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from fastapi.responses import FileResponse
import torch
import torchaudio
import os
from pydantic import BaseModel
from typing import List, Optional
from pathlib import Path
OUTPUT_DIR = "outputs"
os.makedirs(OUTPUT_DIR, exist_ok=True)
device = "cuda" if torch.cuda.is_available() else "cpu"
from huggingface_hub import hf_hub_download
# ------------------------
# Download model files from Hugging Face if not present
# ------------------------
MODEL_DIR = "my_model"
config_path = hf_hub_download(
repo_id="MariaKaiser/egtts_finetuned_with_vocab",
filename="my_model/config.json",
cache_dir=MODEL_DIR
)
vocab_path = hf_hub_download(
repo_id="MariaKaiser/egtts_finetuned_with_vocab",
filename="my_model/vocab.json",
cache_dir=MODEL_DIR
)
model_path = hf_hub_download(
repo_id="MariaKaiser/egtts_finetuned_with_vocab",
filename="my_model/model.pth",
cache_dir=MODEL_DIR
)
from TTS.tts.models.xtts import Xtts
from TTS.tts.configs.xtts_config import XttsConfig
# Load model
config = XttsConfig()
config.load_json(config_path)
model = Xtts.init_from_config(config)
model.load_checkpoint(
config,
checkpoint_dir= os.path.dirname(model_path),
use_deepspeed=False,
vocab_path= vocab_path
)
model.to(device)
# --------- Define your models ----------
class BGMusicDto(BaseModel):
musicPath: str
emotion: str
volume: float
class SentenceDto(BaseModel):
speaker: str
sentenceId: str
sentence: str
prosodyReference: str
emotion: str
intensity: str
class LocationDto(BaseModel):
locationName: str
path: str
class SceneDto(BaseModel):
sceneId: str
location: LocationDto
sentences: List[SentenceDto]
bgMusic: BGMusicDto
class ChapterDto(BaseModel):
chapterId: str
title: SentenceDto
scenes: List[SceneDto]
class CastDto(BaseModel):
name: str
gender: str
isAdult: bool
voiceReference: str
class StoryCreationDTO(BaseModel):
storyId: str
chapters: List[ChapterDto]
cast: List[CastDto]
#-----------------------------------------------------------
#__________ func to get file from supabase__________________
import httpx
import tempfile
import asyncio
# async def download_file_from_url(url: str, retries: int = 3, delay: float = 2.0) -> str | None:
# """
# Downloads a file from a URL and returns the path to a temporary file.
# Retries on failure up to `retries` times, waiting `delay` seconds between attempts.
# Returns None if all attempts fail.
# """
# for attempt in range(1, retries + 1):
# try:
# async with httpx.AsyncClient(timeout=60.0) as client: # increased timeout
# response = await client.get(url)
# response.raise_for_status() # raises for non-200 status codes
# # Save to a temporary file
# temp_file = tempfile.NamedTemporaryFile(delete=False, suffix=".wav")
# temp_file.write(response.content)
# temp_file.close()
# print(f"Downloaded {url} successfully on attempt {attempt}")
# return temp_file.name
# except Exception as e:
# print(f"Attempt {attempt} failed for {url}: {e}")
# if attempt < retries:
# await asyncio.sleep(delay) # wait before retrying
# print(f"All {retries} attempts failed for {url}")
# return None
download_cache = {}
async def download_scene_files(scene: SceneDto):
tasks = []
# Sentence prosody references
for sentence in scene.sentences:
tasks.append(download_file_from_url(sentence.prosodyReference))
# Location SFX
if scene.location.path:
tasks.append(download_file_from_url(scene.location.path))
# Background music
if scene.bgMusic and scene.bgMusic.musicPath:
tasks.append(download_file_from_url(scene.bgMusic.musicPath))
# Run all downloads concurrently
downloaded_files = await asyncio.gather(*tasks)
return downloaded_files
async def download_file_from_url(url: str, retries: int = 3, delay: float = 2.0) -> str | None:
"""
Downloads a file from a URL and returns the path to a temporary file.
If download fails after `retries` attempts, returns None instead of raising an error.
Caches successful downloads to avoid repeated requests.
"""
if url in download_cache:
#print(f"{url} is got from cache")
return download_cache[url]
for attempt in range(1, retries + 1):
try:
async with httpx.AsyncClient(timeout=60.0) as client:
response = await client.get(url)
response.raise_for_status()
temp_file = tempfile.NamedTemporaryFile(delete=False, suffix=".wav")
temp_file.write(response.content)
temp_file.close()
#print(f"{url} is downloaded and saved in cache")
download_cache[url] = temp_file.name
return temp_file.name
except Exception as e:
#print(f"Attempt {attempt} failed for {url}: {e}")
if attempt < retries:
await asyncio.sleep(delay)
#print(f"All {retries} attempts failed for {url}, skipping...")
return None
#-----------------------------------------------------------
#takes the text to be said and path to the prosody audio and path to save the generated audio and returns path to the generated audio
# (save_path -> full path including the filename, not just a folder.)
def inference_by_model(text: str, audio_file: str, save_path: str) -> str:
gpt_cond_latent, speaker_embedding = model.get_conditioning_latents(audio_path=[audio_file])
out = model.inference(
text=text,
language="ar",
gpt_cond_latent=gpt_cond_latent,
speaker_embedding=speaker_embedding,
temperature= 0.65,
top_k=model.config.top_k,
length_penalty=model.config.length_penalty,
repetition_penalty=model.config.repetition_penalty,
top_p=model.config.top_p,
)
os.makedirs(os.path.dirname(save_path), exist_ok=True)
torchaudio.save(save_path, torch.tensor(out["wav"]).unsqueeze(0), 24000)
return save_path
#_______________generate audios and folder structure_______________________
async def generate_story_audios(story: StoryCreationDTO, base_output: str):
"""
Generates audio files and folders for the entire story
"""
story_dir = Path(base_output) / story.storyId
story_dir.mkdir(parents=True, exist_ok=True)
for chapter in story.chapters:
chapter_dir = story_dir / chapter.chapterId
chapter_dir.mkdir(exist_ok=True)
# --- Chapter title audio ---
prosody_file_title = await download_file_from_url(chapter.title.prosodyReference)
title_save_path = chapter_dir / "title.wav"
tagged_text_title = generate_tagged_text(
chapter.title.sentence,
chapter.title.emotion,
chapter.title.intensity
)
title_generated_audio_path = inference_by_model(
text=tagged_text_title,
audio_file=prosody_file_title,
save_path=title_save_path
)
# os.remove(prosody_file_title)
for scene in chapter.scenes:
await download_scene_files(scene)
scene_dir = chapter_dir / scene.sceneId
scene_dir.mkdir(exist_ok=True)
# --- Sentences audio ---
for sentence in scene.sentences:
# Download the prosody reference audio from Supabase
prosody_file = download_cache[sentence.prosodyReference]
sentence_save_path = scene_dir / f"{sentence.sentenceId}.wav"
tagged_text = generate_tagged_text(
sentence.sentence,
sentence.emotion,
sentence.intensity
)
sentence_generated_audio_path = inference_by_model(
text=tagged_text,
audio_file=prosody_file,
save_path=sentence_save_path
)
# os.remove(prosody_file)
#_______________ Concatenating the generated audios to make the final story (post-processing)_______________________
from pydub import AudioSegment
import os
import subprocess
def ensure_wav(file_path: str) -> str:
"""
Convert a single audio file to WAV using ffmpeg.
Returns the path to the WAV file.
If the file is already WAV, returns the original path.
"""
ext = os.path.splitext(file_path)[1].lower()
if ext == ".wav":
return file_path # Already WAV
# Output path: same folder, same name, .wav extension
wav_path = os.path.splitext(file_path)[0] + ".wav"
# Run ffmpeg conversion
subprocess.run(["ffmpeg", "-y", "-i", file_path, wav_path], check=True)
print(f"Converted: {file_path} → {wav_path}")
return wav_path
from pydub import AudioSegment
import asyncio
async def concat_story_audio(story: StoryCreationDTO, base_output: str, final_path: str = None): # full path including filename
story_dir = Path(base_output) / story.storyId
story_dir.mkdir(parents=True, exist_ok=True)
if final_path is None:
final_path = story_dir / f"{story.storyId}_full.wav"
else:
final_path = Path(final_path)
final_path.parent.mkdir(parents=True, exist_ok=True) # ensure folder exists
chapters_audio = AudioSegment.silent(duration=0) # start empty
for chapter in story.chapters:
chapter_dir = story_dir / chapter.chapterId
# --- Chapter title ---
title_path = chapter_dir / "title.wav"
chapter_audio = AudioSegment.from_wav(title_path)
for scene in chapter.scenes:
scene_dir = chapter_dir / scene.sceneId
scene_audio = AudioSegment.silent(duration=0)
# --- Concatenate sentence audios ---
for sentence in scene.sentences:
sentence_path = scene_dir / f"{sentence.sentenceId}.wav"
sentence_audio = AudioSegment.from_wav(sentence_path)
scene_audio += sentence_audio
# --- Add SFX for location if available ---
if scene.location.path:
sfx_file = await download_file_from_url(scene.location.path)
if sfx_file:
sfx_file_wav = ensure_wav(sfx_file)
sfx_audio = AudioSegment.from_wav(sfx_file_wav)
scene_audio = scene_audio.overlay(sfx_audio)
# os.remove(sfx_file)
#else:
#print(f"SFX skipped for {scene.location.locationName}")
# --- Add background music if available ---
if scene.bgMusic and scene.bgMusic.musicPath:
bg_url = scene.bgMusic.musicPath
bg_file = await download_file_from_url(bg_url)
bg_file_wav = ensure_wav(bg_file)
bg_audio = AudioSegment.from_file(bg_file_wav)
# Adjust volume
bg_audio = bg_audio - (1 - scene.bgMusic.volume) * 30 # approximate
# Loop if shorter than scene
if len(bg_audio) < len(scene_audio):
loops = (len(scene_audio) // len(bg_audio)) + 1
bg_audio = bg_audio * loops
bg_audio = bg_audio[:len(scene_audio)] # trim to match scene
scene_audio = scene_audio.overlay(bg_audio)
# os.remove(bg_file)
# Add 2 seconds of silence between scenes
scene_audio += AudioSegment.silent(duration=2000)
chapter_audio += scene_audio
# Add 3 seconds of silence between chapters
chapter_audio += AudioSegment.silent(duration=3000)
chapters_audio += chapter_audio
# Export final story
chapters_audio.export(final_path, format="wav")
return final_path
#-------------------------------------------------------------
app = FastAPI(title="EGTTS Arabic TTS API")
tasks = {}
#___________________Test end point to test supabase fetch
from fastapi import Query
from fastapi.responses import Response
@app.get("/test-download/")
async def test_download(url: str = Query(...)):
try:
file_bytes = await download_file_from_url(url)
return Response(
content=file_bytes,
media_type="audio/wav" # change if needed
)
except Exception as e:
return {"error": str(e)}
#_________________________________________
@app.get("/")
def root():
return {"message": "Welcome! Visit /docs for Swagger UI."}
#-----------------------------------------------------------
class TTSResponse(BaseModel):
fileName: str
duration: float # seconds
audioPath: str
#---------------------------concatenate text with tags ---------------------------
# Map Intensity numbers to tag strings
intensity_map = {
"LOW": "low",
"MEDIUM": "mid",
"HIGH": "high"
}
# Map Emotion enum names to lowercase tag strings
emotion_map = {
"HAPPINESS": "happiness",
"SADNESS": "sadness",
"FEAR": "fear",
"ANGER": "anger",
"SURPRISE": "surprise",
"WHISPER": "whisper",
"NARRATION": "narration"
}
def generate_tagged_text(text: str, emotion_enum: str, intensity_enum: str) -> str:
"""
Convert enums to <emo_x> <int_y> format and concatenate with text
"""
emo_tag = f"<emo_{emotion_map[emotion_enum]}>"
int_tag = f"<int_{intensity_map[intensity_enum]}>"
return f"{emo_tag} {int_tag} {text}"
#-----------------------------------------------------------
#-----------------Post End Point_____________________________
# @app.post("/tts/")
# async def process_story(story: StoryCreationDTO):
# # Optional: print info for debugging
# print(story.storyId)
# for cast in story.cast:
# print(cast.name, cast.voiceReference)
# for chapter in story.chapters:
# for scene in chapter.scenes:
# for sentence in scene.sentences:
# print(sentence.speaker, sentence.sentence)
# # 1️⃣ Generate all sentence audios and folder structure
# await generate_story_audios(story, base_output=OUTPUT_DIR)
# # 2️⃣ Concatenate all into final story audio
# final_story_path = os.path.join(OUTPUT_DIR, story.storyId, f"{story.storyId}_full.wav")
# final_generated_story_path = await concat_story_audio(story, base_output=OUTPUT_DIR, final_path=final_story_path)
# # Convert to base64 and get duration
# audio_b64, duration = audio_to_base64(final_generated_story_path)
# response = TTSResponse(
# file_name= os.path.basename(final_generated_story_path),
# duration=duration,
# audio_base64=audio_b64
# )
# return response
# async def run_tts_pipeline(task_id: str, story: StoryCreationDTO):
# try:
# await generate_story_audios(story, base_output=OUTPUT_DIR)
# final_story_path = os.path.join(
# OUTPUT_DIR,
# story.storyId,
# f"{story.storyId}_full.wav"
# )
# final_generated_story_path = await concat_story_audio(
# story,
# base_output=OUTPUT_DIR,
# final_path=final_story_path
# )
# audio_b64, duration = audio_to_base64(final_generated_story_path)
# tasks[task_id] = {
# "status": "completed",
# "result": {
# "fileName": os.path.basename(final_generated_story_path),
# "duration": duration,
# "audioPath": audio_b64
# }
# }
# except Exception as e:
# print(f"Exception caught at run tts pipeline {str(e)} and status is now failed")
# tasks[task_id] = {
# "status": "failed",
# "error": str(e)
# }
import os
import uuid
from supabase import create_client, Client
from pydub import AudioSegment # For duration in seconds
# Initialize Supabase client
SUPABASE_URL = "https://kvlxvhdgacktsgykyckm.supabase.co/"
SUPABASE_KEY = "eyJhbGciOiJIUzI1NiIsInR5cCI6IkpXVCJ9.eyJpc3MiOiJzdXBhYmFzZSIsInJlZiI6Imt2bHh2aGRnYWNrdHNneWt5Y2ttIiwicm9sZSI6InNlcnZpY2Vfcm9sZSIsImlhdCI6MTc3MTk2MTQ5MSwiZXhwIjoyMDg3NTM3NDkxfQ.tzfHcbzwzctHDDDp3vk4JGz30ajN2szncAV-1wK7_pM"
supabase: Client = create_client(SUPABASE_URL, SUPABASE_KEY)
import time
async def run_tts_pipeline(task_id: str, story: StoryCreationDTO):
start_time = time.time() # start timer
try:
# 1️⃣ Generate story audios
await generate_story_audios(story, base_output=OUTPUT_DIR)
# 2️⃣ Concatenate final story audio
final_story_path = os.path.join(
OUTPUT_DIR,
story.storyId,
f"{story.storyId}_full.wav"
)
final_generated_story_path = await concat_story_audio(
story,
base_output=OUTPUT_DIR,
final_path=final_story_path
)
print(f" final_generated_story_path: {final_generated_story_path}")
wav = AudioSegment.from_wav(final_generated_story_path)
mp3_path = final_generated_story_path.with_suffix(".mp3")
wav.export(mp3_path, format="mp3", bitrate="192k")
print(f" final_generated_story_path after conversion to mp3: {mp3_path}")
# 3️⃣ Calculate duration
audio_segment = AudioSegment.from_file(mp3_path)
duration_seconds = len(audio_segment) / 1000 # pydub gives length in milliseconds
# 4️⃣ Prepare the file for upload
file_name = f"{uuid.uuid4()}_{os.path.basename(mp3_path)}"
storage_path = f"{story.storyId}/final/{file_name}"
# with open(final_generated_story_path, "rb") as f:
# file_bytes = f.read()
supabase.storage.from_("story-audio-files").upload(
storage_path,
mp3_path
)
# 6️⃣ Get public URL
audio_url = supabase.storage.from_("story-audio-files").get_public_url(storage_path)
# 7️⃣ Update task status with audio URL and duration
tasks[task_id] = {
"status": "completed",
"result": {
"fileName": os.path.basename(mp3_path),
"duration": duration_seconds,
"audioPath": audio_url
}
}
# --- Print processing time ---
end_time = time.time()
elapsed = end_time - start_time
print(f"Story {story.storyId} processed in {elapsed:.2f} seconds")
except Exception as e:
print(f"exception caught at run tts pipeline {str(e)}")
tasks[task_id] = {
"status": "failed",
"error": str(e)
}
from fastapi import BackgroundTasks
import uuid
@app.post("/tts/")
async def process_story(story: StoryCreationDTO, background_tasks: BackgroundTasks):
task_id = str(uuid.uuid4())
tasks[task_id] = {
"status": "processing",
"result": None
}
background_tasks.add_task(run_tts_pipeline, task_id, story)
return {"task_id": task_id}
#-----------------------Results Get End Point ______________________________________
# @app.get("/tts/results/{task_id}")
# async def get_results(task_id: str):
# if task_id not in tasks:
# return {"status": "not_found"}
# task = tasks[task_id]
# if task["status"] == "processing":
# return {"status": "processing"}
# if task["status"] == "failed":
# return {
# "status": "failed",
# "error": task["error"]
# }
# return task["result"]
@app.get("/tts/results/{task_id}")
async def get_results(task_id: str):
if task_id not in tasks:
return {"status": "not_found"}
task = tasks[task_id]
if task["status"] == "processing":
return {"status": "processing"}
if task["status"] == "failed":
return {
"status": "failed",
"error": task.get("error", "Unknown error")
}
# Ensure result exists and has all required fields
result = task.get("result")
if result and all(k in result for k in ("fileName", "duration", "audioPath")):
#clearing cache
print(f"all fields are available {result}")
for file_path in download_cache.values():
if os.path.exists(file_path):
os.remove(file_path)
download_cache.clear()
return {"status": "completed", **result}
else:
print(f"missing field {result}")
# If result is missing fields, mark as still processing
return {"status": "processing"}
#----------------------------Test End Point to test tts inference------------------------------------
@app.post("/tts_test/")
async def tts_endpoint(
text: str = Form(...),
audio_file: UploadFile = File(...),
emotionName: str = Form(...),
intensity: int = Form(...)
):
file_path = os.path.join(OUTPUT_DIR, audio_file.filename)
with open(file_path, "wb") as f:
f.write(await audio_file.read())
tagged_text = generate_tagged_text(text, emotionName, intensity)
output_path = os.path.join(OUTPUT_DIR, "out_test.wav")
output_wav = inference_by_model(tagged_text, file_path,output_path)
return FileResponse(output_wav, media_type="audio/wav", filename="output.wav")
import uvicorn
uvicorn.run(app, host="0.0.0.0", port=7860)
# if __name__ == "__main__":
# import uvicorn
# uvicorn.run(app, host="0.0.0.0", port=7860) |