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programación asincrónica

  • FastAPI Agents is an open-source framework that deploys LLM-based agents as RESTful APIs using FastAPI and LangChain.
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    What is FastAPI Agents?
    FastAPI Agents provides a robust service layer for developing LLM-based agents using the FastAPI web framework. It allows you to define agent behaviors with LangChain chains, tools, and memory systems. Each agent can be exposed as a standard REST endpoint, supporting asynchronous requests, streaming responses, and customizable payloads. Integration with vector stores enables retrieval-augmented generation for knowledge-driven applications. The framework includes built-in logging, monitoring hooks, and Docker support for containerized deployment. You can easily extend agents with new tools, middleware, and authentication. FastAPI Agents accelerates the production readiness of AI solutions, ensuring security, scalability, and maintainability of agent-based applications in enterprise and research settings.
    FastAPI Agents Core Features
    • RESTful agent endpoints
    • Async request handling
    • Streaming response support
    • LangChain integration
    • Vector store RAG support
    • Custom tool and chain definitions
    • Built-in logging and monitoring
    • Docker containerization
    FastAPI Agents Pro & Cons

    The Cons

    No direct pricing information available
    No mobile or extension app presence
    Experimental OpenAI SDK compatibility may lack stability

    The Pros

    Seamless integration of multiple AI agent frameworks
    Built-in security features for protecting endpoints
    High performance and scalability leveraging FastAPI
    Pre-built Docker containers for easy deployment
    Automatic API documentation generation
    Extensible architecture allowing custom agent framework support
    Comprehensive documentation and real-world examples
  • A Python framework for building, simulating, and managing multi-agent systems with customizable environments and agent behaviors.
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    What is Multi-Agent Systems?
    Multi-Agent Systems provides a comprehensive toolkit for creating, controlling, and observing interactions among autonomous agents. Developers can define agent classes with custom decision-making logic, set up complex environments with configurable resources and rules, and implement communication channels for information exchange. The framework supports synchronous and asynchronous scheduling, event-driven behaviors, and integrates logging for performance metrics. Users can extend core modules or integrate external AI models to enhance agent intelligence. Visualization tools render simulations in real-time or post-process, helping analyze emergent behaviors and optimize system parameters. From academic research to prototype distributed applications, Multi-Agent Systems simplifies end-to-end multi-agent simulations.
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