CVAILGROOct 27, 2025

A Survey on Efficient Vision-Language-Action Models

arXiv:2510.24795v120 citationsh-index: 47
Originality Synthesis-oriented
AI Analysis

It addresses efficiency bottlenecks for researchers and practitioners in embodied AI, but is incremental as a survey rather than a novel method.

This survey tackles the computational and data challenges of deploying Vision-Language-Action models by providing the first comprehensive review of efficient techniques across data, model, and training, establishing a taxonomy and roadmap for future research.

Vision-Language-Action models (VLAs) represent a significant frontier in embodied intelligence, aiming to bridge digital knowledge with physical-world interaction. While these models have demonstrated remarkable generalist capabilities, their deployment is severely hampered by the substantial computational and data requirements inherent to their underlying large-scale foundation models. Motivated by the urgent need to address these challenges, this survey presents the first comprehensive review of Efficient Vision-Language-Action models (Efficient VLAs) across the entire data-model-training process. Specifically, we introduce a unified taxonomy to systematically organize the disparate efforts in this domain, categorizing current techniques into three core pillars: (1) Efficient Model Design, focusing on efficient architectures and model compression; (2) Efficient Training, which reduces computational burdens during model learning; and (3) Efficient Data Collection, which addresses the bottlenecks in acquiring and utilizing robotic data. Through a critical review of state-of-the-art methods within this framework, this survey not only establishes a foundational reference for the community but also summarizes representative applications, delineates key challenges, and charts a roadmap for future research. We maintain a continuously updated project page to track our latest developments: https://evla-survey.github.io/

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