--- license: other license_name: audarai-open-license-v1.0 license_link: https://www.audarai.com/license/audarai-open-license-v1.0/ language: - ar - en pipeline_tag: automatic-speech-recognition library_name: transformers inference: false tags: - automatic-speech-recognition - asr - speech-recognition - arabic - arabic-asr - dialectal-arabic - emirati - gulf-arabic - streaming - realtime - gguf - llama-cpp - on-device - edge - audar ---
# Audar-ASR-V1-Flash ยท Transformers + GGUF ### Audar's proprietary Arabic ASR โ€” the real-time, edge tier. **From Arabic to the world.** ![License](https://img.shields.io/badge/license-AudarAI%20Open%20v1.0-6f42c1) ![Task](https://img.shields.io/badge/task-ASR-blue) ![Format](https://img.shields.io/badge/format-Transformers%20%2B%20GGUF-blue) ![Params](https://img.shields.io/badge/params-0.78B%20total-f59e0b) ![Open-AR-ASR](https://img.shields.io/badge/Open--AR--ASR-%2311%20of%2036%20%C2%B7%2033.3%25%20avg%20WER-brightgreen) ![Languages](https://img.shields.io/badge/languages-30%20(Arabic%20%2B%20English%20%2B%2028)-f59e0b) ![Runs on](https://img.shields.io/badge/runs%20on-CPU%20%7C%20GPU%20%7C%20edge-informational) [![GitHub](https://img.shields.io/badge/GitHub-Audar--ASR--V1-181717?logo=github)](https://github.com/AudarAI/Audar-ASR-V1)

๐Ÿงญ Overview ยท ๐Ÿ“Š Benchmarks ยท ๐Ÿค— Transformers ยท ๐Ÿ’ป GGUF ยท ๐ŸŽ™๏ธ Streaming ยท ๐Ÿ™ GitHub ยท โ˜๏ธ Audar API ยท ๐Ÿ“œ License

--- ## ๐Ÿงญ What it is **Audar-ASR-V1-Flash** is the **edge tier** of **Audar's proprietary Arabic speech-recognition family** โ€” the same in-house Arabic training program as [Audar-ASR-V1-Turbo](https://huggingface.co/audarai/Audar-ASR-V1-Turbo), delivered in a fast ~0.6B-decoder model for **real-time captioning and on-device use**. It recasts transcription as **audio-conditioned next-token prediction** (a language-model decoder, not CTC/transducer), and is developed through Audar's proprietary pipeline: - ๐Ÿงฑ **Large-scale dialectal pretraining** โ€” 300,000+ hours of Arabic audio (MSA + Gulf, Egyptian, Levantine, Maghrebi; code-switching; diverse channels). - ๐ŸŽฏ **Dialect-targeted fine-tuning** with hardness and multi-task sampling. - ๐Ÿง  **KTO preference alignment** (Kahneman-Tversky Optimization) from trained native-Arabic annotators. It transcribes MSA and every major Arabic dialect, code-switched Arabicโ€“English, and English, across **30 languages**, and runs on **CPU / GPU / edge** via ๐Ÿค— Transformers or GGUF. For maximum accuracy on the hardest dialectal audio, use the larger **Turbo** tier. > Distributed in the widely-supported **Qwen3-ASR architecture format** for turnkey tooling > (Transformers, llama.cpp / GGUF). The **model** โ€” data, training curriculum, and alignment โ€” is Audar's. ## Model summary
ModelAudar-ASR-V1-Flash โ€” proprietary Arabic ASR (edge tier)
TaskAutomatic speech recognition (audio โ†’ text)
ApproachGenerative ASR โ€” audio encoder + language-model decoder
Training300k+ hrs dialectal pretraining โ†’ dialect-targeted SFT โ†’ KTO preference alignment
Decoder parameters596,049,920 (0.60B)
Audio encoder parameters186,376,192 (0.19B)
Total parameters782,426,112 (0.78B, bf16)
Audio input16 kHz mono; 30 s context (longer audio is chunked/streamed)
LanguagesArabic (MSA + Gulf/Egyptian/Levantine/Maghrebi dialects) + English + 28 more
Runtimes๐Ÿค— Transformers (GPU) ยท GGUF / llama.cpp (CPU ยท GPU ยท edge)
LicenseAudarAI Open License v1.0
## ๐Ÿ“Š Benchmarks ### Open Universal Arabic ASR Leaderboard โ€” full standings Flash is evaluated end-to-end on **all six** leaderboard test sets (full test splits, not sampled), with the **leaderboard-equivalent normalizer** โ€” the same harness and protocol as every other row (calibrated to the public leaderboard within 0.03 pp). **Audar-ASR-V1-Flash ranks #11 of 36 systems at just 0.78B parameters** โ€” the strongest small model on the board: it **beats Qwen3-ASR-1.7B (2ร— its size)**, Voxtral-Small-24B, Whisper-large-v3, and every CTC baseline, trailing only 10 systems (several 3โ€“30B). Audar's accuracy tier, [**Turbo**](https://huggingface.co/audarai/Audar-ASR-V1-Turbo#-benchmarks), is **#1**. *Per-dataset **WER %** across all six sets, plus the two composite averages. Lower is better; **Avg WER** is the ranking metric. **Flash and Turbo (Ours) in bold**; **bold cell** = best in column.* | # | Model | **Avg WER** | Avg CER | SADA | CV-18 | MASC-clean | MASC-noisy | MGB-2 | Casablanca | | --: | --- | --: | --: | --: | --: | --: | --: | --: | --: | | 1 | **Audar-ASR-V1-Turbo (Ours, 2.35B)** | **24.78** | **9.49** | **29.41** | 8.60 | 19.60 | 28.35 | **11.13** | 51.58 | | 2 | CohereLabs/cohere-transcribe-arabic-07-2026 | 25.87 | 11.80 | 37.47 | **5.82** | 19.60 | 27.07 | 15.54 | **49.71** | | 3 | omnilingual-asr/omniASR_LLM_7B | 28.32 | 12.52 | 41.61 | 8.75 | 19.69 | 29.29 | 14.13 | 56.46 | | 4 | omnilingual-asr/omniASR_LLM_3B | 29.96 | 13.77 | 46.18 | 9.15 | 19.90 | 30.03 | 14.22 | 60.27 | | 5 | omnilingual-asr/omniASR_LLM_1B | 29.96 | 13.40 | 43.84 | 9.55 | 20.03 | 30.26 | 15.34 | 60.68 | | 6 | CohereLabs/cohere-transcribe-03-2026 | 30.67 | 16.37 | 60.11 | 8.17 | **8.66** | **19.01** | 25.33 | 62.71 | | 7 | Qwen/Qwen3-Omni-30B-A3B-Instruct | 30.71 | 13.67 | 44.82 | 11.46 | 21.47 | 30.85 | 13.09 | 62.55 | | 8 | nvidia-conformer-ctc-large-arabic (lm) | 32.91 | 13.84 | 44.52 | 8.80 | 23.74 | 34.29 | 17.20 | 68.90 | | 9 | omnilingual-asr/omniASR_LLM_300M | 32.96 | 14.84 | 51.38 | 12.03 | 20.66 | 32.45 | 16.58 | 64.64 | | 10 | google/gemma-4-E4B-it | 32.98 | 13.71 | 43.40 | 19.65 | 24.86 | 33.59 | 17.72 | 58.63 | | **11** | **Audar-ASR-V1-Flash (Ours, 0.78B)** | **33.31** | 13.66 | 44.53 | 16.02 | 25.96 | 35.43 | 17.11 | 60.79 | | 12 | Qwen/Qwen3-ASR-1.7B | 33.36 | 12.33 | 45.53 | 16.90 | 24.37 | 34.29 | 16.57 | 64.47 | | 13 | mistralai/Voxtral-Small-24B-2507 | 34.47 | 15.29 | 50.82 | 15.25 | 23.96 | 34.43 | 16.03 | 66.30 | | 14 | nvidia-conformer-ctc-large-arabic (greedy) | 34.74 | 13.37 | 47.26 | 10.60 | 24.12 | 35.64 | 19.69 | 71.13 | | 15 | google/gemma-4-E2B-it | 35.87 | 15.34 | 46.23 | 23.76 | 27.47 | 36.15 | 20.72 | 60.87 | | 16 | openai/whisper-large-v3 | 36.86 | 17.21 | 55.96 | 17.83 | 24.66 | 34.63 | 16.26 | 71.81 | | 17 | omnilingual-asr/omniASR_CTC_3B | 37.78 | 19.79 | 69.85 | 14.19 | 21.48 | 34.60 | 18.96 | 67.58 | | 18 | omnilingual-asr/omniASR_CTC_7B | 38.12 | 20.91 | 72.69 | 12.47 | 21.08 | 35.04 | 20.43 | 67.02 | | 19 | facebook/seamless-m4t-v2-large | 38.16 | 17.03 | 62.52 | 21.70 | 25.04 | 33.24 | 20.23 | 66.25 | | 20 | omnilingual-asr/omniASR_CTC_1B | 39.29 | 20.47 | 71.42 | 17.55 | 22.76 | 35.73 | 19.96 | 68.32 | | 21 | openai/whisper-large-v3-turbo | 40.05 | 18.87 | 60.36 | 25.73 | 25.51 | 37.16 | 17.75 | 73.79 | | 22 | openai/whisper-large-v2 | 40.20 | 19.55 | 57.46 | 21.77 | 27.25 | 38.55 | 25.17 | 71.01 | | 23 | Qwen/Qwen3-ASR-0.6B | 42.19 | 16.23 | 53.75 | 28.28 | 31.34 | 42.63 | 25.45 | 71.68 | | 24 | openai/whisper-large | 42.57 | 20.49 | 63.24 | 26.04 | 28.89 | 40.79 | 24.28 | 72.18 | | 25 | mistralai/Voxtral-Mini-3B-2507 | 42.58 | 19.90 | 63.65 | 22.12 | 28.37 | 41.27 | 22.56 | 77.52 | | 26 | asafaya/hubert-large-arabic-transcribe | 45.50 | 17.35 | 67.82 | 8.01 | 32.94 | 50.16 | 37.51 | 76.53 | | 27 | openai/whisper-medium | 45.57 | 22.27 | 67.71 | 28.07 | 29.99 | 42.91 | 29.32 | 75.44 | | 28 | nvidia-Parakeet-ctc-1.1b-concat | 46.54 | 23.88 | 70.70 | 26.34 | 30.49 | 45.95 | 24.94 | 80.80 | | 29 | omnilingual-asr/omniASR_CTC_300M | 46.65 | 21.86 | 78.11 | 27.90 | 28.40 | 43.26 | 26.85 | 75.35 | | 30 | nvidia-Parakeet-ctc-1.1b-universal | 51.96 | 25.19 | 73.58 | 40.01 | 36.16 | 50.03 | 30.68 | 81.30 | | 31 | microsoft/VibeVoice-ASR | 52.99 | 28.95 | 69.83 | 44.25 | 32.95 | 52.43 | 25.10 | 93.37 | | 32 | facebook/mms-1b-all | 54.54 | 21.45 | 77.48 | 26.52 | 38.82 | 57.33 | 39.16 | 87.95 | | 33 | openai/whisper-small | 55.13 | 21.68 | 78.02 | 24.18 | 35.93 | 56.36 | 48.64 | 87.64 | | 34 | whitefox123/w2v-bert-2.0-arabic-4 | 58.13 | 27.62 | 87.34 | 41.79 | 37.82 | 53.28 | 40.66 | 87.88 | | 35 | jonatasgrosman/wav2vec2-large-xlsr-53-arabic | 60.98 | 25.61 | 86.82 | 23.00 | 42.75 | 64.27 | 56.29 | 92.72 | | 36 | speechbrain/asr-wav2vec2-commonvoice-14-ar | 65.74 | 30.93 | 88.54 | 29.17 | 49.10 | 69.57 | 64.37 | 93.68 | ### Flash โ€” per-dataset detail (full test sets) *Both metrics, for the six leaderboard sets and the composite average.* | Dataset | WER % | CER % | |---|--:|--:| | SADA | 44.53 | 23.63 | | CommonVoice-18 | 16.02 | 5.04 | | MASC-clean | 25.96 | 7.84 | | MASC-noisy | 35.43 | 12.66 | | MGB-2 | 17.11 | 7.97 | | Casablanca | 60.79 | 24.85 | | **Average (6-set)** | **33.31** | **13.66** | > Use **Flash** for real-time and on-device transcription; step up to > [**Turbo**](https://huggingface.co/audarai/Audar-ASR-V1-Turbo#-benchmarks) when you need the lowest > error on heavy dialectal or long-form audio โ€” Turbo is **#1 on the leaderboard (24.8 % avg WER)** and > cuts Flash's average WER by ~8.5 pp, with the biggest gains on SADA (44.5โ†’29.4) and MGB-2 (17.1โ†’11.1). ## ๐Ÿค— Transformers inference Ships self-contained modeling code, so `trust_remote_code=True` is required. ```python # pip install "transformers>=4.57" torch librosa import re, torch, librosa from transformers import AutoProcessor, AutoModelForCausalLM repo = "audarai/Audar-ASR-V1-Flash" proc = AutoProcessor.from_pretrained(repo, trust_remote_code=True) model = AutoModelForCausalLM.from_pretrained( repo, trust_remote_code=True, torch_dtype=torch.bfloat16, device_map="cuda:0", ).eval() SYSTEM = "ูุฑู‘ุบ ุงู„ูƒู„ุงู… ุงู„ุนุฑุจูŠ ุงู„ุชุงู„ูŠ." # "Transcribe the following Arabic speech." audio, _ = librosa.load("clip.wav", sr=16000, mono=True) conv = [ {"role": "system", "content": SYSTEM}, {"role": "user", "content": [{"type": "audio"}]}, # audio placeholder (a list, not "