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communication entre agents

  • 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.
  • Open-source framework with multi-agent system modules and distributed AI coordination algorithms for consensus, negotiation, and collaboration.
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    What is AI-Agents-Multi-Agent-Systems-and-Distributed-AI-Coordination?
    This repository aggregates a comprehensive collection of multi-agent system components and distributed AI coordination techniques. It provides implementations of consensus algorithms, contract net negotiation protocols, auction-based task allocation, coalition formation strategies, and inter-agent communication frameworks. Users can leverage built-in simulation environments to model and test agent behaviors under varied network topologies, latency scenarios, and failure modes. The modular design allows developers and researchers to integrate, extend, or customize individual coordination modules for applications in robotics swarms, IoT device collaboration, smart grids, and distributed decision-making systems.
  • Gym-compatible multi-agent reinforcement learning environment offering customizable scenarios, rewards, and agent communication.
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    What is DeepMind MAS Environment?
    DeepMind MAS Environment is a Python library that provides a standardized interface for building and simulating multi-agent reinforcement learning tasks. It allows users to configure number of agents, define observation and action spaces, and customize reward structures. The framework supports agent-to-agent communication channels, performance logging, and rendering capabilities. Researchers can seamlessly integrate DeepMind MAS Environment with popular RL libraries such as TensorFlow and PyTorch to benchmark new algorithms, test communication protocols, and analyze both discrete and continuous control domains.
  • A Java-based platform enabling development, simulation, and deployment of intelligent multi-agent systems with communication, negotiation, and learning capabilities.
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    What is IntelligentMASPlatform?
    The IntelligentMASPlatform is built to accelerate development and deployment of multi-agent systems by offering a modular architecture with distinct agent, environment, and service layers. Agents communicate using FIPA-compliant ACL messaging, enabling dynamic negotiation and coordination. The platform includes a versatile environment simulator allowing developers to model complex scenarios, schedule agent tasks, and visualize agent interactions in real-time through a built-in dashboard. For advanced behaviors, it integrates reinforcement learning modules and supports custom behavior plugins. Deployment tools allow packaging agents into standalone applications or distributed networks. Additionally, the platform's API facilitates integration with databases, IoT devices, or third-party AI services, making it suitable for research, industrial automation, and smart city use cases.
  • Lightweight Python framework for orchestrating multiple LLM-driven agents with memory, role profiles, and plugin integration.
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    What is LiteMultiAgent?
    LiteMultiAgent offers a modular SDK for building and running multiple AI agents in parallel or sequence, each assigned unique roles and responsibilities. It provides out-of-the-box memory stores, messaging pipelines, plugin adapters, and execution loops to manage complex inter-agent communication. Users can customize agent behaviors, plug in external tools or APIs, and monitor conversations through logs. The framework’s lightweight design and dependency management make it ideal for rapid prototyping and production deployment of collaborative AI workflows.
  • A Python framework enabling developers to orchestrate AI agent workflows as directed graphs for complex multi-agent collaborations.
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    What is mcp-agent-graph?
    mcp-agent-graph provides a graph-based orchestration layer for AI agents, enabling developers to map out complex multi-step workflows as directed graphs. Each node in the graph corresponds to an agent task or function, capturing inputs, outputs, and dependencies. Edges define the flow of data between agents, ensuring correct execution order. The engine supports sequential and parallel execution modes, automatic dependency resolution, and integrates with custom Python functions or external services. Built-in visualization allows users to inspect graph topology and debug workflows. This framework streamlines the development of modular, scalable multi-agent systems for data processing, natural language workflows, or combined AI model pipelines.
  • Rivalz is an AI agent network facilitating seamless data sharing among various AI agents.
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    What is Rivalz Network?
    Rivalz Network is designed to bridge the gap between multiple AI agents, enabling them to share information and resources. This collaborative approach not only enhances individual agent performance but also maximizes overall AI efficiency. Through secure data exchanges, agents can learn from one another, adapt faster to changes, and provide more sophisticated solutions to users. With Rivalz, organizations can unlock the full potential of their AI technology, leading to improved decision-making and streamlined operations.
  • An open-source Python framework that orchestrates multiple AI agents for task decomposition, role assignment, and collaborative problem-solving.
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    What is Team Coordination?
    Team Coordination is a lightweight Python library designed to simplify the orchestration of multiple AI agents working together on complex tasks. By defining specialized agent roles—such as planners, executors, evaluators, or communicators—users can decompose a high-level objective into manageable sub-tasks, delegate them to individual agents, and facilitate structured communication between them. The framework handles asynchronous execution, protocol routing, and result aggregation, allowing teams of AI agents to collaborate efficiently. Its plugin system supports integration with popular LLMs, APIs, and custom logic, making it ideal for applications in automated customer service, research, game AI, and data processing pipelines. With clear abstractions and extensible components, Team Coordination accelerates the development of scalable multi-agent workflows.
  • 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.
  • A2A is an open-source framework to orchestrate and manage multi-agent AI systems for scalable autonomous workflows.
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    What is A2A?
    A2A (Agent-to-Agent Architecture) is a Google open-source framework enabling the development and operation of distributed AI agents working together. It offers modular components to define agent roles, communication channels, and shared memory. Developers can integrate various LLM providers, customize agent behaviors, and orchestrate multi-step workflows. A2A includes built-in monitoring, error management, and replay capabilities to trace agent interactions. By providing a standardized protocol for agent discovery, message passing, and task allocation, A2A simplifies complex coordination patterns and enhances reliability when scaling agent-based applications across diverse environments.
  • AgentCrew is an open-source platform for orchestrating AI agents, managing tasks, memory, and multi-agent workflows.
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    What is AgentCrew?
    AgentCrew is designed to streamline the creation and management of AI agents by abstracting common functionalities such as agent lifecycle, memory persistence, task scheduling, and inter-agent communication. Developers can define custom agent profiles, specify triggers and conditions, and integrate with major LLM providers like OpenAI and Anthropic. The framework provides a Python SDK, CLI tools, RESTful endpoints, and an intuitive web dashboard for monitoring agent performance. Workflow automation features allow agents to work in parallel or sequence, exchange messages, and log interactions for auditing and retraining. The modular architecture supports plugin extensions, enabling organizations to tailor the platform to diverse use cases, from customer service bots to automated research assistants and data extraction pipelines.
  • A Python-based AI agent orchestrator supervising interactions between multiple autonomous agents for coordinated task execution and dynamic workflow management.
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    What is Agent Supervisor Example?
    The Agent Supervisor Example repository demonstrates how to orchestrate several autonomous AI agents in a coordinated workflow. Built in Python, it defines a Supervisor class to dispatch tasks, monitor agent status, handle failures, and aggregate responses. You can extend base agent classes, plug in different model APIs, and configure scheduling policies. It logs activities for auditing, supports parallel execution, and offers a modular design for easy customization and integration into larger AI systems.
  • A multi-agent system that analyzes shopper preferences to deliver personalized mall product recommendations in real-time.
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    What is Mall Recommendation Multi-Agent System?
    The Mall Recommendation Multi-Agent System is an AI-driven framework built on a multi-agent architecture to enhance retail experiences in shopping malls. It consists of shopper agents that track visitor interactions, preference agents that analyze past and real-time data, and recommendation agents that generate tailored product and promotion suggestions. Agents communicate via a message-passing protocol to update user models, coordinate cross-agent insights, and adjust recommendations dynamically. The system supports integration with CMS and POS for real-time inventory and sales feedback. Its modular design allows developers to customize agent behaviors, integrate new data sources, and deploy on various platforms. Ideal for large retail environments, it improves customer satisfaction and boosts sales through precise, context-aware recommendations.
  • A Python-based framework enabling creation of modular AI agents using LangGraph for dynamic task orchestration and multi-agent communication.
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    What is AI Agents with LangGraph?
    AI Agents with LangGraph leverages a graph representation to define relationships and communication between autonomous AI agents. Each node represents an agent or tool, enabling task decomposition, prompt customization, and dynamic action routing. The framework integrates seamlessly with popular LLMs and supports custom tool functions, memory stores, and logging for debugging. Developers can prototype complex workflows, automate multi-step processes, and experiment with collaborative agent interactions in just a few lines of Python code.
  • Orchestrates specialized AI agents for data analysis, decision support, and workflow automation across enterprise processes.
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    What is CHAMP Multiagent AI?
    CHAMP Multiagent AI provides a unified environment to define, train, and orchestrate specialized AI agents that collaborate on enterprise tasks. You can create data-processing agents, decision-support agents, scheduling agents, and monitoring agents, then connect them via visual workflows or APIs. It includes features for model management, agent-to-agent communication, performance monitoring, and integration with existing systems, enabling scalable automation and intelligent orchestration of end-to-end business processes.
  • A Python framework enabling dynamic creation and orchestration of multiple AI agents for collaborative task execution via OpenAI API.
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    What is autogen_multiagent?
    autogen_multiagent provides a structured way to instantiate, configure, and coordinate multiple AI agents in Python. It offers dynamic agent creation, inter-agent messaging channels, task planning, execution loops, and monitoring utilities. By integrating seamlessly with the OpenAI API, it allows you to assign specialized roles—such as planner, executor, summarizer—to each agent and orchestrate their interactions. This framework is ideal for scenarios requiring modular, scalable AI workflows, such as automated document analysis, customer support orchestration, and multi-step code generation.
  • Swarms is an open-source framework for orchestrating multi-agent AI workflows with LLM planning, tool integration, and memory management.
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    What is Swarms?
    Swarms is a developer-focused framework enabling the creation, orchestration, and execution of multi-agent AI workflows. You define agents with specific roles, configure their behavior via LLM prompts, and link them to external tools or APIs. Swarms manages inter-agent communication, task planning, and memory persistence. Its plugin architecture allows seamless integration of custom modules—such as retrievers, databases, or monitoring dashboards—while built-in connectors support popular LLM providers. Whether you need coordinated data analysis, automated customer support, or complex decision-making pipelines, Swarms provides the building blocks to deploy scalable, autonomous agent ecosystems.
  • CAMEL-AI is an open-source LLM multi-agent framework enabling autonomous agents to collaborate using retrieval-augmented generation and tool integration.
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    What is CAMEL-AI?
    CAMEL-AI is a Python-based framework that allows developers and researchers to build, configure, and run multiple autonomous AI agents powered by LLMs. It offers built-in support for retrieval-augmented generation (RAG), external tool usage, agent communication, memory and state management, and scheduling. With modular components and easy integration, teams can prototype complex multi-agent systems, automate workflows, and scale experiments across different LLM backends.
  • 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.
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