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функции награды

  • Jason-RL equips Jason BDI agents with reinforcement learning, enabling Q-learning and SARSA-based adaptive decision making through reward experience.
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    What is jason-RL?
    jason-RL adds a reinforcement learning layer to the Jason multi-agent framework, allowing AgentSpeak BDI agents to learn action-selection policies via reward feedback. It implements Q-learning and SARSA algorithms, supports configuration of learning parameters (learning rate, discount factor, exploration strategy), and logs training metrics. By defining reward functions in agent plans and running simulations, developers can observe agents improve decision making over time, adapting to changing environments without manual policy coding.
    jason-RL Core Features
    • Q-learning integration
    • SARSA integration
    • Configurable learning parameters
    • Reward function support
    • Training metric logging
  • An open-source Python framework offering diverse multi-agent reinforcement learning environments for training and benchmarking AI agents.
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    What is multiagent_envs?
    multiagent_envs delivers a modular set of Python-based environments tailored for multi-agent reinforcement learning research and development. It includes scenarios like cooperative navigation, predator-prey, social dilemmas, and competitive arenas. Each environment lets you define the number of agents, observation features, reward functions, and collision dynamics. The framework integrates seamlessly with popular RL libraries such as Stable Baselines and RLlib, allowing vectorized training loops, parallel execution, and easy logging. Users can extend existing scenarios or create new ones by following a simple API, accelerating experimentation with algorithms like MADDPG, QMIX, and PPO in a consistent, reproducible setup.
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