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ATR TTS API Server
ๅฏๅจ: python api_atri.py [-a 127.0.0.1] [-p 9880]
ๆฅๅฃๆๆกฃ: http://127.0.0.1:9880/docs
"""
import os
import sys
import signal
import argparse
import subprocess
import threading
import wave
from io import BytesIO
from typing import Generator, Optional, Union
import numpy as np
import soundfile as sf
from fastapi import FastAPI
from fastapi.responses import JSONResponse, Response, StreamingResponse
from pydantic import BaseModel, Field
import uvicorn
now_dir = os.getcwd()
sys.path.append(now_dir)
sys.path.append(os.path.join(now_dir, "GPT_SoVITS"))
from GPT_SoVITS.TTS_infer_pack.TTS import TTS, TTS_Config
# โโ Config โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
GPT_MODEL = "/path/to/GPT_SoVITS/pretrained_models/s1v3.ckpt"
SOVITS_MODEL = "/path/to/ATR_e8_s3952.pth"
REF_AUDIO = "/path/to/ref_audio.wav"
REF_TEXT = "ใใใใฏใในใฟใผใฎๆๆ็ฉใงใใฎใงใ ๅๆใซๅฃฒ่ฒทใใใฎใฏ้ๆณใงใ"
REF_LANG = "ja"
VERSION = "v2Pro"
# โโ Request / Response Models โโโโโโโโโโโโโโโโโโโโโโโโโโโ
class TTSRequest(BaseModel):
text: str = Field(..., description="่ฆๅๆ็ๆๆฌ", examples=["ใใใซใกใฏใใๅ
ๆฐใงใใ๏ผ"])
text_lang: str = Field(..., description="ๆๆฌ่ฏญ่จ: zh, en, ja, ko, yue", examples=["ja"])
ref_audio_path: Optional[str] = Field(None, description="ๅ่้ณ้ข่ทฏๅพ (็็ฉบไฝฟ็จ้ป่ฎค)")
prompt_text: Optional[str] = Field(None, description="ๅ่้ณ้ข็ๆๆฌ (็็ฉบไฝฟ็จ้ป่ฎค)")
prompt_lang: Optional[str] = Field(None, description="ๅ่้ณ้ข็่ฏญ่จ (็็ฉบไฝฟ็จ้ป่ฎค)")
speed_factor: float = Field(1.0, ge=0.5, le=2.0, description="่ฏญ้ๅ็")
top_k: int = Field(15, ge=1, description="Top-K ้ๆ ท")
top_p: float = Field(1.0, ge=0.0, le=1.0, description="Top-P ้ๆ ท")
temperature: float = Field(1.0, ge=0.0, le=2.0, description="้ๆ ทๆธฉๅบฆ")
seed: int = Field(-1, description="้ๆบ็งๅญ (-1 ไธบ้ๆบ)")
media_type: str = Field("wav", description="่พๅบๆ ผๅผ: wav, ogg, aac, raw")
text_split_method: str = Field("cut5", description="ๆๆฌๅๅๆนๅผ: cut0-cut5")
batch_size: int = Field(1, ge=1, description="ๆจ็ๆนๅคงๅฐ")
sample_steps: int = Field(32, ge=1, description="้ๆ ทๆญฅๆฐ")
model_config = {"json_schema_extra": {
"examples": [
{"text": "ใใใซใกใฏใใๅ
ๆฐใงใใ๏ผ", "text_lang": "ja"},
{"text": "ไฝ ๅฅฝ๏ผๅพ้ซๅ
ด่ฎค่ฏไฝ ใ", "text_lang": "zh"},
]
}}
class TTSStreamRequest(TTSRequest):
streaming_mode: int = Field(1, ge=1, le=3,
description="ๆตๅผๆจกๅผ: 1=ๅๆฎต(ๆ้ซ่ดจ้), 2=็ๆตๅผ(ไธญ็ญ่ดจ้), 3=ๅฎ้ฟๆตๅผ(ๆๅฟซๅๅบ)")
class HealthResponse(BaseModel):
status: str
gpt_model: str
sovits_model: str
ref_audio: str
version: str
# โโ Audio packing helpers โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
def pack_wav(data: np.ndarray, rate: int) -> bytes:
buf = BytesIO()
sf.write(buf, data, rate, format="wav")
buf.seek(0)
return buf.read()
def pack_ogg(data: np.ndarray, rate: int) -> bytes:
buf = BytesIO()
def _write():
with sf.SoundFile(buf, mode="w", samplerate=rate, channels=1, format="ogg") as f:
f.write(data)
t = threading.Thread(target=_write)
threading.stack_size(4096 * 4096)
t.start()
t.join()
buf.seek(0)
return buf.read()
def pack_aac(data: np.ndarray, rate: int) -> bytes:
proc = subprocess.Popen(
["ffmpeg", "-f", "s16le", "-ar", str(rate), "-ac", "1",
"-i", "pipe:0", "-c:a", "aac", "-b:a", "192k", "-vn", "-f", "adts", "pipe:1"],
stdin=subprocess.PIPE, stdout=subprocess.PIPE, stderr=subprocess.PIPE,
)
out, _ = proc.communicate(input=data.tobytes())
return out
def pack_audio(data: np.ndarray, rate: int, media_type: str) -> bytes:
if media_type == "ogg":
return pack_ogg(data, rate)
elif media_type == "aac":
return pack_aac(data, rate)
elif media_type == "wav":
return pack_wav(data, rate)
return data.tobytes()
def wave_header_chunk(sample_rate: int = 32000) -> bytes:
buf = BytesIO()
with wave.open(buf, "wb") as w:
w.setnchannels(1)
w.setsampwidth(2)
w.setframerate(sample_rate)
w.writeframes(b"")
buf.seek(0)
return buf.read()
# โโ App โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
app = FastAPI(
title="ATR TTS API",
description="ATR ่ง่ฒ่ฏญ้ณๅๆๆฅๅฃใๅบไบ GPT-SoVITS v2Pro ๆจกๅใ",
version="1.0.0",
)
tts_pipeline: TTS = None
@app.on_event("startup")
def startup():
global tts_pipeline
print("Loading models...")
config = TTS_Config("GPT_SoVITS/configs/tts_infer.yaml")
config.device = "cpu"
config.is_half = False
config.version = VERSION
config.t2s_weights_path = GPT_MODEL
config.vits_weights_path = SOVITS_MODEL
tts_pipeline = TTS(config)
print(f"Models loaded. Version: {VERSION}")
print(f" GPT: {GPT_MODEL}")
print(f" SoVITS: {SOVITS_MODEL}")
print(f" Ref: {REF_AUDIO}")
def _build_req(req: TTSRequest, streaming_mode: int = 0) -> dict:
return {
"text": req.text,
"text_lang": req.text_lang.lower(),
"ref_audio_path": req.ref_audio_path or REF_AUDIO,
"prompt_text": req.prompt_text if req.prompt_text is not None else REF_TEXT,
"prompt_lang": (req.prompt_lang or REF_LANG).lower(),
"top_k": req.top_k,
"top_p": req.top_p,
"temperature": req.temperature,
"text_split_method": req.text_split_method,
"batch_size": req.batch_size,
"batch_threshold": 0.75,
"split_bucket": True,
"speed_factor": req.speed_factor,
"fragment_interval": 0.3,
"seed": req.seed,
"media_type": req.media_type,
"streaming_mode": streaming_mode in (2, 3),
"return_fragment": streaming_mode == 1,
"fixed_length_chunk": streaming_mode == 3,
"parallel_infer": True,
"repetition_penalty": 1.35,
"sample_steps": req.sample_steps,
"super_sampling": False,
}
# โโ Endpoints โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
@app.get("/health", response_model=HealthResponse, summary="ๅฅๅบทๆฃๆฅ")
async def health():
return HealthResponse(
status="ok",
gpt_model=GPT_MODEL,
sovits_model=SOVITS_MODEL,
ref_audio=REF_AUDIO,
version=VERSION,
)
@app.post("/tts", summary="่ฏญ้ณๅๆ", description="่พๅ
ฅๆๆฌ๏ผ่ฟๅๅฎๆด็้ณ้ขๆไปถใ",
responses={200: {"content": {"audio/wav": {}}}, 400: {"description": "ๅๆๅคฑ่ดฅ"}})
async def tts_endpoint(request: TTSRequest):
req = _build_req(request, streaming_mode=0)
try:
gen = tts_pipeline.run(req)
sr, audio = next(gen)
audio_bytes = pack_audio(audio, sr, request.media_type)
return Response(audio_bytes, media_type=f"audio/{request.media_type}")
except Exception as e:
return JSONResponse(status_code=400, content={"message": "tts failed", "error": str(e)})
@app.post("/tts/stream", summary="ๆตๅผ่ฏญ้ณๅๆ",
description="่พๅ
ฅๆๆฌ๏ผๆตๅผ่ฟๅ้ณ้ขๆฐๆฎใ้็จไบ้ฟๆๆฌๅฎๆถๆญๆพใ",
responses={200: {"content": {"audio/wav": {}}}, 400: {"description": "ๅๆๅคฑ่ดฅ"}})
async def tts_stream_endpoint(request: TTSStreamRequest):
req = _build_req(request, streaming_mode=request.streaming_mode)
try:
gen = tts_pipeline.run(req)
media = request.media_type
def stream(gen: Generator):
first = True
for sr, chunk in gen:
if first and media == "wav":
yield wave_header_chunk(sample_rate=sr)
first = False
yield pack_audio(chunk, sr, "raw")
else:
yield pack_audio(chunk, sr, media)
return StreamingResponse(stream(gen), media_type=f"audio/{media}")
except Exception as e:
return JSONResponse(status_code=400, content={"message": "tts failed", "error": str(e)})
# โโ Main โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
if __name__ == "__main__":
parser = argparse.ArgumentParser(description="ATR TTS API Server")
parser.add_argument("-a", "--host", default="127.0.0.1", help="็ปๅฎๅฐๅ (้ป่ฎค 127.0.0.1)")
parser.add_argument("-p", "--port", type=int, default=9880, help="็ซฏๅฃๅท (้ป่ฎค 9880)")
args = parser.parse_args()
print(f"\n API docs: http://{args.host}:{args.port}/docs\n")
uvicorn.run(app=app, host=args.host, port=args.port, workers=1)
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