Comprehensive 環境自定義 Tools for Every Need

Get access to 環境自定義 solutions that address multiple requirements. One-stop resources for streamlined workflows.

環境自定義

  • MagicBlocks is an AI agent for creating virtual worlds and 3D environments.
    0
    0
    What is MagicBlocks?
    MagicBlocks transforms the way users create and experience virtual worlds with its powerful AI-driven tools. This AI agent simplifies designing 3D environments by automating intricate tasks, making it accessible for both beginners and experienced creators. Users can easily manipulate elements, customize environments, and visualize their ideas in real-time, ensuring a seamless creative workflow from concept to execution.
  • A Unity ML-Agents based environment for training cooperative multi-agent inspection tasks in customizable 3D virtual scenarios.
    0
    0
    What is Multi-Agent Inspection Simulation?
    Multi-Agent Inspection Simulation provides a comprehensive framework for simulating and training multiple autonomous agents to perform inspection tasks cooperatively within Unity 3D environments. It integrates with the Unity ML-Agents toolkit, offering configurable scenes with inspection targets, adjustable reward functions, and agent behavior parameters. Researchers can script custom environments, define the number of agents, and set training curricula via Python APIs. The package supports parallel training sessions, TensorBoard logging, and customizable observations including raycasts, camera feeds, and positional data. By adjusting hyperparameters and environment complexity, users can benchmark reinforcement learning algorithms on coverage, efficiency, and coordination metrics. The open-source codebase encourages extension for robotics prototyping, cooperative AI research, and educational demonstrations in multi-agent systems.
  • Scalable MADDPG is an open-source multi-agent reinforcement learning framework implementing deep deterministic policy gradient for multiple agents.
    0
    0
    What is Scalable MADDPG?
    Scalable MADDPG is a research-oriented framework for multi-agent reinforcement learning, offering a scalable implementation of the MADDPG algorithm. It features centralized critics during training and independent actors at runtime for stability and efficiency. The library includes Python scripts to define custom environments, configure network architectures, and adjust hyperparameters. Users can train multiple agents in parallel, monitor metrics, and visualize learning curves. It integrates with OpenAI Gym-like environments and supports GPU acceleration via TensorFlow. By providing modular components, Scalable MADDPG enables flexible experimentation on cooperative, competitive, or mixed multi-agent tasks, facilitating rapid prototyping and benchmarking.
Featured