Comprehensive marcos livianos Tools for Every Need

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

marcos livianos

  • A Python-based framework implementing flocking algorithms for multi-agent simulation, enabling AI agents to coordinate and navigate dynamically.
    0
    0
    What is Flocking Multi-Agent?
    Flocking Multi-Agent offers a modular library for simulating autonomous agents exhibiting swarm intelligence. It encodes core steering behaviors—cohesion, separation and alignment—alongside obstacle avoidance and dynamic target pursuit. Using Python and Pygame for visualization, the framework allows adjustable parameters such as neighbor radius, maximum speed, and turning force. It supports extensibility through custom behavior functions and integration hooks for robotics or game engines. Ideal for experimentation in AI, robotics, game development, and academic research, it demonstrates how simple local rules lead to complex global formations.
    Flocking Multi-Agent Core Features
    • Implementation of alignment, cohesion, and separation behaviors
    • Obstacle avoidance and dynamic target pursuit
    • Real-time visualization with Pygame
    • Configurable agent parameters (speed, radius, force)
    • Extensibility through custom behavior hooks
  • MASlite is a lightweight Python multi-agent system framework for defining agents, messaging, scheduling, and environment simulation.
    0
    0
    What is MASlite?
    MASlite provides a clear API to create agent classes, register behaviors, and handle event-driven messaging between agents. It includes a scheduler to manage agent tasks, environment modeling to simulate interactions, and a plugin system to extend core capabilities. Developers can rapidly prototype multi-agent scenarios in Python by defining agent lifecycle methods, connecting agents via channels, and running simulations in a headless mode or integrating with visualization tools.
Featured