Comprehensive городская симуляция вождения Tools for Every Need

Get access to городская симуляция вождения solutions that address multiple requirements. One-stop resources for streamlined workflows.

городская симуляция вождения

  • An open-source framework implementing cooperative multi-agent reinforcement learning for autonomous driving coordination in simulation.
    0
    0
    What is AutoDRIVE Cooperative MARL?
    AutoDRIVE Cooperative MARL is a GitHub-hosted framework combining the AutoDRIVE urban driving simulator with adaptable multi-agent reinforcement learning algorithms. It includes training scripts, environment wrappers, evaluation metrics, and visualization tools to develop and benchmark cooperative driving policies. Users can configure agent observation spaces, reward functions, and training hyperparameters. The repository supports modular extensions, enabling custom task definitions, curriculum learning, and performance tracking for autonomous vehicle coordination research.
    AutoDRIVE Cooperative MARL Core Features
    • Implementations of MADDPG, PPO and other multi-agent RL algorithms
    • AutoDRIVE simulator integration with urban driving scenarios
    • Customizable environment wrappers and reward functions
    • Training and evaluation scripts with logging support
    • Visualization and performance plotting utilities
    • Support for curriculum learning and policy checkpointing
Featured