Skip to content
Scan a barcode
Scan
Paperback Production AI Knowledge Systems: Building HTML Artifacts, LLM Wikis, and Retrieval-Optimized Documentation for AI Agents and Autonomous Workflows Book

ISBN: B0H6VKBKSZ

ISBN13: 9798184711065

Production AI Knowledge Systems: Building HTML Artifacts, LLM Wikis, and Retrieval-Optimized Documentation for AI Agents and Autonomous Workflows

Artificial intelligence is no longer limited to chatbots responding to prompts. The future belongs to systems that can remember, retrieve, reason, and act-AI agents powered by robust knowledge infrastructure.

But here's the challenge: most AI applications fail not because the model is weak, but because the knowledge system behind it is poorly designed.

Production AI Knowledge Systems is a practical, engineering-focused guide that teaches you how to build the hidden infrastructure that makes modern AI systems truly intelligent. Instead of relying on fragile prompts and short context windows, this book shows you how to architect scalable knowledge systems that AI agents can actually understand, search, and use in production.

Whether you are building retrieval-augmented generation (RAG) pipelines, AI copilots, autonomous agents, enterprise search systems, or context-aware applications, this book gives you the tools, architecture patterns, and implementation strategies needed to move from experimentation to production-grade deployment.

Inside this book, you will learn how to:

Design LLM-readable documentation that improves reasoning and reduces hallucinationBuild structured HTML artifacts and AI-native knowledge bases optimized for machine consumptionCreate scalable LLM wikis for organizing large bodies of technical knowledgeImplement efficient chunking strategies for better semantic retrievalGenerate and optimize vector embeddings for high-quality similarity searchBuild modern retrieval pipelines using dense, sparse, and hybrid search techniquesUnderstand vector indexing methods and choose the right vector database architectureEngineer memory systems for AI agents with long-term contextual awarenessDesign multi-agent knowledge orchestration systems for collaborative AI workflowsDeploy and optimize AI infrastructure for latency, scalability, cost, and reliability

Unlike theory-heavy books that stop at concepts, this guide emphasizes real implementation. You will explore production-ready code examples, architectural diagrams, engineering trade-offs, and practical deployment strategies used in modern AI systems.

This book is for:

AI Engineers building production LLM applicationsMachine Learning Engineers working on retrieval systemsSoftware Engineers integrating AI into productsRAG Developers designing search and knowledge pipelinesTechnical Architects building enterprise AI infrastructureAdvanced learners who want to understand how modern AI systems work under the hood

If you have ever wondered how advanced AI assistants maintain context, retrieve the right information at the right time, and deliver reliable responses across complex workflows, this book provides the answer.

The era of prompt engineering alone is ending.

The next generation of intelligent systems will be built on knowledge engineering, context architecture, and retrieval infrastructure.

This book will show you how to build them.

Recommended

Format: Paperback

Condition: New

$25.00
Ships within 2-3 days
Save to List

Customer Reviews

0 rating
Copyright © 2026 Thriftbooks.com Terms of Use | Privacy Policy | Do Not Sell/Share My Personal Information | Cookie Policy | Cookie Preferences | Accessibility Statement
ThriftBooks ® and the ThriftBooks ® logo are registered trademarks of Thrift Books Global, LLC
GoDaddy Verified and Secured