Photographs captured during corpus creation efforts in Pakistan and Liberia.
Omnilingual ASR: Open-Source Multilingual Speech Recognition for 1600+ Languages
Omnilingual ASR is an open-source speech recognition system supporting over 1,600 languages — including hundreds never previously covered by any ASR technology. Designed for broad accessibility, it enables new languages to be added with just a few paired examples without requiring specialized expertise or large datasets. By combining scalable zero-shot learning with a flexible model family, Omnilingual ASR aims to make speech technology more inclusive and adaptable for communities and researchers worldwide.
Our 7B-LLM-ASR system achieves state-of-the-art performance across 1,600+ languages, with character error rates (CER) below 10 for 78% of those languages.
December 2025 Update
We release two suites of models:
- Checkpoints of improved accuracy (CER) for the CTC and LLM-ASR models compared to our existing LLM-ASR model (
omniASR_{CTC,LLM}_{300M,1B,3B,7B}_v2).
- A new variant of the LLM-ASR model that supports decoding on unlimited audio length (
omniASR_LLM_Unlimited_{300M,1B,3B,7B}_v2). The unlimited audio length models are briefly described in the architecture overview section. It's accuracy is comparable to limited audio length models, however finetuning recipies for this model are currently not supported.
Documentation
Quick Start
Models & Architecture
Training & Data Pipeline
- Data Preparation - End-to-end guide for multilingual dataset preparation, HuggingFace integration, and parquet processing
- Training Recipes - Pre-configured workflows for CTC and LLM model training
Installation
The models were developed using fairseq2, a research-focused sequence modeling toolkit. While we provide a reference inference pipeline that works across platforms, audio support requires libsndfile (Mac: brew install libsndfile; Windows may need an additional setup).
pip install omnilingual-asr
uv add omnilingual-asr
Inference
from omnilingual_asr.models.inference.pipeline import ASRInferencePipeline
pipeline = ASRInferencePipeline(model_card="omniASR_LLM_Unlimited_7B_v2")
audio_files = ["/path/to/eng_audio1.flac", "/path/to/deu_audio2.wav"]
lang = ["eng_Latn", "deu_Latn"]
transcriptions = pipeline.transcribe(audio_files, lang=lang, batch_size=2)
More details on running specific models can be found in the src/omnilingual_asr/models/inference directory.
⚠️ Important: Currently only audio files shorter than 40 seconds are accepted for inference on CTC and LLM model suites.
Supported Languages
To view the full list of 1600+ supported languages, you can access the language list programmatically:
from omnilingual_asr.models.wav2vec2_llama.lang_ids import supported_langs
print(f"Total supported languages: {len(supported_langs)}")
print(supported_langs)
if "eng_Latn" in supported_langs:
print("English (Latin script) is supported!")
Languages follow the format {language_code}_{script}, for example eng_Latn - English (Latin script), cmn_Hans - Mandarin Chinese (Simplified), ...
Using the HuggingFace Dataset 🤗
We provide a large-scale multilingual speech dataset on HuggingFace under CC-BY-4.0 License: facebook/omnilingual-asr-corpus.
This dataset can be directly used with our inference pipeline for evaluation or testing:
pip install "omnilingual-asr[data]"
from datasets import load_dataset
from omnilingual_asr.models.inference.pipeline import ASRInferencePipeline
omni_dataset = load_dataset("facebook/omnilingual-asr-corpus", "lij_Latn", split="train", streaming=True)
batch = next(omni_dataset.iter(5))
audio_data = [{"waveform": x["array"], "sample_rate": x["sampling_rate"]}
for x in batch["audio"]]
pipeline = ASRInferencePipeline(model_card="omniASR_LLM_7B_v2")
transcriptions = pipeline.transcribe(audio_data, batch_size=2)
for i, (transcription, original_text) in enumerate(zip(transcriptions, batch["raw_text"]), 1):
print(f"\n Sample {i}:")
print(f" Ground Truth: {original_text}")
print(f" Predicted: {transcription}")
Model Architectures
¹ (batch=1, audio_len=30s, BF16, A100)
² Relative speed to omniASR_LLM_7B
³ (batch=1, audio_len=15min, BF16, A100)
Model Download & Storage
- Automatic Download: Models are automatically downloaded on first use during training or inference
- Storage Location: Models are saved to
~/.cache/fairseq2/assets/
Architecture Documentation
We provide a high-level model architecture overview in the model directory (src/omnilingual_asr/models), with individual configurations for each model family in the respective directories:
Training
To further finetune the released checkpoints on your own data, use our data preparation guide followed by the finetuning recipe guide.
License
Omnilingual ASR code and models are released under the Apache 2.0.
Citation
If you use the omnilingual ASR model suite in your research and wish to cite us, please use the following BibTeX entry!
@misc{omnilingualasrteam2025omnilingualasropensourcemultilingual,
title={Omnilingual ASR: Open-Source Multilingual Speech Recognition for 1600+ Languages},
author={Omnilingual ASR team and Gil Keren and Artyom Kozhevnikov and Yen Meng and Christophe Ropers and Matthew Setzler and Skyler Wang and Ife Adebara and Michael Auli and Can Balioglu and Kevin Chan and Chierh Cheng and Joe Chuang and Caley Droof and Mark Duppenthaler and Paul-Ambroise Duquenne and Alexander Erben and Cynthia Gao and Gabriel Mejia Gonzalez and Kehan Lyu and Sagar Miglani and Vineel Pratap and Kaushik Ram Sadagopan and Safiyyah Saleem and Arina Turkatenko and Albert Ventayol-Boada and Zheng-Xin Yong and Yu-An Chung and Jean Maillard and Rashel Moritz and Alexandre Mourachko and Mary Williamson and Shireen Yates},
year={2025},
eprint={2511.09690},
archivePrefix={arXiv},
primaryClass={cs.CL},
url={https://arxiv.org/abs/2511.09690},
}