
* initial commit * encoder+decoder layer changes WIP * architecture checks * working version of detection + segmentation * fix modeling outputs * fix return dict + output att/hs * found the position embedding masking bug * pre-training version * added iamge processors * typo in init.py * iterupdate set to false * fixed num_labels in class_output linear layer bias init * multihead attention shape fixes * test improvements * test update * dab-detr model_doc update * dab-detr model_doc update2 * test fix:test_retain_grad_hidden_states_attentions * config file clean and renaming variables * config file clean and renaming variables fix * updated convert_to_hf file * small fixes * style and qulity checks * return_dict fix * Merge branch main into add_dab_detr * small comment fix * skip test_inputs_embeds test * image processor updates + image processor test updates * check copies test fix update * updates for check_copies.py test * updates for check_copies.py test2 * tied weights fix * fixed image processing tests and fixed shared weights issues * added numpy nd array option to get_Expected_values method in test_image_processing_dab_detr.py * delete prints from test file * SafeTensor modification to solve HF Trainer issue * removing the safetensor modifications * make fix copies and hf uplaod has been added. * fixed index.md * fixed repo consistency * styel fix and dabdetrimageprocessor docstring update * requested modifications after the first review * Update src/transformers/models/dab_detr/image_processing_dab_detr.py Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com> * repo consistency has been fixed * update copied NestedTensor function after main merge * Update src/transformers/models/dab_detr/modeling_dab_detr.py Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com> * temp commit * temp commit2 * temp commit 3 * unit tests are fixed * fixed repo consistency * updated expected_boxes varible values based on related notebook results in DABDETRIntegrationTests file. * temporarialy config modifications and repo consistency fixes * Put dilation parameter back to config * pattern embeddings have been added to the rename_keys method * add dilation comment to config + add as an exception in check_config_attributes SPECIAL CASES * delete FeatureExtractor part from docs.md * requested modifications in modeling_dab_detr.py * [run_slow] dab_detr * deleted last segmentation code part, updated conversion script and changed the hf path in test files * temp commit of requested modifications * temp commit of requested modifications 2 * updated config file, resolved codepaths and refactored conversion script * updated decodelayer block types and refactored conversion script * style and quality update * small modifications based on the request * attentions are refactored * removed loss functions from modeling file, added loss function to lossutils, tried to move the MLP layer generation to config but it failed * deleted imageprocessor * fixed conversion script + quality and style * fixed config_att * [run_slow] dab_detr * changing model path in conversion file and in test file * fix Decoder variable naming * testing the old loss function * switched back to the new loss function and testing with the odl attention functions * switched back to the new last good result modeling file * moved back to the version when I asked the review * missing new line at the end of the file * old version test * turn back to newest mdoel versino but change image processor * style fix * style fix after merge main * [run_slow] dab_detr * [run_slow] dab_detr * added device and type for head bias data part * [run_slow] dab_detr * fixed model head bias data fill * changed test_inference_object_detection_head assertTrues to torch test assert_close * fixes part 1 * quality update * self.bbox_embed in decoder has been restored * changed Assert true torch closeall methods to torch testing assertclose * modelcard markdown file has been updated * deleted intemediate list from decoder module --------- Co-authored-by: Pavel Iakubovskii <qubvel@gmail.com>
48 KiB
🤗 Transformers
State-of-the-art Machine Learning for PyTorch, TensorFlow, and JAX.
🤗 Transformers provides APIs and tools to easily download and train state-of-the-art pretrained models. Using pretrained models can reduce your compute costs, carbon footprint, and save you the time and resources required to train a model from scratch. These models support common tasks in different modalities, such as:
📝 Natural Language Processing: text classification, named entity recognition, question answering, language modeling, code generation, summarization, translation, multiple choice, and text generation.
🖼️ Computer Vision: image classification, object detection, and segmentation.
🗣️ Audio: automatic speech recognition and audio classification.
🐙 Multimodal: table question answering, optical character recognition, information extraction from scanned documents, video classification, and visual question answering.
🤗 Transformers support framework interoperability between PyTorch, TensorFlow, and JAX. This provides the flexibility to use a different framework at each stage of a model's life; train a model in three lines of code in one framework, and load it for inference in another. Models can also be exported to a format like ONNX and TorchScript for deployment in production environments.
Join the growing community on the Hub, forum, or Discord today!
If you are looking for custom support from the Hugging Face team

Contents
The documentation is organized into five sections:
-
GET STARTED provides a quick tour of the library and installation instructions to get up and running.
-
TUTORIALS are a great place to start if you're a beginner. This section will help you gain the basic skills you need to start using the library.
-
HOW-TO GUIDES show you how to achieve a specific goal, like finetuning a pretrained model for language modeling or how to write and share a custom model.
-
CONCEPTUAL GUIDES offers more discussion and explanation of the underlying concepts and ideas behind models, tasks, and the design philosophy of 🤗 Transformers.
-
API describes all classes and functions:
- MAIN CLASSES details the most important classes like configuration, model, tokenizer, and pipeline.
- MODELS details the classes and functions related to each model implemented in the library.
- INTERNAL HELPERS details utility classes and functions used internally.
Supported models and frameworks
The table below represents the current support in the library for each of those models, whether they have a Python tokenizer (called "slow"). A "fast" tokenizer backed by the 🤗 Tokenizers library, whether they have support in Jax (via Flax), PyTorch, and/or TensorFlow.