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実験トラッキング

  • A Python framework enabling the design, simulation, and reinforcement learning of cooperative multi-agent systems.
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    What is MultiAgentModel?
    MultiAgentModel provides a unified API to define custom environments and agent classes for multi-agent scenarios. Developers can specify observation and action spaces, reward structures, and communication channels. Built-in support for popular RL algorithms like PPO, DQN, and A2C allows training with minimal configuration. Real-time visualization tools help monitor agent interactions and performance metrics. The modular architecture ensures easy integration of new algorithms and custom modules. It also includes a flexible configuration system for hyperparameter tuning, logging utilities for experiment tracking, and compatibility with OpenAI Gym environments for seamless portability. Users can collaborate on shared environments and replay logged sessions for analysis.
    MultiAgentModel Core Features
    • Modular environment and agent definitions
    • Support for PPO, DQN, A2C algorithms
    • Customizable reward functions and communication
    • Real-time visualization of agent interactions
    • Hyperparameter configuration and logging utilities
    • OpenAI Gym compatibility
  • CybMASDE provides a customizable Python framework for simulating and training cooperative multi-agent deep reinforcement learning scenarios.
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    What is CybMASDE?
    CybMASDE enables researchers and developers to build, configure, and execute multi-agent simulations with deep reinforcement learning. Users can author custom scenarios, define agent roles and reward functions, and plug in standard or custom RL algorithms. The framework includes environment servers, networked agent interfaces, data collectors, and rendering utilities. It supports parallel training, real-time monitoring, and model checkpointing. CybMASDE’s modular architecture allows seamless integration of new agents, observation spaces, and training strategies, accelerating experimentation in cooperative control, swarm behavior, resource allocation, and other multi-agent use cases.
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