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A high-performance inference engine specifically designed for the GPT-SoVITS text-to-speech model

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GSV-TTS-Lite

A high-performance inference engine specifically designed for the GPT-SoVITS text-to-speech model

License Python Version GitHub stars

English   Chinese

About

The original motivation for this project was the pursuit of ultimate performance. While using the original GPT-SoVITS, I found that the inference latency often struggled to meet the demands of real-time interaction due to the computing power bottlenecks of the RTX 3050 (Laptop).

To break through these limitations, GSV-TTS-Lite was developed as an inference backend based on GPT-SoVITS V2Pro. Through deep optimization techniques, this project successfully achieves millisecond-level real-time response in low-VRAM environments.

Beyond the leap in performance, GSV-TTS-Lite implements the decoupling of timbre and style, supporting independent control over the speaker's voice and emotion. It also features subtitle timestamp alignment and voice conversion (timbre transfer).

To facilitate integration for developers, GSV-TTS-Lite features a significantly streamlined code architecture and is available on PyPI as the gsv-tts-lite library, supporting one-click installation via pip.

The currently supported languages are Chinese, Japanese, and English. The available models include v2pro and v2proplus.

Performance Comparison

[!NOTE] Test Environment: NVIDIA GeForce RTX 3050 (Laptop)

Backend Settings TTFT (First Packet) RTF (Real-time Factor) VRAM Speedup
Original streaming_mode=3 436 ms 0.381 1.6 GB -
Lite Version Flash_Attn=Off 150 ms 0.125 0.8 GB 2.9x Speed
Lite Version Flash_Attn=On 133 ms 0.108 0.8 GB 🔥 3.3x Speed

As shown, GSV-TTS-Lite achieves 3x ~ 4x speed improvements while halving the VRAM usage! 🚀

Deployment (For Developers)

Prerequisites

  • CUDA Toolkit
  • Microsoft Visual C++

Installation Steps

1. Environment Configuration

It is recommended to create a virtual environment using Python >=3.10.

# Install PyTorch
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu128

2. Install GSV-TTS-Lite

If you have prepared the above basic environment, you can directly execute the following command to complete the integration:

pip install gsv-tts-lite==0.2.6 --prefer-binary

Quick Start

[!TIP] The program will automatically download the required pre-trained models upon the first run.

1. Basic Inference

from gsv_tts import TTS

tts = TTS()
# tts = TTS(use_bert=True) # Recommended setting for better Chinese synthesis results.
# tts = TTS(use_flash_attn=True) # Recommended setting if Flash Attention is installed.

# Load GPT model weights from the specified path into memory; loads the default model here.
tts.load_gpt_model()

# Load SoVITS model weights from the specified path into memory; loads the default model here.
tts.load_sovits_model()

# Pre-load and cache resources to significantly reduce latency during the first inference.
# tts.init_language_module("ja")
# tts.cache_spk_audio("examples\laffey.mp3")
# tts.cache_prompt_audio(
#     prompt_audio_paths="examples\AnAn.ogg",
#     prompt_audio_texts="ちが……ちがう。レイア、貴様は間違っている。",
# )

# 'infer' is the simplest and most basic inference method, suitable for short text generation.
audio = tts.infer(
    spk_audio_path="examples\laffey.mp3", # Voice reference audio (Timbre)
    prompt_audio_path="examples\AnAn.ogg", # Style reference audio (Prompt)
    prompt_audio_text="ちが……ちがう。レイア、貴様は間違っている。", # The corresponding text for the style reference audio
    text="へぇー、ここまでしてくれるんですね。", # Target text to be generated
    # gpt_model = None, # Path to the GPT model for inference; defaults to the first loaded GPT model.
    # sovits_model = None, # Path to the SoVITS model for inference; defaults to the first loaded SoVITS model.
)

audio.play()
tts.audio_queue.wait()
# tts.audio_queue.stop() # Stop playback

2. Stream Inference / Subtitle Synchronization

import time
import queue
import threading
from gsv_tts import TTS

class SubtitlesQueue:
    def __init__(self):
        self.q = queue.Queue()
        self.t = None
    
    def process(self):
        last_i = 0
        last_t = time.time()

        while True:
            subtitles, text = self.q.get()
            
            if subtitles is None:
                break

            for subtitle in subtitles:
                if subtitle["start_s"] > time.time() - last_t:
                    while time.time() - last_t <= subtitle["start_s"]:
                        time.sleep(0.01)

                if subtitle["end_s"] and subtitle["end_s"] > time.time() - last_t:
                    if subtitle["orig_idx_end"] > last_i:
                        print(text[last_i:subtitle["orig_idx_end"]], end="", flush=True)
                        last_i = subtitle["orig_idx_end"]
                        while time.time() - last_t <= subtitle["end_s"]:
                            time.sleep(0.01)

        self.t = None
    
    def add(self, subtitles, text):
        self.q.put((subtitles, text))
        if self.t is None:
            self.t = threading.Thread(target=self.process, daemon=True)
            self.t.start()

tts = TTS()

# infer, infer_stream, and infer_batched all support returning subtitle timestamps; infer_stream is used here just as an example.
subtitlesqueue = SubtitlesQueue()

# infer_stream implements token-level streaming output, significantly reducing first-token latency and enabling a ultra-low latency real-time feedback experience.
generator = tts.infer_stream(
    spk_audio_path="examples\laffey.mp3",
    prompt_audio_path="examples\AnAn.ogg",
    prompt_audio_text="ちが……ちがう。レイア、貴様は間違っている。",
    text="へぇー、ここまでしてくれるんですね。",
    debug=False,
)

for audio in generator:
    audio.play()
    subtitlesqueue.add(audio.subtitles, audio.orig_text)

tts.audio_queue.wait()
subtitlesqueue.add(None, None)
print()

3. Batched Inference

from gsv_tts import TTS

tts = TTS()

# infer_batched is optimized specifically for long-form text and multi-sentence synthesis scenarios. This mode not only offers significant advantages in processing efficiency but also supports assigning different reference audios to different sentences within the same batch, providing high synthesis freedom and flexibility.
audios = tts.infer_batched(
    spk_audio_paths="examples\laffey.mp3",
    prompt_audio_paths="examples\AnAn.ogg",
    prompt_audio_texts="ちが……ちがう。レイア、貴様は間違っている。",
    texts=["へぇー、ここまでしてくれるんですね。", "The old map crinkled in Leo’s trembling hands."],
)

for i, audio in enumerate(audios):
    audio.save(f"audio{i}.wav")

4. Voice Conversion

from gsv_tts import TTS

tts = TTS()

# Although infer_vc supports few-shot voice conversion and offers convenience, its conversion quality still has room for improvement compared to specialized voice conversion models like RVC or SVC.
audio = tts.infer_vc(
    spk_audio_path="examples\laffey.mp3",
    prompt_audio_path="examples\AnAn.ogg",
    prompt_audio_text="ちが……ちがう。レイア、貴様は間違っている。",
)

audio.play()
tts.audio_queue.wait()

5. Speaker Verification

from gsv_tts import TTS

tts = TTS(always_load_sv=True)

# verify_speaker is used to compare the speaker characteristics of two audio clips to determine if they are the same person.
similarity = tts.verify_speaker("examples\laffey.mp3", "examples\AnAn.ogg")
print("Speaker Similarity:", similarity)
6. Other Function Interfaces

1. Model Management

init_language_module(languages)

Preload necessary language processing modules.

load_gpt_model(model_paths)

Load GPT model weights from specified paths into memory.

load_sovits_model(model_paths)

Load SoVITS model weights from specified paths into memory.

unload_gpt_model(model_paths) / unload_sovits_model(model_paths)

Unload models from memory to free up resources.

get_gpt_list() / get_sovits_list()

Get the list of currently loaded models.

to_safetensors(checkpoint_path)

Converts PyTorch checkpoint files (.pth or .ckpt) into the safetensors format.

2. Audio Cache Management

cache_spk_audio(spk_audio_paths)

Preprocess and cache speaker reference audio data.

cache_prompt_audio(prompt_audio_paths, prompt_audio_texts, prompt_audio_languages)

Preprocess and cache prompt reference audio data.

del_spk_audio(spk_audio_list) / del_prompt_audio(prompt_audio_paths)

Remove audio data from the cache.

get_spk_audio_list() / get_prompt_audio_list()

Get the list of audio data in the cache.

Flash Attn

If you are looking for lower latency and higher throughput, it is highly recommended to enable Flash Attention support. Since this library has specific compilation requirements, please install it manually based on your system:

[!TIP] After installation, set use_flash_attn=True in your TTS configuration to enjoy the acceleration! 🚀

Credits

Special thanks to the following projects:

⭐ Star History

Star History Chart

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