AI Agents

A-RAG: Scaling Agentic Retrieval-Augmented Generation via Hierarchical Retrieval Interfaces

MMingxuan DuBBenfeng XuCChiwei ZhuSShaohan WangPPengyu WangXXiaorui WangZZhendong Mao
Published
February 3, 2026
Authors
7
Word Count
7,658
Code
Includes code

A-RAG: Dynamic, agentic retrieval for advanced RAG systems.

Abstract

Frontier language models have demonstrated strong reasoning and long-horizon tool-use capabilities. However, existing RAG systems fail to leverage these capabilities. They still rely on two paradigms: (1) designing an algorithm that retrieves passages in a single shot and concatenates them into the model's input, or (2) predefining a workflow and prompting the model to execute it step-by-step. Neither paradigm allows the model to participate in retrieval decisions, preventing efficient scaling with model improvements. In this paper, we introduce A-RAG, an Agentic RAG framework that exposes hierarchical retrieval interfaces directly to the model. A-RAG provides three retrieval tools: keyword search, semantic search, and chunk read, enabling the agent to adaptively search and retrieve information across multiple granularities. Experiments on multiple open-domain QA benchmarks show that A-RAG consistently outperforms existing approaches with comparable or lower retrieved tokens, demonstrating that A-RAG effectively leverages model capabilities and dynamically adapts to different RAG tasks. We further systematically study how A-RAG scales with model size and test-time compute. We will release our code and evaluation suite to facilitate future research. Code and evaluation suite are available at https://github.com/Ayanami0730/arag.

Key Takeaways

  • 1

    A-RAG introduces hierarchical retrieval interfaces for dynamic information access.

  • 2

    Enhances RAG systems by allowing autonomous retrieval decisions.

  • 3

    Promises improved efficiency and adaptability in AI systems.

Limitations

  • Potential complexity in implementing hierarchical retrieval interfaces.

  • Requires sophisticated language models for effective utilization.

Keywords

RAG systemsretrieval-augmented generationagentic frameworkshierarchical retrieval interfaceskeyword searchsemantic searchchunk readmulti-granularity retrievalmodel scalingtest-time compute

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A-RAG: Scaling Agentic Retrieval-Augmented Generation via Hierarchical Retrieval Interfaces | Paperchime