A1: A Fully Transparent Open-Source, Adaptive and Efficient Truncated Vision-Language-Action Model
Abstract
Vision-Language-Action (VLA) models have emerged as a powerful paradigm for open-world robot manipulation, but their practical deployment is often constrained by cost: billion-scale VLM backbones and iterative diffusion/flow-based action heads incur high latency and compute, making real-time control expensive on commodity hardware. We present A1, a fully open-source and transparent VLA framework designed for low-cost, high-throughput inference without sacrificing manipulation success; Our approach leverages pretrained VLMs that provide implicit affordance priors for action generation. We release the full training stack (training code, data/data-processing pipeline, intermediate checkpoints, and evaluation scripts) to enable end-to-end reproducibility. Beyond optimizing the VLM alone, A1 targets the full inference pipeline by introducing a budget-aware adaptive inference scheme that jointly accelerates the backbone and the action head. Specifically, we monitor action consistency across intermediate VLM layers to trigger early termination, and propose Inter-Layer Truncated Flow Matching that warm-starts denoising across layers, enabling accurate actions with substantially fewer effective denoising iterations. Across simulation benchmarks (LIBERO, VLABench) and real robots (Franka, AgiBot), A1 achieves state-of-the-art success rates while significantly reducing inference cost (e.g., up to 72% lower per-episode latency for flow-matching inference and up to 76.6% backbone computation reduction with minor performance degradation). On RoboChallenge, A1 achieves an average success rate of 29.00%, outperforming baselines including pi0(28.33%), X-VLA (21.33%), and RDT-1B (15.00%).
Cite
@article{arxiv.2604.05672,
title = {A1: A Fully Transparent Open-Source, Adaptive and Efficient Truncated Vision-Language-Action Model},
author = {Kaidong Zhang and Jian Zhang and Rongtao Xu and Yu Sun and Shuoshuo Xue and Youpeng Wen and Xiaoyu Guo and Minghao Guo and Weijia Liufu and Liu Zihou and Kangyi Ji and Yangsong Zhang and Jiarun Zhu and Jingzhi Liu and Zihang Li and Ruiyi Chen and Meng Cao and Jingming Zhang and Shen Zhao and Xiaojun Chang and Feng Zheng and Ivan Laptev and Xiaodan Liang},
journal= {arXiv preprint arXiv:2604.05672},
year = {2026}
}