English

JTPRO: A Joint Tool-Prompt Reflective Optimization Framework for Language Agents

Artificial Intelligence 2026-04-23 v1 Software Engineering

Abstract

Large language model (LLM) agents augmented with external tools often struggle as number of tools grow large and become domain-specific. In such settings, ambiguous tool descriptions and under-specified agent instructions frequently lead to tool mis-selection and incorrect slot/value instantiation. We hypothesize that this is due to two root causes: generic, one-size-fits-all prompts that ignore tool-specific nuances, and underspecified tool schemas that lack clear guidance on when and how to use each tool and how to format its parameters. We introduce Joint Tool-Prompt Reflective Optimization (JTPRO), a framework for improving tool-calling reliability in trace-supervised settings by iteratively using rollout-driven reflection to co-optimize global instructions and per-tool schema/argument descriptions for accurate tool selection and argument instantiation in large tool inventories. JTPRO is designed to preserve only tool-local cues needed for correct disambiguation and slot filling. We evaluate JTPRO across multi-tool benchmarks, which account for different number of tools using three metrics: Tool Selection Accuracy (TSA), Slot Filling Accuracy(SFA), and Overall Success Rate(OSR) (correct tool + correct slots + correct values). JTPRO consistently outperforms strong baselines, including CoT-style agents, and reflective prompt optimizers such as GEPA by 5%-20% (relative) on OSR. Ablations show that joint optimization of instructions and tool schemas is more effective and robust than optimizing either component in isolation.

Keywords

Cite

@article{arxiv.2604.19821,
  title  = {JTPRO: A Joint Tool-Prompt Reflective Optimization Framework for Language Agents},
  author = {Sandip Ghoshal and Anshul Mittal and Jyotika Singh and Miguel Ballesteros and Weiyi Sun and Fang Tu and Shailender Singh and Yassine Benajiba and Fahad Shah and Sujeeth Bharadwaj and Sujith Ravi and Dan Roth},
  journal= {arXiv preprint arXiv:2604.19821},
  year   = {2026}
}

Comments

Conference: ACL-2026

R2 v1 2026-07-01T12:29:03.616Z