ROAICLLGSep 11, 2025

SimpleVLA-RL: Scaling VLA Training via Reinforcement Learning

Peking UTsinghua
arXiv:2509.09674v193 citationsh-index: 35Has Code
Originality Incremental advance
AI Analysis

This work addresses data scarcity and generalization issues in robotic manipulation for researchers and practitioners, representing an incremental improvement by adapting RL techniques to VLA models.

The paper tackles the challenges of scaling Vision-Language-Action (VLA) models for robotic manipulation by introducing SimpleVLA-RL, an efficient reinforcement learning framework that reduces reliance on costly human-operated data and improves generalization, achieving state-of-the-art performance on benchmarks like LIBERO and outperforming baselines on RoboTwin tasks.

Vision-Language-Action (VLA) models have recently emerged as a powerful paradigm for robotic manipulation. Despite substantial progress enabled by large-scale pretraining and supervised fine-tuning (SFT), these models face two fundamental challenges: (i) the scarcity and high cost of large-scale human-operated robotic trajectories required for SFT scaling, and (ii) limited generalization to tasks involving distribution shift. Recent breakthroughs in Large Reasoning Models (LRMs) demonstrate that reinforcement learning (RL) can dramatically enhance step-by-step reasoning capabilities, raising a natural question: Can RL similarly improve the long-horizon step-by-step action planning of VLA? In this work, we introduce SimpleVLA-RL, an efficient RL framework tailored for VLA models. Building upon veRL, we introduce VLA-specific trajectory sampling, scalable parallelization, multi-environment rendering, and optimized loss computation. When applied to OpenVLA-OFT, SimpleVLA-RL achieves SoTA performance on LIBERO and even outperforms $π_0$ on RoboTwin 1.0\&2.0 with the exploration-enhancing strategies we introduce. SimpleVLA-RL not only reduces dependence on large-scale data and enables robust generalization, but also remarkably surpasses SFT in real-world tasks. Moreover, we identify a novel phenomenon ``pushcut'' during RL training, wherein the policy discovers previously unseen patterns beyond those seen in the previous training process. Github: https://github.com/PRIME-RL/SimpleVLA-RL

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