Comprehensive multi-agenten verstärkendes Lernen Tools for Every Need

Get access to multi-agenten verstärkendes Lernen solutions that address multiple requirements. One-stop resources for streamlined workflows.

multi-agenten verstärkendes Lernen

  • A multi-agent reinforcement learning platform offering customizable supply chain simulation environments to train and evaluate AI agents effectively.
    0
    0
    What is MARO?
    MARO (Multi-Agent Resource Optimization) is a Python-based framework designed to support the development and evaluation of multi-agent reinforcement learning agents in supply chain, logistics, and resource management scenarios. It includes environment templates for inventory management, truck scheduling, cross-docking, container rental, and more. MARO offers a unified agent API, built-in trackers for experiment logging, parallel simulation capabilities for large-scale training, and visualization tools for performance analysis. The platform is modular, extensible and integrates with popular RL libraries, enabling reproducible research and rapid prototyping of AI-driven optimization solutions.
    MARO Core Features
    • Customizable supply chain and logistics environments
    • Unified multi-agent RL Agent API
    • Parallel simulation engine
    • Built-in experiment trackers
    • Visualization tools for performance analysis
  • MGym provides customizable multi-agent reinforcement learning environments with a standardized API for environment creation, simulation, and benchmarking.
    0
    0
    What is MGym?
    MGym is a specialized framework for crafting and managing multi-agent reinforcement learning (MARL) environments in Python. It enables users to define complex scenarios with multiple agents, each having customizable observation and action spaces, reward functions, and interaction rules. MGym supports both synchronous and asynchronous execution modes, providing parallel and turn-based agent simulations. Built with a familiar Gym-like API, MGym seamlessly integrates with popular RL libraries such as Stable Baselines, RLlib, and PyTorch. It includes utility modules for environment benchmarking, result visualization, and performance analytics, facilitating systematic evaluation of MARL algorithms. Its modular architecture allows rapid prototyping of cooperative, competitive, or mixed-agent tasks, empowering researchers and developers to accelerate MARL experimentation and research.
Featured