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Deformable Cluster Manipulation introduces a framework that tackles a parallel challenge: enabling systems to grasp not one object

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★ Tier-1 Source

Clearing tree branches in zero-shot sim-to-real deployment.

The framework was motivated by a real-world task: clearing a mass of tree branches that have grown over a power line, where there’s no single clean object to grab.

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Summary

Robotics is entering a new phase: moving from controlled demos and scripted automation toward generalizable, reliable embodied autonomy in the real world. At the International Conference on Robotics and Automation (ICRA), eight of NVIDIA Research’s 28 accepted papers show how simulation-to-real transfer is becoming a foundation for that shift, helping robots perceive, reason, plan and act across dynamic, unpredictable environments. Together, the papers span the full stack of challenges robot developers face: coordinating multiple arms in parallel, building policies that generalize across robot bodies, grasping novel objects in clutter, performing precise assembly and developing vision-language-action models that reason before they move. The throughline is clear: sim-to-real is becoming a foundation for robots that can adapt, generalize, and operate with greater reliability outside the lab. Picture a pharmaceutical lab run by robotic arms: picking up tubes, transferring liquids, mixing reagents, each step taking different amounts of time, all requiring careful coordination.

Read full article at NVIDIA Blog →

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