LGAICLApr 13

ZoomR: Memory Efficient Reasoning through Multi-Granularity Key Value Retrieval

arXiv:2604.1089878.9h-index: 17
Predicted impact top 16% in LG · last 90 daysOriginality Incremental advance
AI Analysis

For LLM practitioners, ZoomR addresses the memory bottleneck of KV caches during long output generation, enabling more efficient decoding without sacrificing performance.

ZoomR reduces inference memory by over 4x in LLMs for long-output reasoning tasks by adaptively compressing verbose thoughts into summaries and using a dynamic KV cache selection policy that retrieves fine-grained details only for important thoughts, achieving competitive performance.

Large language models (LLMs) have shown great performance on complex reasoning tasks but often require generating long intermediate thoughts before reaching a final answer. During generation, LLMs rely on a key-value (KV) cache for autoregressive decoding. However, the memory footprint of the KV cache grows with output length. Prior work on KV cache optimization mostly focus on compressing the long input context, while retaining the full KV cache for decoding. For tasks requiring long output generation, this leads to increased computational and memory costs. In this paper, we introduce ZoomR, a novel approach that enables LLMs to adaptively compress verbose reasoning thoughts into summaries and uses a dynamic KV cache selection policy that leverages these summaries while also strategically "zooming in" on fine-grained details. By using summary keys as a coarse-grained index during decoding, ZoomR uses the query to retrieve details for only the most important thoughts. This hierarchical strategy significantly reduces memory usage by avoiding full-cache attention at each step. Experiments across math and reasoning tasks show that our approach achieves competitive performance compared to baselines, while reducing inference memory requirements by more than $4\times$. These results demonstrate that a multi-granularity KV selection enables more memory efficient decoding, especially for long output generation.

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