Play and train agents in an interactive pyramid game
Control and simulate vehicle physics in a web-based game
Load and display a Unity WebGL game
Interact with a web-based physics vehicle simulation using WASD keys
"One-minute creation by AI Coding Autonomous Agent MOUSE"
Play Unity game with ML-powered agents
Embed and play classic games online
Play a voxel game in your browser
Control a vehicle with WASD to simulate real physics
Play KexFarm Unity game
Play with Huggy, a dog that learns to catch sticks
Drive a physics a virtual car with WASD
Control a simulated vehicle with WASD
ML Agents Pyramids is an interactive game designed for training and testing AI agents in a pyramid-based environment. It falls under the category of Game AI, focusing on play and train agents to improve their decision-making and problem-solving skills. The tool provides a dynamic and engaging platform for AI experimentation.
• Interactive 3D Environment: A visually appealing and interactive 3D pyramid setting for agents to explore and learn.
• Multiple Training Modes: Supports different training scenarios, allowing users to test various agent behaviors.
• Integration with ML-Agents Toolkit: Built to work seamlessly with Unity's ML-Agents framework for robust AI development.
• Customizable Difficulty Levels: Allows users to adjust challenges based on agent skill levels.
• Real-Time Feedback: Provides immediate insights into agent performance and learning progress.
• User-Friendly Interface: Intuitive controls for easy setup and interaction.
What platforms does ML Agents Pyramids support?
ML Agents Pyramids is primarily designed for Windows and macOS, with compatibility focused on Unity environments.
Can I customize the pyramid structures?
Yes, ML Agents Pyramids allows users to modify pyramid layouts and add custom obstacles to create unique training scenarios.
Where can I find more resources or documentation?
Additional resources, including tutorials and documentation, are available on the ML Agents Pyramids GitHub repository or the Unity ML-Agents official website.