Engine Agnostic Graph Environments for Robotics (EAGERx): A Graph-Based Framework for Sim2real Robot Learning
Bas van der Heijden, Robert Babuška(Delft University of Technology), Jelle Luijkx(Delft University of Technology), Laura Ferranti(Delft University of Technology), Jens Kober(University of Stuttgart)
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