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bucles de retroalimentación

  • AgenticIR orchestrates LLM-based agents to autonomously retrieve, analyze, and synthesize information from web and document sources.
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    What is AgenticIR?
    AgenticIR (Agentic Information Retrieval) provides a modular framework where LLM-powered agents autonomously plan and execute IR workflows. It enables the definition of agent roles — such as query generator, document retriever, and summarizer — running in customizable sequences. Agents can fetch raw text, refine queries based on intermediate results, and merge extracted passages into concise summaries. The framework supports multi-step pipelines including iterative web search, API-based data ingestion, and local document parsing. Developers can adjust agent parameters, plug in different LLMs, and fine-tune behavior policies. AgenticIR also offers logging, error handling, and parallel agent execution to accelerate large-scale information gathering. With a minimal code setup, researchers and engineers can prototype and deploy autonomous retrieval systems.
    AgenticIR Core Features
    • LLM-based autonomous agent orchestration
    • Customizable multi-stage agent pipelines
    • Iterative information retrieval workflows
    • Multi-source data ingestion (web, APIs, documents)
    • Query refinement and summarization
    • Parallel execution with logging and error handling
    • Configurable behavior and retry policies
  • A meta agent framework coordinating multiple specialized AI agents to collaboratively solve complex tasks across domains.
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    What is Meta-Agent-with-More-Agents?
    Meta-Agent-with-More-Agents is an extensible open-source framework that implements a meta agent architecture allowing multiple specialized sub-agents to collaborate on complex tasks. It leverages LangChain for agent orchestration and OpenAI APIs for natural language processing. Developers can define custom agents for tasks like data extraction, sentiment analysis, decision-making, or content generation. The meta agent coordinates task decomposition, dispatches objectives to appropriate agents, gathers their outputs, and iteratively refines results via feedback loops. Its modular design supports parallel processing, logging, and error handling. Ideal for automating multi-step workflows, research pipelines, and dynamic decision support systems, it simplifies building robust distributed AI systems by abstracting inter-agent communication and lifecycle management.
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