Training

This folder contains various examples to fine-tune CrossEncoder models for specific tasks.

For the beginning, I can recommend to have a look at the MS MARCO examples.

For the documentation how to train your own models, see Training Overview.

Training Examples

  • distillation - Examples to make models smaller, faster and lighter.

  • ms_marco - Numerous example training scripts for training on the MS MARCO information retrieval dataset.

  • nli - Natural Language Inference (NLI) data involves pair classification using the “contradiction”, “entailment”, and “neutral” classes.

  • quora_duplicate_questions - Quora Duplicate Questions is large set corpus with duplicate questions from the Quora community. The folder contains examples how to train models for duplicate questions mining and for semantic search.

  • rerankers - Example training scripts for training on generic information retrieval datasets.

  • sts - The most basic method to train models is using Semantic Textual Similarity (STS) data. Here, we have a sentence pair and a score indicating the semantic similarity.