached_image}
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if cd:
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out["cached"] = cd
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return out
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def _openai_realtime_usage_to_sts_metadata(usage: Dict[str, Any]) -> Dict[str, Any]:
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"""
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Pure Python translation of OpenAI Realtime usage_metadata to
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Paygent's canonical speech-to-speech /api/v1/voice/speech-to-speech API schema.
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"""
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if not usage:
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return {"schemaVersion": 1}
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def _get_val(obj, *keys):
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if not obj:
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return None
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for k in keys:
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if isinstance(obj, dict):
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if k in obj:
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return obj[k]
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else:
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if hasattr(obj, k):
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return getattr(obj, k)
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return None
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total_in = int(_get_val(usage, "input_tokens", "inputTokens") or 0)
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total_out = int(_get_val(usage, "output_tokens", "outputTokens") or 0)
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in_details = _get_val(usage, "input_token_details", "inputTokenDetails") or {}
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out_details = _get_val(usage, "output_token_details", "outputTokenDetails") or {}
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audio_in = int(_get_val(in_details, "audio_tokens", "audioTokens") or 0)
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text_in = int(_get_val(in_details, "text_tokens", "textTokens") or 0)
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image_in = int(_get_val(in_details, "image_tokens", "imageTokens") or 0)
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cached_total = int(
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_get_val(usage, "cached_tokens", "cachedTokens")
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or _get_val(in_details, "cached_tokens", "cachedTokens")
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or 0
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)
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cached_details = (
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_get_val(in_details, "cached_tokens_details", "cachedTokensDetails") or {}
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)
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cached_audio = int(_get_val(cached_details, "audio_tokens", "audioTokens") or 0)
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cached_text = int(_get_val(cached_details, "text_tokens", "textTokens") or 0)
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cached_image = int(_get_val(cached_details, "image_tokens", "imageTokens") or 0)
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if not (cached_audio or cached_text or cached_image):
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cached_audio = int(
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_get_val(in_details, "cached_audio_tokens", "cachedAudioTokens") or 0
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)
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cached_text = int(
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_get_val(in_details, "cached_text_tokens", "cachedTextTokens") or 0
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)
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cached_image = int(
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_get_val(in_details, "cached_image_tokens", "cachedImageTokens") or 0
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)
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audio_out = int(_get_val(out_details, "audio_tokens", "audioTokens") or 0)
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text_out = int(_get_val(out_details, "text_tokens", "textTokens") or 0)
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if not (text_in or audio_in or image_in) and total_in > 0:
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text_in = total_in - cached_total
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out = {"schemaVersion": 1}
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inp = {}
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if text_in > 0:
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inp["text"] = {"tokens": text_in}
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if audio_in > 0:
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inp["audio"] = {"tokens": audio_in}
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if image_in > 0:
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inp["image"] = {"tokens": image_in}
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if inp:
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out["input"] = inp
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o = {}
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if text_out > 0:
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o["text"] = {"tokens": text_out}
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if audio_out > 0:
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o["audio"] = {"tokens": audio_out}
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if o:
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out["output"] = o
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has_split = bool(cached_text or cached_audio or cached_image)
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if cached_total > 0 and not has_split:
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out["cached"] = {"tokens": int(cached_total)}
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elif has_split:
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cd = {}
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if cached_text > 0:
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cd["text"] = {"tokens": cached_text}
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if cached_audio > 0:
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cd["audio"] = {"tokens": cached_audio}
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if cached_image > 0:
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cd["image"] = {"tokens": cached_image}
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if cd:
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out["cached"] = cd
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return out
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def _merge_sts_metadata(existing: dict, new: dict) -> dict:
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if not existing:
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return new
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out = {"schemaVersion": 1}
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for key in ("input", "output", "cached"):
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e_val = existing.get(key, {})
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n_val = new.get(key, {})
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if not e_val and not n_val:
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continue
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merged_cat: dict = {}
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# Prefer per-modality merge when either side has per-modality detail.
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# Only use the flat aggregate{"tokens": N} form when neither side has
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# any per-modality breakdown at all (e.g. legacy schema).
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e_has_modalities = any(
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m in e_val for m in ("text", "audio", "image", "video", "thinking")
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)
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n_has_modalities = any(
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m in n_val for m in ("text", "audio", "image", "video", "thinking")
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)
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if e_has_modalities or n_has_modalities:
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for modality in ("text", "audio", "image", "video", "thinking"):
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e_mod = e_val.get(modality, {}).get("tokens", 0)
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n_mod = n_val.get(modality, {}).get("tokens", 0)
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total = e_mod + n_mod
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if total > 0:
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merged_cat[modality] = {"tokens": total}
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# Also sum any lingering aggregate total so no tokens are lost
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e_agg = e_val.get("tokens", 0) if not e_has_modalities else 0
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n_agg = n_val.get("tokens", 0) if not n_has_modalities else 0
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if e_agg or n_agg:
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# Incorporate the unbroken-down side into the "text" bucket as
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# a best-effort attribution rather than silently dropping it.
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existing_text = merged_cat.get("text", {}).get("tokens", 0)
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merged_cat["text"] = {"tokens": existing_text + e_agg + n_agg}
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elif "tokens" in e_val or "tokens" in n_val:
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merged_cat["tokens"] = e_val.get("tokens", 0) + n_val.get("tokens", 0)
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if merged_cat:
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out[key] = merged_cat
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# retain any other keys, summing up numeric ones to keep metadata consistent
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for k, v in existing.items():
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if k not in ("schemaVersion", "input", "output", "cached"):
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out[k] = v
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for k, v in new.items():
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if k not in ("schemaVersion", "input", "output", "cached"):
|
||
if (
|
||
k in out
|
||
and isinstance(out[k], (int, float))
|
||
and isinstance(v, (int, float))
|
||
):
|
||
out[k] = out[k] + v
|
||
else:
|
||
out[k] = v
|
||
|
||
return out
|
||
|
||
|
||
class PaygentCollector(BaseObserver):
|
||
"""Pipecat observer that accumulates usage data for a single call.
|
||
|
||
Accumulates:
|
||
- LLM token usage from ``MetricsFrame / LLMUsageMetricsData``
|
||
- TTS character usage from ``MetricsFrame / TTSUsageMetricsData``
|
||
- STT audio seconds from ``MetricsFrame`` (when exposed by the pipeline)
|
||
- Call start / end timestamps for ``total_duration_seconds``
|
||
|
||
Does **not** do any network I/O.
|
||
"""
|
||
|
||
def __init__(
|
||
self,
|
||
*,
|
||
workflow_run_id: int,
|
||
is_realtime: bool,
|
||
stt_provider: str = "",
|
||
stt_model: str = "",
|
||
llm_provider: str = "",
|
||
llm_model: str = "",
|
||
tts_provider: str = "",
|
||
tts_model: str = "",
|
||
sts_provider: str = "",
|
||
sts_model: str = "",
|
||
) -> None:
|
||
super().__init__()
|
||
self._workflow_run_id = workflow_run_id
|
||
self._is_realtime = is_realtime
|
||
self._stt_provider = stt_provider
|
||
self._stt_model = stt_model
|
||
self._llm_provider = llm_provider
|
||
self._llm_model = llm_model
|
||
self._tts_provider = tts_provider
|
||
self._tts_model = tts_model
|
||
self._sts_provider = sts_provider
|
||
self._sts_model = sts_model
|
||
self._acc = _UsageAccumulator()
|
||
self._call_disposition: str = "completed"
|
||
# Dedup guard: pipecat can re-deliver frames. This collector is created
|
||
# fresh per call (see create_runtime_sessions) so the set size is bounded
|
||
# by call duration. We intentionally do NOT trim the set: trimming would
|
||
# evict old IDs and allow re-delivered frames to be processed a second time.
|
||
self._seen_frame_ids: set[int] = set()
|
||
|
||
# ------------------------------------------------------------------
|
||
# Public hooks
|
||
# ------------------------------------------------------------------
|
||
|
||
def set_call_disposition(self, disposition: str | None) -> None:
|
||
if disposition:
|
||
self._call_disposition = disposition
|
||
|
||
def build_snapshot(self) -> dict[str, Any]:
|
||
"""Return a JSON-serialisable dict stored in ``workflow_run.logs``."""
|
||
self._acc.finalize()
|
||
stt_audio_sec = self._acc.get_stt_audio_seconds()
|
||
|
||
return {
|
||
"workflow_run_id": self._workflow_run_id,
|
||
"is_realtime": self._is_realtime,
|
||
"stt_provider": self._stt_provider,
|
||
"stt_model": self._stt_model,
|
||
"stt_audio_seconds": stt_audio_sec,
|
||
"llm_provider": self._llm_provider,
|
||
"llm_model": self._llm_model,
|
||
"llm_prompt_tokens": self._acc.llm_prompt_tokens,
|
||
"llm_completion_tokens": self._acc.llm_completion_tokens,
|
||
"llm_cached_tokens": self._acc.llm_cached_tokens,
|
||
"tts_provider": self._tts_provider,
|
||
"tts_model": self._tts_model,
|
||
"tts_characters": self._acc.tts_characters,
|
||
"sts_provider": self._sts_provider,
|
||
"sts_model": self._sts_model,
|
||
"sts_usage_metadata": self._acc.sts_usage_metadata,
|
||
"call_disposition": self._call_disposition,
|
||
"total_duration_seconds": self._acc.total_duration_seconds,
|
||
}
|
||
|
||
# ------------------------------------------------------------------
|
||
# BaseObserver implementation
|
||
# ------------------------------------------------------------------
|
||
|
||
async def on_push_frame(self, data: FramePushed) -> None: # type: ignore[override]
|
||
try:
|
||
# Only process downstream frames; ignore upstream (mic → STT direction)
|
||
if data.direction != FrameDirection.DOWNSTREAM:
|
||
return
|
||
|
||
frame = data.frame
|
||
|
||
# Dedup: per-call set; grows with the call but is GC’d when the
|
||
# call ends. Never trim — trimming would reopen a re-delivery window.
|
||
if frame.id in self._seen_frame_ids:
|
||
return
|
||
self._seen_frame_ids.add(frame.id)
|
||
|
||
if isinstance(frame, StartFrame):
|
||
self._acc.call_start_abs_ns = time.time_ns()
|
||
|
||
elif isinstance(frame, MetricsFrame):
|
||
for item in frame.data:
|
||
if isinstance(item, LLMUsageMetricsData):
|
||
is_sts_frame = False
|
||
proc_lower = (item.processor or "").lower()
|
||
if getattr(self, "_is_realtime", False):
|
||
if "realtime" in proc_lower or "live" in proc_lower:
|
||
is_sts_frame = True
|
||
|
||
if is_sts_frame:
|
||
# Normalise the raw provider slug so that variants like
|
||
# "openai_realtime", "azure_realtime", etc. route correctly.
|
||
raw_provider = getattr(
|
||
self, "_sts_provider", ""
|
||
) or getattr(self, "_llm_provider", "")
|
||
provider = (
|
||
_detect_provider(raw_provider)
|
||
if raw_provider
|
||
else "unknown"
|
||
)
|
||
if provider not in ("grok", "ultravox"):
|
||
usage = item.value
|
||
raw_metadata = getattr(
|
||
usage, "raw_usage_metadata", None
|
||
)
|
||
if raw_metadata:
|
||
# OpenAI Realtime and Azure Realtime (azure→openai via _detect_provider)
|
||
# share the same wire format.
|
||
if provider in ("openai", "azure"):
|
||
new_meta = (
|
||
_openai_realtime_usage_to_sts_metadata(
|
||
raw_metadata
|
||
)
|
||
)
|
||
else:
|
||
new_meta = _google_live_usage_to_sts_metadata(
|
||
raw_metadata
|
||
)
|
||
else:
|
||
prompt_tokens = (
|
||
getattr(usage, "prompt_tokens", 0) or 0
|
||
)
|
||
completion_tokens = (
|
||
getattr(usage, "completion_tokens", 0) or 0
|
||
)
|
||
cached_tokens = (
|
||
getattr(usage, "cache_read_input_tokens", 0)
|
||
or getattr(usage, "cached_tokens", 0)
|
||
or 0
|
||
)
|
||
new_meta = {"schemaVersion": 1}
|
||
if prompt_tokens > 0:
|
||
new_meta.setdefault("input", {})["text"] = {
|
||
"tokens": prompt_tokens
|
||
}
|
||
if completion_tokens > 0:
|
||
new_meta.setdefault("output", {})["text"] = {
|
||
"tokens": completion_tokens
|
||
}
|
||
if cached_tokens > 0:
|
||
new_meta["cached"] = {"tokens": cached_tokens}
|
||
|
||
if hasattr(usage, "__dict__"):
|
||
for k, v in vars(usage).items():
|
||
if (
|
||
not k.startswith("_")
|
||
and v is not None
|
||
and k not in new_meta
|
||
):
|
||
new_meta[k] = v
|
||
|
||
self._acc.sts_usage_metadata = _merge_sts_metadata(
|
||
self._acc.sts_usage_metadata or {}, new_meta
|
||
)
|
||
else:
|
||
self._acc.add_llm(item.value)
|
||
elif isinstance(item, TTSUsageMetricsData):
|
||
chars_val = getattr(item, "value", 0) or 0
|
||
self._acc.add_tts_metrics(chars_val)
|
||
# STT usage is exposed as a float in TTSUsageMetricsData-like
|
||
# structure by some providers; we also pull from the aggregator
|
||
# snapshot at call-finish (see runtime.py) for robustness.
|
||
|
||
elif isinstance(frame, TTSTextFrame):
|
||
# Fallback character counting for providers that don't emit native TTS metrics.
|
||
# TTSTextFrame carries only the text actually sent to the TTS engine;
|
||
# using base TextFrame would incorrectly include user transcriptions.
|
||
self._acc.add_tts_manual(frame.text)
|
||
|
||
elif isinstance(frame, UserStartedSpeakingFrame):
|
||
# Measure real STT audio seconds from VAD events rather than
|
||
# relying on wall-clock time. Skipped for realtime pipelines
|
||
# which have no separate STT stage.
|
||
if not self._is_realtime:
|
||
self._acc.on_user_started_speaking()
|
||
|
||
elif isinstance(frame, UserStoppedSpeakingFrame):
|
||
if not self._is_realtime:
|
||
self._acc.on_user_stopped_speaking()
|
||
|
||
elif isinstance(frame, (EndFrame, CancelFrame)):
|
||
self._acc.finalize()
|
||
except Exception as exc:
|
||
logger.warning(
|
||
"[paygent] Unexpected error processing frame {!r} in collector: {}",
|
||
type(data.frame).__name__,
|
||
exc,
|
||
exc_info=True,
|
||
)
|