
* first raw commit * still POC * tentative convert script * almost working speech encoder conversion scripts * intermediate code for encoder/decoders * add modeling code * first version of speech encoder * make style * add new adapter layer architecture * add adapter block * add first tentative config * add working speech encoder conversion * base model convert works now * make style * remove unnecessary classes * remove unecessary functions * add modeling code speech encoder * rework logics * forward pass of sub components work * add modeling codes * some config modifs and modeling code modifs * save WIP * new edits * same output speech encoder * correct attention mask * correct attention mask * fix generation * new generation logics * erase comments * make style * fix typo * add some descriptions * new state * clean imports * add tests * make style * make beam search and num_return_sequences>1 works * correct edge case issue * correct SeamlessM4TConformerSamePadLayer copied from * replace ACT2FN relu by nn.relu * remove unecessary return variable * move back a class * change name conformer_attention_mask ->conv_attention_mask * better nit code * add some Copied from statements * small nits * small nit in dict.get * rename t2u model -> conditionalgeneration * ongoing refactoring of structure * update models architecture * remove SeamlessM4TMultiModal classes * add tests * adapt tests * some non-working code for vocoder * add seamlessM4T vocoder * remove buggy line * fix some hifigan related bugs * remove hifigan specifc config * change * add WIP tokenization * add seamlessM4T working tokenzier * update tokenization * add tentative feature extractor * Update converting script * update working FE * refactor input_values -> input_features * update FE * changes in generation, tokenizer and modeling * make style and add t2u_decoder_input_ids * add intermediate outputs for ToSpeech models * add vocoder to speech models * update valueerror * update FE with languages * add vocoder convert * update config docstrings and names * update generation code and configuration * remove todos and update config.pad_token_id to generation_config.pad_token_id * move block vocoder * remove unecessary code and uniformize tospeech code * add feature extractor import * make style and fix some copies from * correct consistency + make fix-copies * add processor code * remove comments * add fast tokenizer support * correct pad_token_id in M4TModel * correct config * update tests and codes + make style * make some suggested correstion - correct comments and change naming * rename some attributes * rename some attributes * remove unecessary sequential * remove option to use dur predictor * nit * refactor hifigan * replace normalize_mean and normalize_var with do_normalize + save lang ids to generation config * add tests * change tgt_lang logic * update generation ToSpeech * add support import SeamlessM4TProcessor * fix generate * make tests * update integration tests, add option to only return text and update tokenizer fast * fix wrong function call * update import and convert script * update integration tests + update repo id * correct paths and add first test * update how new attention masks are computed * update tests * take first care of batching in vocoder code * add batching with the vocoder * add waveform lengths to model outputs * make style * add generate kwargs + forward kwargs of M4TModel * add docstrings forward methods * reformate docstrings * add docstrings t2u model * add another round of modeling docstrings + reformate speaker_id -> spkr_id * make style * fix check_repo * make style * add seamlessm4t to toctree * correct check_config_attributes * write config docstrings + some modifs * make style * add docstrings tokenizer * add docstrings to processor, fe and tokenizers * make style * write first version of model docs * fix FE + correct FE test * fix tokenizer + add correct integration tests * fix most tokenization tests * make style * correct most processor test * add generation tests and fix num_return_sequences > 1 * correct integration tests -still one left * make style * correct position embedding * change numbeams to 1 * refactor some modeling code and correct one test * make style * correct typo * refactor intermediate fnn * refactor feedforward conformer * make style * remove comments * make style * fix tokenizer tests * make style * correct processor tests * make style * correct S2TT integration * Apply suggestions from Sanchit code review Co-authored-by: Sanchit Gandhi <93869735+sanchit-gandhi@users.noreply.github.com> * correct typo * replace torch.nn->nn + make style * change Output naming (waveforms -> waveform) and ordering * nit renaming and formating * remove return None when not necessary * refactor SeamlessM4TConformerFeedForward * nit typo * remove almost copied from comments * add a copied from comment and remove an unecessary dropout * remove inputs_embeds from speechencoder * remove backward compatibiliy function * reformate class docstrings for a few components * remove unecessary methods * split over 2 lines smthg hard to read * make style * replace two steps offset by one step as suggested * nice typo * move warnings * remove useless lines from processor * make generation non-standard test more robusts * remove torch.inference_mode from tests * split integration tests * enrich md * rename control_symbol_vocoder_offset->vocoder_offset * clean convert file * remove tgt_lang and src_lang from FE * change generate docstring of ToText models * update generate docstring of tospeech models * unify how to deal withtext_decoder_input_ids * add default spkr_id * unify tgt_lang for t2u_model * simplify tgt_lang verification * remove a todo * change config docstring * make style * simplify t2u_tgt_lang_id * make style * enrich/correct comments * enrich .md * correct typo in docstrings * add torchaudio dependency * update tokenizer * make style and fix copies * modify SeamlessM4TConverter with new tokenizer behaviour * make style * correct small typo docs * fix import * update docs and add requirement to tests * add convert_fairseq2_to_hf in utils/not_doctested.txt * update FE * fix imports and make style * remove torchaudio in FE test * add seamless_m4t.md to utils/not_doctested.txt * nits and change the way docstring dataset is loaded * move checkpoints from ylacombe/ to facebook/ orga * refactor warning/error to be in the 119 line width limit * round overly precised floats * add stereo audio behaviour * refactor .md and make style * enrich docs with more precised architecture description * readd undocumented models * make fix-copies * apply some suggestions * Apply suggestions from code review Co-authored-by: Sanchit Gandhi <93869735+sanchit-gandhi@users.noreply.github.com> Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com> * correct bug from previous commit * refactor a parameter allowing to clean the code + some small nits * clean tokenizer * make style and fix * make style * clean tokenizers arguments * add precisions for some tests * move docs from not_tested to slow * modify tokenizer according to last comments * add copied from statements in tests * correct convert script * correct parameter docstring style * correct tokenization * correct multi gpus * make style * clean modeling code * make style * add copied from statements * add copied statements * add support with ASR pipeline * remove file added inadvertently * fix docstrings seamlessM4TModel * add seamlessM4TConfig to OBJECTS_TO_IGNORE due of unconventional markdown * add seamlessm4t to assisted generation ignored models --------- Co-authored-by: Sanchit Gandhi <93869735+sanchit-gandhi@users.noreply.github.com> Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
9.3 KiB
SeamlessM4T
Overview
The SeamlessM4T model was proposed in SeamlessM4T — Massively Multilingual & Multimodal Machine Translation by the Seamless Communication team from Meta AI.
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.
SeamlessM4T enables multiple tasks without relying on 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)
[SeamlessM4TModel
] can perform all the above tasks, but each task also has its own dedicated sub-model.
The abstract from the paper is the following:
What does it take to create the Babel Fish, a tool that can help individuals translate speech between any two languages? While recent breakthroughs in text-based models have pushed machine translation coverage beyond 200 languages, unified speech-to-speech translation models have yet to achieve similar strides. More specifically, conventional speech-to-speech translation systems rely on cascaded systems that perform translation progressively, putting high-performing unified systems out of reach. To address these gaps, we introduce SeamlessM4T, a single model that supports speech-to-speech translation, speech-to-text translation, text-to-speech translation, text-to-text translation, and automatic speech recognition for up to 100 languages. To build this, we used 1 million hours of open speech audio data to learn self-supervised speech representations with w2v-BERT 2.0. Subsequently, we created a multimodal corpus of automatically aligned speech translations. Filtered and combined with human-labeled and pseudo-labeled data, we developed the first multilingual system capable of translating from and into English for both speech and text. On FLEURS, SeamlessM4T sets a new standard for translations into multiple target languages, achieving an improvement of 20% BLEU over the previous SOTA in direct speech-to-text translation. Compared to strong cascaded models, SeamlessM4T improves the quality of into-English translation by 1.3 BLEU points in speech-to-text and by 2.6 ASR-BLEU points in speech-to-speech. Tested for robustness, our system performs better against background noises and speaker variations in speech-to-text tasks compared to the current SOTA model. Critically, we evaluated SeamlessM4T on gender bias and added toxicity to assess translation safety. Finally, all contributions in this work are open-sourced and accessible at https://github.com/facebookresearch/seamless_communication
Usage
First, load the processor and a checkpoint of the model:
>>> from transformers import AutoProcessor, SeamlessM4TModel
>>> processor = AutoProcessor.from_pretrained("facebook/hf-seamless-m4t-medium")
>>> model = SeamlessM4TModel.from_pretrained("facebook/hf-seamless-m4t-medium")
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()[0], 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()[0], 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-medium")
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-medium")
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 !
Model architecture
SeamlessM4T features a versatile architecture that smoothly handles the sequential generation of text and speech. This setup comprises two sequence-to-sequence (seq2seq) models. The first model translates the input modality into translated text, while the second model generates speech tokens, known as "unit tokens," from the translated text.
Each modality has its own dedicated encoder with a unique architecture. Additionally, for speech output, a vocoder inspired by the HiFi-GAN architecture is placed on top of the second seq2seq model.
Here's how the generation process works:
- Input text or speech is processed through its specific encoder.
- A decoder creates text tokens in the desired language.
- If speech generation is required, the second seq2seq model, following a standard encoder-decoder structure, generates unit tokens.
- These unit tokens are then passed through the final vocoder to produce the actual speech.
This model was contributed by ylacombe. The original code can be found here.
SeamlessM4TModel
autodoc SeamlessM4TModel - generate
SeamlessM4TForTextToSpeech
autodoc SeamlessM4TForTextToSpeech - generate
SeamlessM4TForSpeechToSpeech
autodoc SeamlessM4TForSpeechToSpeech - generate
SeamlessM4TForTextToText
autodoc transformers.SeamlessM4TForTextToText - forward - generate
SeamlessM4TForSpeechToText
autodoc transformers.SeamlessM4TForSpeechToText - forward - generate
SeamlessM4TConfig
autodoc SeamlessM4TConfig
SeamlessM4TTokenizer
autodoc SeamlessM4TTokenizer - call - build_inputs_with_special_tokens - get_special_tokens_mask - create_token_type_ids_from_sequences - save_vocabulary
SeamlessM4TTokenizerFast
autodoc SeamlessM4TTokenizerFast - call
SeamlessM4TFeatureExtractor
autodoc SeamlessM4TFeatureExtractor - call
SeamlessM4TProcessor
autodoc SeamlessM4TProcessor - call
SeamlessM4TCodeHifiGan
autodoc SeamlessM4TCodeHifiGan
SeamlessM4THifiGan
autodoc SeamlessM4THifiGan
SeamlessM4TTextToUnitModel
autodoc SeamlessM4TTextToUnitModel
SeamlessM4TTextToUnitForConditionalGeneration
autodoc SeamlessM4TTextToUnitForConditionalGeneration