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New preprint of WSDM demo by @maik_froebe @matthias and Ferdinand Schlatt Lightning IR: Straightforward Fine-tuning and Inference of Transformer-based Language Models for Information Retrieval https://arxiv.org/abs/2411.04677 https://webis.de/lightning-ir/
Dec 19, 2024
A wide range of transformer-based language models have been proposed for information retrieval tasks. However, including transformer-based models in retrieval pipelines is often complex and requires substantial engineering effort. In this paper, we introduce Lightning IR, an easy-to-use PyTorch Lightning-based framework for applying transformer-based language models in retrieval scenarios. Lightning IR provides a modular and extensible architecture that supports all stages of a retrieval pipeline: from fine-tuning and indexing to searching and re-ranking. Designed to be scalable and reproducible, Lightning IR is available as open-source: https://github.com/webis-de/lightning-ir.
arxiv.org
Lightning IR: Straightforward Fine-tuning and Inference of Transformer-based Language Models for Information Retrieval
Arjen P. de Vries Timmers 🕊️