IRCLNov 20, 2025

QueryGym: A Toolkit for Reproducible LLM-Based Query Reformulation

arXiv:2511.15996v15 citationsh-index: 17Has Code
Originality Synthesis-oriented
AI Analysis

This is an incremental tool development for researchers and practitioners in information retrieval to improve reproducibility and benchmarking.

The authors tackled the lack of a unified toolkit for LLM-based query reformulation, which hinders fair comparison and experimentation, by developing QueryGym, a lightweight, extensible Python toolkit that provides a consistent framework for implementing, executing, and comparing such methods.

We present QueryGym, a lightweight, extensible Python toolkit that supports large language model (LLM)-based query reformulation. This is an important tool development since recent work on llm-based query reformulation has shown notable increase in retrieval effectiveness. However, while different authors have sporadically shared the implementation of their methods, there is no unified toolkit that provides a consistent implementation of such methods, which hinders fair comparison, rapid experimentation, consistent benchmarking and reliable deployment. QueryGym addresses this gap by providing a unified framework for implementing, executing, and comparing llm-based reformulation methods. The toolkit offers: (1) a Python API for applying diverse LLM-based methods, (2) a retrieval-agnostic interface supporting integration with backends such as Pyserini and PyTerrier, (3) a centralized prompt management system with versioning and metadata tracking, (4) built-in support for benchmarks like BEIR and MS MARCO, and (5) a completely open-source extensible implementation available to all researchers. QueryGym is publicly available at https://github.com/radinhamidi/QueryGym.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes