# Cross-Encoders SentenceTransformers also supports the option to train Cross-Encoders for sentence pair score and sentence pair classification tasks. For more details on what Cross-Encoders are and the difference between Cross- and Bi-Encoders, see [Cross-Encoders](../../applications/cross-encoder/README.md). ## Examples See the following examples how to train Cross-Encoders: - [training_stsbenchmark.py](training_stsbenchmark.py) - Example how to train for Semantic Textual Similarity (STS) on the STS benchmark dataset. - [training_quora_duplicate_questions.py](training_quora_duplicate_questions.py) - Example how to train a Cross-Encoder to predict if two questions are duplicates. Uses Quora Duplicate Questions as training dataset. - [training_nli.py](training_nli.py) - Example for a multilabel classification task for Natural Language Inference (NLI) task. ## Training CrossEncoders The `CrossEncoder` class is a wrapper around Huggingface `AutoModelForSequenceClassification`, but with some methods to make training and predicting scores a little bit easier. The saved models are 100% compatible with Huggingface and can also be loaded with their classes. First, you need some sentence pair data. You can either have a continuous score, like: ```python from sentence_transformers import InputExample train_samples = [ InputExample(texts=['sentence1', 'sentence2'], label=0.3), InputExample(texts=['Another', 'pair'], label=0.8), ] ``` Or you have distinct classes as in the [training_nli.py](training_nli.py) example: ```python from sentence_transformers import InputExample label2int = {"contradiction": 0, "entailment": 1, "neutral": 2} train_samples = [ InputExample(texts=['sentence1', 'sentence2'], label=label2int['neutral']), InputExample(texts=['Another', 'pair'], label=label2int['entailment']), ] ``` Then, you define the base model and the number of labels. You can take any [Huggingface pre-trained model](https://huggingface.co/transformers/pretrained_models.html) that is compatible with AutoModel: ``` model = CrossEncoder('distilroberta-base', num_labels=1) ``` For binary tasks and tasks with continuous scores (like STS), we set num_labels=1. For classification tasks, we set it to the number of labels we have. We start the training by calling `model.fit()`: ```python model.fit(train_dataloader=train_dataloader, evaluator=evaluator, epochs=num_epochs, warmup_steps=warmup_steps, output_path=model_save_path) ```