Whisper Large-V2 Basque

Model summary

Whisper Large-V2 Basque is an automatic speech recognition (ASR) model for Basque (eu) speech. It is fine-tuned from [openai/whisper-large-v2] on the Basque portion of Mozilla Common Voice 13.0, achieving a Word Error Rate (WER) of 11.34% on the Common Voice evaluation split.

This model provides state-of-the-art transcription quality for Basque speech, delivering improved accuracy over previous large Whisper variants while remaining suitable for offline and batch processing.


Model description

  • Architecture: Transformer-based encoder–decoder (Whisper)
  • Base model: openai/whisper-large-v2
  • Language: Basque (eu)
  • Task: Automatic Speech Recognition (ASR)
  • Output: Text transcription in Basque
  • Decoding: Autoregressive sequence-to-sequence decoding

Leveraging Whisper’s multilingual pretraining, this large-v2 model is fine-tuned on Basque speech data to provide highly accurate transcription for a low-resource language, appropriate for research, media, and archival use cases.


Intended use

Primary use cases

  • High-quality transcription of Basque audio recordings
  • Offline or batch ASR pipelines
  • Research and development in Basque ASR
  • Media, educational, and archival transcription tasks

Intended users

  • Researchers working on Basque or low-resource ASR
  • Developers building Basque speech applications
  • Academic and institutional users

Out-of-scope use

  • Real-time or low-latency ASR without optimization
  • Speech translation tasks
  • Safety-critical applications without validation

Limitations and known issues

  • Performance may degrade on:
    • Noisy or low-quality recordings
    • Conversational or spontaneous speech
    • Accents underrepresented in Common Voice
  • While highly accurate, transcription errors may still occur under challenging acoustic conditions
  • Dataset biases from Common Voice may be reflected in outputs

Users are encouraged to evaluate the model on their own data before deployment.


Training and evaluation data

Training data

  • Dataset: Mozilla Common Voice 13.0 (Basque subset)
  • Data type: Crowd-sourced, read speech
  • Preprocessing:
    • Audio resampled to 16 kHz
    • Text normalized using Whisper tokenizer
    • Filtering of invalid or problematic samples

Evaluation data

  • Dataset: Mozilla Common Voice 13.0 (Basque evaluation split)
  • Metric: Word Error Rate (WER)

Evaluation results

Metric Value
WER (eval) 11.34%

These results demonstrate state-of-the-art transcription performance for Basque ASR using a large-v2 Whisper model.


Training procedure

Training hyperparameters

  • Learning rate: 1e-5
  • Optimizer: Adam (β1=0.9, β2=0.999, ε=1e-8)
  • LR scheduler: Linear
  • Warmup steps: 500
  • Training steps: 20,000
  • Train batch size: 32
  • Gradient accumulation steps: 2
  • Total effective batch size: 64
  • Evaluation batch size: 16
  • Seed: 42

Training results (summary)

Training Loss Epoch Step Validation Loss WER
0.0355 4.01 1000 0.2616 14.8224
0.0079 9.01 2000 0.2777 13.5202
0.0041 14.01 3000 0.2764 12.7364
0.0047 19.0 4000 0.2932 12.6939
0.004 24.0 5000 0.2969 12.7992
0.0019 29.0 6000 0.3066 12.6008
0.004 33.01 7000 0.2973 12.6696
0.0007 38.01 8000 0.3253 12.2686
0.0006 43.01 9000 0.3391 12.5319
0.0009 48.01 10000 0.3303 12.2767
0.0004 53.0 11000 0.3383 12.0195
0.0003 58.0 12000 0.3398 11.7441
0.0005 63.0 13000 0.3396 11.8778
0.0001 67.01 14000 0.3544 11.6469
0.0 72.01 15000 0.3752 11.4160
0.0 77.01 16000 0.3860 11.3411
0.0 82.01 17000 0.3943 11.3391
0.0 87.0 18000 0.4013 11.3532
0.0 92.0 19000 0.4063 11.3613
0.0 97.0 20000 0.4086 11.3512

Framework versions

  • Transformers 4.33.0.dev0
  • PyTorch 2.0.1+cu117
  • Datasets 2.14.4
  • Tokenizers 0.13.3

How to use

from transformers import pipeline

hf_model = "HiTZ/whisper-large-v2-eu"  # replace with actual repo ID
device = 0  # set to -1 for CPU

pipe = pipeline(
    task="automatic-speech-recognition",
    model=hf_model,
    device=device
)

result = pipe("audio.wav")
print(result["text"])

Ethical considerations and risks

  • This model transcribes speech and may process personal data.
  • Users should ensure compliance with applicable data protection laws (e.g., GDPR).
  • The model should not be used for surveillance or non-consensual audio processing.

Citation

If you use this model in your research, please cite:

@misc{dezuazo2025whisperlmimprovingasrmodels,
  title={Whisper-LM: Improving ASR Models with Language Models for Low-Resource Languages},
  author={Xabier de Zuazo and Eva Navas and Ibon Saratxaga and Inma Hernáez Rioja},
  year={2025},
  eprint={2503.23542},
  archivePrefix={arXiv},
  primaryClass={cs.CL}
}

Please, check the related paper preprint in arXiv:2503.23542 for more details.


License

This model is available under the Apache-2.0 License. You are free to use, modify, and distribute this model as long as you credit the original creators.


Contact and attribution

  • Fine-tuning and evaluation: HiTZ/Aholab - Basque Center for Language Technology
  • Base model: OpenAI Whisper
  • Dataset: Mozilla Common Voice

For questions or issues, please open an issue in the model repository.

Funding

This project with reference 2022/TL22/00215335 has been parcially funded by the Ministerio de Transformación Digital and by the Plan de Recuperación, Transformación y Resiliencia – Funded by the European Union – NextGenerationEU ILENIA and by the project IkerGaitu funded by the Basque Government. This model was trained at Hyperion, one of the high-performance computing (HPC) systems hosted by the DIPC Supercomputing Center.

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