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Building custom models |
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The 🤗 Transformers library is designed to be easily extensible. Every model is fully coded in a given subfolder |
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of the repository with no abstraction, so you can easily copy a modeling file and tweak it to your needs. |
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If you are writing a brand new model, it might be easier to start from scratch. In this tutorial, we will show you |
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how to write a custom model and its configuration so it can be used inside Transformers, and how you can share it |
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with the community (with the code it relies on) so that anyone can use it, even if it's not present in the 🤗 |
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Transformers library. We'll see how to build upon transformers and extend the framework with your hooks and |
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custom code. |
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We will illustrate all of this on a ResNet model, by wrapping the ResNet class of the |
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timm library into a [PreTrainedModel]. |
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Writing a custom configuration |
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Before we dive into the model, let's first write its configuration. The configuration of a model is an object that |
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will contain all the necessary information to build the model. As we will see in the next section, the model can only |
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take a config to be initialized, so we really need that object to be as complete as possible. |
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Models in the transformers library itself generally follow the convention that they accept a config object |
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in their __init__ method, and then pass the whole config to sub-layers in the model, rather than breaking the |
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config object into multiple arguments that are all passed individually to sub-layers. Writing your model in this |
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style results in simpler code with a clear "source of truth" for any hyperparameters, and also makes it easier |
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to reuse code from other models in transformers. |
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In our example, we will take a couple of arguments of the ResNet class that we might want to tweak. Different |
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configurations will then give us the different types of ResNets that are possible. We then just store those arguments, |
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after checking the validity of a few of them. |
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thon |
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from transformers import PretrainedConfig |
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from typing import List |
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class ResnetConfig(PretrainedConfig): |
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model_type = "resnet" |
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def __init__( |
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self, |
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block_type="bottleneck", |
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layers: List[int] = [3, 4, 6, 3], |
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num_classes: int = 1000, |
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input_channels: int = 3, |
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cardinality: int = 1, |
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base_width: int = 64, |
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stem_width: int = 64, |
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stem_type: str = "", |
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avg_down: bool = False, |
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**kwargs, |
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): |
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if block_type not in ["basic", "bottleneck"]: |
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raise ValueError(f"`block_type` must be 'basic' or bottleneck', got {block_type}.") |
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if stem_type not in ["", "deep", "deep-tiered"]: |
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raise ValueError(f"`stem_type` must be '', 'deep' or 'deep-tiered', got {stem_type}.") |
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self.block_type = block_type |
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self.layers = layers |
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self.num_classes = num_classes |
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self.input_channels = input_channels |
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self.cardinality = cardinality |
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self.base_width = base_width |
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self.stem_width = stem_width |
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self.stem_type = stem_type |
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self.avg_down = avg_down |
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super().__init__(**kwargs) |
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The three important things to remember when writing you own configuration are the following: |
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- you have to inherit from PretrainedConfig, |
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- the __init__ of your PretrainedConfig must accept any kwargs, |
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- those kwargs need to be passed to the superclass __init__. |
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The inheritance is to make sure you get all the functionality from the 🤗 Transformers library, while the two other |
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constraints come from the fact a PretrainedConfig has more fields than the ones you are setting. When reloading a |
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config with the from_pretrained method, those fields need to be accepted by your config and then sent to the |
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superclass. |
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Defining a model_type for your configuration (here model_type="resnet") is not mandatory, unless you want to |
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register your model with the auto classes (see last section). |
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With this done, you can easily create and save your configuration like you would do with any other model config of the |
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library. Here is how we can create a resnet50d config and save it: |
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py |
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resnet50d_config = ResnetConfig(block_type="bottleneck", stem_width=32, stem_type="deep", avg_down=True) |
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resnet50d_config.save_pretrained("custom-resnet") |
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This will save a file named config.json inside the folder custom-resnet. You can then reload your config with the |
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from_pretrained method: |
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py |
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resnet50d_config = ResnetConfig.from_pretrained("custom-resnet") |
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You can also use any other method of the [PretrainedConfig] class, like [~PretrainedConfig.push_to_hub] to |
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directly upload your config to the Hub. |
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Writing a custom model |
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Now that we have our ResNet configuration, we can go on writing the model. We will actually write two: one that |
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extracts the hidden features from a batch of images (like [BertModel]) and one that is suitable for image |
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classification (like [BertForSequenceClassification]). |
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As we mentioned before, we'll only write a loose wrapper of the model to keep it simple for this example. The only |
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thing we need to do before writing this class is a map between the block types and actual block classes. Then the |
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model is defined from the configuration by passing everything to the ResNet class: |
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from transformers import PreTrainedModel |
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from timm.models.resnet import BasicBlock, Bottleneck, ResNet |
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from .configuration_resnet import ResnetConfig |
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BLOCK_MAPPING = {"basic": BasicBlock, "bottleneck": Bottleneck} |
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class ResnetModel(PreTrainedModel): |
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config_class = ResnetConfig |
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def __init__(self, config): |
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super().__init__(config) |
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block_layer = BLOCK_MAPPING[config.block_type] |
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self.model = ResNet( |
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block_layer, |
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config.layers, |
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num_classes=config.num_classes, |
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in_chans=config.input_channels, |
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cardinality=config.cardinality, |
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base_width=config.base_width, |
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stem_width=config.stem_width, |
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stem_type=config.stem_type, |
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avg_down=config.avg_down, |
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) |
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def forward(self, tensor): |
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return self.model.forward_features(tensor) |
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For the model that will classify images, we just change the forward method: |
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import torch |
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class ResnetModelForImageClassification(PreTrainedModel): |
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config_class = ResnetConfig |
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def __init__(self, config): |
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super().__init__(config) |
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block_layer = BLOCK_MAPPING[config.block_type] |
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self.model = ResNet( |
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block_layer, |
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config.layers, |
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num_classes=config.num_classes, |
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in_chans=config.input_channels, |
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cardinality=config.cardinality, |
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base_width=config.base_width, |
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stem_width=config.stem_width, |
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stem_type=config.stem_type, |
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avg_down=config.avg_down, |
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) |
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def forward(self, tensor, labels=None): |
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logits = self.model(tensor) |
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if labels is not None: |
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loss = torch.nn.cross_entropy(logits, labels) |
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return {"loss": loss, "logits": logits} |
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return {"logits": logits} |
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In both cases, notice how we inherit from PreTrainedModel and call the superclass initialization with the config |
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(a bit like when you write a regular torch.nn.Module). The line that sets the config_class is not mandatory, unless |
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you want to register your model with the auto classes (see last section). |
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If your model is very similar to a model inside the library, you can re-use the same configuration as this model. |
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You can have your model return anything you want, but returning a dictionary like we did for |
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ResnetModelForImageClassification, with the loss included when labels are passed, will make your model directly |
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usable inside the [Trainer] class. Using another output format is fine as long as you are planning on using your own |
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training loop or another library for training. |
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Now that we have our model class, let's create one: |
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py |
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resnet50d = ResnetModelForImageClassification(resnet50d_config) |
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Again, you can use any of the methods of [PreTrainedModel], like [~PreTrainedModel.save_pretrained] or |
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[~PreTrainedModel.push_to_hub]. We will use the second in the next section, and see how to push the model weights |
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with the code of our model. But first, let's load some pretrained weights inside our model. |
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In your own use case, you will probably be training your custom model on your own data. To go fast for this tutorial, |
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we will use the pretrained version of the resnet50d. Since our model is just a wrapper around it, it's going to be |
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easy to transfer those weights: |
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import timm |
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pretrained_model = timm.create_model("resnet50d", pretrained=True) |
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resnet50d.model.load_state_dict(pretrained_model.state_dict()) |
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Now let's see how to make sure that when we do [~PreTrainedModel.save_pretrained] or [~PreTrainedModel.push_to_hub], the |
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code of the model is saved. |
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Registering a model with custom code to the auto classes |
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If you are writing a library that extends 🤗 Transformers, you may want to extend the auto classes to include your own |
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model. This is different from pushing the code to the Hub in the sense that users will need to import your library to |
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get the custom models (contrarily to automatically downloading the model code from the Hub). |
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As long as your config has a model_type attribute that is different from existing model types, and that your model |
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classes have the right config_class attributes, you can just add them to the auto classes like this: |
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from transformers import AutoConfig, AutoModel, AutoModelForImageClassification |
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AutoConfig.register("resnet", ResnetConfig) |
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AutoModel.register(ResnetConfig, ResnetModel) |
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AutoModelForImageClassification.register(ResnetConfig, ResnetModelForImageClassification) |
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Note that the first argument used when registering your custom config to [AutoConfig] needs to match the model_type |
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of your custom config, and the first argument used when registering your custom models to any auto model class needs |
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to match the config_class of those models. |
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Sending the code to the Hub |
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This API is experimental and may have some slight breaking changes in the next releases. |
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First, make sure your model is fully defined in a .py file. It can rely on relative imports to some other files as |
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long as all the files are in the same directory (we don't support submodules for this feature yet). For our example, |
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we'll define a modeling_resnet.py file and a configuration_resnet.py file in a folder of the current working |
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directory named resnet_model. The configuration file contains the code for ResnetConfig and the modeling file |
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contains the code of ResnetModel and ResnetModelForImageClassification. |
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. |
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└── resnet_model |
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├── __init__.py |
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├── configuration_resnet.py |
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└── modeling_resnet.py |
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The __init__.py can be empty, it's just there so that Python detects resnet_model can be use as a module. |
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If copying a modeling files from the library, you will need to replace all the relative imports at the top of the file |
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to import from the transformers package. |
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Note that you can re-use (or subclass) an existing configuration/model. |
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To share your model with the community, follow those steps: first import the ResNet model and config from the newly |
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created files: |
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py |
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from resnet_model.configuration_resnet import ResnetConfig |
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from resnet_model.modeling_resnet import ResnetModel, ResnetModelForImageClassification |
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Then you have to tell the library you want to copy the code files of those objects when using the save_pretrained |
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method and properly register them with a given Auto class (especially for models), just run: |
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py |
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ResnetConfig.register_for_auto_class() |
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ResnetModel.register_for_auto_class("AutoModel") |
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ResnetModelForImageClassification.register_for_auto_class("AutoModelForImageClassification") |
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Note that there is no need to specify an auto class for the configuration (there is only one auto class for them, |
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[AutoConfig]) but it's different for models. Your custom model could be suitable for many different tasks, so you |
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have to specify which one of the auto classes is the correct one for your model. |
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Use register_for_auto_class() if you want the code files to be copied. If you instead prefer to use code on the Hub from another repo, |
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you don't need to call it. In cases where there's more than one auto class, you can modify the config.json directly using the |
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following structure: |
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json |
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"auto_map": { |
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"AutoConfig": "<your-repo-name>--<config-name>", |
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"AutoModel": "<your-repo-name>--<config-name>", |
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"AutoModelFor<Task>": "<your-repo-name>--<config-name>", |
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}, |
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Next, let's create the config and models as we did before: |
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resnet50d_config = ResnetConfig(block_type="bottleneck", stem_width=32, stem_type="deep", avg_down=True) |
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resnet50d = ResnetModelForImageClassification(resnet50d_config) |
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pretrained_model = timm.create_model("resnet50d", pretrained=True) |
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resnet50d.model.load_state_dict(pretrained_model.state_dict()) |
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Now to send the model to the Hub, make sure you are logged in. Either run in your terminal: |
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huggingface-cli login |
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or from a notebook: |
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from huggingface_hub import notebook_login |
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notebook_login() |
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You can then push to your own namespace (or an organization you are a member of) like this: |
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py |
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resnet50d.push_to_hub("custom-resnet50d") |
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On top of the modeling weights and the configuration in json format, this also copied the modeling and |
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configuration .py files in the folder custom-resnet50d and uploaded the result to the Hub. You can check the result |
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in this model repo. |
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See the sharing tutorial for more information on the push to Hub method. |
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Using a model with custom code |
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You can use any configuration, model or tokenizer with custom code files in its repository with the auto-classes and |
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the from_pretrained method. All files and code uploaded to the Hub are scanned for malware (refer to the Hub security documentation for more information), but you should still |
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review the model code and author to avoid executing malicious code on your machine. Set trust_remote_code=True to use |
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a model with custom code: |
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from transformers import AutoModelForImageClassification |
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model = AutoModelForImageClassification.from_pretrained("sgugger/custom-resnet50d", trust_remote_code=True) |
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It is also strongly encouraged to pass a commit hash as a revision to make sure the author of the models did not |
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update the code with some malicious new lines (unless you fully trust the authors of the models). |
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py |
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commit_hash = "ed94a7c6247d8aedce4647f00f20de6875b5b292" |
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model = AutoModelForImageClassification.from_pretrained( |
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"sgugger/custom-resnet50d", trust_remote_code=True, revision=commit_hash |
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) |
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Note that when browsing the commit history of the model repo on the Hub, there is a button to easily copy the commit |
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hash of any commit. |