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Main Authors: Xie, Xingyu, Yu, Zhaochen, Liao, Yue, Wang, Tao, Toh, Kim-Chuan, Yan, Shuicheng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.12038
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author Xie, Xingyu
Yu, Zhaochen
Liao, Yue
Wang, Tao
Toh, Kim-Chuan
Yan, Shuicheng
author_facet Xie, Xingyu
Yu, Zhaochen
Liao, Yue
Wang, Tao
Toh, Kim-Chuan
Yan, Shuicheng
contents Long-context autoregressive decoding remains expensive because each decoding step must repeatedly process a growing history. We observe a consistent pattern during decoding: within a sentence, and more generally within a short semantically coherent span, the dominant attention support often remains largely stable. Motivated by this observation, we propose Slow-Fast Inference (SFI), a training-free decoding framework that decouples generation into frequent low-cost fast steps and occasional dense-attention slow steps. Fast steps reuse a compact sparse memory for efficient decoding. Slow steps are triggered near semantic boundaries. At slow steps, the model revisits the broader context and uses the Selector to refresh the selected memory for subsequent fast steps. Across the evaluated context lengths, SFI delivers approximately $1.6\times$--$14.4\times$ higher decoding throughput while generally maintaining quality on par with the full-KV baseline across long-context and long-CoT settings. Because SFI is training-free and applies directly to existing checkpoints, it offers a practical path to reducing inference cost for contemporary autoregressive reasoning models in long-context, long-horizon, and agentic workloads.
format Preprint
id arxiv_https___arxiv_org_abs_2603_12038
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Slow-Fast Inference: Training-Free Inference Acceleration via Within-Sentence Support Stability
Xie, Xingyu
Yu, Zhaochen
Liao, Yue
Wang, Tao
Toh, Kim-Chuan
Yan, Shuicheng
Machine Learning
Artificial Intelligence
Long-context autoregressive decoding remains expensive because each decoding step must repeatedly process a growing history. We observe a consistent pattern during decoding: within a sentence, and more generally within a short semantically coherent span, the dominant attention support often remains largely stable. Motivated by this observation, we propose Slow-Fast Inference (SFI), a training-free decoding framework that decouples generation into frequent low-cost fast steps and occasional dense-attention slow steps. Fast steps reuse a compact sparse memory for efficient decoding. Slow steps are triggered near semantic boundaries. At slow steps, the model revisits the broader context and uses the Selector to refresh the selected memory for subsequent fast steps. Across the evaluated context lengths, SFI delivers approximately $1.6\times$--$14.4\times$ higher decoding throughput while generally maintaining quality on par with the full-KV baseline across long-context and long-CoT settings. Because SFI is training-free and applies directly to existing checkpoints, it offers a practical path to reducing inference cost for contemporary autoregressive reasoning models in long-context, long-horizon, and agentic workloads.
title Slow-Fast Inference: Training-Free Inference Acceleration via Within-Sentence Support Stability
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2603.12038