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Democratizing Tool Learning with Environments Fully Simulated by a Free 8B Language Model

About

Reinforcement learning (RL) has become a prevalent paradigm for training tool calling agents, which typically requires online interactive environments. Existing approaches either rely on training data with ground truth annotations or require advanced proprietary language models (LMs) to synthesize environments that keep fixed once created. In this work, we propose TRUSTEE, a cost-friendly method for training tool calling agents with dynamic environments fully simulated by free open-source LMs that can be as small as 8B, including task generation, user simulation, tool simulation and trajectory evaluation, paired with an adaptive curriculum learning mechanism that controls task difficulty during training. Our empirical results show that TRUSTEE outperforms baselines which require extra external resources in most cases. These confirm that, with a sufficiently sophisticated design, even simulated environments with a local 8B LM as the backbone could set a strong baseline for tool learning. We hope our proposed paradigm could democratize tool learning and inspire future research on environment scaling with limited resources.

Chenming Tang, Hsiu-Yuan Huang, Weijie Liu, Junqiang Zheng, Saiyong Yang, Yunfang Wu• 2026

Related benchmarks

TaskDatasetResultRank
Multi-Turn Tool Callingτ2-bench
Airline Score26
19
Multi-Turn Tool CallingBFCL Multi-turn
Base Performance54
7
Single-turn Tool CallingBFCL Non-Live
Simple Success Rate75.6
7
Single-turn Tool CallingBFCL Live
Success Rate (Simple)86.4
7
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