Comprehensive scenario generation Tools for Every Need

Get access to scenario generation solutions that address multiple requirements. One-stop resources for streamlined workflows.

scenario generation

  • MAPF_G2RL is a Python framework training deep reinforcement learning agents for efficient multi-agent path finding on graphs.
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    What is MAPF_G2RL?
    MAPF_G2RL is an open-source research framework that bridges graph theory and deep reinforcement learning to tackle the multi-agent path finding (MAPF) problem. It encodes nodes and edges into vector representations, defines spatial and collision-aware reward functions, and supports various RL algorithms such as DQN, PPO, and A2C. The framework automates scenario creation by generating random graphs or importing real-world maps, and orchestrates training loops that optimize policies for multiple agents simultaneously. After learning, agents are evaluated in simulated environments to measure path optimality, makespan, and success rates. Its modular design allows researchers to extend core components, integrate new MARL techniques, and benchmark against classical solvers.
  • Open-source framework for comprehensive evaluation of ethical behaviors in multi-agent systems using customizable metrics and scenarios.
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    What is EthicalEvalMAS?
    EthicalEvalMAS provides a modular environment to assess multi-agent systems across key ethical dimensions such as justice, autonomy, privacy, transparency, and beneficence. Users can generate custom scenarios or use built-in templates, define bespoke metrics, execute automated evaluation scripts, and visualize outcomes through built-in reporting tools. Its extensible architecture supports integration with existing MAS platforms and facilitates reproducible ethical benchmarking across different agent behaviors.
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