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инструменты симуляции

  • MACL is a Python framework enabling multi-agent collaboration, orchestrating AI agents for complex task automation.
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    What is MACL?
    MACL is a modular Python framework designed to simplify the creation and orchestration of multiple AI agents. It lets you define individual agents with custom skills, set up communication channels, and schedule tasks across an agent network. Agents can exchange messages, negotiate responsibilities, and adapt dynamically based on shared data. With built-in support for popular LLMs and a plugin system for extensibility, MACL enables scalable and maintainable AI workflows across domains like customer service automation, data analysis pipelines, and simulation environments.
  • An open-source Java-based multi-agent system framework implementing agent behaviors, communication, and coordination for distributed problem-solving.
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    What is Multi-Agent Systems?
    Multi-Agent Systems is designed to simplify the creation, configuration, and execution of distributed agent-based architectures. Developers can define agent behaviors, communication ontologies, and service descriptions within Java classes. The framework handles container setup, message transport, and life-cycle management for agents. Built on standard FIPA protocols, it supports peer-to-peer negotiation, collaborative planning, and modular extension. Users can run, monitor, and debug multi-agent scenarios on a single machine or across networked hosts, making it ideal for research, education, and small-scale deployments.
  • A Java-based implementation of the Contract Net Protocol enabling autonomous agents to dynamically negotiate and allocate tasks in multi-agent systems.
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    What is Contract Net Protocol?
    The Contract Net Protocol repository provides a full Java implementation of the FIPA Contract Net interaction protocol. Developers can create manager and contractor agents that exchange CFP (Call For Proposal), proposals, acceptances, and rejections over agent communication channels. The code includes core modules for broadcasting tasks, collecting bids, evaluating proposals based on customizable criteria, awarding contracts, and monitoring execution status. It can be integrated into larger multi-agent frameworks or used as a standalone library for research simulations, industrial scheduling, or robotic coordination.
  • JaCaMo is a multi-agent system platform integrating Jason, CArtAgO, and Moise for scalable, modular agent-based programming.
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    What is JaCaMo?
    JaCaMo provides a unified environment for designing and running multi-agent systems (MAS) by integrating three core components: the Jason agent programming language for BDI-based agents, CArtAgO for artifact-based environmental modeling, and Moise for specifying organizational structures and roles. Developers can write agent plans, define artifacts with operations, and organize groups of agents under normative frameworks. The platform includes tooling for simulation, debugging, and visualization of MAS interactions. With support for distributed execution, artifact repositories, and flexible messaging, JaCaMo enables rapid prototyping and research in areas like swarm intelligence, collaborative robotics, and distributed decision-making. Its modular design ensures scalability and extensibility across academic and industrial projects.
  • GAMA Genstar Plugin integrates generative AI models into GAMA simulations for automatic agent behavior and scenario generation.
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    What is GAMA Genstar Plugin?
    GAMA Genstar Plugin adds generative AI capabilities to the GAMA platform by providing connectors to OpenAI, local LLMs, and custom model endpoints. Users define prompts and pipelines in GAML to generate agent decisions, environment descriptions, or scenario parameters on the fly. The plugin supports synchronous and asynchronous API calls, caching of responses, and parameter tuning. It simplifies the integration of natural language models into large-scale simulations, reducing manual scripting and fostering richer, adaptive agent behaviors.
  • An agent-based simulation framework for demand response coordination in Virtual Power Plants using JADE.
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    What is JADE-DR-VPP?
    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.
  • NVIDIA Isaac simplifies the development of robotics and AI applications.
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    What is NVIDIA Isaac?
    NVIDIA Isaac is an advanced robotics platform by NVIDIA, designed to empower developers in creating and deploying AI-enabled robotic systems. It includes powerful tools and frameworks that enable seamless integration of machine learning algorithms for perception, navigation, and control. The platform supports simulation, training, and deployment of AI agents in real-time, making it suitable for various applications including warehouse automation, edge computing, and robotic research.
  • AI-driven platform for finding and managing grants.
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    What is Subvention.app?
    Subvention.app is an AI-powered platform designed to help individuals, businesses, and organizations find and manage financial aid programs. With features like AI-driven recommendations, personalized dashboards, and quick simulation tools, users can easily explore and apply for various grants and subsidies. The platform aims to save time and ensure users don't miss out on any available financial support opportunities.
  • APLib provides autonomous game testing agents with perception, planning, and action modules to simulate user behaviors in virtual environments.
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    What is APLib?
    APLib is designed to simplify the development of AI-driven autonomous agents within gaming and simulation environments. Utilizing a Belief-Desire-Intention (BDI) inspired architecture, it offers modular components for perception, decision-making, and action execution. Developers define agent beliefs, goals, and behaviors via intuitive APIs and behavior trees. APLib agents can interpret game state through customizable sensors, formulate plans using built-in planners, and interact with the environment via actuators. The library supports integration with Unity, Unreal, and pure Java environments, facilitating automated testing, AI research, and simulations. It promotes reuse of behavior modules, rapid prototyping, and robust QA workflows by automating repetitive test scenarios and simulating complex player behaviors without manual intervention.
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