KaniTTS Pretrain v0.3
A high-speed, high-fidelity Text-to-Speech model optimized for real-time conversational AI applications.
Overview
KaniTTS uses a two-stage pipeline combining a large language model with an efficient audio codec for exceptional speed and audio quality. The architecture generates compressed token representations through a backbone LLM, then rapidly synthesizes waveforms via neural audio codec, achieving extremely low latency.
Key Specifications:
- Model Size: 400M parameters
- Sample Rate: 22kHz
- Language: English, Chinese, Korean, Spanish, German, Japanese, German, Kyrgyz
- License: Apache 2.0
Performance
On NovitaAI RTX 5090 using vLLM:
- RTF: ~0.2 (5 times faster than realtime)
- Memory: 16GB GPU VRAM used
- Source Code: https://github.com/nineninesix-ai/kanitts-vllm
GPU Benchmark Results
| GPU Model | VRAM | Cost ($/hr) | RTF |
|---|---|---|---|
| RTX 5090 | 32GB | $0.423 | 0.190 |
| RTX 4080 | 16GB | $0.220 | 0.200 |
| RTX 5060 Ti | 16GB | $0.138 | 0.529 |
| RTX 4060 Ti | 16GB | $0.122 | 0.537 |
| RTX 3060 | 12GB | $0.093 | 0.600 |
Datasets
- https://huggingface.co/datasets/laion/Emolia
- https://huggingface.co/datasets/nytopop/expresso-conversational
- https://huggingface.co/datasets/NightPrince/MasriSpeech-Full
Use Cases
- Conversational AI: Real-time speech for chatbots and virtual assistants
- Edge/Server Deployment: Resource-efficient inference on affordable hardware
- Accessibility: Screen readers and language learning applications
- Research: Fine-tuning for specific voices, accents, or emotions
Limitations
- Performance degrades with inputs exceeding 15 seconds (need to use sliding window chunking)
- Limited expressivity without fine-tuning for specific emotions
- May inherit biases from training data in prosody or pronunciation
- Optimized primarily for English; other languages may require additional training
Optimization Tips
- Multilingual Performance: Continually pretrain on target language datasets and fine-tune NanoCodec
- Batch Processing: Use batches of 8-16 for high-throughput scenarios
- Hardware: Optimized for NVIDIA Blackwell architecture GPUs
Resources
Models:
- Pretrained Model: https://huggingface.co/nineninesix/kani-tts-500m-0.3-pt
- English: https://huggingface.co/nineninesix/kani-tts-400m-en
- Chinese: https://huggingface.co/nineninesix/kani-tts-400m-zh
- Korean: https://huggingface.co/nineninesix/kani-tts-400m-ko
- German: https://huggingface.co/nineninesix/kani-tts-400m-de
- Spanish: https://huggingface.co/nineninesix/kani-tts-400m-es
- Arabic: https://huggingface.co/nineninesix/kani-tts-400m-ar
- Japanese: https://huggingface.co/nineninesix/kani-tts-370m-expo2025-osaka-ja
Examples:
- Space: https://huggingface.co/spaces/nineninesix/KaniTTS
- OpenAI compatible API: https://github.com/nineninesix-ai/kanitts-vllm
- Finetuning code pipeline: https://github.com/nineninesix-ai/KaniTTS-Finetune-pipeline
- Dataset preparation pipeline: https://github.com/nineninesix-ai/nano-codec-dataset-pipeline
- Example Dataset: https://huggingface.co/datasets/nineninesix/expresso-conversational-en-nano-codec-dataset
- ComfyUI node: https://github.com/wildminder/ComfyUI-KaniTTS by WildAi
- NextJS basic app: https://github.com/nineninesix-ai/open-audio. It uses the OpenAI npm package to connect to the OpenAI-compatible server API provided by kanitts-vllm.
- GitHub Repository: https://github.com/nineninesix-ai/kani-tts
Links:
- Website: https://www.nineninesix.ai
- Contact Form: https://airtable.com/appX2G2TpoRk4M5Bf/pagO2xbIOjiwulPcP/form
Acknowledgments
Built on top of LiquidAI LFM2 350M as the backbone and Nvidia NanoCodec for audio processing.
Responsible Use
Prohibited activities include:
- Illegal content or harmful, threatening, defamatory, or obscene material
- Hate speech, harassment, or incitement of violence
- Generating false or misleading information
- Impersonating individuals without consent
- Malicious activities such as spamming, phishing, or fraud
By using this model, you agree to comply with these restrictions and all applicable laws.
Contact
Have a question, feedback, or need support? Please fill out our contact form and we'll get back to you as soon as possible.
Citation
@inproceedings{emilialarge,
author={He, Haorui and Shang, Zengqiang and Wang, Chaoren and Li, Xuyuan and Gu, Yicheng and Hua, Hua and Liu, Liwei and Yang, Chen and Li, Jiaqi and Shi, Peiyang and Wang, Yuancheng and Chen, Kai and Zhang, Pengyuan and Wu, Zhizheng},
title={Emilia: A Large-Scale, Extensive, Multilingual, and Diverse Dataset for Speech Generation},
booktitle={arXiv:2501.15907},
year={2025}
}
@article{emonet_voice_2025,
author={Schuhmann, Christoph and Kaczmarczyk, Robert and Rabby, Gollam and Friedrich, Felix and Kraus, Maurice and Nadi, Kourosh and Nguyen, Huu and Kersting, Kristian and Auer, Sören},
title={EmoNet-Voice: A Fine-Grained, Expert-Verified Benchmark for Speech Emotion Detection},
journal={arXiv preprint arXiv:2506.09827},
year={2025}
}
@dataset{masrispeech_full,
author = {Yahya Muhammad Alnwsany},
title = {MasriSpeech-Full: Large-Scale Egyptian Arabic Speech Corpus},
year = {2025},
publisher = {Hugging Face},
url = {https://huggingface.co/collections/NightPrince/masrispeech-dataset-68594e59e46fd12c723f1544}
}
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