Comprehensive conversaciones en múltiples turnos Tools for Every Need

Get access to conversaciones en múltiples turnos solutions that address multiple requirements. One-stop resources for streamlined workflows.

conversaciones en múltiples turnos

  • An open-source RAG chatbot framework using vector databases and LLMs to provide contextualized question-answering over custom documents.
    0
    0
    What is ragChatbot?
    ragChatbot is a developer-centric framework designed to streamline the creation of Retrieval-Augmented Generation chatbots. It integrates LangChain pipelines with OpenAI or other LLM APIs to process queries against custom document corpora. Users can upload files in various formats (PDF, DOCX, TXT), automatically extract text, and compute embeddings using popular models. The framework supports multiple vector stores such as FAISS, Chroma, and Pinecone for efficient similarity search. It features a conversational memory layer for multi-turn interactions and a modular architecture for customizing prompt templates and retrieval strategies. With a simple CLI or web interface, you can ingest data, configure search parameters, and launch a chat server to answer user questions with contextual relevance and accuracy.
    ragChatbot Core Features
    • Document ingestion and text extraction
    • Embedding generation with popular models
    • Vector database integration (FAISS, Chroma, Pinecone)
    • Retrieval-based question answering
    • Conversational memory for multi-turn chat
    • Modular prompt and retrieval customization
    • CLI and web interface support
  • Open-source Python framework enabling developers to build customizable AI agents with tool integration and memory management.
    0
    0
    What is Real-Agents?
    Real-Agents is designed to simplify the creation and orchestration of AI-powered agents that can perform complex tasks autonomously. Built on Python and compatible with major large language models, the framework features a modular design comprising core components for language understanding, reasoning, memory storage, and tool execution. Developers can rapidly integrate external services like web APIs, databases, and custom functions to extend agent capabilities. Real-Agents supports memory mechanisms to retain context across interactions, enabling multi-turn conversations and long-running workflows. The platform also includes utilities for logging, debugging, and scaling agents in production environments. By abstracting low-level details, Real-Agents streamlines the development cycle, allowing teams to focus on task-specific logic and deliver powerful automated solutions.
  • A LangChain-based chatbot for customer support that handles multi-turn conversations with knowledge-base retrieval and customizable responses.
    0
    0
    What is LangChain Chatbot for Customer Support?
    LangChain Chatbot for Customer Support leverages the LangChain framework and large language models to provide an intelligent conversational agent tailored for support scenarios. It integrates a vector store for storing and retrieving company-specific documents, ensuring accurate context-driven responses. The chatbot maintains multi-turn memory to handle follow-up questions naturally, and supports customizable prompt templates to align with brand tone. With built-in routines for API integration, users can connect to external systems like CRMs or knowledge bases. This open-source solution simplifies deploying a self-hosted support bot, enabling teams to reduce response times, standardize answers, and scale support operations without extensive AI expertise.
Featured