Awesome
Moshi: a speech-text foundation model for real time dialogue
[Read the paper] [Demo] [Hugging Face]
Moshi is a speech-text foundation model and full-duplex spoken dialogue framework. It uses Mimi, a state-of-the-art streaming neural audio codec. Mimi processes 24 kHz audio, down to a 12.5 Hz representation with a bandwidth of 1.1 kbps, in a fully streaming manner (latency of 80ms, the frame size), yet performs better than existing, non-streaming, codecs like SpeechTokenizer (50 Hz, 4kbps), or SemantiCodec (50 Hz, 1.3kbps).
Moshi models two streams of audio: one corresponds to Moshi, and the other one to the user. At inference, the stream from the user is taken from the audio input, and the one for Moshi is sampled from the model's output. Along these two audio streams, Moshi predicts text tokens corresponding to its own speech, its inner monologue, which greatly improves the quality of its generation. A small Depth Transformer models inter codebook dependencies for a given time step, while a large, 7B parameter Temporal Transformer models the temporal dependencies. Moshi achieves a theoretical latency of 160ms (80ms for the frame size of Mimi + 80ms of acoustic delay), with a practical overall latency as low as 200ms on an L4 GPU.
Talk to Moshi now on our live demo.
<p align="center"> <img src="./moshi.png" alt="Schema representing the structure of Moshi. Moshi models two streams of audio: one corresponds to Moshi, and the other one to the user. At inference, the audio stream of the user is taken from the audio input, and the audio stream for Moshi is sampled from the model's output. Along that, Moshi predicts text tokens corresponding to its own speech for improved accuracy. A small Depth Transformer models inter codebook dependencies for a given step." width="650px"></p>Mimi builds on previous neural audio codecs such as SoundStream and EnCodec, adding a Transformer both in the encoder and decoder, and adapting the strides to match an overall frame rate of 12.5 Hz. This allows Mimi to get closer to the average frame rate of text tokens (~3-4 Hz), and limit the number of autoregressive steps in Moshi. Similarly to SpeechTokenizer, Mimi uses a distillation loss so that the first codebook tokens match a self-supervised representation from WavLM, which allows modeling semantic and acoustic information with a single model. Interestingly, while Mimi is fully causal and streaming, it learns to match sufficiently well the non-causal representation from WavLM, without introducing any delays. Finally, and similarly to EBEN, Mimi uses only an adversarial training loss, along with feature matching, showing strong improvements in terms of subjective quality despite its low bitrate.
<p align="center"> <img src="./mimi.png" alt="Schema representing the structure of Mimi, our proposed neural codec. Mimi contains a Transformer in both its encoder and decoder, and achieves a frame rate closer to that of text tokens. This allows us to reduce the number of auto-regressive steps taken by Moshi, thus reducing the latency of the model." width="800px"></p>Organisation of the repository
There are three separate versions of the moshi inference stack in this repo.
- The Python version using PyTorch is in the
moshi/
directory. - The Python version using MLX for M series Macs is in the
moshi_mlx/
directory. - The Rust version used in production is in the
rust/
directory. This contains in particular a Mimi implementation in Rust, with Python bindings available asrustymimi
.
Finally, the code for the live demo is provided in the client/
directory.
Models
We release three models:
- our speech codec Mimi,
- Moshi fine-tuned on a male synthetic voice (Moshiko),
- Moshi fine-tuned on a female synthetic voice (Moshika).
Depending on the backend, the file format and quantization available will vary. Here is the list of the HuggingFace repo with each model. Mimi is bundled in each of those, and always use the same checkpoint format.
- Moshika for PyTorch (bf16): kyutai/moshika-pytorch-bf16.
- Moshiko for PyTorch (bf16): kyutai/moshiko-pytorch-bf16.
- Moshika for MLX (int4, int8, bf16): kyutai/moshika-mlx-q4, kyutai/moshika-mlx-q8, kyutai/moshika-mlx-bf16.
- Moshiko for MLX (int4, int8, bf16): kyutai/moshiko-mlx-q4, kyutai/moshiko-mlx-q8, kyutai/moshiko-mlx-bf16.
- Moshika for Rust/Candle (int8, bf16): kyutai/moshika-candle-q8, kyutai/moshika-mlx-bf16.
- Moshiko for Rust/Candle (int8, bf16): kyutai/moshiko-candle-q8, kyutai/moshiko-mlx-bf16.
All models are released under the CC-BY 4.0 license.
Requirements
You will need at least Python 3.10, with 3.12 recommended. For specific requirements, please check the individual backends directories. You can install the PyTorch and MLX clients with the following:
pip install moshi # moshi PyTorch, from PyPI
pip install moshi_mlx # moshi MLX, from PyPI, best with Python 3.12.
# Or the bleeding edge versions for Moshi and Moshi-MLX.
pip install -e "git+https://git@github.com/kyutai-labs/moshi.git#egg=moshi&subdirectory=moshi"
pip install -e "git+https://git@github.com/kyutai-labs/moshi.git#egg=moshi_mlx&subdirectory=moshi_mlx"
pip install rustymimi # mimi, rust implementation with Python bindings from PyPI
If you are not using Python 3.12, you might get an error when installing
moshi_mlx
or rustymimi
(which moshi_mlx
depends on). Then, you will need to install the Rust toolchain, or switch to Python 3.12.
While we hope that the present codebase will work on Windows, we do not provide official support for it. We have tested the MLX version on a MacBook Pro M3. At the moment, we do not support quantization for the PyTorch version, so you will need a GPU with a significant amount of memory (24GB).
For using the Rust backend, you will need a recent version of the Rust toolchain.
To compile GPU support, you will also need the CUDA properly installed for your GPU, in particular with nvcc
.
Python (PyTorch)
The PyTorch based API can be found in the moshi
directory. It provides a streaming
version of the audio tokenizer (mimi) and the language model (moshi).
In order to run in interactive mode, you need to start a server which will run the model, you can then use either the web UI or a command line client.
Start the server with:
python -m moshi.server [--gradio-tunnel] [--hf-repo kyutai/moshika-pytorch-bf16]
And then access the web UI on localhost:8998. If your GPU is on a distant machine this will not work as websites using http are not allowed to use the audio worklet api. There are two ways to get around this:
- Forward the remote 8998 port to your localhost using ssh
-L
flag. Then connects to localhost:8998 as mentionned previously. - Use the
--gradio-tunnel
argument, this sets up a tunnel with a URL accessible from anywhere. Keep in mind that this tunnel goes through the US and can add significant latency (up to 500ms from Europe). You can use--gradio-tunnel-token
to set a fixed secret token and reuse the same address over time.
You can use --hf-repo
to select a different pretrained model, by setting the proper Hugging Face repository.
Accessing a server that is not localhost via http may cause issues with using the microphone in the web UI (in some browsers this is only allowed using https).
A local client is also available, as
python -m moshi.client [--url URL_TO_GRADIO]
However note that, unlike the web browser, this client is barebone: it does not perform any echo cancellation, nor does it try to compensate for a growing lag by skipping frames.
For more information, in particular on how to use the API directly, please checkout moshi/README.md.
Python (MLX) for local inference on macOS
Once you have installed moshi_mlx
, you can run
python -m moshi_mlx.local -q 4 # weights quantized to 4 bits
python -m moshi_mlx.local -q 8 # weights quantized to 8 bits
# And using a different pretrained model:
python -m moshi_mlx.local -q 4 --hf-repo kyutai/moshika-mlx-q4
python -m moshi_mlx.local -q 8 --hf-repo kyutai/moshika-mlx-q8
# be careful to always match the `-q` and `--hf-repo` flag.
This command line interface is also barebone. It does not perform any echo cancellation, nor does it try to compensate for a growing lag by skipping frames.
Alternatively you can run python -m moshi_mlx.local_web
to use
the web UI, the connection is via http and will be at localhost:8998.
Rust
In order to run the Rust inference server, use the following command from within
the rust
directory:
cargo run --features cuda --bin moshi-backend -r -- --config moshi-backend/config.json standalone
When using macOS, you can replace --features cuda
with --features metal
.
Alternatively you can use config-q8.json
rather than config.json
to use the
quantized q8 model. You can select a different pretrained model, e.g. Moshika,
by changing the "hf_repo"
key in either file.
Once the server has printed 'standalone worker listening', you can use the web UI. By default the Rust server uses https so it will be at localhost:8998.
You will get warnings about the site being unsafe. When using chrome you can bypass these by selecting "Details" or "Advanced", then "Visit this unsafe site" or "Proceed to localhost (unsafe)".
Clients
We recommend using the web UI as it provides additional echo cancellation that helps the overall model quality. Note that most commands will directly serve this UI in the provided URL, and there is in general nothing more to do.
Alternatively, we provide command line interfaces for the Rust and Python versions, the protocol is the same as with the web UI so there is nothing to change on the server side.
For reference, here is the list of clients for Moshi.
Rust Command Line
From within the rust
directory, run the following:
cargo run --bin moshi-cli -r -- tui --host localhost
Python with PyTorch
python -m moshi.client
Gradio Demo
You can launch a Gradio demo locally with the following command:
python -m moshi.client_gradio --url <moshi-server-url>
Prior to running the Gradio demo, please install gradio-webrtc>=0.0.18
.
Docker Compose (CUDA only)
docker compose up
- Requires NVIDIA Container Toolkit
WebUI
The web UI can be built from this repo via the
following steps (these will require npm
being installed).
cd client
npm install
npm run build
The web UI can then be found in the client/dist
directory.
Development
If you wish to install from a clone of this repository, maybe to further develop Moshi, you can do the following:
# From the root of the clone of the repo
pip install -e 'moshi[dev]'
pip install -e 'moshi_mlx[dev]'
pre-commit install
If you wish to build locally rustymimi
(assuming you have Rust properly installed):
pip install maturin
maturin dev -r -m rust/mimi-pyo3/Cargo.toml
FAQ
Checkout the Frequently Asked Questions section before opening an issue.
License
The present code is provided under the MIT license for the Python parts, and Apache license for the Rust backend. The web client code is provided under the MIT license. Note that parts of this code is based on AudioCraft, released under the MIT license.
The weights for the models are released under the CC-BY 4.0 license.
Citation
If you use either Mimi or Moshi, please cite the following paper,
@techreport{kyutai2024moshi,
title={Moshi: a speech-text foundation model for real-time dialogue},
author={Alexandre D\'efossez and Laurent Mazar\'e and Manu Orsini and
Am\'elie Royer and Patrick P\'erez and Herv\'e J\'egou and Edouard Grave and Neil Zeghidour},
year={2024},
eprint={2410.00037},
archivePrefix={arXiv},
primaryClass={eess.AS},
url={https://arxiv.org/abs/2410.00037},
}