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Agentic-VLA: Efficient Online Adaptation for Vision-Language-Action Models

About

Vision-Language-Action (VLA) models have emerged as a promising paradigm for robotic manipulation by leveraging pre-trained vision-language representations. However, current VLA training methods suffer from two critical limitations: poor generalization to novel environments and low training efficiency requiring extensive demonstrations. We introduce Agentic-VLA, an agentic training framework that enables VLAs to efficiently adapt online through three key innovations: (1) Adaptive Reward Synthesis, which dynamically generates and adjusts reward functions based on the VLA's current capabilities and task complexity, decomposing complex tasks into learnable sub-goals for curriculum learning; (2) Language-Guided Exploration, where a critic model provides structured guidance for systematic exploration rather than random sampling; and (3) Experience Memory,which stores and retrieves task-relevant policy weights for warm-starting adaptation to similar tasks. We evaluate Agentic-VLA on the LIBERO benchmark, achieving substantial improvements: +12.3% on long-horizon tasks, +28.5% in 1-shot learning, and enabling cross-task transfer from 0% to 31.2% without task-specific demonstrations. Our framework also demonstrates 2.4x faster convergence compared to existing online adaptation methods. Beyond LIBERO, Agentic-VLA retains its advantage on the dual-arm RoboTwin 2.0 benchmark, including under its randomized Hard setting. These results establish Agentic-VLA as a significant step toward truly adaptive VLA systems capable of continuous learning in deployment.

Ruofan Jin, Zaixi Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Robotic ManipulationLIBERO Spatial Object Goal Long
Overall Success Rate (Long)98.1
82
Robotic ManipulationRoboTwin Easy 2.0
Adjust Bottle Success Rate98
19
Robot ManipulationLIBERO-Object cross-task evaluation
Success Rate31.2
3
Robotic ManipulationLIBERO one-shot (test)
Spatial Success Rate79.8
3
Robotic ManipulationRoboTwin Hard 2.0
Adjust Bottle Success Rate82
3
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