Ultimate sistemas multiagentes Solutions for Everyone

Discover all-in-one sistemas multiagentes tools that adapt to your needs. Reach new heights of productivity with ease.

sistemas multiagentes

  • A standardized protocol enabling AI agents to exchange structured messages for real-time coordinated multi-agent interactions.
    0
    0
    What is Agent Communication Protocol (ACP)?
    The Agent Communication Protocol (ACP) is a formal framework designed to enable seamless interaction among autonomous AI agents. ACP specifies a set of message types, headers, and payload conventions, along with agent discovery and registry mechanisms. It supports conversation tracking, version negotiation, and standardized error reporting. By providing language-agnostic JSON schemas and transport-agnostic bindings, ACP reduces integration complexity and allows developers to compose scalable, interoperable multi-agent systems for use in customer service bots, robotic swarms, IoT orchestration, and collaborative AI workflows.
  • Agent Nexus is an open-source framework for building, orchestrating, and testing AI agents via customizable pipelines.
    0
    0
    What is Agent Nexus?
    Agent Nexus offers a modular architecture for designing, configuring, and running interconnected AI agents that collaborate to solve complex tasks. Developers can register agents dynamically, customize behavior through Python modules, and define communication pipelines via simple YAML configurations. The built-in message router ensures reliable inter-agent data flow, while integrated logging and monitoring tools help track performance and debug workflows. With support for popular AI libraries like OpenAI and Hugging Face, Agent Nexus simplifies the integration of diverse models. Whether prototyping research experiments, building automated customer service assistants, or simulating multi-agent environments, Agent Nexus streamlines development and testing of collaborative AI systems, from academic research to commercial deployments.
  • An open-source framework enabling modular LLM-powered agents with integrated toolkits and multi-agent coordination.
    0
    0
    What is Agents with ADK?
    Agents with ADK is an open-source Python framework designed to streamline the creation of intelligent agents powered by large language models. It includes modular agent templates, built-in memory management, tool execution interfaces, and multi-agent coordination capabilities. Developers can quickly plug in custom functions or external APIs, configure planning and reasoning chains, and monitor agent interactions. The framework supports integration with popular LLM providers and provides logging, retry logic, and extensibility for production deployments.
  • A web-based multi-agent chat interface enabling users to create and manage AI agents with distinct roles.
    0
    0
    What is Agent ChatRoom?
    Agent ChatRoom provides a flexible environment to build and run multi-agent conversational systems. Users can create agents with unique personas and prompts, route messages between agents, and view conversation histories in a sleek UI. It integrates with OpenAI APIs, supports custom configuration of agent behaviors, and can be deployed on any static hosting service. Developers benefit from a modular architecture, easy prompt tuning, and a responsive interface for testing AI collaboration scenarios.
  • Agent Studio provides a web-based visual editor to design, configure, and test custom AI agents with tool integrations.
    0
    0
    What is Agent Studio?
    Agent Studio is a comprehensive AI agent development environment designed to reduce the complexity of creating intelligent workflows. Through an intuitive drag-and-drop canvas, users define agent behavior by linking components such as prompt templates, memory connectors (vector stores), API integrations (e.g., webhooks, databases), and control flows. The platform supports plug-and-play toolkits for tasks like document analysis, web search, scheduling, and email automation. Advanced features include version control of agent configurations, multi-agent collaboration spaces, and built-in logs and metrics dashboards for monitoring performance and debugging. By abstracting away boilerplate code, Agent Studio accelerates the cycle from concept to production, enabling teams to iterate quickly and reliably for use cases spanning customer service bots, data assistants, and process automation tools.
  • AgentForge is a Python-based framework that empowers developers to create AI-driven autonomous agents with modular skill orchestration.
    0
    0
    What is AgentForge?
    AgentForge provides a structured environment for defining, combining, and orchestrating individual AI skills into cohesive autonomous agents. It supports conversation memory for context retention, plugin integration for external services, multi-agent communication, task scheduling, and error handling. Developers can configure custom skill handlers, leverage built-in modules for natural language understanding, and integrate with popular LLMs like OpenAI’s GPT series. AgentForge’s modular design accelerates development cycles, facilitates testing, and simplifies deployment of chatbots, virtual assistants, data analysis agents, and domain-specific automation bots.
  • Agentle is a lightweight Python framework to build AI agents that leverage LLMs for automated tasks and tool integration.
    0
    0
    What is Agentle?
    Agentle provides a structured framework for developers to build custom AI agents with minimal boilerplate. It supports defining agent workflows as sequences of tasks, seamless integration with external APIs and tools, conversational memory management for context preservation, and built-in logging for auditability. The library also offers plugin hooks to extend functionality, multi-agent coordination for complex pipelines, and a unified interface to run agents locally or deploy via HTTP APIs.
  • AgentVerse is a Python framework enabling developers to build, orchestrate, and simulate collaborative AI agents for diverse tasks.
    0
    0
    What is AgentVerse?
    AgentVerse is designed to facilitate the creation of multi-agent architectures by offering a set of reusable modules and abstractions. Users can define unique agent classes with custom decision-making logic, establish communication channels for message passing, and simulate environmental conditions. The platform supports synchronous and asynchronous interactions among agents, enabling complex workflows such as negotiation, task delegation, and cooperative problem-solving. With integrated logging and monitoring, developers can trace agent actions and evaluate performance metrics. AgentVerse also includes templates for common use cases like autonomous exploration, trading simulations, and collaborative content generation. Its pluggable design allows seamless integration of external machine learning models, such as language models or reinforcement learning algorithms, providing flexibility for various AI-driven applications.
  • Orchestrates specialized AI agents for data analysis, decision support, and workflow automation across enterprise processes.
    0
    0
    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.
    0
    0
    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 World lets you deploy and orchestrate autonomous AI agent swarms to automate complex workflows and collaborative tasks.
    0
    0
    What is Swarms World?
    Swarms World provides a unified interface for designing multi-agent systems, allowing users to define roles, communication protocols, and workflows visually or via code. Agents can collaborate, delegate subtasks, and aggregate results in real time. The platform supports on-premises, cloud, and edge deployments, with built-in logging, performance metrics, and automatic scaling. A decentralized marketplace lets users discover, share, and monetize agent modules. With support for popular LLMs, APIs, and custom models, Swarms World accelerates the development of robust, enterprise-grade AI automation at scale.
  • CrewAI Agent Generator quickly scaffolds customized AI agents with prebuilt templates, seamless API integration, and deployment tools.
    0
    0
    What is CrewAI Agent Generator?
    CrewAI Agent Generator leverages a command-line interface to let you initialize a new AI agent project with opinionated folder structures, sample prompt templates, tool definitions, and testing stubs. You can configure connections to OpenAI, Azure, or custom LLM endpoints; manage agent memory using vector stores; orchestrate multiple agents in collaborative workflows; view detailed conversation logs; and deploy your agents to Vercel, AWS Lambda, or Docker with built-in scripts. It accelerates development and ensures consistent architecture across AI agent projects.
  • Fetch.ai is an open-source autonomous agent framework enabling secure decentralized coordination and digital twin transactions.
    0
    0
    What is Fetch.ai Autonomous Agent Framework?
    Fetch.ai is an open-source platform and software development kit designed for building autonomous agents that represent digital twins on a decentralized network. It provides a Python and Rust SDK, an Open Economic Framework (OEF) for peer discovery, and seamless integration with its ledger for secure transactions. Developers can define custom agent skills—such as market making, data provision, or task bidding—and deploy them to testnets or mainnets. Fetch.ai agents autonomously communicate, negotiate, and execute smart contracts, enabling powerful multi-agent coordination for supply chains, IoT ecosystems, mobility services, energy grids, and beyond.
  • EasyAgent is a Python framework for building autonomous AI agents with tool integrations, memory management, planning, and execution.
    0
    0
    What is EasyAgent?
    EasyAgent provides a comprehensive framework for constructing autonomous AI agents in Python. It offers pluggable LLM backends such as OpenAI, Azure, and local models, customizable planning and reasoning modules, API tool integration, and persistent memory storage. Developers can define agent behaviors through simple YAML or code-based configurations, leverage built-in function calling for external data access, and orchestrate multiple agents for complex workflows. EasyAgent also includes features like logging, monitoring, error handling, and extension points for tailored implementations. Its modular architecture accelerates prototyping and deployment of specialized agents in domains like customer support, data analysis, automation, and research.
  • GenWorlds is an AI framework for building multi-agent systems with event-based communication.
    0
    0
    What is GenWorlds?
    GenWorlds is an AI development framework designed to facilitate the creation of multi-agent systems. Utilizing an event-based communication framework via websocket, it allows developers to set up interactive environments where autonomous agents can asynchronously interact with each other and their surroundings. These agents collaborate, plan actions, and execute complex tasks collectively, making GenWorlds a robust platform for creating scalable and flexible AI ecosystems.
  • HMAS is a Python framework for building hierarchical multi-agent systems with communication and policy training features.
    0
    0
    What is HMAS?
    HMAS is an open-source Python framework that enables development of hierarchical multi-agent systems. It offers abstractions for defining agent hierarchies, inter-agent communication protocols, environment integration, and built-in training loops. Researchers and developers can use HMAS to prototype complex multi-agent interactions, train coordinated policies, and evaluate performance in simulated environments. Its modular design makes it easy to extend and customize agents, environments, and training strategies.
  • Open-source Java framework for developing FIPA-compliant multi-agent systems, providing agent communication, lifecycle management, and mobility.
    0
    0
    What is JADE?
    JADE is a Java-based agent development framework that simplifies the creation of distributed multi-agent systems. It provides FIPA-compliant infrastructure including a runtime environment, message transport, directory facilitator, and agent management. Developers write agent classes in Java, deploy them in containers, and use graphical tools like RMA and Sniffer for debugging and monitoring. JADE supports agent mobility, behavior scheduling, and lifecycle operations, enabling scalable and modular designs for research, IoT coordination, simulations, and enterprise automation.
  • Jason-RL equips Jason BDI agents with reinforcement learning, enabling Q-learning and SARSA-based adaptive decision making through reward experience.
    0
    0
    What is jason-RL?
    jason-RL adds a reinforcement learning layer to the Jason multi-agent framework, allowing AgentSpeak BDI agents to learn action-selection policies via reward feedback. It implements Q-learning and SARSA algorithms, supports configuration of learning parameters (learning rate, discount factor, exploration strategy), and logs training metrics. By defining reward functions in agent plans and running simulations, developers can observe agents improve decision making over time, adapting to changing environments without manual policy coding.
  • Maxun.dev lets you design, train, and deploy custom AI agents to automate workflows, manage tasks, and integrate APIs.
    0
    0
    What is Maxun.dev?
    Maxun.dev is a no-code/low-code AI agent framework that allows developers and businesses to create intelligent agents tailored to specific tasks. Users can define agent workflows via a visual interface, integrate data sources and external APIs, and configure memory modules for contextual understanding. The platform supports multi-agent orchestration, real-time monitoring, and performance analytics to optimize agent behaviors. With built-in collaboration tools, version control, and one-click deployment options, Maxun.dev simplifies the entire lifecycle from prototype to production, accelerating AI-driven automation across customer support, document management, and business processes.
  • A Python-based framework enabling creation and simulation of AI-driven agents with customizable behaviors and environments.
    0
    0
    What is Multi Agent Simulation?
    Multi Agent Simulation offers a flexible API to define Agent classes with custom sensors, actuators, and decision logic. Users configure environments with obstacles, resources, and communication protocols, then run step-based or real-time simulation loops. Built-in logging, event scheduling, and Matplotlib integration help track agent states and visualize results. The modular design allows easy extension with new behaviors, environments, and performance optimizations, making it ideal for academic research, educational purposes, and prototyping multi-agent scenarios.
Featured