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VITA-Audio: Fast Interleaved Audio-Text Token Generation for Efficient Large Speech-Language Model
:fire: News
2025.05.06
🌟 We are proud to launch VITA-Audio, an end-to-end large speech model with fast audio-text token generation.
📄 Contents
✨ Highlights
- Low Latency. VITA-Audio is the first end-to-end speech model capable of generating audio during the initial forward pass. By utilizing a set of 32 prefill tokens, VITA-Audio reduces the time required to generate the first audio token chunk from 217 ms to just 47 ms.
- Fast Inference. VITA-Audio achieves an inference speedup of 3-5x at the 7B parameter scale.
- Open Source. VITA-Audio is trained on open-source data only, consisting of 200k hours of publicly available audio.
- Strong Performance. VITA-Audio achieves competitive results on ASR,TTS and SQA benchmarks among cutting-edge models under 7B parameters.
📌 Exhibition
Inference Acceleration
Model inference speed under different inference modes.
Time to Generate the First Audio Segment In Streaming Inference
Generated Audio Case
打南边来了个哑巴,腰里别了个喇叭;打北边来了个喇嘛,手里提了个獭犸。
提着獭犸的喇嘛要拿獭犸换别着喇叭的哑巴的喇叭;别着喇叭的哑巴不愿拿喇叭换提着獭玛的喇嘛的獭犸。
不知是别着喇叭的哑巴打了提着獭玛的喇嘛一喇叭;还是提着獭玛的喇嘛打了别着喇叭的哑巴一獭玛。
喇嘛回家炖獭犸;哑巴嘀嘀哒哒吹喇叭。
https://github.com/user-attachments/assets/38da791f-5d72-4d9c-a9b2-cec97c2f2b2b
To be or not to be--to live intensely and richly, merely to exist, that depends on ourselves. Let widen and intensify our relations.
While we live, let live!
https://github.com/user-attachments/assets/fd478065-4041-4eb8-b331-0c03b304d853
The hair has been so little, don't think about it, go to bed early, for your hair. Good night!
https://github.com/user-attachments/assets/4cfe4742-e237-42bd-9f17-7935b2285799
两个黄鹂鸣翠柳, 一行白鹭上青天。
窗含西岭千秋雪, 门泊东吴万里船。
https://github.com/user-attachments/assets/382620ee-bb2a-488e-9e00-71afd2342b56
🔔 Models
Model | LLM Size | Huggingface Weights |
---|---|---|
VITA-Audio-Boost | 7B | https://huggingface.co/VITA-MLLM/VITA-Audio-Boost |
VITA-Audio-Balance | 7B | https://huggingface.co/VITA-MLLM/VITA-Audio-Balance |
VITA-Audio-Plus-Vanilla | 7B | https://huggingface.co/VITA-MLLM/VITA-Audio-Plus-Vanilla |
📈 Experimental Results
- Comparison of Spoken Question Answering.
- Comparison of Text to Speech.
- Comparison of Automatic Speech Recognition.
- Effectiveness of Inference Acceleration.
📔 Requirements and Installation
Prepare Environment
docker pull shenyunhang/pytorch:24.11-py3_2024-1224
Get the Code
git clone https://github.com/VITA-MLLM/VITA-Audio.git
cd VITA-Audio
pip install -r requirements_ds_gpu.txt
pip install -e .
Prepare Pre-trained Weight
LLM
- Download the LLM from https://huggingface.co/Qwen/Qwen2.5-7B-Instruct.
- Put it into '../models/Qwen/Qwen2.5-7B-Instruct/'
Audio Encoder and Audio Decoder
Download the Audio Encoder from https://huggingface.co/THUDM/glm-4-voice-tokenizer.
Put it into '../models/THUDM/glm-4-voice-tokenizer'
Download the Audio Decoder from https://huggingface.co/THUDM/glm-4-voice-decoder.
Put it into '../models/THUDM/glm-4-voice-decoder'
Data Format
Speech QA Interleaved Data Format
This format shows how text and audio sequences are interleaved in a structured JSON conversation between a user and an assistant.
{
"messages": [
{
"role": "user",
"content": "<|begin_of_audio|> audio_sequence <|end_of_audio|>"
},
{
"role": "assistant",
"content": "text_sequence_1 <|begin_of_audio|> audio_sequence_1 <|end_of_audio|> text_sequence_2 <|begin_of_audio|> audio_sequence_2 <|end_of_audio|>"
}
]
}
🎲 Training
The following tutorial will take VITA-Audio-Boost
as an example.
To train
VITA-Audio-Balance
and other variants, you should modify thetext-audio-interval-ratio
.VITA-Audio-Boost:
--text-audio-interval-ratio 1 10 4 10 \
VITA-Audio-Balance:
--text-audio-interval-ratio 1 4 3 8 4 10 \
To train
VITA-Audio-Plus-*
, you should use the script likescripts/deepspeed/sts_qwen25/finetune_sensevoice_glm4voice...
Stage-1 (Audio-Text Alignment)
bash scripts/deepspeed/sts_qwen25/finetune_glm4voice_stage1.sh 8192 `date +'%Y%m%d_%H%M%S'`
The above script may need some adjustments.
- Set
ROOT_PATH
to your code root folder. - Set
LOCAL_ROOT_PATH
to a temporary code root folder. - Modify other variables as needed for your environment.
Stage-2 (Single MCTP Module Training)
bash scripts/deepspeed/sts_qwen25/finetune_glm4voice_mtp1_stage1.sh 8192 `date +'%Y%m%d_%H%M%S'`
The above script may need some adjustments.
- Set
ROOT_PATH
to your code root folder. - Set
LOCAL_ROOT_PATH
to a temporary code root folder. - Set
MODEL_NAME_OR_PATH
to the path of the model trained in Stage 1. - Modify other variables as needed for your environment.
Stage-3 (Multiple MCTP Modules Training)
bash scripts/deepspeed/sts_qwen25/finetune_glm4voice_mtp10_stage1.sh 8192 `date +'%Y%m%d_%H%M%S'`
The above script may need some adjustments.
- Set
ROOT_PATH
to your code root folder. - Set
LOCAL_ROOT_PATH
to a temporary code root folder. - Set
MODEL_NAME_OR_PATH
to the path of the model trained in Stage 2. - Modify other variables as needed for your environment.
Stage-4 (Supervised Fine-tuning)
bash scripts/deepspeed/sts_qwen25/finetune_glm4voice_mtp10_stage2.sh 2048 `date +'%Y%m%d_%H%M%S'`
The above script may need some adjustments.
- Set
ROOT_PATH
to your code root folder. - Set
LOCAL_ROOT_PATH
to a temporary code root folder. - Set
MODEL_NAME_OR_PATH
to the path of the model trained in Stage 3. - Modify other variables as needed for your environment.
📐 Inference
Here we implement a simple script for inference.
It includes examples of speech-to-speech, ASR, and TTS tasks, as well as inference speed testing.
python tools/inference_sts.py
- Set
model_name_or_path
to VITA-Audio weights. - Set
audio_tokenizer_path
to the path of the audio encoder. - Set
flow_path
to the path of the audio decoder.
🔎 Evaluation
Evaluate SQA, ASR, and TTS benchmarks
bash scripts/deepspeed/evaluate_sts.sh