# Create a custom architecture An [`AutoClass`](model_doc/auto) automatically infers the model architecture and downloads pretrained configuration and weights. Generally, we recommend using an `AutoClass` to produce checkpoint-agnostic code. But users who want more control over specific model parameters can create a custom 🤗 Transformers model from just a few base classes. This could be particularly useful for anyone who is interested in studying, training or experimenting with a 🤗 Transformers model. In this guide, dive deeper into creating a custom model without an `AutoClass`. Learn how to: - Load and customize a model configuration. - Create a model architecture. - Create a slow and fast tokenizer for text. - Create an image processor for vision tasks. - Create a feature extractor for audio tasks. - Create a processor for multimodal tasks. ## Configuration A [configuration](main_classes/configuration) refers to a model's specific attributes. Each model configuration has different attributes; for instance, all NLP models have the `hidden_size`, `num_attention_heads`, `num_hidden_layers` and `vocab_size` attributes in common. These attributes specify the number of attention heads or hidden layers to construct a model with. Get a closer look at [DistilBERT](model_doc/distilbert) by accessing [`DistilBertConfig`] to inspect it's attributes: ```py >>> from transformers import DistilBertConfig >>> config = DistilBertConfig() >>> print(config) DistilBertConfig { "activation": "gelu", "attention_dropout": 0.1, "dim": 768, "dropout": 0.1, "hidden_dim": 3072, "initializer_range": 0.02, "max_position_embeddings": 512, "model_type": "distilbert", "n_heads": 12, "n_layers": 6, "pad_token_id": 0, "qa_dropout": 0.1, "seq_classif_dropout": 0.2, "sinusoidal_pos_embds": false, "transformers_version": "4.16.2", "vocab_size": 30522 } ``` [`DistilBertConfig`] displays all the default attributes used to build a base [`DistilBertModel`]. All attributes are customizable, creating space for experimentation. For example, you can customize a default model to: - Try a different activation function with the `activation` parameter. - Use a higher dropout ratio for the attention probabilities with the `attention_dropout` parameter. ```py >>> my_config = DistilBertConfig(activation="relu", attention_dropout=0.4) >>> print(my_config) DistilBertConfig { "activation": "relu", "attention_dropout": 0.4, "dim": 768, "dropout": 0.1, "hidden_dim": 3072, "initializer_range": 0.02, "max_position_embeddings": 512, "model_type": "distilbert", "n_heads": 12, "n_layers": 6, "pad_token_id": 0, "qa_dropout": 0.1, "seq_classif_dropout": 0.2, "sinusoidal_pos_embds": false, "transformers_version": "4.16.2", "vocab_size": 30522 } ``` Pretrained model attributes can be modified in the [`~PretrainedConfig.from_pretrained`] function: ```py >>> my_config = DistilBertConfig.from_pretrained("distilbert-base-uncased", activation="relu", attention_dropout=0.4) ``` Once you are satisfied with your model configuration, you can save it with [`~PretrainedConfig.save_pretrained`]. Your configuration file is stored as a JSON file in the specified save directory: ```py >>> my_config.save_pretrained(save_directory="./your_model_save_path") ``` To reuse the configuration file, load it with [`~PretrainedConfig.from_pretrained`]: ```py >>> my_config = DistilBertConfig.from_pretrained("./your_model_save_path/config.json") ``` You can also save your configuration file as a dictionary or even just the difference between your custom configuration attributes and the default configuration attributes! See the [configuration](main_classes/configuration) documentation for more details. ## Model The next step is to create a [model](main_classes/models). The model - also loosely referred to as the architecture - defines what each layer is doing and what operations are happening. Attributes like `num_hidden_layers` from the configuration are used to define the architecture. Every model shares the base class [`PreTrainedModel`] and a few common methods like resizing input embeddings and pruning self-attention heads. In addition, all models are also either a [`torch.nn.Module`](https://pytorch.org/docs/stable/generated/torch.nn.Module.html), [`tf.keras.Model`](https://www.tensorflow.org/api_docs/python/tf/keras/Model) or [`flax.linen.Module`](https://flax.readthedocs.io/en/latest/flax.linen.html#module) subclass. This means models are compatible with each of their respective framework's usage. Load your custom configuration attributes into the model: ```py >>> from transformers import DistilBertModel >>> my_config = DistilBertConfig.from_pretrained("./your_model_save_path/config.json") >>> model = DistilBertModel(my_config) ``` This creates a model with random values instead of pretrained weights. You won't be able to use this model for anything useful yet until you train it. Training is a costly and time-consuming process. It is generally better to use a pretrained model to obtain better results faster, while using only a fraction of the resources required for training. Create a pretrained model with [`~PreTrainedModel.from_pretrained`]: ```py >>> model = DistilBertModel.from_pretrained("distilbert-base-uncased") ``` When you load pretrained weights, the default model configuration is automatically loaded if the model is provided by 🤗 Transformers. However, you can still replace - some or all of - the default model configuration attributes with your own if you'd like: ```py >>> model = DistilBertModel.from_pretrained("distilbert-base-uncased", config=my_config) ``` Load your custom configuration attributes into the model: ```py >>> from transformers import TFDistilBertModel >>> my_config = DistilBertConfig.from_pretrained("./your_model_save_path/my_config.json") >>> tf_model = TFDistilBertModel(my_config) ``` This creates a model with random values instead of pretrained weights. You won't be able to use this model for anything useful yet until you train it. Training is a costly and time-consuming process. It is generally better to use a pretrained model to obtain better results faster, while using only a fraction of the resources required for training. Create a pretrained model with [`~TFPreTrainedModel.from_pretrained`]: ```py >>> tf_model = TFDistilBertModel.from_pretrained("distilbert-base-uncased") ``` When you load pretrained weights, the default model configuration is automatically loaded if the model is provided by 🤗 Transformers. However, you can still replace - some or all of - the default model configuration attributes with your own if you'd like: ```py >>> tf_model = TFDistilBertModel.from_pretrained("distilbert-base-uncased", config=my_config) ``` ### Model heads At this point, you have a base DistilBERT model which outputs the *hidden states*. The hidden states are passed as inputs to a model head to produce the final output. 🤗 Transformers provides a different model head for each task as long as a model supports the task (i.e., you can't use DistilBERT for a sequence-to-sequence task like translation). For example, [`DistilBertForSequenceClassification`] is a base DistilBERT model with a sequence classification head. The sequence classification head is a linear layer on top of the pooled outputs. ```py >>> from transformers import DistilBertForSequenceClassification >>> model = DistilBertForSequenceClassification.from_pretrained("distilbert-base-uncased") ``` Easily reuse this checkpoint for another task by switching to a different model head. For a question answering task, you would use the [`DistilBertForQuestionAnswering`] model head. The question answering head is similar to the sequence classification head except it is a linear layer on top of the hidden states output. ```py >>> from transformers import DistilBertForQuestionAnswering >>> model = DistilBertForQuestionAnswering.from_pretrained("distilbert-base-uncased") ``` For example, [`TFDistilBertForSequenceClassification`] is a base DistilBERT model with a sequence classification head. The sequence classification head is a linear layer on top of the pooled outputs. ```py >>> from transformers import TFDistilBertForSequenceClassification >>> tf_model = TFDistilBertForSequenceClassification.from_pretrained("distilbert-base-uncased") ``` Easily reuse this checkpoint for another task by switching to a different model head. For a question answering task, you would use the [`TFDistilBertForQuestionAnswering`] model head. The question answering head is similar to the sequence classification head except it is a linear layer on top of the hidden states output. ```py >>> from transformers import TFDistilBertForQuestionAnswering >>> tf_model = TFDistilBertForQuestionAnswering.from_pretrained("distilbert-base-uncased") ``` ## Tokenizer The last base class you need before using a model for textual data is a [tokenizer](main_classes/tokenizer) to convert raw text to tensors. There are two types of tokenizers you can use with 🤗 Transformers: - [`PreTrainedTokenizer`]: a Python implementation of a tokenizer. - [`PreTrainedTokenizerFast`]: a tokenizer from our Rust-based [🤗 Tokenizer](https://huggingface.co/docs/tokenizers/python/latest/) library. This tokenizer type is significantly faster - especially during batch tokenization - due to its Rust implementation. The fast tokenizer also offers additional methods like *offset mapping* which maps tokens to their original words or characters. Both tokenizers support common methods such as encoding and decoding, adding new tokens, and managing special tokens. Not every model supports a fast tokenizer. Take a look at this [table](index#supported-frameworks) to check if a model has fast tokenizer support. If you trained your own tokenizer, you can create one from your *vocabulary* file: ```py >>> from transformers import DistilBertTokenizer >>> my_tokenizer = DistilBertTokenizer(vocab_file="my_vocab_file.txt", do_lower_case=False, padding_side="left") ``` It is important to remember the vocabulary from a custom tokenizer will be different from the vocabulary generated by a pretrained model's tokenizer. You need to use a pretrained model's vocabulary if you are using a pretrained model, otherwise the inputs won't make sense. Create a tokenizer with a pretrained model's vocabulary with the [`DistilBertTokenizer`] class: ```py >>> from transformers import DistilBertTokenizer >>> slow_tokenizer = DistilBertTokenizer.from_pretrained("distilbert-base-uncased") ``` Create a fast tokenizer with the [`DistilBertTokenizerFast`] class: ```py >>> from transformers import DistilBertTokenizerFast >>> fast_tokenizer = DistilBertTokenizerFast.from_pretrained("distilbert-base-uncased") ``` By default, [`AutoTokenizer`] will try to load a fast tokenizer. You can disable this behavior by setting `use_fast=False` in `from_pretrained`. ## Image Processor An image processor processes vision inputs. It inherits from the base [`~image_processing_utils.ImageProcessingMixin`] class. To use, create an image processor associated with the model you're using. For example, create a default [`ViTImageProcessor`] if you are using [ViT](model_doc/vit) for image classification: ```py >>> from transformers import ViTImageProcessor >>> vit_extractor = ViTImageProcessor() >>> print(vit_extractor) ViTImageProcessor { "do_normalize": true, "do_resize": true, "image_processor_type": "ViTImageProcessor", "image_mean": [ 0.5, 0.5, 0.5 ], "image_std": [ 0.5, 0.5, 0.5 ], "resample": 2, "size": 224 } ``` If you aren't looking for any customization, just use the `from_pretrained` method to load a model's default image processor parameters. Modify any of the [`ViTImageProcessor`] parameters to create your custom image processor: ```py >>> from transformers import ViTImageProcessor >>> my_vit_extractor = ViTImageProcessor(resample="PIL.Image.BOX", do_normalize=False, image_mean=[0.3, 0.3, 0.3]) >>> print(my_vit_extractor) ViTImageProcessor { "do_normalize": false, "do_resize": true, "image_processor_type": "ViTImageProcessor", "image_mean": [ 0.3, 0.3, 0.3 ], "image_std": [ 0.5, 0.5, 0.5 ], "resample": "PIL.Image.BOX", "size": 224 } ``` ## Feature Extractor A feature extractor processes audio inputs. It inherits from the base [`~feature_extraction_utils.FeatureExtractionMixin`] class, and may also inherit from the [`SequenceFeatureExtractor`] class for processing audio inputs. To use, create a feature extractor associated with the model you're using. For example, create a default [`Wav2Vec2FeatureExtractor`] if you are using [Wav2Vec2](model_doc/wav2vec2) for audio classification: ```py >>> from transformers import Wav2Vec2FeatureExtractor >>> w2v2_extractor = Wav2Vec2FeatureExtractor() >>> print(w2v2_extractor) Wav2Vec2FeatureExtractor { "do_normalize": true, "feature_extractor_type": "Wav2Vec2FeatureExtractor", "feature_size": 1, "padding_side": "right", "padding_value": 0.0, "return_attention_mask": false, "sampling_rate": 16000 } ``` If you aren't looking for any customization, just use the `from_pretrained` method to load a model's default feature extractor parameters. Modify any of the [`Wav2Vec2FeatureExtractor`] parameters to create your custom feature extractor: ```py >>> from transformers import Wav2Vec2FeatureExtractor >>> w2v2_extractor = Wav2Vec2FeatureExtractor(sampling_rate=8000, do_normalize=False) >>> print(w2v2_extractor) Wav2Vec2FeatureExtractor { "do_normalize": false, "feature_extractor_type": "Wav2Vec2FeatureExtractor", "feature_size": 1, "padding_side": "right", "padding_value": 0.0, "return_attention_mask": false, "sampling_rate": 8000 } ``` ## Processor For models that support multimodal tasks, 🤗 Transformers offers a processor class that conveniently wraps processing classes such as a feature extractor and a tokenizer into a single object. For example, let's use the [`Wav2Vec2Processor`] for an automatic speech recognition task (ASR). ASR transcribes audio to text, so you will need a feature extractor and a tokenizer. Create a feature extractor to handle the audio inputs: ```py >>> from transformers import Wav2Vec2FeatureExtractor >>> feature_extractor = Wav2Vec2FeatureExtractor(padding_value=1.0, do_normalize=True) ``` Create a tokenizer to handle the text inputs: ```py >>> from transformers import Wav2Vec2CTCTokenizer >>> tokenizer = Wav2Vec2CTCTokenizer(vocab_file="my_vocab_file.txt") ``` Combine the feature extractor and tokenizer in [`Wav2Vec2Processor`]: ```py >>> from transformers import Wav2Vec2Processor >>> processor = Wav2Vec2Processor(feature_extractor=feature_extractor, tokenizer=tokenizer) ``` With two basic classes - configuration and model - and an additional preprocessing class (tokenizer, image processor, feature extractor, or processor), you can create any of the models supported by 🤗 Transformers. Each of these base classes are configurable, allowing you to use the specific attributes you want. You can easily setup a model for training or modify an existing pretrained model to fine-tune.