LoopGuard detects attention collapse loops during LLM decoding and prunes repetitive KV cache tail spans under fixed budget, cutting loop incidence by over 90 percentage points on the new LoopBench benchmark.
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LoopGuard: Breaking Self-Reinforcing Attention Loops via Dynamic KV Cache Intervention
LoopGuard detects attention collapse loops during LLM decoding and prunes repetitive KV cache tail spans under fixed budget, cutting loop incidence by over 90 percentage points on the new LoopBench benchmark.