Real2Sim for Embodied Data Generation
Abstract
This beginner-to-intermediate workshop introduces a practical pipeline for building scalable embodied Synthetic Data generation systems for robotics and physical AI. Participants will learn how to transform real-world objects into interaction-ready simulation assets through a Real2Sim workflow focused on object-centric reconstruction, and simulation integration on AMD Instinct GPUs.
July 22, 2026 14:30 - 15:15
Speakers
Session Type
Workshop
Related Product
Instinct, Radeon, ROCm, EPYC
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