Search-r1: Training Llms To Reason And Leverage Search Engines With Reinforcement Learning | Awesome LLM Papers Contribute to Awesome LLM Papers

Search-r1: Training Llms To Reason And Leverage Search Engines With Reinforcement Learning

Bowen Jin, Hansi Zeng, Zhenrui Yue, Dong Wang, Hamed Zamani, Jiawei Han . No Venue 2025

[Code] [Paper] [Paper]   Search on Google Scholar   Search on Semantic Scholar
Datasets Efficiency Has Code Prompting RAG Reinforcement Learning Training Techniques

Efficiently acquiring external knowledge and up-to-date information is essential for effective reasoning and text generation in large language models (LLMs). Retrieval augmentation and tool-use training approaches where a search engine is treated as a tool lack complex multi-turn retrieval flexibility or require large-scale supervised data. Prompting advanced LLMs with reasoning capabilities during inference to use search engines is not optimal, since the LLM does not learn how to optimally interact with the search engine. This paper introduces Search-R1, an extension of the DeepSeek-R1 model where the LLM learns – solely through reinforcement learning (RL) – to autonomously generate (multiple) search queries during step-by-step reasoning with real-time retrieval. Search-R1 optimizes LLM rollouts with multi-turn search interactions, leveraging retrieved token masking for stable RL training and a simple outcome-based reward function. Experiments on seven question-answering datasets show that Search-R1 improves performance by 26% (Qwen2.5-7B), 21% (Qwen2.5-3B), and 10% (LLaMA3.2-3B) over SOTA baselines. This paper further provides empirical insights into RL optimization methods, LLM choices, and response length dynamics in retrieval-augmented reasoning. The code and model checkpoints are available at https://github.com/PeterGriffinJin/Search-R1.

https://huggingface.co/discussions/paper/67d238ae7d0fc37e671feb7c

Similar Work