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environnement en grille

  • A Java library offering customizable simulation environments for Jason multi-agent systems, enabling rapid prototyping and testing.
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    What is JasonEnvironments?
    JasonEnvironments delivers a collection of environment modules designed specifically for the Jason multi-agent system. Each module exposes a standardized interface so agents can perceive, act, and interact within diverse scenarios like pursuit-evasion, resource foraging, and cooperative tasks. The library is easy to integrate into existing Jason projects: just include the JAR, configure the desired environment in your agent architecture file, and launch the simulation. Developers can also extend or customize parameters and rules to tailor the environment to their research or educational needs.
    JasonEnvironments Core Features
    • Grid world environment module
    • Predator–prey / pursuit-evasion scenarios
    • Blocks world planning environment
    • Resource foraging and cooperation tasks
    • Standardized perception-action interface
    • Configurable parameters and rules
  • An RL environment simulating multiple cooperative and competitive agent miners collecting resources in a grid-based world for multi-agent learning.
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    What is Multi-Agent Miners?
    Multi-Agent Miners offers a grid-world environment where multiple autonomous miner agents navigate, dig, and collect resources while interacting with each other. It supports configurable map sizes, agent counts, and reward structures, allowing users to create competitive or cooperative scenarios. The framework integrates with popular RL libraries via PettingZoo, providing standardized APIs for reset, step, and render functions. Visualization modes and logging support help analyze behaviors and outcomes, making it ideal for research, education, and algorithm benchmarking in multi-agent reinforcement learning.
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