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integração de APIs externas

  • An open-source AI agent framework enabling automated planning, tool integration, decision-making, and workflow orchestration with LLMs.
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    What is MindForge?
    MindForge is a robust orchestration framework designed for building and deploying AI-driven agents with minimal boilerplate. It offers a modular architecture comprising a task planner, reasoning engine, memory manager, and tool execution layer. By leveraging LLMs, agents can parse user input, formulate plans, and invoke external tools—such as web scraping APIs, databases, or custom scripts—to accomplish complex tasks. Memory components store conversational context, enabling multi-turn interactions, while the decision engine dynamically selects actions based on defined policies. With plugin support and customizable pipelines, developers can extend functionality to include custom tools, third-party integrations, and domain-specific knowledge bases. MindForge simplifies AI agent development, facilitating rapid prototyping and scalable deployment in production environments.
    MindForge Core Features
    • Modular task planner and reasoning engine
    • LLM integration for natural language understanding
    • Memory manager for context persistence
    • Tool execution layer for API and script calls
    • Plugin system for custom tool extensions
    • Workflow orchestration and decision policies
    • Logging and monitoring utilities
  • Multi-Agents is an open-source Python framework orchestrating collaborative AI agents for planning, execution, and evaluation of complex workflows.
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    What is Multi-Agents?
    Multi-Agents provides a structured environment where different AI agents—such as planners, executors, and critics—coordinate to solve multi-step tasks. The planner agent breaks down high-level goals into sub-tasks, the executor agent interacts with external APIs or tools to carry out each step, and the critic agent reviews outcomes for accuracy and consistency. Memory modules allow agents to store context across interactions, while a messaging system ensures seamless communication. The framework is extensible, letting users add custom roles, integrate proprietary tools, or swap LLM backends for specialized use cases.
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