SeamlessM4T Large
SeamlessM4T is a collection of models designed to provide high quality translation, allowing people from different linguistic communities to communicate effortlessly through speech and text.
This repository hosts π€ Hugging Face's implementation of SeamlessM4T.
π SeamlessM4T v2, an improved version of this version with a novel architecture, has been released here. This new model improves over SeamlessM4T v1 in quality as well as inference speed in speech generation tasks.
SeamlessM4T v2 is also supported by π€ Transformers, more on it in the model card of this new version or directly in π€ Transformers docs.
SeamlessM4T Large covers:
- π₯ 101 languages for speech input
- β¨οΈ 96 Languages for text input/output
- π£οΈ 35 languages for speech output.
This is the "large" variant of the unified model, which enables multiple tasks without relying on multiple separate models:
- Speech-to-speech translation (S2ST)
- Speech-to-text translation (S2TT)
- Text-to-speech translation (T2ST)
- Text-to-text translation (T2TT)
- Automatic speech recognition (ASR)
You can perform all the above tasks from one single model, SeamlessM4TModel
, but each task also has its own dedicated sub-model.
π€ Usage
First, load the processor and a checkpoint of the model:
>>> from transformers import AutoProcessor, SeamlessM4TModel
>>> processor = AutoProcessor.from_pretrained("facebook/hf-seamless-m4t-large")
>>> model = SeamlessM4TModel.from_pretrained("facebook/hf-seamless-m4t-large")
You can seamlessly use this model on text or on audio, to generated either translated text or translated audio.
Here is how to use the processor to process text and audio:
>>> # let's load an audio sample from an Arabic speech corpus
>>> from datasets import load_dataset
>>> dataset = load_dataset("arabic_speech_corpus", split="test", streaming=True)
>>> audio_sample = next(iter(dataset))["audio"]
>>> # now, process it
>>> audio_inputs = processor(audios=audio_sample["array"], return_tensors="pt")
>>> # now, process some English test as well
>>> text_inputs = processor(text = "Hello, my dog is cute", src_lang="eng", return_tensors="pt")
Speech
SeamlessM4TModel
can seamlessly generate text or speech with few or no changes. Let's target Russian voice translation:
>>> audio_array_from_text = model.generate(**text_inputs, tgt_lang="rus")[0].cpu().numpy().squeeze()
>>> audio_array_from_audio = model.generate(**audio_inputs, tgt_lang="rus")[0].cpu().numpy().squeeze()
With basically the same code, I've translated English text and Arabic speech to Russian speech samples.
Text
Similarly, you can generate translated text from audio files or from text with the same model. You only have to pass generate_speech=False
to SeamlessM4TModel.generate
.
This time, let's translate to French.
>>> # from audio
>>> output_tokens = model.generate(**audio_inputs, tgt_lang="fra", generate_speech=False)
>>> translated_text_from_audio = processor.decode(output_tokens[0].tolist(), skip_special_tokens=True)
>>> # from text
>>> output_tokens = model.generate(**text_inputs, tgt_lang="fra", generate_speech=False)
>>> translated_text_from_text = processor.decode(output_tokens[0].tolist(), skip_special_tokens=True)
Tips
1. Use dedicated models
SeamlessM4TModel
is transformers top level model to generate speech and text, but you can also use dedicated models that perform the task without additional components, thus reducing the memory footprint.
For example, you can replace the audio-to-audio generation snippet with the model dedicated to the S2ST task, the rest is exactly the same code:
>>> from transformers import SeamlessM4TForSpeechToSpeech
>>> model = SeamlessM4TForSpeechToSpeech.from_pretrained("facebook/hf-seamless-m4t-large")
Or you can replace the text-to-text generation snippet with the model dedicated to the T2TT task, you only have to remove generate_speech=False
.
>>> from transformers import SeamlessM4TForTextToText
>>> model = SeamlessM4TForTextToText.from_pretrained("facebook/hf-seamless-m4t-large")
Feel free to try out SeamlessM4TForSpeechToText
and SeamlessM4TForTextToSpeech
as well.
2. Change the speaker identity
You have the possibility to change the speaker used for speech synthesis with the spkr_id
argument. Some spkr_id
works better than other for some languages!
3. Change the generation strategy
You can use different generation strategies for speech and text generation, e.g .generate(input_ids=input_ids, text_num_beams=4, speech_do_sample=True)
which will successively perform beam-search decoding on the text model, and multinomial sampling on the speech model.
4. Generate speech and text at the same time
Use return_intermediate_token_ids=True
with SeamlessM4TModel
to return both speech and text !
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