AI RESEARCH
MANTRA: Synthesizing SMT-Validated Compliance Benchmarks for Tool-Using LLM Agents
arXiv CS.LG
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ArXi:2605.06334v1 Announce Type: cross Tool-using large language model (LLM) agents are increasingly deployed in settings where their reliable behavior is governed by strict procedural manuals. Ensuring that such agents comply with the rules from these manuals is challenging, as they are typically written for humans in natural language while agent behavior manifests as an execution trace of tool calls. Existing evaluations of LLM agents rely on manually constructed benchmarks or LLM-based judges, which either do not scale or lack reliability for complex, long-horizon manuals.