AI RESEARCH

HTAA: Enhancing LLM Planning via Hybrid Toolset Agentization & Adaptation

arXiv CS.CL

ArXi:2604.10917v1 Announce Type: new Enabling large language models to scale and reliably use hundreds of tools is critical for real-world applications, yet challenging due to the inefficiency and error accumulation inherent in flat tool-calling architectures. To address this, we propose Hybrid Toolset Agentization & Adaptation (HTAA), a hierarchical framework for scalable tool-use planning. We propose a novel toolset agentization paradigm, which encapsulates frequently co-used tools into specialized agent tools, thereby reducing the planner's action space and mitigating redundancy.