typos (#6505)
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@@ -45,12 +45,12 @@ A few other goals:
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- A simple/consistent way to add new tokens to the vocabulary and embeddings for fine-tuning.
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- Simple ways to mask and prune transformer heads.
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- Switch easily between PyTorch and TensorFlow 2.0, allowing training using one framwork and inference using another.
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- Switch easily between PyTorch and TensorFlow 2.0, allowing training using one framework and inference using another.
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Main concepts
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~~~~~~~~~~~~~
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The library is build around three types of classes for each model:
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The library is built around three types of classes for each model:
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- **Model classes** such as :class:`~transformers.BertModel`, which are 30+ PyTorch models
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(`torch.nn.Module <https://pytorch.org/docs/stable/nn.html#torch.nn.Module>`__) or Keras models
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@@ -65,9 +65,9 @@ The library is build around three types of classes for each model:
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All these classes can be instantiated from pretrained instances and saved locally using two methods:
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- :obj:`from_pretrained()` let you instantiate a model/configuration/tokenizer from a pretrained version either
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- :obj:`from_pretrained()` lets you instantiate a model/configuration/tokenizer from a pretrained version either
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provided by the library itself (the suported models are provided in the list :doc:`here <pretrained_models>`
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or stored locally (or on a server) by the user,
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- :obj:`save_pretrained()` let you save a model/configuration/tokenizer locally so that it can be reloaded using
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- :obj:`save_pretrained()` lets you save a model/configuration/tokenizer locally so that it can be reloaded using
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:obj:`from_pretrained()`.
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