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Main Authors: Zhang, Shuyu, Pan, Lingfeng, Wang, Qicheng, Shi, Yaqi, Tan, Yueyang, Yan, Ruyu, Chen, Jiaqi, Du, Lixing, Wang, Lu
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.27390
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author Zhang, Shuyu
Pan, Lingfeng
Wang, Qicheng
Shi, Yaqi
Tan, Yueyang
Yan, Ruyu
Chen, Jiaqi
Du, Lixing
Wang, Lu
author_facet Zhang, Shuyu
Pan, Lingfeng
Wang, Qicheng
Shi, Yaqi
Tan, Yueyang
Yan, Ruyu
Chen, Jiaqi
Du, Lixing
Wang, Lu
contents Speculative decoding accelerates Large Language Model inference via a draft-then-verify paradigm, yet the output projection layer becomes a bottleneck as vocabulary sizes scale. While existing static pruning methods effectively reduce this overhead, they suffer from precipitous drops in acceptance rate in specialized domains or topic-switching scenarios due to their inability to capture dynamic distribution shifts. To address this, we introduce EvoSpec, a framework that enables real-time evolution of the draft model through dynamic vocabulary and parameter adaptation. Unlike static or purely retrieval-based approaches, EvoSpec employs a context-aware mechanism that retrieves critical long-tail tokens via efficient semantic and statistical indexing. Furthermore, we propose a lightweight online alignment strategy utilizing curriculum learning to continually minimize the distributional gap between the draft and target models. Extensive evaluations across specialized domains (coding, law, and medicine) confirm that EvoSpec overcomes the limitations of static baselines. On EAGLE-3, it achieves a 1.13x speedup in these settings over the state-of-the-art static baseline FR-Spec, with 27\% lower memory overhead than standard online adaptation.
format Preprint
id arxiv_https___arxiv_org_abs_2605_27390
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle EvoSpec: Evolving Speculative Decoding via Real-Time Vocabulary and Parameter Adaptation
Zhang, Shuyu
Pan, Lingfeng
Wang, Qicheng
Shi, Yaqi
Tan, Yueyang
Yan, Ruyu
Chen, Jiaqi
Du, Lixing
Wang, Lu
Computation and Language
Artificial Intelligence
Speculative decoding accelerates Large Language Model inference via a draft-then-verify paradigm, yet the output projection layer becomes a bottleneck as vocabulary sizes scale. While existing static pruning methods effectively reduce this overhead, they suffer from precipitous drops in acceptance rate in specialized domains or topic-switching scenarios due to their inability to capture dynamic distribution shifts. To address this, we introduce EvoSpec, a framework that enables real-time evolution of the draft model through dynamic vocabulary and parameter adaptation. Unlike static or purely retrieval-based approaches, EvoSpec employs a context-aware mechanism that retrieves critical long-tail tokens via efficient semantic and statistical indexing. Furthermore, we propose a lightweight online alignment strategy utilizing curriculum learning to continually minimize the distributional gap between the draft and target models. Extensive evaluations across specialized domains (coding, law, and medicine) confirm that EvoSpec overcomes the limitations of static baselines. On EAGLE-3, it achieves a 1.13x speedup in these settings over the state-of-the-art static baseline FR-Spec, with 27\% lower memory overhead than standard online adaptation.
title EvoSpec: Evolving Speculative Decoding via Real-Time Vocabulary and Parameter Adaptation
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2605.27390