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  • AgentSimJS is a JavaScript framework to simulate multi-agent systems with customizable agents, environments, action rules, and interactions.
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    What is AgentSimJS?
    AgentSimJS is designed to simplify the creation and execution of large-scale agent-based models in JavaScript. With its modular architecture, developers can define agents with custom states, sensors, decision-making functions, and actuators, then integrate them into dynamic environments parameterized by global variables. The framework orchestrates discrete time-step simulations, manages event-driven messaging between agents, and logs interaction data for analysis. Visualization modules support real-time rendering using HTML5 Canvas or external libraries, while plugins enable integration with statistical tools. AgentSimJS runs both in modern web browsers and Node.js, making it suitable for interactive web applications, academic research, educational tools, and rapid prototyping of swarm intelligence, crowd dynamics, or distributed AI experiments.
    AgentSimJS Core Features
    • Custom agent class definitions with states, sensors, and actuators
    • Discrete time-step simulation engine
    • Event-driven messaging between agents
    • Environment modeling with global parameters
    • Real-time visualization via Canvas or external libraries
    • Data logging and export for analysis
    • Plugin system for extensions
    • Synchronous and asynchronous execution modes
  • A Python framework that enables developers to define, coordinate, and simulate multi-agent interactions powered by large language models.
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    What is LLM Agents Simulation Framework?
    The LLM Agents Simulation Framework enables the design, execution, and analysis of simulated environments where autonomous agents interact through large language models. Users can register multiple agent instances, assign customizable prompts and roles, and specify communication channels such as message passing or shared state. The framework orchestrates simulation cycles, collects logs, and calculates metrics like turn-taking frequency, response latency, and success rates. It supports seamless integration with OpenAI, Hugging Face, and local LLMs. Researchers can create complex scenarios—negotiation, resource allocation, or collaborative problem-solving—to observe emergent behaviors. Extensible plugin architecture allows addition of new agent behaviors, environment constraints, or visualization modules, fostering reproducible experiments.
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