Ultimate arquitectura modular Solutions for Everyone

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

arquitectura modular

  • Astro Agents is an open-source framework enabling developers to build AI-powered agents with customizable tools, memory, and reasoning.
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    What is Astro Agents?
    Astro Agents provides a modular architecture for building AI agents in JavaScript and TypeScript. Developers can register custom tools for data lookup, integrate memory stores to preserve conversational context, and orchestrate multi-step reasoning workflows. It supports multiple LLM providers such as OpenAI and Hugging Face, and can be deployed as static sites or serverless functions. With built-in observability and extensible plugins, teams can prototype, test, and scale AI-driven assistants without heavy infrastructure overhead.
  • SparkChat SDK: a developer toolkit for integrating customizable AI chatbots powered by real-time LLMs across web and mobile platforms.
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    What is SparkChat SDK?
    SparkChat SDK is designed to streamline the creation of AI-powered chat interfaces within existing software ecosystems. It offers a modular architecture with ready-to-use frontend widgets, SDK clients for JavaScript, iOS, and Android, and flexible backend connectors to popular LLM providers. Developers can define conversation flows and intents using JSON schemas or a visual flow editor, apply custom NLU models, and integrate user data stores for personalized responses. Real-time message streaming via WebSocket ensures low-latency interactions, while configurable moderation filters and role-based access control maintain compliance and security. Built-in analytics track user engagement metrics, session durations, and fallback rates, empowering optimization of dialog strategies. The SDK scales horizontally to support millions of concurrent conversations, facilitating deployment in customer support, e-commerce, education technology, and virtual assistant applications.
  • An open-source framework for developers to build, customize, and deploy autonomous AI agents with plugin support.
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    What is BeeAI Framework?
    BeeAI Framework provides a fully modular architecture for building intelligent agents that can perform tasks, manage state, and interact with external tools. It includes a memory manager for long-term context retention, a plugin system for custom skill integration, and built-in support for API chaining and multi-agent coordination. The framework offers Python and JavaScript SDKs, a command-line interface for scaffolding projects, and deployment scripts for cloud, Docker, or edge devices. Monitoring dashboards and logging utilities help track agent performance and troubleshoot issues in real time.
  • An extensible AI agent framework for designing, testing, and deploying multi-agent workflows with custom skills.
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    What is ByteChef?
    ByteChef offers a modular architecture to build, test, and deploy AI agents. Developers define agent profiles, attach custom skill plugins, and orchestrate multi-agent workflows through a visual web IDE or SDK. It integrates with major LLM providers (OpenAI, Cohere, self-hosted models) and external APIs. Built-in debugging, logging, and observability tools streamline iteration. Projects can be deployed as Docker services or serverless functions, enabling scalable, production-ready AI agents for customer support, data analysis, and automation.
  • An open-source Python framework providing modular memory, planning, and tool integration for building LLM-powered autonomous agents.
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    What is CogAgent?
    CogAgent is a research-oriented, open-source Python library designed to streamline the development of AI agents. It provides core modules for memory management, planning and reasoning, tool and API integration, and chain-of-thought execution. With its highly modular architecture, users can define custom tools, memory stores, and agent policies to create conversational chatbots, autonomous task planners, and workflow automation scripts. CogAgent supports integration with popular LLMs such as OpenAI GPT and Meta LLaMA, allowing researchers and developers to experiment, extend, and scale their intelligent agents for a variety of real-world applications.
  • TinyAuton is a lightweight autonomous AI agent framework enabling multi-step reasoning and automated task execution using OpenAI APIs.
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    What is TinyAuton?
    TinyAuton provides a minimal, extensible architecture for building autonomous agents that plan, execute, and refine tasks using OpenAI’s GPT models. It offers built-in modules for defining objectives, managing conversation context, invoking custom tools, and logging agent decisions. Through iterative self-reflection loops, the agent can analyze outcomes, adjust plans, and retry failed steps. Developers can integrate external APIs or local scripts as tools, set up memory or state, and customize the agent’s reasoning pipeline. TinyAuton is optimized for rapid prototyping of AI-driven workflows, from data extraction to code generation, all within a few lines of Python.
  • CopilotKit is a Python-based SDK to create AI agents with multi-tool integration, memory management, and conversational LangGraph.
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    What is CopilotKit?
    CopilotKit is an open-source Python framework designed for developers to build customized AI agents. It offers a modular architecture where you can register and configure tools — such as file system access, web search, Python REPL, and SQL connectors — then wire them into agents that leverage any supported LLM. Built-in memory modules allow conversation state persistence, while LangGraph lets you define structured reasoning flows for complex tasks. Agents can be deployed in scripts, web services, or CLI apps and scale across cloud providers. CopilotKit works seamlessly with OpenAI, Azure OpenAI, and Anthropic models, empowering automated workflows, chatbots, and data analysis bots.
  • Doraemon-Agent is an open-source Python framework that orchestrates multi-step AI agents with plugin integration and memory management.
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    What is Doraemon-Agent?
    Doraemon-Agent is an open-source Python platform and framework designed for developers to build sophisticated AI agents. It allows you to integrate custom plugins and external tools, maintain long-term memory across sessions, and execute chain-of-thought planning with multiple steps. Developers can configure agent roles, manage context, log interactions, and extend functionality through a plugin architecture. It simplifies the creation of autonomous assistants for tasks like data analysis, research support, or customer service automation.
  • DreamGPT is an open-source AI Agent framework that automates tasks using GPT-based agents with modular tools and memory.
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    What is DreamGPT?
    DreamGPT is a versatile open-source platform designed to simplify the development, configuration, and deployment of AI agents powered by GPT models. It provides an intuitive Python SDK and command-line interface for scaffolding new agents, managing conversation history with pluggable memory backends, and integrating external tools via a standardized plugin system. Developers can define custom prompt flows, link to APIs or databases for retrieval-enhanced generation, and monitor agent performance through built-in logging and telemetry. DreamGPT’s modular architecture supports horizontal scaling in cloud environments and ensures secure handling of user data. With prebuilt templates for assistants, chatbots, and digital workers, teams can rapidly prototype specialized AI agents for customer service, data analysis, automation, and more.
  • A JADE-based multi-agent framework for e-commerce negotiation, order processing, dynamic pricing, and shipment coordination.
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    What is E-Commerce Multi-Agent System on JADE?
    The E-Commerce Multi-Agent System on JADE demonstrates how autonomous agents can manage online shopping workflows. Buyer agents search products and negotiate prices with seller agents. Seller agents handle inventory and pricing strategies. Logistics agents schedule shipments and update order status. The system showcases inter-agent communication via ACL, behavior extension, and container deployment on the JADE platform.
  • Emma-X is an open-source framework to build and deploy AI chat agents with customizable workflows, tool integration, and memory.
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    What is Emma-X?
    Emma-X provides a modular agent orchestration platform for building conversational AI assistants using large language models. Developers can define agent behaviors via JSON configurations, select LLM providers like OpenAI, Hugging Face, or local endpoints, and attach external tools such as search, database, or custom APIs. The built-in memory layer preserves context across sessions, while the UI components handle chat rendering, file uploads, and interactive prompts. Plugin hooks allow real-time data fetching, analytics, and custom action buttons. Emma-X ships with example agents for customer support, content creation, and code generation. Its open architecture lets teams extend agent capabilities, integrate with existing web applications, and quickly iterate on conversation flows without deep LLM expertise.
  • Open-source framework for comprehensive evaluation of ethical behaviors in multi-agent systems using customizable metrics and scenarios.
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    What is EthicalEvalMAS?
    EthicalEvalMAS provides a modular environment to assess multi-agent systems across key ethical dimensions such as justice, autonomy, privacy, transparency, and beneficence. Users can generate custom scenarios or use built-in templates, define bespoke metrics, execute automated evaluation scripts, and visualize outcomes through built-in reporting tools. Its extensible architecture supports integration with existing MAS platforms and facilitates reproducible ethical benchmarking across different agent behaviors.
  • A Pythonic framework implementing the Model Context Protocol to build and run AI agent servers with custom tools.
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    What is FastMCP?
    FastMCP is an open-source Python framework for building MCP (Model Context Protocol) servers and clients that empower LLMs with external tools, data sources, and custom prompts. Developers define tool classes and resource handlers in Python, register them with the FastMCP server, and deploy using transport protocols like HTTP, STDIO, or SSE. The framework’s client library offers an asynchronous interface for interacting with any MCP server, facilitating seamless integration of AI agents into applications.
  • FinAgents is an open-source Python framework for deploying AI-driven financial agents handling trading, portfolio optimization, and risk analysis.
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    What is FinAgents?
    FinAgents provides a comprehensive toolkit for designing, configuring, and executing autonomous AI agents tailored to financial tasks. By leveraging large language models and real-time market data APIs, it automates strategy backtesting, portfolio rebalancing, risk evaluation, and performance reporting. The framework offers a modular architecture with pluggable data connectors, model adapters, execution engines, and reporting modules, allowing users to mix and match components. FinAgents also includes sample agent templates, logging utilities, and deployment scripts to accelerate development and ensure reproducibility in live or simulated environments.
  • FreeThinker enables developers to build autonomous AI agents orchestrating LLM-based workflows with memory, tool integration, and planning.
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    What is FreeThinker?
    FreeThinker provides a modular architecture for defining AI agents that can autonomously execute tasks by leveraging large language models, memory modules, and external tools. Developers can configure agents via Python or YAML, plug in custom tools for web search, data processing, or API calls, and utilize built-in planning strategies. The framework handles step-by-step execution, context retention, and result aggregation so agents can operate hands-free on research, automation, or decision-support workflows.
  • Goat is a Go SDK for building modular AI agents with integrated LLMs, tools management, memory, and publisher components.
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    What is Goat?
    Goat SDK is designed to simplify the creation and orchestration of AI agents in Go. It provides pluggable LLM integrations (OpenAI, Anthropic, Azure, local models), a tool registry for custom actions, and memory stores for stateful conversations. Developers can define chains, representer strategies, and publishers to output interactions via CLI, WebSocket, REST endpoints, or a built-in Web UI. Goat supports streaming responses, customizable logging, and easy error handling. By combining these components, you can develop chatbots, automation workflows, and decision-support systems in Go with minimal boilerplate, while maintaining flexibility to swap or extend providers and tools as needed.
  • GRASP is a modular TypeScript framework enabling developers to build customizable AI agents with integrated tools, memory, and planning.
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    What is GRASP?
    GRASP provides a structured pipeline for building AI agents in TypeScript or JavaScript environments. At its core, developers define agents by registering a set of tools—functions or external API connectors—and specifying prompt templates that guide agent behavior. Built-in memory modules allow agents to store and retrieve contextual information, enabling multi-turn conversations with persistent state. The planning component orchestrates tool selection and execution based on user input, while the execution layer handles API calls and result processing. GRASP’s plugin system supports custom extensions, enabling capabilities such as retrieval-augmented generation (RAG), scheduling tasks, and logging. Its modular design means teams can choose only the components they need, facilitating integration with existing systems and services for chatbots, virtual assistants, and automated workflows.
  • Haystack is an open-source framework for building AI-powered search systems and applications.
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    What is Haystack?
    Haystack is designed to help developers easily create custom search solutions that leverage the latest advancements in machine learning. With its components like document stores, retrievers, and readers, Haystack can connect to various data sources and effectively process queries. Its modular architecture supports mixed search strategies, including semantic search and traditional keyword-based search, making it a versatile tool for enterprises looking to enhance their search capabilities.
  • Hive is a Node.js framework enabling orchestration of multi-agent AI workflows with memory management and tool integrations.
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    What is Hive?
    Hive is a robust AI agent orchestration platform built for Node.js environments. It provides a modular system for defining, managing, and executing multiple AI agents in parallel or sequential workflows. Each agent can be configured with specific roles, prompt templates, memory stores, and external tool integrations such as APIs or plugins. Hive streamlines communication paths between agents, enabling data sharing, decision-making, and task delegation. Its extensible design allows developers to implement custom utilities, monitor execution logs, and deploy agents at scale. Hive also includes features like error handling, retry policies, and performance optimizations to ensure reliable automation. With minimal setup, teams can prototype complex AI-driven services, including chatbots, data analysis pipelines, and content generators.
  • 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.
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