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коммуникация агентов

  • A Java-based multi-agent communication demo using JADE, showcasing two-way interaction, message parsing, and agent coordination.
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    What is Two-Way Agent Communication using JADE?
    This repository provides a hands-on demonstration of two-way communication between agents built on the JADE framework. It includes example Java classes showing agent setup, FIPA-ACL compliant message creation, and asynchronous behavior handling. Developers can study Agent A sending a REQUEST, Agent B processing the request, and returning an INFORM message. The code illustrates registering agents with the Directory Facilitator, using cyclic and one-shot behaviors, applying message templates to filter messages, and logging conversation sequences. It’s an ideal starting point for prototyping multi-agent exchanges, custom protocols, or integrating JADE agents into larger distributed AI systems.
  • A Python framework enabling developers to build, deploy, and manage decentralized Autonomous Economic Agents across blockchain and peer-to-peer networks
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    What is Autonomous Economic Agents (AEA)?
    Autonomous Economic Agents (AEA) by Fetch.ai is a versatile framework that empowers developers to design, implement, and orchestrate autonomous software agents capable of interacting with each other, external environments, and digital ledgers. Leveraging a plugin-based architecture, AEA provides pre-built modules for communication protocols, cryptographic ledger APIs, decentralized identity, and customizable decision-making skills. Agents can discover and transact within decentralized marketplaces, perform goal-driven behaviors, and adapt through real-time data feeds. The framework supports simulation tools for testing and debugging multi-agent scenarios, as well as deployment onto live blockchains or peer-to-peer networks. With built-in interoperability and agent-to-agent messaging, AEA streamlines the development of complex autonomous economic applications such as energy trading, supply chain optimization, and smart IoT coordination.
  • Python framework for building, deploying, and managing autonomous economic agents performing decentralized tasks via secure interactions.
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    What is Fetch.ai AEA Framework?
    Fetch.ai’s Autonomous Economic Agents (AEA) Framework is an open-source Python SDK and CLI toolset for creating modular, autonomous agents that can negotiate, transact, and collaborate in decentralized environments. It includes scaffolding commands to generate agent projects, templates for protocols and skills, connection modules to integrate with multiple ledgers (Ethereum, Cosmos, etc.), contract interfaces, behavior and decision‐making components, testing and simulation utilities, and a publishing mechanism to distribute agents on the Open Economic Framework network. Developers leverage its modular architecture to rapidly prototype digital workers for DeFi trading, data marketplaces, IoT coordination, and supply chain automation.
  • 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.
  • A Java-based multi-agent system demonstration using JADE framework to model agent interactions, negotiations, and task coordination.
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    What is Java JADE Multi-Agent System Demo?
    The project uses the JADE (Java Agent DEvelopment) framework to build a multi-agent environment. It defines agents that register with the platform’s AMS and DF, exchange ACL messages, and execute behaviors like cyclic, one-shot, and FSM. Example scenarios include buyer-seller negotiations, contract net protocols, and task allocation. A GUI agent container helps monitor runtime agent states and message flows.
  • A Python-based multi-agent simulation framework enabling concurrent agent collaboration, competition and training across customizable environments.
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    What is MultiAgentes?
    MultiAgentes provides a modular architecture for defining environments and agents, supporting synchronous and asynchronous multi-agent interactions. It includes base classes for environments and agents, predefined scenarios for cooperative and competitive tasks, tools for customizing reward functions, and APIs for agent communication and observation sharing. Visualization utilities allow real-time monitoring of agent behaviors, while logging modules record performance metrics for analysis. The framework integrates seamlessly with Gym-compatible reinforcement learning libraries, enabling users to train agents using existing algorithms. MultiAgentes is designed for extensibility, allowing developers to add new environment templates, agent types, and communication protocols to suit diverse research and educational use cases.
  • An open-source Python framework enabling design, training, and evaluation of cooperative and competitive multi-agent reinforcement learning systems.
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    What is MultiAgentSystems?
    MultiAgentSystems is designed to simplify the process of building and evaluating multi-agent reinforcement learning (MARL) applications. The platform includes implementations of state-of-the-art algorithms like MADDPG, QMIX, VDN, and centralized training with decentralized execution. It features modular environment wrappers compatible with OpenAI Gym, communication protocols for agent interaction, and logging utilities to track metrics such as reward shaping and convergence rates. Researchers can customize agent architectures, tune hyperparameters, and simulate settings including cooperative navigation, resource allocation, and adversarial games. With built-in support for PyTorch, GPU acceleration, and TensorBoard integration, MultiAgentSystems accelerates experimentation and benchmarking in collaborative and competitive multi-agent domains.
  • An open specification defining standardized interfaces and protocols for AI agents to ensure interoperability across platforms.
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    What is OpenAgentSpec?
    OpenAgentSpec defines a comprehensive set of JSON schemas, API interfaces, and protocol guidelines for AI agents. It covers agent registration, capability declaration, messaging formats, event handling, memory management, and extension mechanisms. By following the spec, organizations can create agents that communicate reliably with each other and with host environments, reducing integration effort and fostering a reusable ecosystem of interoperable AI components.
  • SuperSwarm orchestrates multiple AI agents to collaboratively solve complex tasks via dynamic role assignment and real-time communication.
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    What is SuperSwarm?
    SuperSwarm is designed for orchestrating AI-driven workflows by leveraging multiple specialized agents that communicate and collaborate in real time. It supports dynamic task decomposition, where a primary controller agent breaks down complex goals into subtasks and assigns them to expert agents. Agents can share context, pass messages, and adapt their approach based on intermediate results. The platform offers a web-based dashboard, RESTful API, and CLI for deployment and monitoring. Developers can define custom roles, configure swarm topologies, and integrate external tools via plugins. SuperSwarm scales horizontally using container orchestration, ensuring robust performance under heavy workloads. Logs, metrics, and visualizations help optimize agent interactions, making it suitable for tasks like advanced research, customer support automation, code generation, and decision-making processes.
  • AgentMesh is an open-source Python framework enabling composition and orchestration of heterogeneous AI agents for complex workflows.
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    What is AgentMesh?
    AgentMesh is a developer-focused framework that lets you register individual AI agents and wire them together into a dynamic mesh network. Each agent can specialize in a specific task—such as LLM prompting, retrieval, or custom logic—and AgentMesh handles routing, load balancing, error handling, and telemetry across the network. This allows you to build complex, multi-step workflows, daisy-chain agents, and scale execution horizontally. With pluggable transports, stateful sessions, and extensibility hooks, AgentMesh accelerates the creation of robust, distributed AI agent systems.
  • AgentSmith is an open-source framework orchestrating autonomous multi-agent workflows using LLM-based assistants.
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    What is AgentSmith?
    AgentSmith is a modular agent orchestration framework built in Python that enables developers to define, configure, and run multiple AI agents collaboratively. Each agent can be assigned specialized roles—such as researcher, planner, coder, or reviewer—and communicate via an internal message bus. AgentSmith supports memory management through vector stores like FAISS or Pinecone, task decomposition into subtasks, and automated supervision to ensure goal completion. Agents and pipelines are configured via human-readable YAML files, and the framework integrates seamlessly with OpenAI APIs and custom LLMs. It includes built-in logging, monitoring, and error handling, making it ideal for automating software development workflows, data analysis, and decision support systems.
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