## Best Practices for Serving CosyVoice with NVIDIA Triton Inference Server ### Quick Start Launch the service directly with Docker Compose: ```sh docker compose up ``` ### Build the Docker Image Build the image from scratch: ```sh docker build . -f Dockerfile.server -t soar97/triton-cosyvoice:25.06 ``` ### Run a Docker Container ```sh your_mount_dir=/mnt:/mnt docker run -it --name "cosyvoice-server" --gpus all --net host -v $your_mount_dir --shm-size=2g soar97/triton-cosyvoice:25.06 ``` ### Understanding `run.sh` The `run.sh` script orchestrates the entire workflow through numbered stages. Run a subset of stages with: ```sh bash run.sh [service_type] ``` - `` – stage to start from (0-5). - `` – stage to stop after (0-5). Stages: - **Stage 0** – Download the cosyvoice-2 0.5B model from HuggingFace. - **Stage 1** – Convert the HuggingFace checkpoint to TensorRT-LLM format and build TensorRT engines. - **Stage 2** – Create the Triton model repository and configure the model files (adjusts depending on whether `Decoupled=True/False` will be used later). - **Stage 3** – Launch the Triton Inference Server. - **Stage 4** – Run the single-utterance HTTP client. - **Stage 5** – Run the gRPC benchmark client. ### Export Models to TensorRT-LLM and Launch the Server Inside the Docker container, prepare the models and start the Triton server by running stages 0-3: ```sh # Runs stages 0, 1, 2, and 3 bash run.sh 0 3 ``` *Note: Stage 2 prepares the model repository differently depending on whether you intend to run with `Decoupled=False` or `Decoupled=True`. Rerun stage 2 if you switch the service type.* ### Single-Utterance HTTP Client Send a single HTTP inference request: ```sh bash run.sh 4 4 ``` ### Benchmark with a Dataset Benchmark the running Triton server. Pass either `streaming` or `offline` as the third argument. ```sh bash run.sh 5 5 # You can also customise parameters such as num_task and dataset split directly: # python3 client_grpc.py --num-tasks 2 --huggingface-dataset yuekai/seed_tts_cosy2 --split-name test_zh --mode [streaming|offline] ``` > [!TIP] > Only offline CosyVoice TTS is currently supported. Setting the client to `streaming` simply enables NVIDIA Triton’s decoupled mode so that responses are returned as soon as they are ready. ### Benchmark Results Decoding on a single L20 GPU with 26 prompt_audio/target_text [pairs](https://huggingface.co/datasets/yuekai/seed_tts) (≈221 s of audio): | Mode | Note | Concurrency | Avg Latency (ms) | P50 Latency (ms) | RTF | |------|------|-------------|------------------|------------------|-----| | Decoupled=False | [Commit](https://github.com/yuekaizhang/CosyVoice/commit/b44f12110224cb11c03aee4084b1597e7b9331cb) | 1 | 758.04 | 615.79 | 0.0891 | | Decoupled=False | [Commit](https://github.com/yuekaizhang/CosyVoice/commit/b44f12110224cb11c03aee4084b1597e7b9331cb) | 2 | 1025.93 | 901.68 | 0.0657 | | Decoupled=False | [Commit](https://github.com/yuekaizhang/CosyVoice/commit/b44f12110224cb11c03aee4084b1597e7b9331cb) | 4 | 1914.13 | 1783.58 | 0.0610 | | Decoupled=True | [Commit](https://github.com/yuekaizhang/CosyVoice/commit/b44f12110224cb11c03aee4084b1597e7b9331cb) | 1 | 659.87 | 655.63 | 0.0891 | | Decoupled=True | [Commit](https://github.com/yuekaizhang/CosyVoice/commit/b44f12110224cb11c03aee4084b1597e7b9331cb) | 2 | 1103.16 | 992.96 | 0.0693 | | Decoupled=True | [Commit](https://github.com/yuekaizhang/CosyVoice/commit/b44f12110224cb11c03aee4084b1597e7b9331cb) | 4 | 1790.91 | 1668.63 | 0.0604 | ### OpenAI-Compatible Server To launch an OpenAI-compatible service, run: ```sh git clone https://github.com/yuekaizhang/Triton-OpenAI-Speech.git pip install -r requirements.txt # After the Triton service is up, start the FastAPI bridge: python3 tts_server.py --url http://localhost:8000 --ref_audios_dir ./ref_audios/ --port 10086 --default_sample_rate 24000 # Test with curl bash test/test_cosyvoice.sh ``` ### Acknowledgements This section originates from the NVIDIA CISI project. We also provide other multimodal resources—see [mair-hub](https://github.com/nvidia-china-sae/mair-hub) for details.