2 878 504 libros electrónicos en 110 idiomas
¿No le conviene? No hay problema. Puedes devolver los artículos hasta 30 días
No se equivocará con un vale de regalo. El destinatario puede elegir cualquier producto de nuestra oferta.
Hasta 30 días para devoluciones
Retrieval-Augmented Generation (RAG) is revolutionizing the way Natural Language Processing (NLP) is applied in real-world scenarios. By combining powerful retrieval mechanisms with state-of-the-art generative models, RAG enables the creation of intelligent systems capable of precise and context-aware outputs. This technology has quickly become a game-changer for building cutting-edge applications in domains such as chatbots, summarization, and knowledge management.
Written by Ethan W. Sage, a seasoned expert in NLP and artificial intelligence, this book distills years of practical experience into actionable insights. With clear explanations, step-by-step tutorials, and real-world examples, this guide offers unparalleled value to practitioners and enthusiasts alike.
Retrieval-Augmented Generation for NLP Practitioners: Practical Projects for Building Intelligent Systems and Cutting-Edge Applications is a comprehensive guide that bridges theory and practice. It covers everything from foundational concepts to advanced applications of RAG, making it ideal for those who want to build intelligent systems or enhance existing NLP workflows. Whether you're tackling domain-specific retrieval, reducing latency for real-time applications, or ensuring ethical AI practices, this book has you covered.
What's Inside:
¡Hola! Soy Libroamiko, tu asesor de libros.
¿Cómo puedo ayudarte?