--- license: cc-by-nc-4.0 language: - en - de - es - fr library_name: nemo datasets: - librispeech_asr - fisher_corpus - Switchboard-1 - WSJ-0 - WSJ-1 - National-Singapore-Corpus-Part-1 - National-Singapore-Corpus-Part-6 - vctk - voxpopuli - europarl - multilingual_librispeech - mozilla-foundation/common_voice_8_0 - MLCommons/peoples_speech thumbnail: null tags: - automatic-speech-recognition - automatic-speech-translation - speech - audio - Transformer - FastConformer - Conformer - pytorch - NeMo - hf-asr-leaderboard widget: - example_title: Librispeech sample 1 src: https://cdn-media.huggingface.co/speech_samples/sample1.flac - example_title: Librispeech sample 2 src: https://cdn-media.huggingface.co/speech_samples/sample2.flac model-index: - name: canary-1b results: - task: name: Automatic Speech Recognition type: automatic-speech-recognition dataset: name: LibriSpeech (other) type: librispeech_asr config: other split: test args: language: en metrics: - name: Test WER type: wer value: 2.89 - task: type: Automatic Speech Recognition name: automatic-speech-recognition dataset: name: SPGI Speech type: kensho/spgispeech config: test split: test args: language: en metrics: - name: Test WER type: wer value: 4.79 - task: type: Automatic Speech Recognition name: automatic-speech-recognition dataset: name: Mozilla Common Voice 16.1 type: mozilla-foundation/common_voice_16_1 config: en split: test args: language: en metrics: - name: Test WER (En) type: wer value: 7.97 - task: type: Automatic Speech Recognition name: automatic-speech-recognition dataset: name: Mozilla Common Voice 16.1 type: mozilla-foundation/common_voice_16_1 config: de split: test args: language: de metrics: - name: Test WER (De) type: wer value: 4.61 - task: type: Automatic Speech Recognition name: automatic-speech-recognition dataset: name: Mozilla Common Voice 16.1 type: mozilla-foundation/common_voice_16_1 config: es split: test args: language: es metrics: - name: Test WER (ES) type: wer value: 3.99 - task: type: Automatic Speech Recognition name: automatic-speech-recognition dataset: name: Mozilla Common Voice 16.1 type: mozilla-foundation/common_voice_16_1 config: fr split: test args: language: fr metrics: - name: Test WER (Fr) type: wer value: 6.53 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: FLEURS type: google/fleurs config: en_us split: test args: language: en-de metrics: - name: Test BLEU (En->De) type: bleu value: 22.66 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: FLEURS type: google/fleurs config: en_us split: test args: language: en-de metrics: - name: Test BLEU (En->Es) type: bleu value: 41.11 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: FLEURS type: google/fleurs config: en_us split: test args: language: en-de metrics: - name: Test BLEU (En->Fr) type: bleu value: 40.76 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: FLEURS type: google/fleurs config: de_de split: test args: language: de-en metrics: - name: Test BLEU (De->En) type: bleu value: 32.64 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: FLEURS type: google/fleurs config: es_419 split: test args: language: es-en metrics: - name: Test BLEU (Es->En) type: bleu value: 32.15 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: FLEURS type: google/fleurs config: fr_fr split: test args: language: fr-en metrics: - name: Test BLEU (Fr->En) type: bleu value: 23.57 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: COVOST type: covost2 config: de_de split: test args: language: de-en metrics: - name: Test BLEU (De->En) type: bleu value: 37.67 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: COVOST type: covost2 config: es_419 split: test args: language: es-en metrics: - name: Test BLEU (Es->En) type: bleu value: 40.7 - task: type: Automatic Speech Translation name: automatic-speech-translation dataset: name: COVOST type: covost2 config: fr_fr split: test args: language: fr-en metrics: - name: Test BLEU (Fr->En) type: bleu value: 40.42 metrics: - wer - bleu pipeline_tag: automatic-speech-recognition --- # Canary 1B [![Model architecture](https://img.shields.io/badge/Model_Arch-FastConformer--Transformer-lightgrey#model-badge)](#model-architecture) | [![Model size](https://img.shields.io/badge/Params-1B-lightgrey#model-badge)](#model-architecture) | [![Language](https://img.shields.io/badge/Language-multilingual-lightgrey#model-badge)](#datasets) NVIDIA [NeMo Canary](https://nvidia.github.io/NeMo/blogs/2024/2024-02-canary/) is a family of multi-lingual multi-tasking models that achieves state-of-the art performance on multiple benchmarks. With 1 billion parameters, Canary-1B supports automatic speech-to-text recognition (ASR) in 4 languages (English, German, French, Spanish) and translation from English to German/French/Spanish and from German/French/Spanish to English with or without punctuation and capitalization (PnC). ## Model Architecture Canary is an encoder-decoder model with FastConformer [1] encoder and Transformer Decoder [2]. With audio features extracted from the encoder, task tokens such as ``, ``, `` and `` are fed into the Transformer Decoder to trigger the text generation process. Canary uses a concatenated tokenizer from individual SentencePiece [3] tokenizers of each language, which makes it easy to scale up to more languages. The Canay-1B model has 24 encoder layers and 24 layers of decoder layers in total. ## NVIDIA NeMo To train, fine-tune or play with the model you will need to install [NVIDIA NeMo](https://github.com/NVIDIA/NeMo). We recommend you install it after you've installed Cython and latest PyTorch version. ``` pip install git+https://github.com/NVIDIA/NeMo.git@r1.23.0#egg=nemo_toolkit[all] ``` ## How to Use this Model The model is available for use in the NeMo toolkit [4], and can be used as a pre-trained checkpoint for inference or for fine-tuning on another dataset. ### Loading the Model ```python from nemo.collections.asr.models import EncDecMultiTaskModel # load model canary_model = EncDecMultiTaskModel.from_pretrained('nvidia/canary-1b') # update dcode params decode_cfg = canary_model.cfg.decoding decode_cfg.beam.beam_size = 1 canary_model.change_decoding_strategy(decode_cfg) ``` ### Input Format The input to the model can be a directory containing audio files, in which case the model will perform ASR on English and produces text with punctuation and capitalization: ```python predicted_text = canary_model.transcribe( audio_dir="", batch_size=16, # batch size to run the inference with ) ``` or use: ```bash python [NEMO_GIT_FOLDER]/examples/asr/transcribe_speech.py pretrained_name="nvidia/canary-1b" audio_dir="" ``` Another recommended option is to use a json manifest as input, where each line in the file is a dictionary containing the following fields: ```yaml # Example of a line in input_manifest.json { "audio_filepath": "/path/to/audio.wav", # path to the audio file "duration": None, # duration of the audio "taskname": "asr", # use "ast" for speech-to-text translation "source_lang": "en", # language of the audio input, set `source_lang`==`target_lang` for ASR, choices=['en','de','es','fr'] "target_lang": "en", # language of the text output, choices=['en','de','es','fr'] "pnc": "yes", # whether to have PnC output, choices=['yes', 'no'] "answer": "na", } ``` and then use: ```python predicted_text = canary_model.transcribe( "", batch_size=16, # batch size to run the inference with ) ``` or use: ```bash python [NEMO_GIT_FOLDER]/examples/asr/transcribe_speech.py pretrained_name="nvidia/canary-1b" dataset_manifest="" ``` ### Automatic Speech-to-text Recognition (ASR) An example manifest for transcribing English audios can be: ```yaml # Example of a line in input_manifest.json { "audio_filepath": "/path/to/audio.wav", # path to the audio file "duration": None, # duration of the audio "taskname": "asr", "source_lang": "en", # language of the audio input, set `source_lang`==`target_lang` for ASR, choices=['en','de','es','fr'] "target_lang": "en", # language of the text output, choices=['en','de','es','fr'] "pnc": "yes", # whether to have PnC output, choices=['yes', 'no'] "answer": "na", } ``` ### Automatic Speech-to-text Translation (AST) An example manifest for transcribing English audios into German text can be: ```yaml # Example of a line in input_manifest.json { "audio_filepath": "/path/to/audio.wav", # path to the audio file "duration": None, # duration of the audio "taskname": "ast", "source_lang": "en", # language of the audio input, choices=['en','de','es','fr'] "target_lang": "de", # language of the text output, choices=['en','de','es','fr'] "pnc": "yes", # whether to have PnC output, choices=['yes', 'no'] "answer": "na" } ``` ### Input This model accepts single channel (mono) audio sampled at 16000 Hz, along with the task/languages/PnC tags as input. ### Output The model outputs the transcribed/translated text corresponding to the input audio, in the specified target language and with or without punctuation and capitalization. ## Training Canary-1B is trained using the NVIDIA NeMo toolkit [4] for 150k steps with dynamic bucketing and a batch duration of 360s per GPU on 128 NVIDIA A100 80GB GPUs. The model can be trained using this [example script](https://github.com/NVIDIA/NeMo/blob/main/examples/asr/speech_multitask/speech_to_text_aed.py) and [base config](https://github.com/NVIDIA/NeMo/blob/main/examples/asr/conf/speech_multitask/fast-conformer_aed.yaml). The tokenizers for these models were built using the text transcripts of the train set with this [script](https://github.com/NVIDIA/NeMo/blob/main/scripts/tokenizers/process_asr_text_tokenizer.py). ### Datasets The Canary-1B model is trained on a total of 85k hrs of speech data. It consists of 31k hrs of public data, 20k hrs collected by [Suno](https://suno.ai/), and 34k hrs of in-house data. The constituents of public data are as follows. #### English (25.5k hours) - Librispeech 960 hours - Fisher Corpus - Switchboard-1 Dataset - WSJ-0 and WSJ-1 - National Speech Corpus (Part 1, Part 6) - VCTK - VoxPopuli (EN) - Europarl-ASR (EN) - Multilingual Librispeech (MLS EN) - 2,000 hour subset - Mozilla Common Voice (v7.0) - People's Speech - 12,000 hour subset - Mozilla Common Voice (v11.0) - 1,474 hour subset #### German (2.5k hours) - Mozilla Common Voice (v12.0) - 800 hour subset - Multilingual Librispeech (MLS DE) - 1,500 hour subset - VoxPopuli (DE) - 200 hr subset #### Spanish (1.4k hours) - Mozilla Common Voice (v12.0) - 395 hour subset - Multilingual Librispeech (MLS ES) - 780 hour subset - VoxPopuli (ES) - 108 hour subset - Fisher - 141 hour subset #### French (1.8k hours) - Mozilla Common Voice (v12.0) - 708 hour subset - Multilingual Librispeech (MLS FR) - 926 hour subset - VoxPopuli (FR) - 165 hour subset ## Performance In both ASR and AST experiments, predictions were generated using beam search with width 5 and length penalty 1.0. ### ASR Performance (w/o PnC) The ASR performance is measured with word error rate (WER), and we process the groundtruth and predicted text with [whisper-normalizer](https://pypi.org/project/whisper-normalizer/). WER on [MCV-16.1](https://commonvoice.mozilla.org/en/datasets) test set: | **Version** | **Model** | **En** | **De** | **Es** | **Fr** | |:---------:|:-----------:|:------:|:------:|:------:|:------:| | 1.23.0 | canary-1b | 7.97 | 4.61 | 3.99 | 6.53 | WER on [MLS](https://huggingface.co/datasets/facebook/multilingual_librispeech) test set: | **Version** | **Model** | **En** | **De** | **Es** | **Fr** | |:---------:|:-----------:|:------:|:------:|:------:|:------:| | 1.23.0 | canary-1b | 3.06 | 4.19 | 3.15 | 4.12 | More details on evaluation can be found at [HuggingFace ASR Leaderboard](https://huggingface.co/spaces/hf-audio/open_asr_leaderboard) ### AST Performance We evaluate AST performance with [BLEU score](https://lightning.ai/docs/torchmetrics/stable/text/sacre_bleu_score.html), and use native annotations with punctuation and capitalization in the datasets. BLEU score on [FLEURS](https://huggingface.co/datasets/google/fleurs) test set: | **Version** | **Model** | **En->De** | **En->Es** | **En->Fr** | **De->En** | **Es->En** | **Fr->En** | |:-----------:|:---------:|:----------:|:----------:|:----------:|:----------:|:----------:|:----------:| | 1.23.0 | canary-1b | 22.66 | 41.11 | 40.76 | 32.64 | 32.15 | 23.57 | BLEU score on [COVOST-v2](https://github.com/facebookresearch/covost) test set: | **Version** | **Model** | **De->En** | **Es->En** | **Fr->En** | |:-----------:|:---------:|:----------:|:----------:|:----------:| | 1.23.0 | canary-1b | 37.67 | 40.7 | 40.42 | BLEU score on [mExpresso](https://huggingface.co/facebook/seamless-expressive#mexpresso-multilingual-expresso) test set: | **Version** | **Model** | **En->De** | **En->Es** | **En->Fr** | |:-----------:|:---------:|:----------:|:----------:|:----------:| | 1.23.0 | canary-1b | 23.84 | 35.74 | 28.29 | ## NVIDIA Riva: Deployment [NVIDIA Riva](https://developer.nvidia.com/riva), is an accelerated speech AI SDK deployable on-prem, in all clouds, multi-cloud, hybrid, on edge, and embedded. Additionally, Riva provides: * World-class out-of-the-box accuracy for the most common languages with model checkpoints trained on proprietary data with hundreds of thousands of GPU-compute hours * Best in class accuracy with run-time word boosting (e.g., brand and product names) and customization of acoustic model, language model, and inverse text normalization * Streaming speech recognition, Kubernetes compatible scaling, and enterprise-grade support Although this model isn’t supported yet by Riva, the [list of supported models](https://huggingface.co/models?other=Riva) is here. Check out [Riva live demo](https://developer.nvidia.com/riva#demos). ## References [1] [Fast Conformer with Linearly Scalable Attention for Efficient Speech Recognition](https://arxiv.org/abs/2305.05084) [2] [Attention is all you need](https://arxiv.org/abs/1706.03762) [3] [Google Sentencepiece Tokenizer](https://github.com/google/sentencepiece) [4] [NVIDIA NeMo Toolkit](https://github.com/NVIDIA/NeMo) ## Licence License to use this model is covered by the [CC-BY-NC-4.0](https://creativecommons.org/licenses/by-nc/4.0/deed.en#:~:text=NonCommercial%20%E2%80%94%20You%20may%20not%20use,doing%20anything%20the%20license%20permits.). By downloading the public and release version of the model, you accept the terms and conditions of the CC-BY-NC-4.0 license.