We present Kimi-Audio, an open-source audio foundation model that excels in audio understanding, generation, and conversation. We detail the practices in building Kimi-Audio, including model architecture, data curation, training recipe, inference deployment, and evaluation. Specifically, we leverage a 12.5Hz audio tokenizer, design a novel LLM-based architecture with continuous features as input and discrete tokens as output, and develop a chunk-wise streaming detokenizer based on flow matching. We curate a pre-training dataset that consists of more than 13 million hours of audio data covering a wide range of modalities including speech, sound, and music, and build a pipeline to construct high-quality and diverse post-training data. Initialized from a pre-trained LLM, Kimi-Audio is continual pre-trained on both audio and text data with several carefully designed tasks, and then fine-tuned to support a diverse of audio-related tasks. Extensive evaluation shows that Kimi-Audio achieves state-of-the-art performance on a range of audio benchmarks including speech recognition, audio understanding, audio question answering, and speech conversation. We release the codes, model checkpoints, as well as the evaluation toolkits in https://github.com/MoonshotAI/Kimi-Audio.
Kimi-Audio Technical Report
We present Kimi-Audio, an open-source audio foundation model that excels in audio understanding, generation, and conversation.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 40
- Hosting
- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2504.18425ARXIV-DEFAULT
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- Semantic Scholar
Abstract
Authors
40Jianwei YuHao YangWeiran HeXinran XuRuibin YuanXinyu ZhouXu TanDing DingYutao ZhangGuokun LaiYulun DuYanru ChenYuzhi WangJianzhou WangYuxin WuZhilin YangKai ShenKimiTeamZeqian JuYichong LengSongxiang LiuTong LiuZeyu ShangWei SongHeyi TangZhengtao WangChu WeiYifei XinY. CharlesJun ChenZhenxing HuQingcheng LiYangyang LiuWeidong SunYuefeng WuDongchao YangYing YangAoxiong YinYutong ZhangZaida Zhou