dream-customs / scripts /benchmark_hosted_latency.py
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Sync Dream QA latency polish
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import json
import os
import sys
import tempfile
import time
import wave
from pathlib import Path
from typing import Any, Callable
ROOT = Path(__file__).resolve().parents[1]
if str(ROOT) not in sys.path:
sys.path.insert(0, str(ROOT))
from dream_customs.models import HostedASRClient, HostedMiniCPMTextClient, HostedMiniCPMVisionClient
from dream_customs.prompts import negotiation_prompt, today_tip_prompt
from dream_customs.pipeline import build_intake, build_qa_state
from dream_customs.schema import TodayTipCard
class TextFallback:
def generate_negotiation(self, _prompt: str) -> dict[str, Any]:
return {"visitor_name": "fallback", "questions": ["fallback"], "tone_note": "fallback"}
def generate_today_tip(self, _prompt: str) -> TodayTipCard:
return TodayTipCard(
dream_summary="fallback",
main_question="fallback",
dream_anchors=["fallback"],
followup_questions=[],
user_answers=[],
interpretation="fallback",
today_tip="fallback",
tiny_action="fallback",
caring_note="fallback",
safety_note="",
)
class VisionFallback:
def extract_clues(self, _image_path: str) -> list[str]:
return ["fallback"]
def extract_witness(self, _image_path: str):
raise RuntimeError("fallback witness should not be used in this benchmark")
class ASRFallback:
def transcribe(self, _audio_path: str) -> str:
return "fallback"
def _measure(name: str, fn: Callable[[], Any]) -> dict[str, Any]:
start = time.perf_counter()
try:
value = fn()
ok = True
error = ""
except Exception as exc: # pragma: no cover - benchmark safety net
value = None
ok = False
error = exc.__class__.__name__
elapsed = time.perf_counter() - start
return {
"name": name,
"ok": ok,
"elapsed_seconds": round(elapsed, 3),
"fallback": _looks_like_fallback(value),
"error": error,
}
def _looks_like_fallback(value: Any) -> bool:
if isinstance(value, dict):
return value.get("visitor_name") == "fallback"
if isinstance(value, TodayTipCard):
return value.dream_summary == "fallback"
if isinstance(value, list):
return value == ["fallback"]
return value == "fallback"
def _write_probe_wav() -> str:
temp = tempfile.NamedTemporaryFile(delete=False, suffix=".wav")
temp.close()
with wave.open(temp.name, "wb") as wav:
wav.setnchannels(1)
wav.setsampwidth(2)
wav.setframerate(16000)
wav.writeframes(b"\x00\x00" * 1600)
return temp.name
def main() -> int:
token = os.getenv("DREAM_CUSTOMS_HOSTED_TOKEN", "")
text_endpoint = os.getenv("DREAM_CUSTOMS_TEXT_ENDPOINT", "").strip()
vision_endpoint = os.getenv("DREAM_CUSTOMS_VISION_ENDPOINT", "").strip()
asr_endpoint = os.getenv("DREAM_CUSTOMS_ASR_ENDPOINT", "").strip()
image_path = os.getenv("DREAM_CUSTOMS_SMOKE_IMAGE", "").strip()
audio_path = os.getenv("DREAM_CUSTOMS_SMOKE_AUDIO", "").strip()
text_timeout = float(os.getenv("DREAM_CUSTOMS_BENCH_TEXT_TIMEOUT", "9"))
vision_timeout = float(os.getenv("DREAM_CUSTOMS_BENCH_VISION_TIMEOUT", "9"))
asr_timeout = float(os.getenv("DREAM_CUSTOMS_BENCH_ASR_TIMEOUT", "9"))
text_budget = int(float(os.getenv("DREAM_CUSTOMS_BENCH_TEXT_BUDGET_MS", "8000")))
vision_budget = int(float(os.getenv("DREAM_CUSTOMS_BENCH_VISION_BUDGET_MS", "9000")))
asr_budget = int(float(os.getenv("DREAM_CUSTOMS_BENCH_ASR_BUDGET_MS", "8000")))
intake = build_intake(
dream_text="I dreamed my phone died while I waited for an elevator.",
mood="Anxious",
)
answers = "The dead phone felt closest to being behind before I even start."
state = build_qa_state(
intake,
questions=["Which detail feels closest to your waking life right now?"],
answers=[answers],
language="en",
)
report: dict[str, Any] = {
"configured": {
"text_endpoint": bool(text_endpoint),
"vision_endpoint": bool(vision_endpoint),
"asr_endpoint": bool(asr_endpoint),
"token": bool(token),
"image_path": bool(image_path),
"audio_path": bool(audio_path),
},
"budgets_ms": {"text": text_budget, "vision": vision_budget, "asr": asr_budget},
"results": [],
}
if text_endpoint:
text_client = HostedMiniCPMTextClient(
endpoint=text_endpoint,
token=token,
timeout=text_timeout,
max_tokens=560,
latency_budget_ms=text_budget,
fallback=TextFallback(),
)
report["results"].append(
_measure(
"text_negotiation",
lambda: text_client.generate_negotiation(negotiation_prompt(intake, "en")),
)
)
report["results"].append(
_measure(
"text_today_tip",
lambda: text_client.generate_today_tip(today_tip_prompt(state, "en")),
)
)
if vision_endpoint and image_path and Path(image_path).exists():
vision_client = HostedMiniCPMVisionClient(
endpoint=vision_endpoint,
token=token,
timeout=vision_timeout,
max_tokens=220,
latency_budget_ms=vision_budget,
fallback=VisionFallback(),
)
report["results"].append(_measure("vision_clues", lambda: vision_client.extract_clues(image_path)))
if asr_endpoint:
probe_audio = ""
try:
probe_audio = audio_path if audio_path and Path(audio_path).exists() else _write_probe_wav()
asr_client = HostedASRClient(
endpoint=asr_endpoint,
token=token,
timeout=asr_timeout,
latency_budget_ms=asr_budget,
fallback=ASRFallback(),
)
report["results"].append(_measure("asr_transcribe", lambda: asr_client.transcribe(probe_audio)))
finally:
if probe_audio and probe_audio != audio_path:
try:
os.unlink(probe_audio)
except OSError:
pass
print(json.dumps(report, ensure_ascii=False, indent=2))
return 0
if __name__ == "__main__":
raise SystemExit(main())