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AQUA: Attention via QUery mAgnitudes for Memory and Compute Efficient Inference in LLMs

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arxiv 2509.11155 v1 pith:KTFTDCNA submitted 2025-09-14 cs.LG cs.AIcs.CL

AQUA: Attention via QUery mAgnitudes for Memory and Compute Efficient Inference in LLMs

classification cs.LG cs.AIcs.CL
keywords attentionaquaqueryefficientinferencememorycomputationcompute
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The quadratic complexity of the attention mechanism remains a fundamental barrier to scaling Large Language Models (LLMs) to longer contexts, creating a critical bottleneck in both computation and memory. To address this, we introduce AQUA (Attention via QUery mAgnitudes) a novel and versatile approximation strategy that significantly reduces the cost of attention with a graceful performance trade-off. Our method operates in two phases: an efficient offline step where we compute a universal, language agnostic projection matrix via SVD on a calibration dataset, and an online inference step where we project query and key vectors and dynamically select a sparse subset of dimensions based on the query's magnitude. We provide a formal theoretical analysis of AQUA, establishing the break-even point at which it becomes more computationally efficient than standard attention. Our empirical evaluations on state-of-the-art models like Llama-3.1-8B demonstrate that a 25% reduction in the attention dot-product computation can be achieved with a statistically insignificant impact on performance across a wide range of benchmarks. We further showcase the versatility of AQUA by demonstrating its ability to synergistically accelerate existing token eviction methods like H2O and to directly reduce KV-cache memory size. By offering a controllable knob to balance efficiency and accuracy, AQUA provides a practical and powerful tool for making large-scale LLM inference more accessible and sustainable.

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