AI RESEARCH
AutoControl Arena: Synthesizing Executable Test Environments for Frontier AI Risk Evaluation
arXiv CS.AI
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ArXi:2603.07427v1 Announce Type: new As Large Language Models (LLMs) evolve into autonomous agents, existing safety evaluations face a fundamental trade-off: manual benchmarks are costly, while LLM-based simulators are scalable but suffer from logic hallucination. We present AutoControl Arena, an automated framework for frontier AI risk evaluation built on the principle of logic-narrative decoupling. By grounding deterministic state in executable code while delegating generative dynamics to LLMs, we mitigate hallucination while maintaining flexibility.