| Management number | 231874373 | Release Date | 2026/06/18 | List Price | $90.00 | Model Number | 231874373 | ||
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The book the AI industry didn't know it was waiting for.Every week, another company burns through six figures moving an LLM prototype to production — and discovers too late that calling an API is not engineering. That a clever prompt is not architecture. That a working demo is not a system.This book is the discipline they were missing.Engineering LLM Systems is the first comprehensive field manual for LLM Engineering — a discipline at the intersection of software architecture, probabilistic systems design, cost engineering, safety governance, and ethical responsibility. Not a tutorial. Not a tips collection. A complete operating system for the engineer who builds production AI.650+ pages. 25 chapters. 7 original production-tested frameworks: The Five Properties Model — a shared language to negotiate trade-offs between capability, latency, cost, reliability, and safety — with your product team, your CFO, and your compliance officer.Total Cost of Intelligence (TCI) — move beyond token pricing to model the true cost of an LLM system, including hidden orchestration expenses, human review overhead, and failure remediation.LLM-FMEA — aerospace-grade pre-mortem methodology adapted for probabilistic AI. You will never deploy an LLM feature without first cataloging how it can break.Prompt Pattern Language (PPL) — elevate prompt design from craft to engineering discipline. Transform your team's prompt library from a collection of hacks into a governed, versioned architecture.The Eight-Layer Stack — the complete vertical blueprint of every production LLM system, from GPU memory constraints to compliance audit requirements.The Autonomy Gradient — calibrate how much freedom to give your AI agents, from "suggests" to "acts independently", with clear engineering controls at every level.The Implementation Playbook — 1,100+ lines of production-grade Python. Not pseudocode. RAG, multi-model routing, evaluation harness, circuit breaker, input guardrails, full test suite. Clone it. Ship it. This book is for you if: You are a senior engineer or architect building production LLM systemsYou are an engineering manager scaling an AI teamYou are a technical founder who needs to ship AI that actually worksYou have received the surprise invoice, debugged the hallucination at 2 AM, or stared at a system diagram wondering where it all went wrong Chapter 24, The Engineer's Responsibility, confronts what every other AI book avoids: to what end? A modern Hippocratic Oath for LLM engineers. Frameworks for regulatory future-proofing. A philosophy of stewardship — not technician building features, but guardian building infrastructure that must endure.This is not a book about language models.This is a book about the engineers who build systems around them — and the discipline those engineers need to do it responsibly.Topics: LLM engineering, production AI systems, machine learning architecture, LLM deployment, RAG systems, AI software design, large language model production, AI engineering best practices. Read more
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