AI RESEARCH
Vision-Language-Action in Robotics: A Survey of Datasets, Benchmarks, and Data Engines
arXiv CS.AI
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ArXi:2604.23001v1 Announce Type: cross Despite remarkable progress in Vision--Language--Action (VLA) models, a central bottleneck remains underexamined: the data infrastructure that underlies embodied learning. In this survey, we argue that future advances in VLA will depend less on model architecture and on the co-design of high-fidelity data engines and structured evaluation protocols. To this end, we present a systematic, data-centric analysis of VLA research organized around three pillars: datasets, benchmarks, and data engines.