The E-Commerce Multi-Agent System on JADE demonstrates how autonomous agents can manage online shopping workflows. Buyer agents search products and negotiate prices with seller agents. Seller agents handle inventory and pricing strategies. Logistics agents schedule shipments and update order status. The system showcases inter-agent communication via ACL, behavior extension, and container deployment on the JADE platform.
E-Commerce Multi-Agent System on JADE Core Features
What is GA-based NQueen Solver with 2APL Multi-Agent System?
The GA-based NQueen Solver uses a modular 2APL multi-agent architecture where each agent encodes a candidate N-Queen configuration. Agents evaluate their fitness by counting non-attacking queen pairs, then share high-fitness configurations with others. Genetic operators—selection, crossover, and mutation—are applied across the agent population to generate new candidate boards. Over successive iterations, agents collectively converge on valid N-Queen solutions. The framework is implemented in Java, supports parameter tuning for population size, crossover rate, mutation probability, and agent communication protocols, and outputs detailed logs and visualizations of the evolutionary process.
GA-based NQueen Solver with 2APL Multi-Agent System Core Features
JADE-DR-VPP is an open-source Java framework that implements a multi-agent system for Virtual Power Plant (VPP) demand response (DR). Each agent represents a flexible load or generation unit that communicates via JADE messaging. The system orchestrates DR events, schedules load adjustments, and aggregates resources to meet grid signals. Users can configure agent behaviors, run large-scale simulations, and analyze performance metrics for energy management strategies.