--- language: - ar license: apache-2.0 base_model: openai/whisper-small tags: - fine-tuned - Quran - automatic-speech-recognition - arabic - whisper datasets: - fawzanaramam/the-amma-juz model-index: - name: Whisper small Finetuned on Amma Juz of Quran results: - task: type: automatic-speech-recognition name: Speech Recognition dataset: name: The Amma Juz Dataset type: fawzanaramam/the-amma-juz metrics: - type: eval_loss value: 0.0058 - type: eval_wer value: 1.1494 --- # Whisper Small Finetuned on Amma Juz of Quran This model is a fine-tuned version of [openai/whisper-small](https://huggingface.co/openai/whisper-small), specialized in transcribing Arabic audio with a focus on Quranic recitation from the *Amma Juz* dataset. This fine-tuning makes the model highly effective for tasks involving accurate recognition of Arabic speech, especially in religious and Quranic contexts. ## Model Description Whisper Small is a transformer-based model for automatic speech recognition (ASR), developed by OpenAI. By fine-tuning it on the *Amma Juz* dataset, this version achieves state-of-the-art results on transcribing Quranic recitations with minimal word error rates and high accuracy. The fine-tuned model retains the original capabilities of the Whisper architecture while being optimized for Arabic Quranic text. ## Performance Metrics On the evaluation set, the model achieved: - **Evaluation Loss**: 0.0058 - **Word Error Rate (WER)**: 1.1494% - **Evaluation Runtime**: 44.2766 seconds - **Evaluation Samples per Second**: 2.259 - **Evaluation Steps per Second**: 0.294 These metrics demonstrate the model's efficiency and accuracy when processing Quranic recitations. ## Intended Uses & Limitations ### Intended Uses - **Speech-to-text transcription** of Arabic Quranic recitation, specifically from the *Amma Juz*. - Research and educational purposes in the domain of Quranic studies. - Applications in tools for learning Quranic recitation. ### Limitations - The model is fine-tuned on Quranic recitation and may not perform as well on non-Quranic Arabic speech or general Arabic conversations. - Noise in audio inputs, variations in recitation style, or heavy accents might affect accuracy. - It is recommended to use clean and high-quality audio for optimal performance. ## Training and Evaluation Data The model was trained using the *Amma Juz* dataset, which comprises Quranic audio data and corresponding transcripts. This dataset was curated to ensure high-quality representation of Quranic recitations. ## Training Procedure ### Training Hyperparameters The following hyperparameters were used during training: - **Learning Rate**: 1e-05 - **Training Batch Size**: 16 - **Evaluation Batch Size**: 8 - **Seed**: 42 - **Optimizer**: Adam (betas=(0.9, 0.999), epsilon=1e-08) - **Learning Rate Scheduler**: Linear - **Warmup Steps**: 10 - **Number of Epochs**: 3.0 - **Mixed Precision Training**: Native AMP ### Framework Versions - **Transformers**: 4.41.1 - **PyTorch**: 2.2.1+cu121 - **Datasets**: 2.19.1 - **Tokenizers**: 0.19.1