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# Auto Classes
In many cases, the architecture you want to use can be guessed from the name or the path of the pretrained model you
are supplying to the `from_pretrained()` method. AutoClasses are here to do this job for you so that you
automatically retrieve the relevant model given the name/path to the pretrained weights/config/vocabulary.
Instantiating one of [`AutoConfig`], [`AutoModel`], and
[`AutoTokenizer`] will directly create a class of the relevant architecture. For instance
```python
model = AutoModel.from_pretrained("google-bert/bert-base-cased", device_map="auto")
```
will create a model that is an instance of [`BertModel`].
There is one class of `AutoModel` for each task.
## Extending the Auto Classes
Each of the auto classes has a method to be extended with your custom classes. For instance, if you have defined a
custom class of model `NewModel`, make sure you have a `NewModelConfig` then you can add those to the auto
classes like this:
```python
from transformers import AutoConfig, AutoModel
AutoConfig.register("new-model", NewModelConfig)
AutoModel.register(NewModelConfig, NewModel)
```
You will then be able to use the auto classes like you would usually do!
<Tip warning={true}>
If your `NewModelConfig` is a subclass of [`~transformers.PreTrainedConfig`], make sure its
`model_type` attribute is set to the same key you use when registering the config (here `"new-model"`).
Likewise, if your `NewModel` is a subclass of [`PreTrainedModel`], make sure its
`config_class` attribute is set to the same class you use when registering the model (here
`NewModelConfig`).
</Tip>
## AutoConfig
[[autodoc]] AutoConfig
## AutoTokenizer
[[autodoc]] AutoTokenizer
## AutoFeatureExtractor
[[autodoc]] AutoFeatureExtractor
## AutoImageProcessor
[[autodoc]] AutoImageProcessor
## AutoVideoProcessor
[[autodoc]] AutoVideoProcessor
## AutoProcessor
[[autodoc]] AutoProcessor
## Generic model classes
The following auto classes are available for instantiating a base model class without a specific head.
### AutoModel
[[autodoc]] AutoModel
## Generic pretraining classes
The following auto classes are available for instantiating a model with a pretraining head.
### AutoModelForPreTraining
[[autodoc]] AutoModelForPreTraining
## Natural Language Processing
The following auto classes are available for the following natural language processing tasks.
### AutoModelForCausalLM
[[autodoc]] AutoModelForCausalLM
### AutoModelForMaskedLM
[[autodoc]] AutoModelForMaskedLM
### AutoModelForMaskGeneration
[[autodoc]] AutoModelForMaskGeneration
### AutoModelForSeq2SeqLM
[[autodoc]] AutoModelForSeq2SeqLM
### AutoModelForSequenceClassification
[[autodoc]] AutoModelForSequenceClassification
### AutoModelForMultipleChoice
[[autodoc]] AutoModelForMultipleChoice
### AutoModelForNextSentencePrediction
[[autodoc]] AutoModelForNextSentencePrediction
### AutoModelForTokenClassification
[[autodoc]] AutoModelForTokenClassification
### AutoModelForQuestionAnswering
[[autodoc]] AutoModelForQuestionAnswering
### AutoModelForTextEncoding
[[autodoc]] AutoModelForTextEncoding
## Computer vision
The following auto classes are available for the following computer vision tasks.
### AutoModelForDepthEstimation
[[autodoc]] AutoModelForDepthEstimation
### AutoModelForNormalEstimation
[[autodoc]] AutoModelForNormalEstimation
### AutoModelForPointmapEstimation
[[autodoc]] AutoModelForPointmapEstimation
### AutoModelForImageMatting
[[autodoc]] AutoModelForImageMatting
### AutoModelForTextRecognition
[[autodoc]] AutoModelForTextRecognition
### AutoModelForTableRecognition
[[autodoc]] AutoModelForTableRecognition
### AutoModelForImageClassification
[[autodoc]] AutoModelForImageClassification
### AutoModelForVideoClassification
[[autodoc]] AutoModelForVideoClassification
### AutoModelForPoseEstimation
[[autodoc]] AutoModelForPoseEstimation
### AutoModelForKeypointDetection
[[autodoc]] AutoModelForKeypointDetection
### AutoModelForKeypointMatching
[[autodoc]] AutoModelForKeypointMatching
### AutoModelForMaskedImageModeling
[[autodoc]] AutoModelForMaskedImageModeling
### AutoModelForObjectDetection
[[autodoc]] AutoModelForObjectDetection
### AutoModelForImageSegmentation
[[autodoc]] AutoModelForImageSegmentation
### AutoModelForImageToImage
[[autodoc]] AutoModelForImageToImage
### AutoModelForSemanticSegmentation
[[autodoc]] AutoModelForSemanticSegmentation
### AutoModelForInstanceSegmentation
[[autodoc]] AutoModelForInstanceSegmentation
### AutoModelForUniversalSegmentation
[[autodoc]] AutoModelForUniversalSegmentation
### AutoModelForZeroShotImageClassification
[[autodoc]] AutoModelForZeroShotImageClassification
### AutoModelForZeroShotObjectDetection
[[autodoc]] AutoModelForZeroShotObjectDetection
## Audio
The following auto classes are available for the following audio tasks.
### AutoModelForAudioClassification
[[autodoc]] AutoModelForAudioClassification
### AutoModelForAudioFrameClassification
[[autodoc]] AutoModelForAudioFrameClassification
### AutoModelForCTC
[[autodoc]] AutoModelForCTC
### AutoModelForTDT
[[autodoc]] AutoModelForTDT
### AutoModelForRNNT
[[autodoc]] AutoModelForRNNT
### AutoModelForSpeechSeq2Seq
[[autodoc]] AutoModelForSpeechSeq2Seq
### AutoModelForAudioXVector
[[autodoc]] AutoModelForAudioXVector
### AutoModelForTextToSpectrogram
[[autodoc]] AutoModelForTextToSpectrogram
### AutoModelForTextToWaveform
[[autodoc]] AutoModelForTextToWaveform
### AutoModelForAudioTokenization
[[autodoc]] AutoModelForAudioTokenization
## Multimodal
The following auto classes are available for the following multimodal tasks.
### AutoModelForMultimodalLM
[[autodoc]] AutoModelForMultimodalLM
### AutoModelForTableQuestionAnswering
[[autodoc]] AutoModelForTableQuestionAnswering
### AutoModelForDocumentQuestionAnswering
[[autodoc]] AutoModelForDocumentQuestionAnswering
### AutoModelForVisualQuestionAnswering
[[autodoc]] AutoModelForVisualQuestionAnswering
### AutoModelForImageTextToText
[[autodoc]] AutoModelForImageTextToText
## Time Series
### AutoModelForTimeSeriesPrediction
[[autodoc]] AutoModelForTimeSeriesPrediction