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# TorToiSe
Tortoise is a text-to-speech program built with the following priorities:
1. Strong multi-voice capabilities.
2. Highly realistic prosody and intonation.
This repo contains all the code needed to run Tortoise TTS in inference mode.
Manuscript: https://arxiv.org/abs/2305.07243
## Hugging Face space
A live demo is hosted on Hugging Face Spaces. If you'd like to avoid a queue, please duplicate the Space and add a GPU. Please note that CPU-only spaces do not work for this demo.
https://huggingface.co/spaces/Manmay/tortoise-tts
## Install via pip
```bash
pip install tortoise-tts
```
If you would like to install the latest development version, you can also install it directly from the git repository:
```bash
pip install git+https://github.com/neonbjb/tortoise-tts
```
## What's in a name?
I'm naming my speech-related repos after Mojave desert flora and fauna. Tortoise is a bit tongue in cheek: this model
is insanely slow. It leverages both an autoregressive decoder **and** a diffusion decoder; both known for their low
sampling rates. On a K80, expect to generate a medium sized sentence every 2 minutes.
well..... not so slow anymore now we can get a **0.25-0.3 RTF** on 4GB vram and with streaming we can get < **500 ms** latency !!!
## Demos
See [this page](http://nonint.com/static/tortoise_v2_examples.html) for a large list of example outputs.
A cool application of Tortoise + GPT-3 (not affiliated with this repository): https://twitter.com/lexman_ai. Unfortunately, this proejct seems no longer to be active.
## Usage guide
### Local installation
If you want to use this on your own computer, you must have an NVIDIA GPU.
On Windows, I **highly** recommend using the Conda installation path. I have been told that if you do not do this, you
will spend a lot of time chasing dependency problems.
First, install miniconda: https://docs.conda.io/en/latest/miniconda.html
Then run the following commands, using anaconda prompt as the terminal (or any other terminal configured to work with conda)
This will:
1. create conda environment with minimal dependencies specified
1. activate the environment
1. install pytorch with the command provided here: https://pytorch.org/get-started/locally/
1. clone tortoise-tts
1. change the current directory to tortoise-tts
1. run tortoise python setup install script
```shell
conda create --name tortoise python=3.9 numba inflect
conda activate tortoise
conda install pytorch torchvision torchaudio pytorch-cuda=11.7 -c pytorch -c nvidia
conda install transformers=4.29.2
git clone https://github.com/neonbjb/tortoise-tts.git
cd tortoise-tts
python setup.py install
```
Optionally, pytorch can be installed in the base environment, so that other conda environments can use it too. To do this, simply send the `conda install pytorch...` line before activating the tortoise environment.
> **Note:** When you want to use tortoise-tts, you will always have to ensure the `tortoise` conda environment is activated.
If you are on windows, you may also need to install pysoundfile: `conda install -c conda-forge pysoundfile`
### Docker
An easy way to hit the ground running and a good jumping off point depending on your use case.
```sh
git clone https://github.com/neonbjb/tortoise-tts.git
cd tortoise-tts
docker build . -t tts
docker run --gpus all \
-e TORTOISE_MODELS_DIR=/models \
-v /mnt/user/data/tortoise_tts/models:/models \
-v /mnt/user/data/tortoise_tts/results:/results \
-v /mnt/user/data/.cache/huggingface:/root/.cache/huggingface \
-v /root:/work \
-it tts
```
This gives you an interactive terminal in an environment that's ready to do some tts. Now you can explore the different interfaces that tortoise exposes for tts.
For example:
```sh
cd app
conda activate tortoise
time python tortoise/do_tts.py \
--output_path /results \
--preset ultra_fast \
--voice geralt \
--text "Time flies like an arrow; fruit flies like a bananna."
```
## Apple Silicon
On macOS 13+ with M1/M2 chips you need to install the nighly version of PyTorch, as stated in the official page you can do:
```shell
pip3 install --pre torch torchvision torchaudio --index-url https://download.pytorch.org/whl/nightly/cpu
```
Be sure to do that after you activate the environment. If you don't use conda the commands would look like this:
```shell
python3.10 -m venv .venv
source .venv/bin/activate
pip install numba inflect psutil
pip install --pre torch torchvision torchaudio --index-url https://download.pytorch.org/whl/nightly/cpu
pip install transformers
git clone https://github.com/neonbjb/tortoise-tts.git
cd tortoise-tts
pip install .
```
Be aware that DeepSpeed is disabled on Apple Silicon since it does not work. The flag `--use_deepspeed` is ignored.
You may need to prepend `PYTORCH_ENABLE_MPS_FALLBACK=1` to the commands below to make them work since MPS does not support all the operations in Pytorch.
### do_tts.py
This script allows you to speak a single phrase with one or more voices.
```shell
python tortoise/do_tts.py --text "I'm going to speak this" --voice random --preset fast
```
### faster inference read.py
This script provides tools for reading large amounts of text.
```shell
python tortoise/read_fast.py --textfile <your text to be read> --voice random
```
### read.py
This script provides tools for reading large amounts of text.
```shell
python tortoise/read.py --textfile <your text to be read> --voice random
```
This will break up the textfile into sentences, and then convert them to speech one at a time. It will output a series
of spoken clips as they are generated. Once all the clips are generated, it will combine them into a single file and
output that as well.
Sometimes Tortoise screws up an output. You can re-generate any bad clips by re-running `read.py` with the --regenerate
argument.
### API
Tortoise can be used programmatically, like so:
```python
reference_clips = [utils.audio.load_audio(p, 22050) for p in clips_paths]
tts = api.TextToSpeech()
pcm_audio = tts.tts_with_preset("your text here", voice_samples=reference_clips, preset='fast')
```
To use deepspeed:
```python
reference_clips = [utils.audio.load_audio(p, 22050) for p in clips_paths]
tts = api.TextToSpeech(use_deepspeed=True)
pcm_audio = tts.tts_with_preset("your text here", voice_samples=reference_clips, preset='fast')
```
To use kv cache:
```python
reference_clips = [utils.audio.load_audio(p, 22050) for p in clips_paths]
tts = api.TextToSpeech(kv_cache=True)
pcm_audio = tts.tts_with_preset("your text here", voice_samples=reference_clips, preset='fast')
```
To run model in float16:
```python
reference_clips = [utils.audio.load_audio(p, 22050) for p in clips_paths]
tts = api.TextToSpeech(half=True)
pcm_audio = tts.tts_with_preset("your text here", voice_samples=reference_clips, preset='fast')
```
for Faster runs use all three:
```python
reference_clips = [utils.audio.load_audio(p, 22050) for p in clips_paths]
tts = api.TextToSpeech(use_deepspeed=True, kv_cache=True, half=True)
pcm_audio = tts.tts_with_preset("your text here", voice_samples=reference_clips, preset='fast')
```
## Acknowledgements
This project has garnered more praise than I expected. I am standing on the shoulders of giants, though, and I want to
credit a few of the amazing folks in the community that have helped make this happen:
- Hugging Face, who wrote the GPT model and the generate API used by Tortoise, and who hosts the model weights.
- [Ramesh et al](https://arxiv.org/pdf/2102.12092.pdf) who authored the DALLE paper, which is the inspiration behind Tortoise.
- [Nichol and Dhariwal](https://arxiv.org/pdf/2102.09672.pdf) who authored the (revision of) the code that drives the diffusion model.
- [Jang et al](https://arxiv.org/pdf/2106.07889.pdf) who developed and open-sourced univnet, the vocoder this repo uses.
- [Kim and Jung](https://github.com/mindslab-ai/univnet) who implemented univnet pytorch model.
- [lucidrains](https://github.com/lucidrains) who writes awesome open source pytorch models, many of which are used here.
- [Patrick von Platen](https://huggingface.co/patrickvonplaten) whose guides on setting up wav2vec were invaluable to building my dataset.
## Notice
Tortoise was built entirely by the author (James Betker) using their own hardware. Their employer was not involved in any facet of Tortoise's development.
## License
Tortoise TTS is licensed under the Apache 2.0 license.
If you use this repo or the ideas therein for your research, please cite it! A bibtex entree can be found in the right pane on GitHub.
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