Ultimate arquitetura modular Solutions for Everyone

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

arquitetura modular

  • A lightweight Python framework to build autonomous AI agents with memory, planning, and LLM-powered tool execution.
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    What is Semi Agent?
    Semi Agent provides a modular architecture for building AI agents that can plan, execute actions, and remember context over time. It integrates with popular language models, supports tool definitions for custom functionality, and maintains conversational or task-oriented memory. Developers can define step-by-step plans, connect external APIs or scripts as tools, and leverage built-in logging to debug and optimize agent behavior. Its open-source design and Python basis allow easy customization, extensibility, and integration into existing pipelines.
  • Sherpa is an open-source AI agent framework by CartographAI that orchestrates LLMs, integrates tools, and builds modular assistants.
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    What is Sherpa?
    Sherpa by CartographAI is a Python-based agent framework designed to streamline the creation of intelligent assistants and automated workflows. It enables developers to define agents that can interpret user input, select appropriate LLM endpoints or external APIs, and orchestrate complex tasks such as document summarization, data retrieval, and conversational Q&A. With its plugin architecture, Sherpa supports easy integration of custom tools, memory stores, and routing strategies to optimize response relevance and cost. Users can configure multi-step pipelines where each module performs a distinct function—like semantic search, text analysis, or code generation—while Sherpa manages context propagation and fallback logic. This modular approach accelerates prototype development, improves maintainability, and empowers teams to build scalable AI-driven solutions for diverse applications.
  • ShipAIFast: Quickly set up and launch AI SaaS apps.
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    What is ShipAIFast?
    ShipAIFast is a robust AI SaaS boilerplate designed to expedite the development of AI-powered applications. Utilizing the latest technology, it allows you to transform your ideas into fully operational AI apps within hours. The platform supports prototyping, user login, payment processing, and modular component integration to streamline your app development process and reduce time to market significantly.
  • Simple-Agent is a lightweight AI agent framework for building conversational agents with function calling, memory, and tool integration.
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    What is Simple-Agent?
    Simple-Agent is an open-source AI agent framework written in Python that leverages the OpenAI API to create modular conversational agents. It allows developers to define tool functions that the agent can invoke, maintain context memory across interactions, and customize agent behaviors via skill modules. The framework handles request routing, action planning, and tool execution so you can focus on domain-specific logic. With built-in logging and error handling, Simple-Agent accelerates the development of AI-powered chatbots, automated assistants, and decision-support tools. It offers easy integration with custom APIs and data sources, supports asynchronous tool calls, and provides a simple configuration interface. Use it to prototype AI agents for customer support, data analysis, automation, and more. The modular architecture makes it straightforward to add new capabilities without altering core logic. Backed by community contributions and documentation, Simple-Agent is ideal for both beginners and experienced developers aiming to deploy intelligent agents quickly.
  • Skeernir is an AI agent framework template that enables automated game playing and process control via puppet master interfaces.
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    What is Skeernir?
    Skeernir is an open-source AI agent framework designed to accelerate the development of puppet master agents for game automation and process orchestration. The project includes a base template, core APIs, and sample modules that demonstrate how to connect agent logic to target environments, whether simulating gameplay or controlling operating system tasks. Its extensible architecture allows users to implement custom decision-making strategies, plug in machine learning models, and manage agent lifecycles across Windows, Linux, and macOS. With built-in logging and configuration support, Skeernir streamlines testing, debugging, and deployment of autonomous AI agents.
  • A web3 AI Agent leveraging Solana to seamlessly generate text, image, voice, and video content with on-chain payments.
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    What is Solana MultiModal AI Agent?
    Solana MultiModal AI Agent is an open-source framework combining cutting-edge AI models—GPT for text, DALL·E for image, Whisper for audio transcription and synthesis, plus video generation—with the Solana blockchain. It provides a modular server architecture and RESTful API, enforcing per-request SOL payments on-chain. Developers configure their Solana wallet and OpenAI credentials, deploy the agent, then send multimodal requests via UI or API. Responses are delivered with associated transaction receipts. This design supports micropayments, auditability, and decentralized AI services, ideal for Web3 dApps and creative content platforms.
  • A Solana-based AI Agent framework enabling on-chain transaction generation and multimodal input handling via LangChain.
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    What is Solana AI Agent Multimodal?
    Solana AI Agent Mult via Web3.js. The agent automatically signs transactions using a configured wallet keypair, submits them to a Solana RPC endpoint, and monitors confirmations. Its modular architecture allows easy extension with custom prompt templates, chains, and instruction builders, enabling use cases such as automated NFT minting, token swaps, wallet management bots, and more.
  • OpenExec Protocol enables autonomous AI agents to propose, negotiate, and execute tasks across decentralized ecosystems with secure dispute resolution.
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    What is OpenExec Protocol?
    OpenExec Protocol is a comprehensive specification and toolkit enabling seamless interaction among autonomous AI agents. By standardizing communication channels—like task proposals, acceptances, declines, execution reports, and dispute-resolution messages—OpenExec ensures that agents built on diverse architectures can interoperate smoothly. It provides SDKs in Node.js and Python to define agent identities, register skill sets, and manage reputations. The protocol integrates payment rails for cryptographic token settlements, ensuring secure, auditable transactions for completed tasks. With plug-in adapters for major LLM providers (OpenAI, Anthropic, Cohere) and blockchain networks, developers can orchestrate decentralized workflows, automated service markets, and governance processes. OpenExec’s modular design promotes extensibility, enabling custom extensions for verification, arbitration, and logging to suit enterprise or research needs.
  • SPEAR orchestrates and scales AI inference pipelines at the edge, managing streaming data, model deployment, and real-time analytics.
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    What is SPEAR?
    SPEAR (Scalable Platform for Edge AI Real-Time) is designed to manage the full lifecycle of AI inference at the edge. Developers can define streaming pipelines that ingest sensor data, videos, or logs via connectors to Kafka, MQTT, or HTTP sources. SPEAR dynamically deploys containerized models to worker nodes, balancing loads across clusters while ensuring low-latency responses. It includes built-in model versioning, health checks, and telemetry, exposing metrics to Prometheus and Grafana. Users can apply custom transformations or alerts through a modular plugin architecture. With automated scaling and fault recovery, SPEAR delivers reliable real-time analytics for IoT, industrial automation, smart cities, and autonomous systems in heterogeneous environments.
  • An open-source Python framework to build autonomous AI agents integrating LLMs, memory, planning, and tool orchestration.
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    What is Strands Agents?
    Strands Agents offers a modular architecture for creating intelligent agents that combine natural language reasoning, long-term memory, and external API/tool calls. It enables developers to configure planner, executor, and memory components, plug in any LLM (e.g., OpenAI, Hugging Face), define custom action schemas, and manage state across tasks. With built-in logging, error handling, and extensible tool registry, it accelerates prototyping and deployment of agents that can research, analyze data, control devices, or serve as digital assistants. By abstracting common agent patterns, it reduces boilerplate and promotes best practices for reliable, maintainable AI-driven automation.
  • A JavaScript framework for orchestrating multiple AI agents in collaborative workflows, enabling dynamic task distribution and planning.
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    What is Super-Agent-Party?
    Super-Agent-Party allows developers to define a Party object where individual AI agents perform distinct roles such as planning, researching, drafting, and reviewing. Each agent can be configured with custom prompts, tools, and model parameters. The framework manages message routing and shared context, enabling agents to collaborate in real time on subtasks. It supports plugin integration for third-party services, flexible agent orchestration strategies, and error handling routines. With an intuitive API, users can dynamically add or remove agents, chain workflows, and visualize agent interactions. Built on Node.js and compatible with major cloud providers, Super-Agent-Party streamlines the development of scalable, maintainable AI multi-agent systems for automation, content generation, data analysis, and more.
  • An open-source autonomous AI agent framework executing tasks, integrating tools like browser and terminal, and memory through human feedback.
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    What is SuperPilot?
    SuperPilot is an autonomous AI agent framework that leverages large language models to perform multi-step tasks without manual intervention. By integrating GPT and Anthropic models, it can generate plans, call external tools such as a headless browser for web scraping, a terminal for executing shell commands, and memory modules for context retention. Users define goals, and SuperPilot dynamically orchestrates sub-tasks, maintains a task queue, and adapts to new information. The modular architecture allows adding custom tools, adjusting model settings, and logging interactions. With built-in feedback loops, human input can refine decision-making and improve results. This makes SuperPilot suitable for automating research, coding tasks, testing, and routine data processing workflows.
  • SwarmFlow coordinates multiple AI agents to collaboratively solve tasks through asynchronous message passing and plugin-driven workflows.
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    What is SwarmFlow?
    SwarmFlow enables developers to instantiate and coordinate a swarm of AI agents using configurable workflows. Agents can asynchronously exchange messages, delegate sub-tasks, and integrate custom plugins for domain-specific logic. The framework handles task scheduling, result aggregation, and error management, allowing users to focus on designing agent behaviors and collaboration strategies. SwarmFlow’s modular architecture simplifies building complex pipelines for automated brainstorming, data processing, and decision support systems, making it easy to prototype, scale, and monitor multi-agent applications.
  • An extensible Python framework for building LLM-based AI agents with symbolic memory, planning and tool integration.
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    What is Symbol-LLM?
    Symbol-LLM offers a modular architecture for constructing AI agents powered by large language models augmented with symbolic memory stores. It features a planner module to break down complex tasks, an executor to invoke tools, and a memory system to maintain context across interactions. With built-in toolkits like web search, calculator and code runner, plus simple APIs for custom tool integration, Symbol-LLM enables developers and researchers to rapidly prototype and deploy sophisticated LLM-based assistants for various domains including research, customer support, and workflow automation.
  • A lightweight JavaScript framework for building AI agents with memory management and tool integration.
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    What is Tongui Agent?
    Tongui Agent provides a modular architecture for creating AI agents that can maintain conversation state, leverage external tools, and coordinate multiple sub-agents. Developers configure LLM backends, define custom actions, and attach memory modules to store context. The framework includes an SDK, CLI, and middleware hooks for observability, making it easy to integrate into web or Node.js applications. Supported LLMs include OpenAI, Azure OpenAI, and open-source models.
  • Triagent orchestrates three specialized AI sub-agents—Strategist, Researcher, and Executor—to plan, research, and execute tasks automatically.
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    What is Triagent?
    Triagent provides a tri-agent architecture consisting of Strategist, Researcher, and Executor modules. The Strategist breaks down high-level goals into actionable steps, the Researcher retrieves and synthesizes data from documents, APIs, and web sources, and the Executor performs tasks like generating text, creating files, or invoking HTTP requests. Built on top of OpenAI language models and extensible via a plugin system, Triagent supports memory management, concurrent processing, and external API integrations. Developers can configure prompts, set resource limits, and visualize task progress through a CLI or web dashboard, simplifying multi-step automation pipelines.
  • Open-source AI platform to create multi-modal APIs for conversational chat, image editing, code generation, and video synthesis.
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    What is Visualig AI?
    Visualig AI provides a modular, self-hostable environment where you can configure and deploy RESTful endpoints for text-based chat, image processing and generation, code completion and generation, as well as video synthesis. It integrates with major AI providers—such as OpenAI, Stable Diffusion, and video-generation APIs—allowing you to rapidly prototype multi-modal agents. All features are accessible via simple HTTP calls, and the codebase is fully open-source for customization and extension.
  • WanderMind is an open-source AI agent framework for autonomous brainstorming, tool integration, persistent memory, and customizable workflows.
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    What is WanderMind?
    WanderMind provides a modular architecture for building self-guided AI agents. It manages a persistent memory store to retain context across sessions, integrates with external tools and APIs for extended functionality, and orchestrates multi-step reasoning through customizable planners. Developers can plug in different LLM providers, define asynchronous tasks, and extend the system with new tool adapters. This framework accelerates experimentation with autonomous workflows, enabling applications from idea exploration to automated research assistants without heavy engineering overhead.
  • A Python-based integration connecting LangGraph AI agents to WhatsApp via Twilio for interactive chat responses.
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    What is Whatsapp LangGraph Agent Integration?
    Whatsapp LangGraph Agent Integration is an example implementation showcasing the deployment of LangGraph-based AI agents on WhatsApp messaging. It uses Python and FastAPI to expose webhook endpoints for Twilio’s WhatsApp API, automatically parsing incoming messages into the agent’s graph workflow. The agent supports context preservation across sessions with built-in memory nodes, tool invocation for specific tasks, and dynamic decision-making via LangGraph’s modular nodes. Developers can customize graph definitions, integrate additional external APIs, and manage conversational state seamlessly. This integration acts as a template, illustrating message routing, response generation, error handling, and easy scalability to build complex interactive chatbots on WhatsApp.
  • WorFBench is an open-source benchmark framework evaluating LLM-based AI agents on task decomposition, planning, and multi-tool orchestration.
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    What is WorFBench?
    WorFBench is a comprehensive open-source framework designed to assess the capabilities of AI agents built on large language models. It offers a diverse suite of tasks—from itinerary planning to code generation workflows—each with clearly defined goals and evaluation metrics. Users can configure custom agent strategies, integrate external tools via standardized APIs, and run automated evaluations that record performance on decomposition, planning depth, tool invocation accuracy, and final output quality. Built‐in visualization dashboards help trace each agent’s decision path, making it easy to identify strengths and weaknesses. WorFBench’s modular design enables rapid extension with new tasks or models, fostering reproducible research and comparative studies.
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