
Weaviate RAG Development (eBook, ePUB)
The Complete Guide for Developers and Engineers
PAYBACK Punkte
0 °P sammeln!
"Weaviate RAG Development" "Weaviate RAG Development" is a comprehensive exploration of Retrieval-Augmented Generation (RAG) systems, with a sharp focus on leveraging Weaviate as a cornerstone for modern, scalable, and intelligent AI architectures. Beginning with foundational principles, the book guides readers through the conceptual and technical landscape of RAG, detailing the evolutionary journey of retrieval systems, the pivotal role of vector databases, and Weaviate's modular architecture. Readers are introduced to robust data modeling techniques, practical schema design strategies, and a...
"Weaviate RAG Development"
"Weaviate RAG Development" is a comprehensive exploration of Retrieval-Augmented Generation (RAG) systems, with a sharp focus on leveraging Weaviate as a cornerstone for modern, scalable, and intelligent AI architectures. Beginning with foundational principles, the book guides readers through the conceptual and technical landscape of RAG, detailing the evolutionary journey of retrieval systems, the pivotal role of vector databases, and Weaviate's modular architecture. Readers are introduced to robust data modeling techniques, practical schema design strategies, and an examination of closed-book, open-domain, and hybrid RAG applications, supported by industry benchmarks and metrics for performance evaluation.
The book delves deeply into advanced data preparation and the intricacies of efficient vector search, offering hands-on guidance on data ingestion, chunking, preprocessing, and embedding generation using state-of-the-art language and vision models. Readers will gain expertise in selecting and tuning vector indexes, configuring approximate nearest neighbor search, and integrating hybrid retrieval methods for high-precision outcomes. Additional chapters examine the seamless integration of large language models, prompt engineering, real-time and batch processing considerations, and automated feedback loops for continuous improvement, making this an essential resource for building robust, responsive RAG pipelines.
Extending beyond technical implementation, "Weaviate RAG Development" addresses the architectural, operational, and ethical dimensions of deploying enterprise-grade RAG systems. Detailed coverage of deployment patterns, scalability, observability, security, privacy, and compliance ensures that solutions remain resilient and trustworthy in production. The book concludes with real-world case studies across diverse industries, insights into future research and ethical considerations, and practical guidance for customization, ecosystem integration, and community collaboration-solidifying it as an indispensable guide for practitioners, architects, and researchers at the forefront of AI-driven information retrieval.
"Weaviate RAG Development" is a comprehensive exploration of Retrieval-Augmented Generation (RAG) systems, with a sharp focus on leveraging Weaviate as a cornerstone for modern, scalable, and intelligent AI architectures. Beginning with foundational principles, the book guides readers through the conceptual and technical landscape of RAG, detailing the evolutionary journey of retrieval systems, the pivotal role of vector databases, and Weaviate's modular architecture. Readers are introduced to robust data modeling techniques, practical schema design strategies, and an examination of closed-book, open-domain, and hybrid RAG applications, supported by industry benchmarks and metrics for performance evaluation.
The book delves deeply into advanced data preparation and the intricacies of efficient vector search, offering hands-on guidance on data ingestion, chunking, preprocessing, and embedding generation using state-of-the-art language and vision models. Readers will gain expertise in selecting and tuning vector indexes, configuring approximate nearest neighbor search, and integrating hybrid retrieval methods for high-precision outcomes. Additional chapters examine the seamless integration of large language models, prompt engineering, real-time and batch processing considerations, and automated feedback loops for continuous improvement, making this an essential resource for building robust, responsive RAG pipelines.
Extending beyond technical implementation, "Weaviate RAG Development" addresses the architectural, operational, and ethical dimensions of deploying enterprise-grade RAG systems. Detailed coverage of deployment patterns, scalability, observability, security, privacy, and compliance ensures that solutions remain resilient and trustworthy in production. The book concludes with real-world case studies across diverse industries, insights into future research and ethical considerations, and practical guidance for customization, ecosystem integration, and community collaboration-solidifying it as an indispensable guide for practitioners, architects, and researchers at the forefront of AI-driven information retrieval.
Dieser Download kann aus rechtlichen Gründen nur mit Rechnungsadresse in A, B, BG, CY, CZ, D, DK, EW, E, FIN, F, GR, H, IRL, I, LT, L, LR, M, NL, PL, P, R, S, SLO, SK ausgeliefert werden.