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ロボットパフォーマンスメトリクス

  • A reinforcement learning framework enabling autonomous robots to navigate and avoid collisions in multi-agent environments.
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    What is RL Collision Avoidance?
    RL Collision Avoidance provides a complete pipeline for developing, training, and deploying multi-robot collision avoidance policies. It offers a set of Gym-compatible simulation scenarios where agents learn collision-free navigation through reinforcement learning algorithms. Users can customize environment parameters, leverage GPU acceleration for faster training, and export learned policies. The framework also integrates with ROS for real-world testing, supports pre-trained models for immediate evaluation, and features tools for visualizing agent trajectories and performance metrics.
    RL Collision Avoidance Core Features
    • Multi-agent reinforcement learning environments
    • Collision avoidance policy training
    • Pre-trained models for quick start
    • ROS integration for real-robot deployment
    • GPU-accelerated training support
    • Customizable simulation scenarios
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