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Autores principales: Wang, Songsheng, Yu, Rucheng, Yuan, Zhihang, Yu, Chao, Gao, Feng, Wang, Yu, Wong, Derek F.
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2507.22424
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author Wang, Songsheng
Yu, Rucheng
Yuan, Zhihang
Yu, Chao
Gao, Feng
Wang, Yu
Wong, Derek F.
author_facet Wang, Songsheng
Yu, Rucheng
Yuan, Zhihang
Yu, Chao
Gao, Feng
Wang, Yu
Wong, Derek F.
contents Vision-Language-Action (VLA) models have made substantial progress by leveraging the robust capabilities of Visual Language Models (VLMs). However, VLMs' significant parameter size and autoregressive (AR) decoding nature impose considerable computational demands on VLA models. While Speculative Decoding (SD) has shown efficacy in accelerating Large Language Models (LLMs) by incorporating efficient drafting and parallel verification, allowing multiple tokens to be generated in one forward pass, its application to VLA models remains unexplored. This work introduces Spec-VLA, an SD framework designed to accelerate VLA models. Due to the difficulty of the action prediction task and the greedy decoding mechanism of the VLA models, the direct application of the advanced SD framework to the VLA prediction task yields a minor speed improvement. To boost the generation speed, we propose an effective mechanism to relax acceptance utilizing the relative distances represented by the action tokens of the VLA model. Empirical results across diverse test scenarios affirm the effectiveness of the Spec-VLA framework, and further analysis substantiates the impact of our proposed strategies, which enhance the acceptance length by 44%, achieving 1.42 times speedup compared with the OpenVLA baseline, without compromising the success rate. The success of the Spec-VLA framework highlights the potential for broader application of speculative execution in VLA prediction scenarios.
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id arxiv_https___arxiv_org_abs_2507_22424
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Spec-VLA: Speculative Decoding for Vision-Language-Action Models with Relaxed Acceptance
Wang, Songsheng
Yu, Rucheng
Yuan, Zhihang
Yu, Chao
Gao, Feng
Wang, Yu
Wong, Derek F.
Machine Learning
Artificial Intelligence
Vision-Language-Action (VLA) models have made substantial progress by leveraging the robust capabilities of Visual Language Models (VLMs). However, VLMs' significant parameter size and autoregressive (AR) decoding nature impose considerable computational demands on VLA models. While Speculative Decoding (SD) has shown efficacy in accelerating Large Language Models (LLMs) by incorporating efficient drafting and parallel verification, allowing multiple tokens to be generated in one forward pass, its application to VLA models remains unexplored. This work introduces Spec-VLA, an SD framework designed to accelerate VLA models. Due to the difficulty of the action prediction task and the greedy decoding mechanism of the VLA models, the direct application of the advanced SD framework to the VLA prediction task yields a minor speed improvement. To boost the generation speed, we propose an effective mechanism to relax acceptance utilizing the relative distances represented by the action tokens of the VLA model. Empirical results across diverse test scenarios affirm the effectiveness of the Spec-VLA framework, and further analysis substantiates the impact of our proposed strategies, which enhance the acceptance length by 44%, achieving 1.42 times speedup compared with the OpenVLA baseline, without compromising the success rate. The success of the Spec-VLA framework highlights the potential for broader application of speculative execution in VLA prediction scenarios.
title Spec-VLA: Speculative Decoding for Vision-Language-Action Models with Relaxed Acceptance
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2507.22424