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import os |
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import json |
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from dotenv import load_dotenv |
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import fal_client |
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import requests |
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import time |
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import io |
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from pyht import Client as PyhtClient |
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from pyht.client import TTSOptions |
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import base64 |
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import tempfile |
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import random |
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load_dotenv() |
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ZEROGPU_TOKENS = os.getenv("ZEROGPU_TOKENS", "").split(",") |
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def get_zerogpu_token(): |
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return random.choice(ZEROGPU_TOKENS) |
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model_mapping = { |
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"eleven-multilingual-v2": { |
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"provider": "elevenlabs", |
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"model": "eleven_multilingual_v2", |
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}, |
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"eleven-turbo-v2.5": { |
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"provider": "elevenlabs", |
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"model": "eleven_turbo_v2_5", |
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}, |
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"eleven-flash-v2.5": { |
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"provider": "elevenlabs", |
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"model": "eleven_flash_v2_5", |
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}, |
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"cartesia-sonic-2": { |
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"provider": "cartesia", |
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"model": "sonic-2", |
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}, |
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"spark-tts": { |
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"provider": "spark", |
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"model": "spark-tts", |
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}, |
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"playht-2.0": { |
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"provider": "playht", |
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"model": "PlayHT2.0", |
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}, |
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"styletts2": { |
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"provider": "styletts", |
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"model": "styletts2", |
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}, |
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"kokoro-v1": { |
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"provider": "kokoro", |
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"model": "kokoro_v1", |
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}, |
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"cosyvoice-2.0": { |
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"provider": "cosyvoice", |
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"model": "cosyvoice_2_0", |
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}, |
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"papla-p1": { |
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"provider": "papla", |
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"model": "papla_p1", |
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}, |
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"hume-octave": { |
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"provider": "hume", |
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"model": "octave", |
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}, |
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"megatts3": { |
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"provider": "megatts3", |
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"model": "megatts3", |
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}, |
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} |
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url = "https://tts-agi-tts-router-v2.hf.space/tts" |
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headers = { |
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"accept": "application/json", |
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"Content-Type": "application/json", |
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"Authorization": f'Bearer {os.getenv("HF_TOKEN")}', |
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} |
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data = {"text": "string", "provider": "string", "model": "string"} |
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def predict_csm(script): |
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result = fal_client.subscribe( |
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"fal-ai/csm-1b", |
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arguments={ |
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"scene": script |
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}, |
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with_logs=True, |
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) |
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return requests.get(result["audio"]["url"]).content |
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def predict_playdialog(script): |
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pyht_client = PyhtClient( |
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user_id=os.getenv("PLAY_USERID"), |
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api_key=os.getenv("PLAY_SECRETKEY"), |
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) |
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voice_1 = "s3://voice-cloning-zero-shot/baf1ef41-36b6-428c-9bdf-50ba54682bd8/original/manifest.json" |
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voice_2 = "s3://voice-cloning-zero-shot/e040bd1b-f190-4bdb-83f0-75ef85b18f84/original/manifest.json" |
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if isinstance(script, list): |
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text = "" |
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for turn in script: |
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speaker_id = turn.get("speaker_id", 0) |
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prefix = "Host 1:" if speaker_id == 0 else "Host 2:" |
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text += f"{prefix} {turn['text']}\n" |
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else: |
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text = script |
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options = TTSOptions( |
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voice=voice_1, voice_2=voice_2, turn_prefix="Host 1:", turn_prefix_2="Host 2:" |
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) |
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audio_chunks = [] |
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for chunk in pyht_client.tts(text, options, voice_engine="PlayDialog"): |
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audio_chunks.append(chunk) |
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return b"".join(audio_chunks) |
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def predict_dia(script): |
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if isinstance(script, list): |
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formatted_text = "" |
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for turn in script: |
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speaker_id = turn.get("speaker_id", 0) |
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speaker_tag = "[S1]" if speaker_id == 0 else "[S2]" |
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text = turn.get("text", "").strip().replace("[S1]", "").replace("[S2]", "") |
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formatted_text += f"{speaker_tag} {text} " |
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text = formatted_text.strip() |
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else: |
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text = script |
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print(text) |
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headers = { |
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"Authorization": f"Bearer {get_zerogpu_token()}" |
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} |
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response = requests.post( |
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"https://mrfakename-dia-1-6b.hf.space/gradio_api/call/generate_dialogue", |
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headers=headers, |
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json={"data": [text]}, |
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) |
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event_id = response.json()["event_id"] |
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stream_url = f"https://mrfakename-dia-1-6b.hf.space/gradio_api/call/generate_dialogue/{event_id}" |
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with requests.get(stream_url, headers=headers, stream=True) as stream_response: |
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for line in stream_response.iter_lines(): |
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if line: |
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if line.startswith(b"data: ") and not line.startswith(b"data: null"): |
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audio_data = line[6:] |
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return requests.get(json.loads(audio_data)[0]["url"]).content |
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def predict_tts(text, model): |
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global client |
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print(f"Predicting TTS for {model}") |
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if model == "csm-1b": |
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return predict_csm(text) |
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elif model == "playdialog-1.0": |
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return predict_playdialog(text) |
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elif model == "dia-1.6b": |
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return predict_dia(text) |
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if not model in model_mapping: |
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raise ValueError(f"Model {model} not found") |
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result = requests.post( |
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url, |
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headers=headers, |
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data=json.dumps( |
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{ |
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"text": text, |
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"provider": model_mapping[model]["provider"], |
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"model": model_mapping[model]["model"], |
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} |
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), |
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) |
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response_json = result.json() |
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audio_data = response_json["audio_data"] |
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extension = response_json["extension"] |
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audio_bytes = base64.b64decode(audio_data) |
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with tempfile.NamedTemporaryFile(delete=False, suffix=f".{extension}") as temp_file: |
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temp_file.write(audio_bytes) |
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temp_path = temp_file.name |
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return temp_path |
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if __name__ == "__main__": |
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print( |
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predict_dia( |
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[ |
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{"text": "Hello, how are you?", "speaker_id": 0}, |
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{"text": "I'm great, thank you!", "speaker_id": 1}, |
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] |
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) |
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) |
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