Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

HTAA: Enhancing LLM Planning via Hybrid Toolset Agentization & Adaptation

About

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. To ensure effective coordination, we design Asymmetric Planner Adaptation, a trajectory-based training paradigm that aligns the high-level planner with agent tools via backward reconstruction and forward refinement. To validate the performance of HTAA, we conduct experiments on a real-world internal dataset, InfoVerify, based on the POI validation workflow of China's largest online large-scale ride-hailing platform, featuring long-horizon executable tool trajectories. Experiments on InfoVerify and widely-used benchmarks show that HTAA consistently achieves higher task success rates, requires short tool calling trajectories, and significantly reduces context overhead compared to strong baselines. Furthermore, in a production deployment, HTAA substantially reduces manual validation effort and operational cost, demonstrating its practical efficacy.

Chengrui Huang, Junshuo Zhang, Zhiyuan Ma, Xikun Wang, Ximeng Wang, Menghua Jiang, Gang Zeng, Zhaobing Han, Shen Gao, Shuo Shang• 2026

Related benchmarks

TaskDatasetResultRank
Information VerificationInfoVerify proposed (real-world)
Error Rate9.8
14
Tool UseExtended BFCL Single
File Accuracy61.54
12
POI Information VerificationIndustrial POI Verification Tasks
AR84.5
3
Showing 3 of 3 rows

Other info

Follow for update