AI RESEARCH
RoboClaw: An Agentic Framework for Scalable Long-Horizon Robotic Tasks
arXiv CS.AI
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ArXi:2603.11558v1 Announce Type: cross Vision-Language-Action (VLA) systems have shown strong potential for language-driven robotic manipulation. However, scaling them to long-horizon tasks remains challenging. Existing pipelines typically separate data collection, policy learning, and deployment, resulting in heavy reliance on manual environment resets and brittle multi-policy execution. We present RoboClaw, an agentic robotics framework that unifies data collection, policy learning, and task execution under a single VLM-driven controller. At the policy level, RoboClaw