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模組化算法開發

  • MARTI is an open-source toolkit offering standardized environments and benchmarking tools for multi-agent reinforcement learning experiments.
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    What is MARTI?
    MARTI (Multi-Agent Reinforcement learning Toolkit and Interface) is a research-oriented framework that streamlines the development, evaluation, and benchmarking of multi-agent RL algorithms. It offers a plug-and-play architecture where users can configure custom environments, agent policies, reward structures, and communication protocols. MARTI integrates with popular deep learning libraries, supports GPU acceleration and distributed training, and generates detailed logs and visualizations for performance analysis. The toolkit’s modular design allows rapid prototyping of novel approaches and systematic comparison against standard baselines, making it ideal for academic research and pilot projects in autonomous systems, robotics, game AI, and cooperative multi-agent scenarios.
    MARTI Core Features
    • Modular multi-agent environment support
    • Plugin interface for custom RL algorithms
    • Integration with PyTorch and TensorFlow
    • Distributed training and GPU acceleration
    • Built-in logging, visualization, and metrics
    • Scenario configuration and reproducibility tools
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