🤗 Transformers: State-of-the-art Machine Learning for Pytorch, TensorFlow, and JAX.
Go to file
Cyril Vallez 163138a911
🚨🚨[core] Completely rewrite the masking logic for all attentions (#37866)
* start

* start having a clean 4d mask primitive

* Update mask_utils.py

* Update mask_utils.py

* switch name

* Update masking_utils.py

* add a new AttentionMask tensor class

* fix import

* nits

* fixes

* use full and quandrants

* general sdpa mask for all caches

* style

* start some tests

* tests with sliding, chunked

* add styling

* test hybrid

* Update masking_utils.py

* small temp fixes

* Update modeling_gemma2.py

* compile compatible

* Update masking_utils.py

* improve

* start making it more general

* Update masking_utils.py

* generate

* make it work with flex style primitives!

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* improve

* Update cache_utils.py

* Update masking_utils.py

* simplify - starting to look good!

* Update masking_utils.py

* name

* Update masking_utils.py

* style

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* small fix for flex

* flex compile

* FA2

* Update masking_utils.py

* Escape for TGI/vLLM!

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* General case without cache

* rename

* full test on llama4

* small fix for FA2 guard with chunk

* Update modeling_gemma2.py

* post rebase cleanup

* FA2 supports static cache!

* Update modeling_flash_attention_utils.py

* Update flex_attention.py

* Update masking_utils.py

* Update masking_utils.py

* Update utils.py

* override for export

* Update executorch.py

* Update executorch.py

* Update executorch.py

* Update executorch.py

* Update masking_utils.py

* Update masking_utils.py

* output attentions

* style

* Update masking_utils.py

* Update executorch.py

* Add doicstring

* Add license and put mask visualizer at the end

* Update test_modeling_common.py

* fix broken test

* Update test_modeling_gemma.py

* Update test_modeling_gemma2.py

* Use fullgraph=False with FA2

* Update utils.py

* change name

* Update masking_utils.py

* improve doc

* change name

* Update modeling_attn_mask_utils.py

* more explicit logic based on model's property

* pattern in config

* extend

* fixes

* make it better

* generalize to other test models

* fix

* Update masking_utils.py

* fix

* do not check mask equivalence if layer types are different

* executorch

* Update modeling_gemma2.py

* Update masking_utils.py

* use layer_idx instead

* adjust

* Update masking_utils.py

* test

* fix imports

* Update modeling_gemma2.py

* other test models

* Update modeling_llama4.py

* Update masking_utils.py

* improve

* simplify

* Update masking_utils.py

* typos

* typo

* fix

* Update masking_utils.py

* default DynamicCache

* remove default cache

* simplify

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* simplify

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* export

* Update executorch.py

* Update executorch.py

* Update flex_attention.py

* Update executorch.py

* upstream to modular gemma 1 & 2

* Update modular_mistral.py

* switch names

* use dict

* put it in the Layer directly

* update copy model source for mask functions

* apply so many modular (hopefully 1 shot)

* use explicite dicts for make style happy

* protect import

* check docstring

* better default in hybrid caches

* qwens

* Update modular_qwen2.py

* simplify core logic!

* Update executorch.py

* qwen3 moe

* Update masking_utils.py

* Update masking_utils.py

* simplify a lot sdpa causal skip

* Update masking_utils.py

* post-rebase

* gemma3 finally

* style

* check it before

* gemma3

* More general with newer torch

* align gemma3

* Update utils.py

* Update utils.py

* Update masking_utils.py

* Update test_modeling_common.py

* Update flex_attention.py

* Update flex_attention.py

* Update flex_attention.py

* test

* executorch

* Update test_modeling_common.py

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* Update masking_utils.py

* Update executorch.py

* Update test_modeling_common.py

* fix copies

* device

* sdpa can be used without mask -> pass the torchscript tests in this case

* Use enum for check

* revert enum and add check instead

* remove broken test

* cohere2

* some doc & reorganize the Interface

* Update tensor_parallel.py

* Update tensor_parallel.py

* doc and dummy

* Update test_modeling_paligemma2.py

* Update modeling_falcon_h1.py

* Update masking_utils.py

* executorch patch

* style

* CIs

* use register in executorch

* final comments!

---------

Co-authored-by: Arthur Zucker <arthur.zucker@gmail.com>
2025-05-22 11:38:26 +02:00
.circleci remove some commands from fetch_tests CircleCI job (#38176) 2025-05-16 14:42:50 +02:00
.github CI reporting improvements (#38230) 2025-05-20 19:34:58 +02:00
benchmark Fix typos in comments (#37694) 2025-04-24 15:59:56 +01:00
docker uninstall kernels from docker images (#38083) 2025-05-12 18:03:47 +02:00
docs 🚨🚨[core] Completely rewrite the masking logic for all attentions (#37866) 2025-05-22 11:38:26 +02:00
examples tp plan should not be NONE (#38255) 2025-05-21 10:22:38 +02:00
i18n byebye torch 2.0 (#37277) 2025-04-07 15:19:47 +02:00
notebooks Remove INC notebook reference in documentation (#35936) 2025-01-28 17:10:02 +01:00
scripts [cleanup] remove old scripts in /scripts 🧹 🧹 (#37676) 2025-04-22 16:59:03 +01:00
src/transformers 🚨🚨[core] Completely rewrite the masking logic for all attentions (#37866) 2025-05-22 11:38:26 +02:00
templates Just import torch AdamW instead (#36177) 2025-03-19 18:29:40 +00:00
tests 🚨🚨[core] Completely rewrite the masking logic for all attentions (#37866) 2025-05-22 11:38:26 +02:00
utils 🚨🚨[core] Completely rewrite the masking logic for all attentions (#37866) 2025-05-22 11:38:26 +02:00
.gitattributes Add trajectory transformer (#17141) 2022-05-17 19:07:43 -04:00
.gitignore 🚨🚨 🚨🚨 [Tokenizer] attemp to fix add_token issues🚨🚨 🚨🚨 (#23909) 2023-09-18 20:28:36 +02:00
awesome-transformers.md chore: Fix typos in docs and examples (#36524) 2025-03-04 13:47:41 +00:00
CITATION.cff Update CITATION.cff (#13833) 2021-10-01 10:41:27 -04:00
CODE_OF_CONDUCT.md Update Code of Conduct to Contributor Covenant v2.1 (#19935) 2022-10-28 11:03:38 -04:00
conftest.py [agents] remove agents 🧹 (#37368) 2025-04-11 18:42:37 +01:00
CONTRIBUTING.md Transformers cli clean command (#37657) 2025-04-30 12:15:43 +01:00
ISSUES.md docs(typo): Update ISSUES.md, fix a small typo (#37542) 2025-04-16 15:01:04 +01:00
LICENSE Copyright (#8970) 2020-12-07 18:36:34 -05:00
Makefile Fix qwen2-vl-docs. (#37879) 2025-04-30 13:32:21 +01:00
pyproject.toml Enable RUF013 to enforce optional typing (#37266) 2025-05-08 12:39:56 +02:00
README.md [docs] add uv installation instructions for source builds (#37968) 2025-05-14 13:09:41 +00:00
SECURITY.md [agents] remove agents 🧹 (#37368) 2025-04-11 18:42:37 +01:00
setup.py Protect ParallelInterface (#38262) 2025-05-21 17:45:38 +02:00

Hugging Face Transformers Library

Checkpoints on Hub Build GitHub Documentation GitHub release Contributor Covenant DOI

English | 简体中文 | 繁體中文 | 한국어 | Español | 日本語 | हिन्दी | Русский | Рortuguês | తెలుగు | Français | Deutsch | Tiếng Việt | العربية | اردو |

State-of-the-art pretrained models for inference and training

Transformers is a library of pretrained text, computer vision, audio, video, and multimodal models for inference and training. Use Transformers to fine-tune models on your data, build inference applications, and for generative AI use cases across multiple modalities.

There are over 500K+ Transformers model checkpoints on the Hugging Face Hub you can use.

Explore the Hub today to find a model and use Transformers to help you get started right away.

Installation

Transformers works with Python 3.9+ PyTorch 2.1+, TensorFlow 2.6+, and Flax 0.4.1+.

Create and activate a virtual environment with venv or uv, a fast Rust-based Python package and project manager.

# venv
python -m venv .my-env
source .my-env/bin/activate
# uv
uv venv .my-env
source .my-env/bin/activate

Install Transformers in your virtual environment.

# pip
pip install "transformers[torch]"

# uv
uv pip install "transformers[torch]"

Install Transformers from source if you want the latest changes in the library or are interested in contributing. However, the latest version may not be stable. Feel free to open an issue if you encounter an error.

git clone https://github.com/huggingface/transformers.git
cd transformers

# pip
pip install .[torch]

# uv
uv pip install .[torch]

Quickstart

Get started with Transformers right away with the Pipeline API. The Pipeline is a high-level inference class that supports text, audio, vision, and multimodal tasks. It handles preprocessing the input and returns the appropriate output.

Instantiate a pipeline and specify model to use for text generation. The model is downloaded and cached so you can easily reuse it again. Finally, pass some text to prompt the model.

from transformers import pipeline

pipeline = pipeline(task="text-generation", model="Qwen/Qwen2.5-1.5B")
pipeline("the secret to baking a really good cake is ")
[{'generated_text': 'the secret to baking a really good cake is 1) to use the right ingredients and 2) to follow the recipe exactly. the recipe for the cake is as follows: 1 cup of sugar, 1 cup of flour, 1 cup of milk, 1 cup of butter, 1 cup of eggs, 1 cup of chocolate chips. if you want to make 2 cakes, how much sugar do you need? To make 2 cakes, you will need 2 cups of sugar.'}]

To chat with a model, the usage pattern is the same. The only difference is you need to construct a chat history (the input to Pipeline) between you and the system.

Tip

You can also chat with a model directly from the command line.

transformers chat Qwen/Qwen2.5-0.5B-Instruct
import torch
from transformers import pipeline

chat = [
    {"role": "system", "content": "You are a sassy, wise-cracking robot as imagined by Hollywood circa 1986."},
    {"role": "user", "content": "Hey, can you tell me any fun things to do in New York?"}
]

pipeline = pipeline(task="text-generation", model="meta-llama/Meta-Llama-3-8B-Instruct", torch_dtype=torch.bfloat16, device_map="auto")
response = pipeline(chat, max_new_tokens=512)
print(response[0]["generated_text"][-1]["content"])

Expand the examples below to see how Pipeline works for different modalities and tasks.

Automatic speech recognition
from transformers import pipeline

pipeline = pipeline(task="automatic-speech-recognition", model="openai/whisper-large-v3")
pipeline("https://huggingface.co/datasets/Narsil/asr_dummy/resolve/main/mlk.flac")
{'text': ' I have a dream that one day this nation will rise up and live out the true meaning of its creed.'}
Image classification

from transformers import pipeline

pipeline = pipeline(task="image-classification", model="facebook/dinov2-small-imagenet1k-1-layer")
pipeline("https://huggingface.co/datasets/Narsil/image_dummy/raw/main/parrots.png")
[{'label': 'macaw', 'score': 0.997848391532898},
 {'label': 'sulphur-crested cockatoo, Kakatoe galerita, Cacatua galerita',
  'score': 0.0016551691805943847},
 {'label': 'lorikeet', 'score': 0.00018523589824326336},
 {'label': 'African grey, African gray, Psittacus erithacus',
  'score': 7.85409429227002e-05},
 {'label': 'quail', 'score': 5.502637941390276e-05}]
Visual question answering

from transformers import pipeline

pipeline = pipeline(task="visual-question-answering", model="Salesforce/blip-vqa-base")
pipeline(
    image="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/transformers/tasks/idefics-few-shot.jpg",
    question="What is in the image?",
)
[{'answer': 'statue of liberty'}]

Why should I use Transformers?

  1. Easy-to-use state-of-the-art models:

    • High performance on natural language understanding & generation, computer vision, audio, video, and multimodal tasks.
    • Low barrier to entry for researchers, engineers, and developers.
    • Few user-facing abstractions with just three classes to learn.
    • A unified API for using all our pretrained models.
  2. Lower compute costs, smaller carbon footprint:

    • Share trained models instead of training from scratch.
    • Reduce compute time and production costs.
    • Dozens of model architectures with 1M+ pretrained checkpoints across all modalities.
  3. Choose the right framework for every part of a models lifetime:

    • Train state-of-the-art models in 3 lines of code.
    • Move a single model between PyTorch/JAX/TF2.0 frameworks at will.
    • Pick the right framework for training, evaluation, and production.
  4. Easily customize a model or an example to your needs:

    • We provide examples for each architecture to reproduce the results published by its original authors.
    • Model internals are exposed as consistently as possible.
    • Model files can be used independently of the library for quick experiments.
Hugging Face Enterprise Hub

Why shouldn't I use Transformers?

  • This library is not a modular toolbox of building blocks for neural nets. The code in the model files is not refactored with additional abstractions on purpose, so that researchers can quickly iterate on each of the models without diving into additional abstractions/files.
  • The training API is optimized to work with PyTorch models provided by Transformers. For generic machine learning loops, you should use another library like Accelerate.
  • The example scripts are only examples. They may not necessarily work out-of-the-box on your specific use case and you'll need to adapt the code for it to work.

100 projects using Transformers

Transformers is more than a toolkit to use pretrained models, it's a community of projects built around it and the Hugging Face Hub. We want Transformers to enable developers, researchers, students, professors, engineers, and anyone else to build their dream projects.

In order to celebrate Transformers 100,000 stars, we wanted to put the spotlight on the community with the awesome-transformers page which lists 100 incredible projects built with Transformers.

If you own or use a project that you believe should be part of the list, please open a PR to add it!

Example models

You can test most of our models directly on their Hub model pages.

Expand each modality below to see a few example models for various use cases.

Audio
Computer vision
Multimodal
  • Audio or text to text with Qwen2-Audio
  • Document question answering with LayoutLMv3
  • Image or text to text with Qwen-VL
  • Image captioning BLIP-2
  • OCR-based document understanding with GOT-OCR2
  • Table question answering with TAPAS
  • Unified multimodal understanding and generation with Emu3
  • Vision to text with Llava-OneVision
  • Visual question answering with Llava
  • Visual referring expression segmentation with Kosmos-2
NLP
  • Masked word completion with ModernBERT
  • Named entity recognition with Gemma
  • Question answering with Mixtral
  • Summarization with BART
  • Translation with T5
  • Text generation with Llama
  • Text classification with Qwen

Citation

We now have a paper you can cite for the 🤗 Transformers library:

@inproceedings{wolf-etal-2020-transformers,
    title = "Transformers: State-of-the-Art Natural Language Processing",
    author = "Thomas Wolf and Lysandre Debut and Victor Sanh and Julien Chaumond and Clement Delangue and Anthony Moi and Pierric Cistac and Tim Rault and Rémi Louf and Morgan Funtowicz and Joe Davison and Sam Shleifer and Patrick von Platen and Clara Ma and Yacine Jernite and Julien Plu and Canwen Xu and Teven Le Scao and Sylvain Gugger and Mariama Drame and Quentin Lhoest and Alexander M. Rush",
    booktitle = "Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing: System Demonstrations",
    month = oct,
    year = "2020",
    address = "Online",
    publisher = "Association for Computational Linguistics",
    url = "https://www.aclweb.org/anthology/2020.emnlp-demos.6",
    pages = "38--45"
}