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中文版本

zipformer

A faster and better encoder for automatic speech recognition

Overview

zipformer is a speech encoder that achieves both high performance and efficiency. It is specifically optimized for speech recognition tasks and is the only model that outperforms Google's Conformer under fair comparison.

Features

  • Efficient model architecture: UNet-style multi-scale encoder with module innovations (BiasNorm, Swoosh, Balancer, Whitener).
  • New optimizer: ScaledAdam.
  • State-of-the-art performance with 50% fewer FLOPs than Conformer.
  • Supports CTC, Transducer, and AED modeling.
  • CR-CTC: Consistency regularization for stronger CTC models.

Models

zipformer ASR models are available in xlarge, large, medium, and small variants, with both streaming and non-streaming versions. The table below provides download links. For more details, please refer to the documentation.

Model Parameters ModelScope Huggingface Languages Architectures
zipformer-xlarge 300M link link Chinese, English CTC
zipformer-large 150M link link Chinese, English CTC, Transducer
zipformer-large-streaming 150M link link Chinese, English CTC, Transducer
zipformer-medium 65M link link Chinese, English CTC, Transducer
zipformer-medium-streaming 65M link link Chinese, English CTC, Transducer
zipformer-small 25M link link Chinese, English CTC, Transducer
zipformer-small-streaming 25M link link Chinese, English CTC, Transducer

News

2026/06/22: Created standalone zipformer repository from icefall, and released xlarge, large, medium, and small Chinese/English models.

Installation

pip install zipformer

Usage

Tip

The examples below use the non-streaming medium model. For more models, please refer to the documentation.

Command Line

# Use jit scripted model
# Transducer
zipformer inference --hf-model pkufool/zipformer-medium --model-type jit --ctc 0 en.wav zh.wav

# CTC
zipformer inference --hf-model pkufool/zipformer-medium --model-type jit --ctc 1 en.wav zh.wav

# Use onnx model
# Transducer
zipformer inference --hf-model pkufool/zipformer-medium --model-type onnx --ctc 0 en.wav zh.wav

# CTC
zipformer inference --hf-model pkufool/zipformer-medium --model-type onnx --ctc 1 en.wav zh.wav

Python API

from zipformer import inference

# jit scripted model
result = inference([en.wav, zh.wav], hf_model='pkufool/zipformer-medium', model_type='jit', ctc=False)

result = inference([en.wav, zh.wav], hf_model='pkufool/zipformer-medium', model_type='jit', ctc=True)

# onnx model
result = inference([en.wav, zh.wav], hf_model='pkufool/zipformer-medium', model_type='onnx', ctc=False)

result = inference([en.wav, zh.wav], hf_model='pkufool/zipformer-medium', model_type='onnx', ctc=True)

# fp16 model
result = inference([en.wav, zh.wav], hf_model='pkufool/zipformer-medium', model_type='onnx', ctc=False, dtype='fp16')

result = inference([en.wav, zh.wav], hf_model='pkufool/zipformer-medium', model_type='onnx', ctc=True, dtype='fp16')

Documentation

For more information about model training, evaluation, and deployment, please refer to the documentation.

Discussion & Contact

For task-related issues, please open an issue on GitHub Issues.

You can also scan the QR code below to join our developer WeChat group or follow our WeChat official account.

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Citation

@inproceedings{yao2024zipformer,
  title={Zipformer: A faster and better encoder for automatic speech recognition},
  author={Yao, Zengwei and Guo, Liyong and Yang, Xiaoyu and Kang, Wei and Kuang, Fangjun and Yang, Yifan and Jin, Zengrui and Lin, Long and Povey, Daniel},
  booktitle={International Conference on Learning Representations},
  volume={2024},
  pages={44440--44455},
  year={2024}
}

@inproceedings{yao2025cr,
  title={Cr-ctc: Consistency regularization on ctc for improved speech recognition},
  author={Yao, Zengwei and Kang, Wei and Yang, Xiaoyu and Kuang, Fangjun and Guo, Liyong and Zhu, Han and Jin, Zengrui and Li, Zhaoqing and Lin, Long and Povey, Daniel},
  booktitle={International Conference on Learning Representations},
  volume={2025},
  pages={26850--26868},
  year={2025}
}

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