RMIT-ADM+S at the MMU-RAG NeurIPS 2025 Competition
arXiv:2602.20735v1 Announce Type: cross Abstract: This paper presents the award-winning RMIT-ADM+S system for the Text-to-Text track of the NeurIPS~2025 MMU-RAG Competition. We introduce Routing-to-RAG (R2RAG), a research-focused retrieval-augmented generation (RAG) architecture composed of light...
arXiv:2602.20735v1 Announce Type: cross
Abstract: This paper presents the award-winning RMIT-ADM+S system for the Text-to-Text
track of the NeurIPS~2025 MMU-RAG Competition. We introduce Routing-to-RAG
(R2RAG), a research-focused retrieval-augmented generation (RAG)
architecture composed of lightweight components that dynamically adapt the
retrieval strategy based on inferred query complexity and evidence
sufficiency. The system uses smaller LLMs, enabling operation on a single
consumer-grade GPU while supporting complex research tasks. It builds on the
G-RAG system, winner of the ACM~SIGIR~2025 LiveRAG Challenge, and extends it
with modules informed by qualitative review of outputs. R2RAG won the Best
Dynamic Evaluation award in the Open Source category, demonstrating high
effectiveness with careful design and efficient use of resources.