CCTU: A Benchmark for Tool Use under Complex Constraints
arXiv cs.CL / 3/17/2026
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Key Points
- The authors introduce CCTU, a benchmark for evaluating LLM tool use under complex constraints, with a taxonomy of 12 constraint categories across resource, behavior, toolset, and response.
- CCTU includes 200 carefully curated test cases, each averaging seven constraint types and prompts longer than 4,700 tokens.
- They provide an executable constraint validation module that performs step-level validation and enforces constraint compliance during multi-turn interactions.
- Nine state-of-the-art LLMs were evaluated in thinking and non-thinking modes, revealing task completion rates under strict constraints below 20% and constraint violations in over 50% of cases, especially in resource and response dimensions.
- The results suggest limited self-refinement after detailed feedback, and the authors release data and code to support future research.
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