This speech tagger performs transcription for Hindi, annotates key entities, predict speaker age, dialiect and intent.
Model is suitable for voiceAI applications, real-time and offline.
Model Details
- Model type: NeMo ASR
- Architecture: Conformer CTC
- Language: English
- Training data: AI4Bharat IndicVoices Punjabi V1 and V2 dataset
- Performance metrics: [Metrics]
Usage
To use this model, you need to install the NeMo library:
pip install nemo_toolkit
How to run
import nemo.collections.asr as nemo_asr
# Step 1: Load the ASR model from Hugging Face
model_name = 'WhissleAI/speech-tagger_hi_ctc_meta'
asr_model = nemo_asr.models.EncDecCTCModel.from_pretrained(model_name)
# Step 2: Provide the path to your audio file
audio_file_path = '/path/to/your/audio_file.wav'
# Step 3: Transcribe the audio
transcription = asr_model.transcribe(paths2audio_files=[audio_file_path])
print(f'Transcription: {transcription[0]}')
Dataset is from AI4Bharat IndicVoices Hindi V1 and V2 dataset.
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Model tree for WhissleAI/speech-tagger_hi_ctc_meta
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parthiv11/stt_hi_conformer_ctc_large_v2