Using paraformer with ONNXRuntime
Introduction
Steps:
- Download the whole directory (
funasr/runtime/python/onnxruntime) to the local.
- Install the related packages.
bash pip install requirements.txt
- Download the model.
- Download Link
- Put the model into the
resources/models.
text . ├── demo.py ├── rapid_paraformer │ ├── __init__.py │ ├── kaldifeat │ ├── __pycache__ │ ├── rapid_paraformer.py │ └── utils.py ├── README.md ├── requirements.txt ├── resources │ ├── config.yaml │ └── models │ ├── am.mvn │ ├── model.onnx # Put it here. │ └── token_list.pkl ├── test_onnx.py ├── tests │ ├── __pycache__ │ └── test_infer.py └── test_wavs ├── 0478_00017.wav └── asr_example_zh.wav
- Run the demo.
- Input: wav formt file, support formats:
str, np.ndarray, List[str]
- Output:
List[str]: recognition result.
- Example:
```python
from rapid_paraformer import RapidParaformer
config_path = 'resources/config.yaml'
paraformer = RapidParaformer(config_path)
wav_path = ['test_wavs/0478_00017.wav']
result = paraformer(wav_path)
print(result)
```
Acknowledge
- We acknowledge SWHL for contributing the onnxruntime(pthon api).