# Models Models are combinations of `tf.keras` layers and models that can be trained. Several pre-built canned models are provided to train encoder networks. These models are intended as both convenience functions and canonical examples. * [`BertClassifier`](bert_classifier.py) implements a simple classification model containing a single classification head using the Classification network. It can be used as a regression model as well. * [`BertTokenClassifier`](bert_token_classifier.py) implements a simple token classification model containing a single classification head over the sequence output embeddings. * [`BertSpanLabeler`](bert_span_labeler.py) implementats a simple single-span start-end predictor (that is, a model that predicts two values: a start token index and an end token index), suitable for SQuAD-style tasks. * [`BertPretrainer`](bert_pretrainer.py) implements a masked LM and a classification head using the Masked LM and Classification networks, respectively. * [`DualEncoder`](dual_encoder.py) implements a dual encoder model, suitbale for retrieval tasks. * [`Seq2SeqTransformer`](seq2seq_transformer.py) implements the original Transformer model for seq-to-seq tasks. * [`T5Transformer`](t5.py) implements a standalone T5 model for seq-to-seq tasks. The models are compatible with released T5 architecture and converted checkpoints. The modules are implemented as `tf.Module`. To use with Keras, users can wrap them within Keras customized layers, i.e. we can define the modules inside the `__init__` of Keras layer and call the modules in `call`.