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This paper proposes Dynamic Infilling Anchors (DIA), a training-free method for diffusion large language models that dynamically estimates end-anchor positions to enforce format constraints (e.g., parseable JSON, reasoning templates) while avoiding the rigidity of fixed-span approaches. Experiments show significant zero-shot gains on GSM8K and MATH benchmarks.