Large Language Models (LLMs) and Retrieval-Augmented Generation (RAG) are redefining how software systems are built. But most resources either focus on theory — or on shallow demos.
This book bridges the gap.
Building LLM Systems with RAG takes you from Machine Learning fundamentals to deploying scalable, production-ready Generative AI systems using modern tools like LangChain and Ollama.
This is not just another prompt engineering guide.
This is a system-building handbook.
You will build a complete mental model of modern AI systems:
Foundations of Machine Learning and Deep Learning
Neural Networks, Transformers, and LLM architecture
Prompt Engineering techniques used in real systems
How RAG reduces hallucinations and improves reliability
Embeddings and vector databases
Chunking strategies that impact retrieval quality
Hybrid search (Sparse + Dense retrieval)
Reranking techniques for precision
Evaluating RAG systems properly
Designing production-ready LLM pipelines
Deploying scalable RAG systems using LangChain and Ollama
Running Local AI models securely and cost-effectively
By the end of this book, you won’t just understand LLMs — you’ll know how to build reliable AI systems around them.
This book is for:
Software Engineers
Machine Learning Engineers
AI Architects
Technical Founders
Developers moving into Generative AI
You must know Python not Perfessional but minimum syntax understanding.
No PhD required — but curiosity and technical mindset are essential.
You will move step-by-step:
Machine Learning
→ Deep Learning
→ Transformers
→ Large Language Models
→ Prompt Engineering
→ Basic RAG
→ Advanced RAG
→ Production Deployment
Each concept builds toward one goal:
Creating scalable, production-grade LLM systems.
Unlike many AI books:
It focuses on systems, not just models
It explains why architectural decisions matter
It includes production engineering considerations
It combines theory with practical design
It uses real-world RAG pipelines
It integrates LangChain and Ollama for local AI
This book prepares you for the real world — not just the demo environment.
"synopsis" may belong to another edition of this title.
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Paperback. Condition: new. Paperback. Large Language Models (LLMs) and Retrieval-Augmented Generation (RAG) are redefining how software systems are built. But most resources either focus on theory - or on shallow demos.This book bridges the gap.Building LLM Systems with RAG takes you from Machine Learning fundamentals to deploying scalable, production-ready Generative AI systems using modern tools like LangChain and Ollama.This is not just another prompt engineering guide.This is a system-building handbook.What You'll LearnYou will build a complete mental model of modern AI systems: Foundations of Machine Learning and Deep LearningNeural Networks, Transformers, and LLM architecturePrompt Engineering techniques used in real systemsHow RAG reduces hallucinations and improves reliabilityEmbeddings and vector databasesChunking strategies that impact retrieval qualityHybrid search (Sparse + Dense retrieval)Reranking techniques for precisionEvaluating RAG systems properlyDesigning production-ready LLM pipelinesDeploying scalable RAG systems using LangChain and OllamaRunning Local AI models securely and cost-effectivelyBy the end of this book, you won't just understand LLMs - you'll know how to build reliable AI systems around them.Who This Book Is ForThis book is for: Software EngineersMachine Learning EngineersAI ArchitectsTechnical FoundersDevelopers moving into Generative AIYou must know Python not Perfessional but minimum syntax understanding.No PhD required - but curiosity and technical mindset are essential.From Deep Learning to ProductionYou will move step-by-step: Machine Learning Deep Learning Transformers Large Language Models Prompt Engineering Basic RAG Advanced RAG Production DeploymentEach concept builds toward one goal: Creating scalable, production-grade LLM systems.What Makes This Book Different?Unlike many AI books: It focuses on systems, not just modelsIt explains why architectural decisions matterIt includes production engineering considerationsIt combines theory with practical designIt uses real-world RAG pipelinesIt integrates LangChain and Ollama for local AIThis book prepares you for the real world - not just the demo environment. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. Seller Inventory # 9798250073844
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Seller: GreatBookPricesUK, Woodford Green, United Kingdom
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Quantity: Over 20 available
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Paperback. Condition: new. Paperback. Large Language Models (LLMs) and Retrieval-Augmented Generation (RAG) are redefining how software systems are built. But most resources either focus on theory - or on shallow demos.This book bridges the gap.Building LLM Systems with RAG takes you from Machine Learning fundamentals to deploying scalable, production-ready Generative AI systems using modern tools like LangChain and Ollama.This is not just another prompt engineering guide.This is a system-building handbook.What You'll LearnYou will build a complete mental model of modern AI systems: Foundations of Machine Learning and Deep LearningNeural Networks, Transformers, and LLM architecturePrompt Engineering techniques used in real systemsHow RAG reduces hallucinations and improves reliabilityEmbeddings and vector databasesChunking strategies that impact retrieval qualityHybrid search (Sparse + Dense retrieval)Reranking techniques for precisionEvaluating RAG systems properlyDesigning production-ready LLM pipelinesDeploying scalable RAG systems using LangChain and OllamaRunning Local AI models securely and cost-effectivelyBy the end of this book, you won't just understand LLMs - you'll know how to build reliable AI systems around them.Who This Book Is ForThis book is for: Software EngineersMachine Learning EngineersAI ArchitectsTechnical FoundersDevelopers moving into Generative AIYou must know Python not Perfessional but minimum syntax understanding.No PhD required - but curiosity and technical mindset are essential.From Deep Learning to ProductionYou will move step-by-step: Machine Learning Deep Learning Transformers Large Language Models Prompt Engineering Basic RAG Advanced RAG Production DeploymentEach concept builds toward one goal: Creating scalable, production-grade LLM systems.What Makes This Book Different?Unlike many AI books: It focuses on systems, not just modelsIt explains why architectural decisions matterIt includes production engineering considerationsIt combines theory with practical designIt uses real-world RAG pipelinesIt integrates LangChain and Ollama for local AIThis book prepares you for the real world - not just the demo environment. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. Seller Inventory # 9798250073844
Quantity: 1 available