Comprehensive toma de decisiones en múltiples pasos Tools for Every Need

Get access to toma de decisiones en múltiples pasos solutions that address multiple requirements. One-stop resources for streamlined workflows.

toma de decisiones en múltiples pasos

  • A Python framework orchestrating customizable LLM-driven agents for collaborative task execution with memory and tool integration.
    0
    0
    What is Multi-Agent-LLM?
    Multi-Agent-LLM is designed to streamline the orchestration of multiple AI agents powered by large language models. Users can define individual agents with unique personas, memory storage, and integrated external tools or APIs. A central AgentManager handles communication loops, allowing agents to exchange messages in a shared environment and collaboratively advance towards complex objectives. The framework supports swapping LLM providers (e.g., OpenAI, Hugging Face), flexible prompt templates, conversation histories, and step-by-step tool contexts. Developers benefit from built-in utilities for logging, error handling, and dynamic agent spawning, enabling scalable automation of multi-step workflows, research tasks, and decision-making pipelines.
    Multi-Agent-LLM Core Features
    • Agent creation with custom roles and memory
    • Integration of external tools and APIs
    • Central AgentManager for message orchestration
    • Support for multiple LLM providers
    • Built-in logging and error handling
    • Dynamic agent spawning and parallel execution
  • An open-source framework enabling autonomous LLM agents with retrieval-augmented generation, vector database support, tool integration, and customizable workflows.
    0
    0
    What is AgenticRAG?
    AgenticRAG provides a modular architecture for creating autonomous agents that leverage retrieval-augmented generation (RAG). It offers components to index documents in vector stores, retrieve relevant context, and feed it into LLMs to generate context-aware responses. Users can integrate external APIs and tools, configure memory stores to track conversation history, and define custom workflows to orchestrate multi-step decision-making processes. The framework supports popular vector databases like Pinecone and FAISS, and LLM providers such as OpenAI, allowing seamless switching or multi-model setups. With built-in abstractions for agent loops and tool management, AgenticRAG simplifies development of agents capable of tasks like document QA, automated research, and knowledge-driven automation, reducing boilerplate code and accelerating time to deployment.
Featured