--- language: - eu license: apache-2.0 base_model: openai/whisper-medium tags: - whisper-event - generated_from_trainer datasets: - mozilla-foundation/common_voice_13_0 metrics: - wer model-index: - name: Whisper Medium Basque results: - task: name: Automatic Speech Recognition type: automatic-speech-recognition dataset: name: mozilla-foundation/common_voice_13_0 eu type: mozilla-foundation/common_voice_13_0 config: eu split: test args: eu metrics: - name: Wer type: wer value: 14.119648426424725 --- # Whisper Medium Basque ## Model summary **Whisper Medium Basque** is an automatic speech recognition (ASR) model for **Basque (eu)** speech. It is fine-tuned from [openai/whisper-medium] on the **Basque portion of Mozilla Common Voice 13.0**, achieving a **Word Error Rate (WER) of 14.12%** on the Common Voice evaluation split. This model offers a balance between transcription accuracy and computational requirements, providing significantly improved ASR performance over smaller Whisper variants while remaining practical for offline or batch processing. --- ## Model description * **Architecture:** Transformer-based encoder–decoder (Whisper) * **Base model:** openai/whisper-medium * **Language:** Basque (eu) * **Task:** Automatic Speech Recognition (ASR) * **Output:** Text transcription in Basque * **Decoding:** Autoregressive sequence-to-sequence decoding This medium-sized model leverages Whisper’s multilingual pretraining and is fine-tuned on Basque speech data, delivering higher transcription quality for a low-resource language while remaining manageable for typical GPU or CPU environments. --- ## 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 additional 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 for a medium-sized model, errors can 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) | **14.12%** | These results indicate strong transcription performance for a medium-sized Whisper model fine-tuned for Basque. --- ## 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: 10,000 * Train batch size: 64 * Evaluation batch size: 32 * Seed: 42 ### Training results (summary) | Training Loss | Epoch | Step | Validation Loss | WER | |:-------------:|:-----:|:-----:|:---------------:|:-------:| | 0.0206 | 4.02 | 1000 | 0.2998 | 16.9995 | | 0.0036 | 9.01 | 2000 | 0.3235 | 15.5211 | | 0.0018 | 14.01 | 3000 | 0.3454 | 14.9905 | | 0.0013 | 19.01 | 4000 | 0.3538 | 14.9439 | | 0.0013 | 24.01 | 5000 | 0.3587 | 14.8568 | | 0.0002 | 29.0 | 6000 | 0.3799 | 14.4153 | | 0.0001 | 33.02 | 7000 | 0.3937 | 14.2067 | | 0.0001 | 38.02 | 8000 | 0.4050 | 14.1946 | | 0.0001 | 43.01 | 9000 | 0.4119 | 14.1196 | | 0.0001 | 48.01 | 10000 | 0.4150 | 14.1358 | --- ## Framework versions - Transformers 4.33.0.dev0 - PyTorch 2.0.1+cu117 - Datasets 2.14.4 - Tokenizers 0.13.3 --- ## How to use ```python from transformers import pipeline hf_model = "HiTZ/whisper-medium-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: ```bibtex @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](https://arxiv.org/abs/2503.23542) for more details. --- ## License This model is available under the [Apache-2.0 License](https://www.apache.org/licenses/LICENSE-2.0). 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](https://proyectoilenia.es/) and by the project [IkerGaitu](https://www.hitz.eus/iker-gaitu/) funded by the Basque Government. This model was trained at [Hyperion](https://scc.dipc.org/docs/systems/hyperion/overview/), one of the high-performance computing (HPC) systems hosted by the DIPC Supercomputing Center.