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marco de agente de IA

  • Taiga is an open-source AI agent framework enabling creation of autonomous LLM agents with plugin extensibility, memory, and tool integration.
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    What is Taiga?
    Taiga is a Python-based open-source AI agent framework designed to streamline the creation, orchestration, and deployment of autonomous large language model (LLM) agents. The framework includes a flexible plugin system for integrating custom tools and external APIs, a configurable memory module for managing long-term and short-term conversational context, and a task chaining mechanism to sequence multi-step workflows. Taiga also offers built-in logging, metrics, and error handling for production readiness. Developers can quickly scaffold agents with templates, extend functionality via SDK, and deploy across platforms. By abstracting complex orchestration logic, Taiga enables teams to focus on building intelligent assistants that can research, plan, and execute actions without manual intervention.
    Taiga Core Features
    • Plugin system for tools and API integration
    • Configurable memory management (long-term & short-term)
    • Multi-step task chaining and workflow orchestration
    • Built-in logging, metrics, and error handling
    • SDK for extending agent functionality
    • Production-ready deployment via Docker
  • Minerva is a Python AI agent framework enabling autonomous multi-step workflows with planning, tool integration, and memory support.
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    What is Minerva?
    Minerva is an extensible AI agent framework designed to automate complex workflows using large language models. Developers can integrate external tools—such as web search, API calls, or file processors—define custom planning strategies, and manage conversational or persistent memory. Minerva supports both synchronous and asynchronous task execution, configurable logging, and a plugin architecture, making it easy to prototype, test, and deploy intelligent agents capable of reasoning, planning, and tool use in real-world scenarios.
  • A Python library providing AGNO-based memory management for AI agents, enabling context-aware memory storage and retrieval using embeddings.
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    What is Python AGNO Memory Agent?
    Python AGNO Memory Agent provides a structured approach to agent memory by organizing memories via an AGNO framework. It leverages embedding models to convert textual memories into vector representations and stores them in configurable vector stores like ChromaDB, FAISS, or SQLite. Agents can add new memories, query relevant past events, update outdated entries, or delete irrelevant data. The library offers timeline tracking, namespaced memory stores for multi-agent scenarios, and customizable similarity thresholds. It integrates easily with popular LLM frameworks and can be extended with custom embedding models to suit diverse AI agent applications.
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