# delayed-streams-modeling Delayed Streams Modeling (DSM) is a flexible formulation for streaming, multimodal sequence-to-sequence learning. ## Speech To Text DSM can be used to build streaming speech to text models. These models can be batched for efficiency, return word level timestamps, and are great for interactive applications. We provide two such models, these models are characterized by their size as well as the delay it takes for audio to be transcribed into text. We provide two such models: - An English only model with ~2.6b parameters using a 2.5 second delay, `kyutai/stt-2.6b-en`. - An English and French model with ~1b parameters using a 0.5 second delay, `kyutai/stt-1b-en_fr`. ### PyTorch implementation [[Hugging Face]](https://huggingface.co/kyutai/stt-2.6b-en) Open In Colab This requires the [moshi package](https://pypi.org/project/moshi/) with version 0.2.5 or later, which can be installed via pip. ```bash # wget https://github.com/metavoiceio/metavoice-src/raw/main/assets/bria.mp3 python -m moshi.run_inference --hf-repo kyutai/stt-2.6b-en bria.mp3 ``` ### MLX implementation [[Hugging Face]](https://huggingface.co/kyutai/stt-2.6b-en-mlx) This requires the [moshi-mlx package](https://pypi.org/project/moshi-mlx/) with version 0.2.5 or later, which can be installed via pip. ```bash # wget https://github.com/metavoiceio/metavoice-src/raw/main/assets/bria.mp3 python -m moshi_mlx.run_inference --hf-repo kyutai/stt-2.6b-en-mlx bria.mp3 --temp 0 ``` ### Rust implementation [[Hugging Face]](https://huggingface.co/kyutai/stt-2.6b-en-candle) A standalone Rust example is provided in the `stt-rs` directory in this repo. This can be used as follows: ```bash cd stt-rs cargo run --features cuda -r -- bria.mp3 ``` ### Rust server [[Hugging Face]](https://huggingface.co/kyutai/stt-2.6b-en-candle) The Rust implementation provides a server that can process multiple streaming queries in parallel. Dependening on the amount of memory on your GPU, you may have to adjust the batch size from the config file. For a L40S GPU, a batch size of 64 works well. In order to run the server, install the `moshi-server` crate via the following command. The server code can be found in the [kyutai-labs/moshi](https://github.com/kyutai-labs/moshi/tree/main/rust/moshi-server) repository. ```bash cargo install --features cuda moshi-server ``` Then the server can be started via the following command using the config file from this repository. ```bash moshi-server worker --config configs/config-stt-hf.toml ``` Once the server has started you can run a streaming inference with the following script. ```bash # wget https://github.com/metavoiceio/metavoice-src/raw/main/assets/bria.mp3 uv run scripts/asr-streaming-query.py bria.mp3 ``` The script simulates some real-time processing of the audio. Faster processing can be triggered by setting the real-time factor, e.g. `--rtf 500` will process the data as fast as possible. ## Text To Speech We're in the process of open-sourcing our TTS models. Check back for updates! ## 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](https://github.com/facebookresearch/audiocraft), released under the MIT license. The weights for the models are released under the CC-BY 4.0 license.