AutoModels ----------- 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 ``AutoModel``, ``AutoConfig`` and ``AutoTokenizer`` will directly create a class of the relevant architecture (ex: ``model = AutoModel.from_pretrained('bert-base-cased')`` will create a instance of ``BertModel``). ``AutoConfig`` ~~~~~~~~~~~~~~~~~~~~~ .. autoclass:: transformers.AutoConfig :members: ``AutoTokenizer`` ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ .. autoclass:: transformers.AutoTokenizer :members: ``AutoModel`` ~~~~~~~~~~~~~~~~~~~~~ .. autoclass:: transformers.AutoModel :members: ``AutoModelForPreTraining`` ~~~~~~~~~~~~~~~~~~~~~ .. autoclass:: transformers.AutoModelForPreTraining :members: ``AutoModelWithLMHead`` ~~~~~~~~~~~~~~~~~~~~~ .. autoclass:: transformers.AutoModelWithLMHead :members: ``AutoModelForSequenceClassification`` ~~~~~~~~~~~~~~~~~~~~~ .. autoclass:: transformers.AutoModelForSequenceClassification :members: ``AutoModelForQuestionAnswering`` ~~~~~~~~~~~~~~~~~~~~~ .. autoclass:: transformers.AutoModelForQuestionAnswering :members: ``AutoModelForTokenClassification`` ~~~~~~~~~~~~~~~~~~~~~ .. autoclass:: transformers.AutoModelForTokenClassification :members: