apply streaming response to all format
This commit is contained in:
@@ -1,3 +1,4 @@
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from faster_whisper import vad
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import tqdm
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import json
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from fastapi.responses import StreamingResponse
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@@ -7,10 +8,19 @@ import io
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import hashlib
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import argparse
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import uvicorn
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from typing import Annotated, Any, Literal
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from fastapi import File, Query, UploadFile, Form, FastAPI, Request, WebSocket, Response
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from typing import Annotated, Any, BinaryIO, Literal, Generator
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from fastapi import (
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File,
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HTTPException,
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Query,
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UploadFile,
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Form,
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FastAPI,
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Request,
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WebSocket,
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)
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from fastapi.middleware.cors import CORSMiddleware
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from src.whisper_ctranslate2.whisper_ctranslate2 import Transcribe, TranscriptionOptions
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from src.whisper_ctranslate2.whisper_ctranslate2 import Transcribe
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from src.whisper_ctranslate2.writers import format_timestamp
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import opencc
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from prometheus_fastapi_instrumentator import Instrumentator
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@@ -50,19 +60,28 @@ app.add_middleware(
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)
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def generate_tsv(result: dict[str, list[Any]]):
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tsv = "start\tend\ttext\n"
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for i, segment in enumerate(result["segments"]):
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def stream_writer(generator: Generator[dict[str, Any], Any, None]):
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for segment in generator:
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yield "data: " + json.dumps(segment, ensure_ascii=False) + "\n\n"
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yield "data: [DONE]\n\n"
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def text_writer(generator: Generator[dict[str, Any], Any, None]):
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for segment in generator:
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yield segment["text"].strip() + "\n"
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def tsv_writer(generator: Generator[dict[str, Any], Any, None]):
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yield "start\tend\ttext\n"
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for i, segment in enumerate(generator):
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start_time = str(round(1000 * segment["start"]))
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end_time = str(round(1000 * segment["end"]))
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text = segment["text"]
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tsv += f"{start_time}\t{end_time}\t{text}\n"
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return tsv
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yield f"{start_time}\t{end_time}\t{text}\n"
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def generate_srt(result: dict[str, list[Any]]):
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srt = ""
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for i, segment in enumerate(result["segments"], start=1):
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def srt_writer(generator: Generator[dict[str, Any], Any, None]):
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for i, segment in enumerate(generator):
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start_time = format_timestamp(
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segment["start"], decimal_marker=",", always_include_hours=True
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)
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@@ -70,48 +89,74 @@ def generate_srt(result: dict[str, list[Any]]):
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segment["end"], decimal_marker=",", always_include_hours=True
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)
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text = segment["text"]
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srt += f"{i}\n{start_time} --> {end_time}\n{text}\n\n"
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return srt
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yield f"{i}\n{start_time} --> {end_time}\n{text}\n\n"
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def generate_vtt(result: dict[str, list[Any]]):
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vtt = "WEBVTT\n\n"
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for segment in result["segments"]:
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def vtt_writer(generator: Generator[dict[str, Any], Any, None]):
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yield "WEBVTT\n\n"
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for i, segment in enumerate(generator):
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start_time = format_timestamp(segment["start"])
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end_time = format_timestamp(segment["end"])
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text = segment["text"]
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vtt += f"{start_time} --> {end_time}\n{text}\n\n"
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return vtt
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yield f"{start_time} --> {end_time}\n{text}\n\n"
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def get_options(*, initial_prompt=""):
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options = TranscriptionOptions(
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def build_json_result(
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generator: Generator[dict[str, Any], Any, None]
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) -> dict[str, Any]:
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segments = [i for i in generator]
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return {
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"text": "\n".join(i["text"] for i in segments),
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"segments": segments,
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}
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def stream_builder(
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audio: BinaryIO,
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task: str,
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vad_filter: bool,
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language: str | None,
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initial_prompt: str = "",
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):
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segments, info = transcriber.model.transcribe(
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audio=audio,
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language=language,
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task=task,
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beam_size=5,
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best_of=5,
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patience=1.0,
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length_penalty=1.0,
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log_prob_threshold=-1.0,
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no_speech_threshold=0.6,
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compression_ratio_threshold=2.4,
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condition_on_previous_text=True,
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temperature=[0.0, 1.0 + 1e-6, 0.2],
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suppress_tokens=[],
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word_timestamps=True,
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print_colors=False,
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prepend_punctuations="\"'“¿([{-",
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append_punctuations="\"'.。,,!!??::”)]}、",
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vad_filter=False,
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vad_threshold=None,
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vad_min_speech_duration_ms=None,
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vad_max_speech_duration_s=None,
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vad_min_silence_duration_ms=None,
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initial_prompt=initial_prompt,
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length_penalty=-1.0,
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repetition_penalty=1.0,
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no_repeat_ngram_size=0,
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temperature=[0.0, 1.0 + 1e-6, 0.2],
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compression_ratio_threshold=2.4,
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log_prob_threshold=-1.0,
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no_speech_threshold=0.6,
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condition_on_previous_text=True,
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prompt_reset_on_temperature=False,
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initial_prompt=initial_prompt,
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suppress_blank=False,
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suppress_tokens=[],
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word_timestamps=True,
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prepend_punctuations="\"'“¿([{-",
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append_punctuations="\"'.。,,!!??::”)]}、",
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vad_filter=vad_filter,
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vad_parameters=None,
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)
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return options
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print(
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"Detected language '%s' with probability %f"
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% (info.language, info.language_probability)
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)
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last_pos = 0
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with tqdm.tqdm(total=info.duration, unit="seconds", disable=True) as pbar:
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for segment in segments:
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start, end, text = segment.start, segment.end, segment.text
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pbar.update(end - last_pos)
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last_pos = end
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data = segment._asdict()
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data["total"] = info.duration
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data["text"] = ccc.convert(data["text"])
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yield data
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@app.websocket("/k6nele/status")
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@@ -131,6 +176,7 @@ async def konele_ws(
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task: Literal["transcribe", "translate"] = "transcribe",
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lang: str = "und",
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initial_prompt: str = "",
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vad_filter: bool = False,
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content_type: Annotated[str, Query(alias="content-type")] = "audio/x-raw",
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):
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await websocket.accept()
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@@ -169,18 +215,16 @@ async def konele_ws(
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file_obj.seek(0)
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options = get_options(initial_prompt=initial_prompt)
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result = transcriber.inference(
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generator = stream_builder(
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audio=file_obj,
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task=task,
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language=lang if lang != "und" else None, # type: ignore
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verbose=False,
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live=False,
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options=options,
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vad_filter=vad_filter,
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language=None if lang == "und" else lang,
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initial_prompt=initial_prompt,
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)
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result = build_json_result(generator)
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text = result.get("text", "")
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text = ccc.convert(text)
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print("result", text)
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await websocket.send_json(
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@@ -201,6 +245,7 @@ async def translateapi(
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task: Literal["transcribe", "translate"] = "transcribe",
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lang: str = "und",
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initial_prompt: str = "",
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vad_filter: bool = False,
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):
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content_type = request.headers.get("Content-Type", "")
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print("downloading request file", content_type)
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@@ -234,18 +279,16 @@ async def translateapi(
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file_obj.seek(0)
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options = get_options(initial_prompt=initial_prompt)
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result = transcriber.inference(
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generator = stream_builder(
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audio=file_obj,
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task=task,
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language=lang if lang != "und" else None, # type: ignore
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verbose=False,
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live=False,
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options=options,
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vad_filter=vad_filter,
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language=None if lang == "und" else lang,
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initial_prompt=initial_prompt,
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)
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result = build_json_result(generator)
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text = result.get("text", "")
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text = ccc.convert(text)
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print("result", text)
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return {
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@@ -270,84 +313,31 @@ async def transcription(
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"""
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# timestamp as filename, keep original extension
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options = get_options(initial_prompt=prompt)
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generator = stream_builder(
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audio=io.BytesIO(file.file.read()),
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task=task,
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vad_filter=vad_filter,
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language=None if language == "und" else language,
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)
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# special function for streaming response (OpenAI API does not have this)
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if response_format == "stream":
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def gen():
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segments, info = transcriber.model.transcribe(
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audio=io.BytesIO(file.file.read()),
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language=None if language == "und" else language, # type: ignore
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task=task,
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beam_size=options.beam_size,
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best_of=options.best_of,
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patience=options.patience,
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length_penalty=options.length_penalty,
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repetition_penalty=options.repetition_penalty,
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no_repeat_ngram_size=options.no_repeat_ngram_size,
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temperature=options.temperature,
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compression_ratio_threshold=options.compression_ratio_threshold,
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log_prob_threshold=options.log_prob_threshold,
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no_speech_threshold=options.no_speech_threshold,
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condition_on_previous_text=options.condition_on_previous_text,
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prompt_reset_on_temperature=options.prompt_reset_on_temperature,
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initial_prompt=options.initial_prompt,
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suppress_blank=options.suppress_blank,
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suppress_tokens=options.suppress_tokens,
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word_timestamps=True
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if options.print_colors
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else options.word_timestamps,
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prepend_punctuations=options.prepend_punctuations,
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append_punctuations=options.append_punctuations,
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vad_filter=vad_filter,
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vad_parameters=None,
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)
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print(
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"Detected language '%s' with probability %f"
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% (info.language, info.language_probability)
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)
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last_pos = 0
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with tqdm.tqdm(total=info.duration, unit="seconds", disable=True) as pbar:
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for segment in segments:
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start, end, text = segment.start, segment.end, segment.text
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pbar.update(end - last_pos)
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last_pos = end
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data = segment._asdict()
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data["total"] = info.duration
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data["text"] = ccc.convert(data["text"])
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yield "data: " + json.dumps(data, ensure_ascii=False) + "\n\n"
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yield "data: [DONE]\n\n"
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return StreamingResponse(
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gen(),
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stream_writer(generator),
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media_type="text/event-stream",
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)
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result: Any = transcriber.inference(
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audio=io.BytesIO(file.file.read()),
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task=task,
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language=None if language == "und" else language, # type: ignore
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verbose=False,
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live=False,
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options=options,
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)
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if response_format == "json":
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return result
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elif response_format == "json":
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return build_json_result(generator)
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elif response_format == "text":
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return Response(
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content="\n".join(s["text"] for s in result["segments"]),
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media_type="plain/text",
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)
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return StreamingResponse(text_writer(generator), media_type="text/plain")
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elif response_format == "tsv":
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return Response(content=generate_tsv(result), media_type="plain_text")
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return StreamingResponse(tsv_writer(generator), media_type="text/plain")
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elif response_format == "srt":
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return Response(content=generate_srt(result), media_type="plain_text")
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return StreamingResponse(srt_writer(generator), media_type="text/plain")
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elif response_format == "vtt":
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return generate_vtt(result)
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return StreamingResponse(vtt_writer(generator), media_type="text/plain")
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return {"error": "Invalid response_format"}
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raise HTTPException(400, "Invailed response_format")
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uvicorn.run(app, host=args.host, port=args.port)
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